Macrophages are primary cells of the innate immune system that mediate tumor progression. However, the motile behavior of macrophages and interactions with tumor cells are not well understood. Here, we exploit the optical transparency of larval zebrafish and perform real-time imaging of macrophage–melanoma interactions. We found that macrophages are highly motile in the tumor microenvironment. Macrophages extend dynamic projections between tumor cells that precede invasive melanoma migration. Modulating macrophage motility with a dominant inhibitory mutation in Rac2 inhibits recruitment to the tumor and impairs tumor invasion. However, a hyperactivating mutation in Rac2 does not affect macrophage recruitment but limits macrophage projections into the melanoma mass and reduces invasive melanoma cell migration. Taken together, these findings reveal a role for Rac2-mediated macrophage protrusive motility in melanoma invasion.

Tumor metastasis is a major cause of cancer-related deaths, and yet the mechanisms that drive metastasis are incompletely understood (Dillekås et al., 2019). The role of innate immune cells in promoting metastasis is becoming increasingly evident (Kitamura et al., 2015; Gonzalez et al., 2018). Macrophages, primary cells of the innate immune system, regulate different steps of the metastatic cascade (Wyckoff et al., 2007; Goswami et al., 2005; Linde et al., 2018). For example, previous studies have shown that macrophages can guide tumor cells to the vasculature and mediate tumor cell movement across the endothelium (Arwert et al., 2018).

Macrophages are motile cells within interstitial tissues and display a mesenchymal surveillance mode of migration in human, mouse, and larval zebrafish (Paterson and Lämmermann, 2022; Barros-Becker et al., 2017; Gui et al., 2018). Rho GTPase signaling plays a critical role in regulating the dynamic actin cytoskeleton of motile macrophages. Depletion of Rac2, a hematopoietic specific Rac GTPase, in larval zebrafish impairs macrophage motility and recruitment to tissue damage (Rosowski et al., 2016). Rac2 depletion also results in decreased tumor burden and metastasis in mouse models (Joshi et al., 2014).

However, the relationship between macrophage migration in the tumor microenvironment (TME) and tumor invasion remains unclear. This gap is, in part, because of the difficulty in performing high-resolution imaging of the TME in situ. Larval zebrafish are optically transparent and provide a powerful model to image dynamic interactions between tumor cells and macrophages in real-time in vivo. Melanoma is a highly aggressive type of skin cancer, and zebrafish melanoma recapitulates many of the properties of human melanoma tumors, including the ability to proliferate and invade (Heilmann et al., 2015). Indeed, a recent report used zebrafish to show that the anatomic position influences the transcriptional state of melanoma (Weiss et al., 2022). This progress highlights the ability of zebrafish melanoma models to uncover new mechanisms of disease progression. Macrophages have also been associated with melanoma dissemination in larval zebrafish and have been shown to transfer cytoplasm from macrophages to melanoma cells (Roh-Johnson et al., 2017).

Here, we sought to determine how macrophages influence melanoma progression using live imaging. We used a previously established hindbrain injection model (Roh-Johnson et al., 2017) to evaluate the influence of macrophages on early melanoma invasion. Using real-time imaging, we showed the dynamic protrusive behavior and motility of macrophages within melanoma tumor cell masses. Depletion of macrophages abrogates tumor invasion. Expression of a dominant inhibitory mutation Rac2D57N in macrophages led to inhibition of macrophage recruitment to the tumor and tumor invasion. Interestingly, hyperactivating mutations of Rac2 in macrophages impaired tumor invasion and affected macrophage protrusive motility in the tumor without altering recruitment. Together, these findings suggest that macrophage protrusive motility in the TME impacts melanoma early invasion in zebrafish.

Macrophages preferentially accumulate near melanoma cells

To image interactions between innate immune cells and invasive melanoma cells, we used a previously established melanoma transplantation model in the larval zebrafish (Roh-Johnson et al., 2017). In this model, zebrafish melanoma cells injected into the hindbrain disseminate to distant sites by 3–4 days post injection (dpi) (Xue et al., 2023). We transplanted 15–20 zebrafish melanoma (ZMel1) cells derived from mitfa−/−, mitfa:BRAFV600E, p53−/− tumors (Heilmann et al., 2015) into the hindbrain ventricle of 2 days post fertilization (dpf) larvae (Fig. 1 A). To characterize the early events involved in tumor invasion, we imaged and tracked the dynamics of the transplanted tumor mass from 1 to 72 hours post injection (hpi). At 1 and 24 hpi, the tumor cells formed a clustered mass. However, by 48 hpi, tumor cells detached from the tumor mass and invaded into the surrounding TME (Fig. 1 B). The number of invaded tumor cells further increased by 72 hpi (Fig. 1 C). Quantification of the morphology of the tumor mass showed a significant reduction in the roundness of the mass by 48 hpi, suggesting remodeling of the tumor mass. (Fig. 1 D). This decrease in tumor roundness correlated with the onset of tumor cell invasion.

Figure 1.

Macrophages accumulate near melanoma cells. (A) Schematic showing the larval zebrafish melanoma model. Zmel1 cells were injected into 2 dpf zebrafish larvae Tg(mpeg1:GFP, LysC:BFP) and imaged from 1 to 72 hours post injection (hpi). (B) Representative images of the melanoma tumor microenvironment (TME) from 1 to 72 hpi. Arrows indicate invaded tumor cells. The dotted circle indicates the region of immune cell quantification. (C) Quantification of the number of invaded tumor cells over time. (D) Quantification of the roundness of the tumor mass over time. (E) Quantification of neutrophils and macrophages within 50 µm distance from the periphery of the tumor cluster. n = 19 larvae from two independent experiments. Scale bar 20 µm. *P < 0.05, **P < 0.01, ***P < 0.001. (F) Image of zebrafish with BRAFV600E used for spatial transcriptomics in Hunter et al. (2021), Visium array spots color-coded to indicate the tumor region. (G and H) The expression of mfap4 (macrophage marker) and mpx (neutrophil marker) projected over tissue space. (I) Quantification of spatial gene expression in the tumor regions from three different tissue sections. Significance was calculated by Wilcoxon sum rank test.

Figure 1.

Macrophages accumulate near melanoma cells. (A) Schematic showing the larval zebrafish melanoma model. Zmel1 cells were injected into 2 dpf zebrafish larvae Tg(mpeg1:GFP, LysC:BFP) and imaged from 1 to 72 hours post injection (hpi). (B) Representative images of the melanoma tumor microenvironment (TME) from 1 to 72 hpi. Arrows indicate invaded tumor cells. The dotted circle indicates the region of immune cell quantification. (C) Quantification of the number of invaded tumor cells over time. (D) Quantification of the roundness of the tumor mass over time. (E) Quantification of neutrophils and macrophages within 50 µm distance from the periphery of the tumor cluster. n = 19 larvae from two independent experiments. Scale bar 20 µm. *P < 0.05, **P < 0.01, ***P < 0.001. (F) Image of zebrafish with BRAFV600E used for spatial transcriptomics in Hunter et al. (2021), Visium array spots color-coded to indicate the tumor region. (G and H) The expression of mfap4 (macrophage marker) and mpx (neutrophil marker) projected over tissue space. (I) Quantification of spatial gene expression in the tumor regions from three different tissue sections. Significance was calculated by Wilcoxon sum rank test.

Close modal

Both neutrophils and macrophages can promote tumor invasion (Giese et al., 2019; Chen et al., 2019). We used zebrafish with labeled neutrophils (LysC:BFP) and macrophages (mpeg1:GFP) to characterize the recruitment dynamics of innate immune cells over time (Fig. 1 B). At 1 hpi, there was the recruitment of both neutrophils and macrophages. Over time, macrophages had an increase in recruitment, while neutrophil numbers decreased (Fig. 1 E). The increase in macrophage recruitment correlated with increased tumor cell invasion. Using time-lapse imaging, we found that neutrophils showed a transient presence around the tumor cells, while macrophages remained highly motile in the TME after transplantation of melanoma cells (Fig. S1, A and B).

+ Expand view − Collapse view
Figure S1.

Macrophages accumulate and extend protrusions into the tumor mass correlated with tumor invasion. (A) Representative stills from time-lapse imaging of ZMel1 transplanted larvae from 1 to 6 hpi. (B) Quantification of neutrophils and macrophages every hour from 1 to 6 hpi indicated by average values at each time point. n = 4 larvae. (C) Representative z-projected stills from LSM imaging of tumor-macrophage interactions at 48 hpi imaged every minute. Lines indicate macrophage protrusions and invading tumor cells (n = 4). (D) Quantification of protrusion length of macrophages when in contact with invading tumor versus not in contact from light sheet microscopy (n = 3, from two independent experiments).

Figure S1.

Macrophages accumulate and extend protrusions into the tumor mass correlated with tumor invasion. (A) Representative stills from time-lapse imaging of ZMel1 transplanted larvae from 1 to 6 hpi. (B) Quantification of neutrophils and macrophages every hour from 1 to 6 hpi indicated by average values at each time point. n = 4 larvae. (C) Representative z-projected stills from LSM imaging of tumor-macrophage interactions at 48 hpi imaged every minute. Lines indicate macrophage protrusions and invading tumor cells (n = 4). (D) Quantification of protrusion length of macrophages when in contact with invading tumor versus not in contact from light sheet microscopy (n = 3, from two independent experiments).

Close modal

To investigate if the limited recruitment of neutrophils is specific to the larval zebrafish, we assessed the expression of neutrophil and macrophage markers in a previously published spatial transcriptomics dataset of transgenic BRAFV600E-driven melanoma tumors in adult zebrafish (Fig. 1 F) (Hunter et al., 2021). We found a significantly lower expression of the neutrophil gene mpx compared with the expression of macrophage-specific gene mfap4 in the tumor area (Fig. 1, G–I), suggesting that macrophages are also enriched in adult zebrafish melanoma tumors.

Macrophages mediate the invasive migration of melanoma cells

To characterize the role of macrophages in early melanoma invasion, we performed live imaging of macrophage–melanoma interactions following transplantation in the hindbrain. Long-term time-lapse imaging of the tumor mass was performed by acquiring images every 5 min for 12 h, beginning at 24 hpi. Macrophages were highly motile around the tumor cells. Notably, macrophages migrated between tumor cells and extended elongated protrusions into the mass (Video 1). 3D rendering revealed macrophages infiltrating between tumor cells and single tumor cells migrating away from the tumor mass (Fig. 2 A). Over time, macrophages extended elongated protrusions between invading tumor cells before individual tumor cells separated from the mass (Fig. 2 B). Furthermore, macrophages extended longer protrusions while in contact with an invading tumor cell compared with contacting other cells in the tumor mass (Fig. 2 C). Using light sheet microscopy (LSM) and a membrane-labeled macrophage line (mpeg:mCherry-CAAX), we imaged interactions between tumor cells and macrophage projections. LSM was performed with image acquisition every minute at 48 hpi for 2 h. This imaging further demonstrated that macrophage protrusions extend between tumor cells during tumor invasion (Fig. S1 C and Video 2).

Video 1.

Imaging macrophage motility in the tumor microenvironment. Time-lapse movie acquired every 5 min for 12 h from 24 hpi of ZMel1 cells in mpeg1:GFP line. n = 5 larvae. Video was generated on Imaris 10.0. Frame rate: 5 fps. Scale = 10 µm.

Video 1.

Imaging macrophage motility in the tumor microenvironment. Time-lapse movie acquired every 5 min for 12 h from 24 hpi of ZMel1 cells in mpeg1:GFP line. n = 5 larvae. Video was generated on Imaris 10.0. Frame rate: 5 fps. Scale = 10 µm.

Close modal
Figure 2.

Macrophages mediate invasive migration of melanoma cells. (A) Representative stills from time-lapse imaging of tumor-macrophage interactions between 24 and 36 hpi acquired every 5 min (Video 1). (B) Representative stills of tumor-macrophage interactions that precede tumor invasion. (C) Quantification of length of macrophage protrusions during macrophage contact with invading tumor cell compared to macrophages that do not contact the invading tumor cell. n = 5 larvae; 27 contact cells and 25 non-contact cells from three independent experiments. Quantifications were made in a single frame prior to each invasion event. (D) Schematic of sequence of larvae injections. 2 dpf larvae were injected with L-PBS or L-Clodronate through the caudal vein followed by ZMel1 injection into the hindbrain ventricle 2 h later. (E) Representative images from time course imaging of L-PBS or L-Clodronate injected larvae from 1 to 48 hpi. (F) Quantification of macrophage recruitment at 24 and 48 hpi. (G) Quantification of the number of invaded tumor cells at 48 hpi. (H) Quantification of fold change in 3D tumor area from 1 to 48 hpi. (I) Quantification of roundness of tumor cell cluster at 48 hpi. n = 30 larvae L-PBS, n = 28 larvae L-Clodronate from three independent experiments. Scale bar = 20 µm. *P < 0.05, **P < 0.01, ***P < 0.001.

Figure 2.

Macrophages mediate invasive migration of melanoma cells. (A) Representative stills from time-lapse imaging of tumor-macrophage interactions between 24 and 36 hpi acquired every 5 min (Video 1). (B) Representative stills of tumor-macrophage interactions that precede tumor invasion. (C) Quantification of length of macrophage protrusions during macrophage contact with invading tumor cell compared to macrophages that do not contact the invading tumor cell. n = 5 larvae; 27 contact cells and 25 non-contact cells from three independent experiments. Quantifications were made in a single frame prior to each invasion event. (D) Schematic of sequence of larvae injections. 2 dpf larvae were injected with L-PBS or L-Clodronate through the caudal vein followed by ZMel1 injection into the hindbrain ventricle 2 h later. (E) Representative images from time course imaging of L-PBS or L-Clodronate injected larvae from 1 to 48 hpi. (F) Quantification of macrophage recruitment at 24 and 48 hpi. (G) Quantification of the number of invaded tumor cells at 48 hpi. (H) Quantification of fold change in 3D tumor area from 1 to 48 hpi. (I) Quantification of roundness of tumor cell cluster at 48 hpi. n = 30 larvae L-PBS, n = 28 larvae L-Clodronate from three independent experiments. Scale bar = 20 µm. *P < 0.05, **P < 0.01, ***P < 0.001.

Close modal
Video 2.

LSM imaging of macrophage motility and tumor invasion. Time-lapse movie acquired every minute for 2 h at 48 hpi of ZMel1 cells in mpeg1:mcherry-caax line. Video was generated on Imaris 10.0 and processed on Premier Pro. Frame rate: 5 fps. Scale = 10 µm.

Video 2.

LSM imaging of macrophage motility and tumor invasion. Time-lapse movie acquired every minute for 2 h at 48 hpi of ZMel1 cells in mpeg1:mcherry-caax line. Video was generated on Imaris 10.0 and processed on Premier Pro. Frame rate: 5 fps. Scale = 10 µm.

Close modal

Previous studies showed that the depletion of both macrophages and neutrophils in the zebrafish transplantation model limited tumor cell dissemination (Roh-Johnson et al., 2017). To identify a specific role for macrophages during tumor cell invasive migration, we depleted macrophages using clodronate liposomes. We injected either PBS or clodronate liposomes into the caudal vein of 2 dpf (mpeg1:GFP) larvae 2 h prior to ZMel1 injections into the hindbrain (Fig. 2 D). We then imaged the same larvae every 24 h (Fig. 2 E). Larvae that received clodronate had significantly reduced macrophages around the tumor cells at 24 and 48 hpi (Fig. 2 F). When we measured invasion at 48 hpi, there was about a 10-fold reduction in the number of invaded tumor cells in macrophage-depleted larvae compared with control (Fig. 2 G). The tumor area was also significantly reduced in the clodronate-treated larvae (Fig. 2 H). Accordingly, the tumor mass was also significantly more rounded in clodronate-treated larvae (Fig. 2 I). These data indicate that macrophages remodel the tumor mass and promote early invasion of melanoma cells.

Rac2 signaling is required for macrophage recruitment to the TME and tumor invasion

To further study the effects of macrophage protrusions on melanoma invasion, we modulated Rac2 signaling which regulates F-actin assembly (Wheeler et al., 2006; Miskolci et al., 2016). We have previously shown that Rac2 depletion results in defects in macrophage migration to a wound (Rosowski et al., 2016). We hypothesized that perturbing Rac2 signaling in macrophages would impair macrophage-mediated melanoma invasion. Indeed, we found that global deletion of Rac2 impaired melanoma invasion (Fig. S2, A and B).

+ Expand view − Collapse view
Figure S2.

Depletion of Rac2 inhibits tumor invasion. (A) Representative stills from time course imaging of ZMel1 cells after transplantation in rac2+/+ or rac2−/− larvae. (B) Quantification of number of invaded tumor cells in rac2+/+ (n = 18 larvae), rac2−/− (n = 23 larvae) and rac2+/− (n = 37 larvae) from three independent replicates. *P < 0.05, **P < 0.01. Scale bar = 20 µm.

Figure S2.

Depletion of Rac2 inhibits tumor invasion. (A) Representative stills from time course imaging of ZMel1 cells after transplantation in rac2+/+ or rac2−/− larvae. (B) Quantification of number of invaded tumor cells in rac2+/+ (n = 18 larvae), rac2−/− (n = 23 larvae) and rac2+/− (n = 37 larvae) from three independent replicates. *P < 0.05, **P < 0.01. Scale bar = 20 µm.

Close modal

To modulate Rac2 signaling specifically in leukocytes, we expressed dominant inhibitory Rac2, Rac2D57N (Tg(coro1a:GFP-rac2 D57N)psi92T), under the coro1a promoter, which is expressed predominantly in neutrophils and macrophages (Li et al., 2012). Since the neutrophil-specific expression of Rac2D57N did not modulate tumor invasion (Fig. S1, A–C), the effects of Rac2D57N using the coro1a promoter should be due to macrophage Rac signaling. Expression of Rac2D57N in macrophages restricted macrophages to the vasculature (Fig. 3 A) and impaired macrophage recruitment to a tail transection wound (Fig. 3, B–D). Macrophage expression of Rac2D57N also limited macrophage recruitment to the melanoma mass (Fig. 3, E and F). Accordingly, we found that this reduction in macrophage recruitment correlated with a decrease in tumor invasion and increased tumor roundness, suggesting impaired remodeling of the tumor mass with altered macrophage Rac2 signaling (Fig. 3, G and H). There was also a trend toward decreased tumor area (Fig. 3 I). These findings further support a central role for macrophages and macrophage Rac activation, specifically in regulating macrophage motility and tumor invasion. Taken together, these results suggest that macrophage motility in the TME is required for early tumor invasion.

Figure 3.

Rac2 signaling in macrophages is required for macrophage recruitment to the TME and tumor invasion. (A) Representative images of macrophages in the caudal hematopoietic tissue of 3 dpf wild-type larvae or Tg(coro1a:GFP-rac2 D57N)psi92T larvae. (B) Schematic of a 3 dpf larvae to highlight the tail transection region (red line) and the quantification area for macrophage recruitment (between red and black line). (C) Representative images of the tail fin of wild-type or Rac2D57N larvae wounded and imaged 2 h post wound. (D) Quantification of macrophage recruitment to tail fin. n = 30 wild-type, n = 27 Rac2D57N from three independent replicates. (E) Representative images from time course imaging of wild-type or Rac2D57N larvae injected with Zmel1 GFP cells from 1 hpi to 48 hpi. (F) Quantification of macrophage recruitment to tumor at 24 and 48 hpi. (G) Quantification of number of invaded tumor cells at 48 hpi. (H) Quantification of tumor roundness at 48 hpi. (I) Quantification of fold change in tumor area from 1 to 48 hpi. n = 26 wild-type, n = 26 Rac2D57N from three independent replicates. Scale bar = 20 µm. *P < 0.05, **P < 0.01, ***P < 0.001, n.s., not significant.

Figure 3.

Rac2 signaling in macrophages is required for macrophage recruitment to the TME and tumor invasion. (A) Representative images of macrophages in the caudal hematopoietic tissue of 3 dpf wild-type larvae or Tg(coro1a:GFP-rac2 D57N)psi92T larvae. (B) Schematic of a 3 dpf larvae to highlight the tail transection region (red line) and the quantification area for macrophage recruitment (between red and black line). (C) Representative images of the tail fin of wild-type or Rac2D57N larvae wounded and imaged 2 h post wound. (D) Quantification of macrophage recruitment to tail fin. n = 30 wild-type, n = 27 Rac2D57N from three independent replicates. (E) Representative images from time course imaging of wild-type or Rac2D57N larvae injected with Zmel1 GFP cells from 1 hpi to 48 hpi. (F) Quantification of macrophage recruitment to tumor at 24 and 48 hpi. (G) Quantification of number of invaded tumor cells at 48 hpi. (H) Quantification of tumor roundness at 48 hpi. (I) Quantification of fold change in tumor area from 1 to 48 hpi. n = 26 wild-type, n = 26 Rac2D57N from three independent replicates. Scale bar = 20 µm. *P < 0.05, **P < 0.01, ***P < 0.001, n.s., not significant.

Close modal

Hyperactivation of Rac2 alters macrophage morphology and motility in the TME

We next sought to modulate macrophage-specific Rac2 signaling by hyperactivating Rac2 signaling to test the hypothesis that dysregulated Rac2 may alter macrophage motility in the TME and tumor invasion. To do this, we expressed an activating Rac2E62K mutation specifically in macrophages that has been reported in patients with immune dysregulation (Hsu et al., 2019). Previous studies have demonstrated that this disease-associated mutation results in an increase in Rac2 activation and hyperactivation of macrophages (Mishra et al., 2023). To determine if Rac2E62K affects macrophage motility, we first assessed macrophage migration to a wound. We performed caudal fin tail transection at 3 dpf on larvae expressing mpeg1:mCherry-2A-rac2WT or mpeg1:mCherry-2A-rac2E62K (Fig. S3 D). We found that at 2 hours post wound (hpw), there was no difference in macrophage recruitment to a wound or change in the morphology of macrophages (Fig. S3, E and F).

+ Expand view − Collapse view
Figure S3.

Effects of Rac2 on tumor invasion and macrophage motility at wounds. (A) Representative stills from time course images of wild-type larvae or larvae expressing mpx:mCherry-2A-rac2D57N injected with ZMel1 cells at 2 dpf. (B) Quantification of the number of invaded tumor cells at 48 hpi. (C) Quantification of macrophage recruitment at 24 and 48 hpi. wild-type (n = 18 larvae), mpx:mCherry-2A-rac2D57N (n = 20 larvae). Scale bar = 20 µm. (D) Representative stills of mpeg1:mCherry-2A-rac2WT or mpeg1:mCherry-2A-rac2E62K expressing larvae at 2 h post wound (hpw), tail transected at 3 dpf. (E) Quantification of macrophage recruitment to wound at 2 hpw. (F) Quantification of circularity of macrophages at the wound. mpeg1:mCherry-2A-rac2WT (n = 21 larvae, 219 cells), mpeg1:mCherry-2A-rac2E62K (n = 22 larvae, 207 cells) from two independent experiments. *P < 0.05, **P < 0.01.

Figure S3.

Effects of Rac2 on tumor invasion and macrophage motility at wounds. (A) Representative stills from time course images of wild-type larvae or larvae expressing mpx:mCherry-2A-rac2D57N injected with ZMel1 cells at 2 dpf. (B) Quantification of the number of invaded tumor cells at 48 hpi. (C) Quantification of macrophage recruitment at 24 and 48 hpi. wild-type (n = 18 larvae), mpx:mCherry-2A-rac2D57N (n = 20 larvae). Scale bar = 20 µm. (D) Representative stills of mpeg1:mCherry-2A-rac2WT or mpeg1:mCherry-2A-rac2E62K expressing larvae at 2 h post wound (hpw), tail transected at 3 dpf. (E) Quantification of macrophage recruitment to wound at 2 hpw. (F) Quantification of circularity of macrophages at the wound. mpeg1:mCherry-2A-rac2WT (n = 21 larvae, 219 cells), mpeg1:mCherry-2A-rac2E62K (n = 22 larvae, 207 cells) from two independent experiments. *P < 0.05, **P < 0.01.

Close modal

We then assessed the effect of Rac2E62K expression on macrophage recruitment to melanoma cells. Macrophage recruitment was not altered in macrophages expressing Rac2E62K (Fig. 4, A and B). While, the roundness of the tumor mass and fold change of tumor area were not changed, we did observe a significant reduction in the number of invaded tumor cells in larvae expressing Rac2E62K in macrophages (Fig. 4, C–E). Furthermore, macrophages exhibited a more rounded morphology with fewer and shorter protrusions near tumor cells in the Rac2E62K mutants (Fig. 4, F–I). These data indicate that expression of Rac2E62K mutation does not alter macrophage recruitment but changes macrophage protrusive morphology that could influence the interactions between macrophages and tumor cells. Interestingly, this effect was important in the tumor but not in the wound, suggesting distinct functions for macrophage Rac2 signaling at the wound and TME.

Figure 4.

Hyperactivation of Rac2 alters macrophage morphology and motility in the TME. (A) Representative images from the time course of larvae expressing mpeg1:mCherry-2A-rac2WT, mpeg1:mCherry-2A-rac2E62K injected with ZMel1 cells at 2 dpf. (B) Quantification of macrophage recruitment to tumor cells at 24 and 48 hpi. (C) Quantification of the number of invaded tumor cells at 48 hpi. (D) Quantification of roundness of tumor cell cluster at 48 hpi. (E) Quantification of fold change in tumor area from 1 to 48 hpi. Rac2WT (n = 28 larvae), Rac2E62K (n = 23 larvae) from three independent experiments. (F) Zoom-in images of macrophages highlighting protrusions into the tumor mass in Rac2WT and Rac2E62K-expressing larvae. (G–I) Quantification of circularity, length of protrusions and number of protrusions for macrophages at 48 hpi. Number of cells: Rac2WT = 161 cells, Rac2E62K = 145 cells. (J) Representative images from time-lapse imaging of tumor-macrophage interactions at 48 hpi (Video 3). Tracks indicate macrophage motility around the tumor cells color-coded by instantaneous speed. (K) Quantification of average track mean speed of macrophages from each larva. (L) Quantification of average track length from macrophages in each larva. (M) Quantification of the number of macrophages that interact with the tumor mass in the time course. (N) Quantification of duration of contact of macrophages with the tumor mass in the time course. Rac2WT (n = 5 larvae; 12 cells), Rac2E62K (n = 7 larvae, 21 cells) from three independent experiments. Scale bar = 20 µm. *P < 0.05, **P < 0.01, ***P < 0.001.

Figure 4.

Hyperactivation of Rac2 alters macrophage morphology and motility in the TME. (A) Representative images from the time course of larvae expressing mpeg1:mCherry-2A-rac2WT, mpeg1:mCherry-2A-rac2E62K injected with ZMel1 cells at 2 dpf. (B) Quantification of macrophage recruitment to tumor cells at 24 and 48 hpi. (C) Quantification of the number of invaded tumor cells at 48 hpi. (D) Quantification of roundness of tumor cell cluster at 48 hpi. (E) Quantification of fold change in tumor area from 1 to 48 hpi. Rac2WT (n = 28 larvae), Rac2E62K (n = 23 larvae) from three independent experiments. (F) Zoom-in images of macrophages highlighting protrusions into the tumor mass in Rac2WT and Rac2E62K-expressing larvae. (G–I) Quantification of circularity, length of protrusions and number of protrusions for macrophages at 48 hpi. Number of cells: Rac2WT = 161 cells, Rac2E62K = 145 cells. (J) Representative images from time-lapse imaging of tumor-macrophage interactions at 48 hpi (Video 3). Tracks indicate macrophage motility around the tumor cells color-coded by instantaneous speed. (K) Quantification of average track mean speed of macrophages from each larva. (L) Quantification of average track length from macrophages in each larva. (M) Quantification of the number of macrophages that interact with the tumor mass in the time course. (N) Quantification of duration of contact of macrophages with the tumor mass in the time course. Rac2WT (n = 5 larvae; 12 cells), Rac2E62K (n = 7 larvae, 21 cells) from three independent experiments. Scale bar = 20 µm. *P < 0.05, **P < 0.01, ***P < 0.001.

Close modal

To determine if the dynamic activity of macrophages in the TME was altered with Rac2E62K, we performed time-lapse imaging at 48 hpi. Macrophages expressing Rac2E62K exhibited a slower migration speed and migrated a shorter distance in the 2-h imaging window around the tumor cells (Fig. 4, J–L and Video 3). Time-lapse movies also revealed that mutant macrophages extended shorter and fewer protrusions into the tumor mass than wild-type macrophages that extended sustained elongated protrusions into the tumor mass (Video 3). However, we did not observe a significant difference in the number of macrophages that made contact or the contact duration with the tumor mass between wild-type and Rac2E62K macrophages (Fig. 4, M and N). Our findings suggest that changes in macrophage behavior and the defects in protrusion formation with expression of Rac2E62K is associated with defects, specifically in tumor invasion. Taken together, these results suggest that regulated Rac2 signaling is necessary for the formation of elongated macrophage protrusions that extend into the tumor mass and promote tumor invasion.

Video 3.

Effect of Rac2E62Kon macrophage motility in the TME. Larvae expressing mpeg1:mCherry-2A-rac2WT or mpeg1:mCherry-2A-rac2E62K were injected with ZMel1 cells at 2 dpf and time-lapse imaging was performed at 48 hpi. Images were acquired every 3 min for 2 h. Macrophages that interact with the tumor mass were tracked and color-coded by instantaneous speed of macrophages. Videos were generated on Imaris 10.0 and processed on premier pro. Rac2WT (n = 5 larvae), Rac2E62K (n = 7 larvae) from three independent replicates. Frame rate: 5 fps. Scale bar = 10 µm.

Video 3.

Effect of Rac2E62Kon macrophage motility in the TME. Larvae expressing mpeg1:mCherry-2A-rac2WT or mpeg1:mCherry-2A-rac2E62K were injected with ZMel1 cells at 2 dpf and time-lapse imaging was performed at 48 hpi. Images were acquired every 3 min for 2 h. Macrophages that interact with the tumor mass were tracked and color-coded by instantaneous speed of macrophages. Videos were generated on Imaris 10.0 and processed on premier pro. Rac2WT (n = 5 larvae), Rac2E62K (n = 7 larvae) from three independent replicates. Frame rate: 5 fps. Scale bar = 10 µm.

Close modal

Here, we take advantage of the live imaging capabilities of larval zebrafish to visualize the migratory behavior of macrophages in response to tumor cells in an in vivo environment. We found that melanoma invasion correlates with the presence of macrophages but not neutrophils in the TME. Indeed, depletion of macrophages, but not neutrophils, blocked tumor remodeling and invasion. Our results are consistent with findings in breast cancer that show early infiltration of macrophages into the tumor disrupts E-cadherin junctions and modulates tumor dissemination (Linde et al., 2018). In Drosophila embryos, macrophages also penetrate developing tissues specifically during cell division when there is a release of cell–cell adhesion (Akhmanova et al., 2022). These studies suggest that macrophages have mechanisms to migrate between contacting cells, and this behavior may weaken cell–cell adhesion and facilitate tumor infiltration. Morphometric analyses in our study revealed that the melanoma mass became elongated and remodeled over time in response to macrophage infiltration. Macrophages likely mediate single-cell tumor invasion by disrupting cadherin-mediated cell–cell contacts, but other mechanisms are also possible. Secreted signaling factors, cytoplasmic transfer (Roh-Johnson et al., 2017), or tunneling nanotubes between macrophages and tumor cells may also play a role (Hanna et al., 2019).

Our findings demonstrate that macrophages that express Rac2E62K have altered motility and projections into tumors but not wounds. The defects in protrusion formation in macrophages in Rac2E62K could be due to impaired actin cycling (Hsu et al., 2019). It is possible that other mechanisms contribute to the effects of macrophage Rac2E62K on tumor cell behavior. For example, macrophages expressing Rac2E62K have recently been shown to exhibit an increased ability to phagocytose tumor cells in vitro (Mishra et al., 2023). Although, we did not observe hyperphagocytosis by Rac2E62K macrophages by live imaging, more sensitive assays may be required to further evaluate this phenotype. Taken together, our findings raise the interesting possibility that motile macrophages in the TME provide a tumor invasion–promoting role.

Previous studies using mouse models have shown that macrophages and tumor cells exhibit a leader-follower type of interaction where macrophages lead tumor invasion (Wyckoff et al., 2007; Roussos et al., 2011). By utilizing high-resolution live imaging methods, our study reveals a role for macrophage protrusions in promoting tumor invasion by infiltrating into the tumor and promoting tumor cell invasion from the tumor mass. In in vitro spheroid models, both amoeboid and mesenchymal modes of macrophage migration have been implicated in infiltrating the tumor (Guiet et al., 2011). Our study shows that elongated Rac2-mediated protrusions of macrophages mediate early tumor infiltration. Our study adds to the growing body of evidence for the tumor-promoting role of macrophages and provides new insights into the potential mechanism of these effects. This model could be further exploited to study the signaling mechanisms by which macrophages promote early invasive behavior of tumor cells. Future studies should evaluate the relationship between macrophage polarization phenotype and motility in the TME and tumor invasion.

Zebrafish lines and maintenance

Animal Care and Use protocol M005405-A02 was approved by the University of Wisconsin-Madison College of Agricultural and Life Sciences (CALS) Animal Care and Use Committee. Adult zebrafish and larvae were maintained as previously described (Barros-Becker et al., 2017). Larvae were maintained in E3 containing 0.2 mM N-phenylthiourea (PTU; Sigma-Aldrich) beginning 24 h post fertilization to prevent pigment formation in the larvae. Larvae were anesthetized in E3 water containing 0.2 mg/ml Tricaine (ethyl 3-aminobenzoate; Sigma-Aldrich) prior to experimental procedures. The following fish lines provided in Table 1 were used for the study.

Table 1.

Zebrafish lines

Tg(mpeg1:GFP) Ellett et al. (2011)  
Tg(mpeg1:mCherry) Ellett et al. (2011)  
Tg(mpeg:mCherry-CAAX) Bojarczuk et al. (2016)  
Tg(mpx:mCherry-2A-rac2D57N) Deng et al. (2011)  
Tg(coro1a:GFP-rac2 D57N)psi92T This paper 
Tg(mpeg1:mCherry-2A-rac2WT) Rosowski et al. (2016)  
Tg(mpeg1:mCherry-2A-rac2E62K) This paper 
Tg(LysC:BFP) Rosowski et al. (2018)  
Tg(mpeg1:GFP- histone2b) Miskolci et al. (2019)  
Tg(mpeg1:GFP) Ellett et al. (2011)  
Tg(mpeg1:mCherry) Ellett et al. (2011)  
Tg(mpeg:mCherry-CAAX) Bojarczuk et al. (2016)  
Tg(mpx:mCherry-2A-rac2D57N) Deng et al. (2011)  
Tg(coro1a:GFP-rac2 D57N)psi92T This paper 
Tg(mpeg1:mCherry-2A-rac2WT) Rosowski et al. (2016)  
Tg(mpeg1:mCherry-2A-rac2E62K) This paper 
Tg(LysC:BFP) Rosowski et al. (2018)  
Tg(mpeg1:GFP- histone2b) Miskolci et al. (2019)  

Generation of Tg(mpeg1:mCherry-2A-rac2E62K) transgenic line

mCherry-2A-rac2WT fragment was cut from the existing construct (Deng et al., 2011) and inserted into pCRII TOPO vector via BamHI and NotI restriction sites (New England Biolabs, NEB). E62K (glutamic acid to lysine) mutation was generated by introducing a G to A point mutation at nucleotide 184 in the zebrafish Rac2 gene by QuikChange II Site-Directed Mutagenesis (Agilent kit) using primers 5′-CAG​TCT​GTC​ATA​ATC​TTT​CTG​TCC​GGC​TGT​ATC​CC-3′ and 5′-GGG​ATA​CAG​CCG​GAC​AGA​AAG​ATT​ATG​ACA​GAC​TG-3′ (anti-sense).

Primers were designed using Agilent primer design tool at https://www.agilent.com/store/primerDesignProgram.jsp. The point mutation was confirmed by sequencing. mCherry-2A-rac2E62K fragment was cut and inserted into Tol2-mpeg1 backbone vector (Ellett et al., 2011) using BamHI and NotI restriction sites. 3 nl of a mixture containing 25 ng/μl plasmid DNA, 35 ng/μl Transposase mRNA and 0.5X CutSmart Buffer (NEB) was microinjected into the cytoplasm of one-cell stage embryos. mRNA was in vitro–transcribed using mMESSAGE mMACHINE SP6 (Ambion kit) from a pCS2-transposase vector. Larvae were screened for mCherry expression in macrophages at 3 dpf and grown up to establish a stable line. Founders were identified by outcrossing to wild-type AB fish.

Generation of the Tg(coro1a:GFP-rac2D57N)psi92Tg transgenic line

A DNA sequence 7.03 kb upstream of the zebrafish coro1a translation start site was amplified by PCR as previously described (Li et al., 2012) and cloned into the tol2kit p5E-MCS vector (Kwan et al., 2007) using Gibson assembly (New England Biolabs). A dominant-negative variant of zebrafish rac2 harboring a point mutation (D57N, [Deng et al., 2011]) was cloned from a gBlock HiFi Gene Fragment (Integrated DNA Technologies) containing coding DNA sequences for GFP and rac2 D57N, separated by a viral P2A peptide (GFP-P2A-rac2 D57N). The GFP-P2A-rac2 D57N fragment was amplified using primers with Gibson overhangs.

(5′-GTA​TCG​ATA​AGC​TTG​ATA​TCG​AAT​TCA​CCA​TGG​TGT​CCA​AGG​GCG​AGG​A-3′ and 5′GTG​GAT​CCC​CCG​GGC​TGC​AGG​AAT​TTT​AGA​GCA​TCA​CGC​AGC​CCT-3′) and cloned into the tol2kit pME-MCS vector (Kwan et al., 2007) linearized with EcoRI using Gibson assembly. The final expression vector was assembled by combining p5E-coro1a, pME-GFP-P2A-rac2 D57N, p3E-polyA (Kwan et al., 2007), and pToneDest (Shin et al., 2016) using Gateway LR Clonase II (Thermo Fisher Scientific). Tol1 mRNA was synthesized from pToneTP vector (Shin et al., 2016) using mMessage T7 kit (Thermo Fisher Scientific). Both pToneDest and pToneTP were gifts from Nathan Lawson (plasmids #67691 and #67692; Addgene).

Zebrafish one-cell stage embryos were injected with Tol1 mRNA (40 ng/μl) and expression vector (15 ng/μl) and screened for GFP fluorescence at 2 dpf. Founders were identified based on GFP expression in immune cells and outcrossed to wildtype fish to generate stable F1 generations. Experiments were performed on larvae obtained from the F3 generation.

Zebrafish melanoma cell line maintenance

We utilized ZMel1-GFP or ZMel1-tomato cell lines generated from a primary zebrafish melanoma model expressing BRAF V600E in a p53−/− background (Heilmann et al., 2015; Campbell et al., 2021). ZMel1 cells were cultured in 10% FBS-DMEM +1% Glutamax +1% penicillin-streptomycin on 10 µg/ml fibronectin-coated plates in a sterile 28°C incubator. To harvest, cells were washed with sterile PBS, harvested with trypsin, and then counted with a hemocytometer.

ZMel1 hindbrain injection

We modified a previously established hindbrain injection model of melanoma cells (Roh-Johnson et al., 2017). Briefly, cells were harvested, washed in PBS, then resuspended in HBSS media at a concentration of 80 million cells/ml. Cells were then loaded into thin-walled glass capillary injection needles. The needle was then calibrated to inject 1 nl volume (15–20 cells). Anesthetized larvae were then placed on a 3% agarose plate made with E3 and microinjected with ZMel1 cells with a time range set to “millisecond” and pressure set to ∼15 psi on the microinjector.

Macrophage depletion

Macrophage depletion was performed by injection of clodronate or PBS liposomes (http://www.clodronateliposomes.com). At 2 dpf, anesthetized Tg(mpeg1:GFP) larvae were injected intravenously via the posterior caudal vein with 1 nl liposome-encapsulated clodronate (Rosowski et al., 2016) or PBS. After 2 h, liposome-injected larvae were injected with ZMel1 cells in the hindbrain ventricle.

Zebrafish tail wounding

Dechorionated larvae 3 dpf larvae were tricaine-anesthetized and transferred to milk-coated 35-mm petri dishes. Tail wounding was performed in 0.2 mg/ml tricaine/E3 solution by transecting the caudal tail fin distal to the notochord using a #10 scalpel blade. Larvae were then allowed to recover by placing them in E3 without tricaine at 28.5°C until imaging.

Image acquisition

Invasion assay

To assess invasion at the injection site, larvae were anesthetized and mounted in a zWEDGI device (Huemer et al., 2017) such that the dorsal side was close to the objective of the microscope and the hindbrain was fully visible. Z-series images (3.45 µm) of the hindbrain were acquired on a spinning disk confocal microscope (CSU-X; Yokogawa) with a confocal scan head on a Zeiss Observer Z.1 inverted microscope, Plan-Apochromat NA 0.8/20× objective, and a Photometrics Evolve EMCCD camera. Between imaging sessions, larvae were kept in E3 with PTU in individual 24-well plates. Individual larvae were followed throughout the time course. Images of larvae in the figures represent a 3D rendering of the images generated on Imaris 10.0.

Zebrafish tail wounding

To image zebrafish tail fin wounds, larvae were mounted on a zWEDGI device. Z-series images (3.45 µm) were acquired on a spinning disk confocal microscope (CSU-X; Yokogawa) with a confocal scan head on a Zeiss Observer Z.1 inverted microscope, Plan-Apochromat NA 0.8/20× objective, and a Photometrics Evolve EMCCD camera.

Time-lapse imaging

To characterize macrophage behavior around tumor cells, time-lapse imaging was performed at 24 hpi (Fig. 3) or 48 hpi (Fig. 4). Larvae were loaded on a zWEDGI device and embedded with 1.5% low melting agarose (Thermo Fisher Scientific). Agarose was allowed to solidify and Tricaine/E3-PTU solution was then added to the device. All time-lapse movies were acquired on a spinning disk confocal microscope (CSU-X; Yokogawa) with a confocal scan head on a Zeiss Observer Z.1 inverted microscope, Plan-Apochromat NA 0.8/20× objective, and a Photometrics Evolve EMCCD camera. To characterize interactions between macrophages and tumor cells prior to invasion (Fig. 2), 12-h time-lapse imaging was acquired every 5 min starting at 24 hpi. To quantify macrophage motility parameters, time-lapse movies were performed at 24 and 48 hpi for 2 h acquired every 3 min. Multi time-lapse images were acquired using Zen software (Zeiss).

Light sheet microscopy

To prepare the sample for imaging, an FEP tube with an inner diameter of 0.8 mm and an outer diameter of 1.2 mm was cleaned as described (Weber et al., 2021). 1.2% and 2% low melting point (LMP) agarose stocks were preheated to 75°C and then cooled down to 37°C. Tricaine methanesulfonate (MS222) stock solution was added to 1.2% LMP agarose to reach a final concentration of 200 mg/l. Zebrafish embryos were anesthetized in 1×E3 with MS222 at 200 mg/l and mounted with 1.2% LMP agarose inside cleaned FEP tubes. The ends of the tubes were sealed with 2% LMP agarose plugs. FEP tubes with mounted zebrafish embryos were kept in 1×E3 with MS222 before imaging. Sample tubes were loaded onto the sample holder and submerged into the sample chamber containing 1×E3 with MS222 heated up to 28°. Samples were imaged with 32× objective. Images were acquired every minute for 2 h. Z-stack data sets were acquired on a PCO Panda 4.2 M camera system running at 40 frames per second (FPS). Each image is 2,040 × 2,048 pixels at 16-bit pixel depth. Image acquisition is synchronized with a hardware transistor-transistor logic (TTL) triggering signal between the camera, stages, and laser engine system. Stage xyz motion is controlled by a PI 884-C controller and M110 stages. The laser engine is a Toptica CLE capable of running at 640 nm 50 mW, 561 nm 40 mW, 488 nm 50 mW, and 405 nm 40 mW.

Image processing

Following acquisition, images were corrected for background signal and analyzed using FIJI or Imaris 10.0 as indicated (Schindelin et al., 2012). Supplemental videos were processed and generated on Imaris and edited using Premier Pro.

Quantifications

Invaded ZMel1 cells and immune cell recruitment to ZMel1

Images acquired at 1, 24, and 48 hpi were 3D rendered on Imaris 10.0. Invaded tumor cells were quantified as cells that were fully separated from the injected tumor cell mass at 48 hpi. For neutrophil and macrophage recruitment, larvae expressing both mpeg1:GFP and lysC:BFP were used and cells present at 50 µm from the injected tumor mass were quantified.

ZMel1 area

Fold change in tumor area was quantified on Imaris 10.0. Surface function was used to create 3D surfaces on tumor regions using the fluorescent signal with background subtraction. The total area of the tumor cells from each larva was obtained. Fold change in area from 1 to 48 hpi was then calculated and plotted.

ZMel1 cell mass and macrophage morphology

Morphology analysis was performed in Fiji (Weber et al., 2021). To calculate tumor roundness, images were z-projected and a tumor fluorescent signal was used to threshold. Using the wand tool, only the tumor mass region was selected and roundness (roundness = 4 × area/π × major axis2) was measured. Similarly, to calculate the circularity of macrophages which indicates cell spread, images were first z-projected. A macrophage fluorescent signal was then used to the threshold and a wand tool was used to select macrophages within 30-µm distance from the tumor mass to measure circularity (circularity = 4 π[area/perimeter2]). To quantify macrophage protrusions number and length, images were 3D rendered on Imaris 10.0 software. The number of protrusions were measured by counting the number of extensions from the cell body. The length of protrusions was calculated by manually drawing a line from the cell body to the end of the extensions. To quantify macrophage protrusion length from LSM images, individual channel images from macrophage and tumor cell channels were first merged on FIJI. Merged images were then opened on Imaris 10.0 and protrusion length was quantified by manually drawing a line from the cell body to the end of the extensions.

Cell tracking

To track macrophage motility parameters, time-lapse images were loaded on Imaris 10.0. Spot function was used to track macrophages where spot size was defined as 6.5 µm diameter. Tracks were synthesized by manually tracking the cells through the duration of the time-lapse. Measurements such as track mean speed and track length were then obtained and plotted as average for each larva. Macrophages that interact with the tumor cluster were tracked for mpeg1:mCherry-2A-rac2E62K experiments.

Macrophage recruitment to wound

Macrophage recruitment 2 h after wound was quantified by counting cells in the caudal fin tissue area distal to the caudal vein loop using macrophage fluorescent signal using FIJI (Miskolci et al., 2019).

Reanalysis of zebrafish melanoma spatial transcriptomics data

Zebrafish melanoma spatially resolved transcriptomics data from [PMID: 34725363] was analyzed as previously described (Hunter et al., 2021). All analysis was done in R (version 4.3.1) using Seurat [PMID: 37231261] (versions 4.4.0 and 5.3.1) (Hao et al., 2024). Briefly, raw counts were normalized using SCTransform [PMID: 31870423] (Hafemeister and Satija, 2019). The three biological samples were integrated using the Seurat workflow for integration of SCTransform-normalized data. PCA and UMAP dimensionality reduction were calculated using default parameters and cell type annotations were done using expression of typical marker genes. Spatial gene expression was plotted using the Seurat function SpatialPlot applied to the normalized counts. The Wilcoxon rank sum test was used to calculate differences in tumor expression between genes. The complete dataset is available from GEO (accession number GSE159709).

Statistical analysis

All graphs were plotted on Graphpad (Prism). Different colored data points represent replicates, defined as clutches of larvae spawned on different days. All statistical analyses were performed in collaboration with a statistician. Count phenomenon (number of protrusions, invasion, macrophages/neutrophils recruited, infiltrating tracks) were analyzed using Poisson regression with cluster-robust standard errors to account for subsampling (larvae from the same clutch, macrophages within larvae). If count data exhibited greater variation than predicted from a Poisson distribution, then quasi-likelihood was used to fit the (Poisson) regression models with standard errors inflated by an estimated multiplicative factor (>1) of dispersion. Continuous outcomes (circularity, area, roundness, and motility) were analyzed using linear models with cluster-robust standard errors. Responses such as area fold change were log-transformed prior to fitting the linear model. Experimental results for the time course experiment were fit using mixed-effect models (for the Poisson or Gaussian family, depending on whether the response was a discrete count or continuous) to account for repeated measures over time on the same unit. Half-normal plots with a simulated envelope and plots of residuals versus fitted values were used to check the adequacy of fitted models.

Online supplemental material

Fig. S1 shows the early interactions between neutrophils, macrophages, and tumor cells. Light sheet microscopy was used to image dynamic interactions between macrophage protrusions and tumor cells during invasion. Fig. S2 shows the impact of the global depletion of Rac2 on tumor invasion. Fig. S3 is a characterization of the role of neutrophils in tumor invasion by inhibiting neutrophil recruitment to the tumor by expressing the dominant inhibitory mutation Rac2D57N. Fig. S3 also shows macrophage recruitment to a tissue wound with expression of the dominant activating Rac2E62K mutation in macrophages. Video 1 shows imaging macrophage motility in the tumor microenvironment. Video 2 shows LSM imaging of macrophage motility and tumor invasion. Video 3 shows the effect of Rac2E62K on macrophage motility in the TME.

All relevant data are included in the manuscript.

We thank Alexandra Fister and Julie Rindy for technical assistance and members of the Huttenlocher lab for helpful discussions. We also thank Joe Li, Liz Haynes, and Kurt Weiss for their assistance with light sheet microscopy. We would also like to thank Tatjana Piotrowski for sharing the Tg(coro1a:GFP-rac2 D57N)psi92T line.

The research was supported by National Institutes of Health R01-CA085862 to A. Huttenlocher, K99-GM138699 to V. Misckolci. We acknowledge support for the light sheet imaging from the Beckman foundation (K.W. Eliceiri).

Author contributions: G. Ramakrishnan: Conceptualization, Data curation, Formal analysis, Investigation, Methodology, Project administration, Validation, Visualization, Writing - original draft, Writing - review & editing, V. Miskolci: Investigation, Writing - review & editing, M. Hunter: Formal analysis, Investigation, Visualization, M.A. Giese: Writing - review & editing, D. Münch: Resources, Y. Hou: Investigation, K.W. Eliceiri: Methodology, Resources, Writing - review & editing, M.R. Lasarev: Formal analysis, Writing - review & editing, R.M. White: Supervision, Writing - review & editing, A. Huttenlocher: Conceptualization, Funding acquisition, Investigation, Methodology, Project administration, Resources, Supervision, Visualization, Writing - original draft, Writing - review & editing.

Akhmanova
,
M.
,
S.
Emtenani
,
D.
Krueger
,
A.
Gyoergy
,
M.
Guarda
,
M.
Vlasov
,
F.
Vlasov
,
A.
Akopian
,
A.
Ratheesh
,
S.
De Renzis
, and
D.E.
Siekhaus
.
2022
.
Cell division in tissues enables macrophage infiltration
.
Science
.
376
:
394
396
.
Arwert
,
E.N.
,
A.S.
Harney
,
D.
Entenberg
,
Y.
Wang
,
E.
Sahai
,
J.W.
Pollard
, and
J.S.
Condeelis
.
2018
.
A unidirectional transition from Migratory to perivascular macrophage is required for tumor cell intravasation
.
Cell Rep.
23
:
1239
1248
.
Barros-Becker
,
F.
,
P.-Y.
Lam
,
R.
Fisher
, and
A.
Huttenlocher
.
2017
.
Live imaging reveals distinct modes of neutrophil and macrophage migration within interstitial tissues
.
J. Cell Sci.
130
:
3801
3808
.
Bojarczuk
,
A.
,
K.A.
Miller
,
R.
Hotham
,
A.
Lewis
,
N.V.
Ogryzko
,
A.A.
Kamuyango
,
H.
Frost
,
R.H.
Gibson
,
E.
Stillman
,
R.C.
May
, et al
.
2016
.
Cryptococcus neoformans intracellular proliferation and capsule size determines early macrophage control of infection
.
Sci. Rep.
6
:
21489
.
Campbell
,
N.R.
,
A.
Rao
,
M.V.
Hunter
,
M.K.
Sznurkowska
,
L.
Briker
,
M.
Zhang
,
M.
Baron
,
S.
Heilmann
,
M.
Deforet
,
C.
Kenny
, et al
.
2021
.
Cooperation between melanoma cell states promotes metastasis through heterotypic cluster formation
.
Dev. Cell
.
56
:
2808
2825.e10
.
Chen
,
Y.
,
Y.
Song
,
W.
Du
,
L.
Gong
,
H.
Chang
, and
Z.
Zou
.
2019
.
Tumor-associated macrophages: An accomplice in solid tumor progression
.
J. Biomed. Sci.
26
:
78
.
Deng
,
Q.
,
S.K.
Yoo
,
P.J.
Cavnar
,
J.M.
Green
, and
A.
Huttenlocher
.
2011
.
Dual roles for Rac2 in neutrophil motility and active retention in zebrafish hematopoietic tissue
.
Dev. Cell
.
21
:
735
745
.
Dillekås
,
H.
,
M.S.
Rogers
, and
O.
Straume
.
2019
.
Are 90% of deaths from cancer caused by metastases?
Cancer Med.
8
:
5574
5576
.
Ellett
,
F.
,
L.
Pase
,
J.W.
Hayman
,
A.
Andrianopoulos
, and
G.J.
Lieschke
.
2011
.
mpeg1 promoter transgenes direct macrophage-lineage expression in zebrafish
.
Blood
.
117
:
e49
e56
.
Giese
,
M.A.
,
L.E.
Hind
, and
A.
Huttenlocher
.
2019
.
Neutrophil plasticity in the tumor microenvironment
.
Blood
.
133
:
2159
2167
.
Gonzalez
,
H.
,
C.
Hagerling
, and
Z.
Werb
.
2018
.
Roles of the immune system in cancer: From tumor initiation to metastatic progression
.
Genes Dev.
32
:
1267
1284
.
Goswami
,
S.
,
E.
Sahai
,
J.B.
Wyckoff
,
M.
Cammer
,
D.
Cox
,
F.J.
Pixley
,
E.R.
Stanley
,
J.E.
Segall
, and
J.S.
Condeelis
.
2005
.
Macrophages promote the invasion of breast carcinoma cells via a colony-stimulating factor-1/epidermal growth factor paracrine loop
.
Cancer Res.
65
:
5278
5283
.
Gui
,
P.
,
M.
Ben-Neji
,
E.
Belozertseva
,
F.
Dalenc
,
C.
Franchet
,
J.
Gilhodes
,
A.
Labrousse
,
E.
Bellard
,
M.
Golzio
,
R.
Poincloux
, et al
.
2018
.
The protease-dependent mesenchymal migration of tumor-associated macrophages as a target in cancer immunotherapy
.
Cancer Immunol. Res.
6
:
1337
1351
.
Guiet
,
R.
,
E.
Van Goethem
,
C.
Cougoule
,
S.
Balor
,
A.
Valette
,
T.
Al Saati
,
C.A.
Lowell
,
V.
Le Cabec
, and
I.
Maridonneau-Parini
.
2011
.
The process of macrophage migration promotes matrix metalloproteinase-independent invasion by tumor cells
.
J. Immunol.
187
:
3806
3814
.
Hafemeister
,
C.
, and
R.
Satija
.
2019
.
Normalization and variance stabilization of single-cell RNA-seq data using regularized negative binomial regression
.
Genome Biol.
20
:
296
.
Hanna
,
S.J.
,
K.
McCoy-Simandle
,
E.
Leung
,
A.
Genna
,
J.
Condeelis
, and
D.
Cox
.
2019
.
Tunneling nanotubes, a novel mode of tumor cell-macrophage communication in tumor cell invasion
.
J. Cell Sci.
132
:
jcs223321
.
Hao
,
Y.
,
T.
Stuart
,
M.H.
Kowalski
,
S.
Choudhary
,
P.
Hoffman
,
A.
Hartman
,
A.
Srivastava
,
G.
Molla
,
S.
Madad
,
C.
Fernandez-Granda
, and
R.
Satija
.
2024
.
Dictionary learning for integrative, multimodal and scalable single-cell analysis
.
Nat. Biotechnol.
42
:
293
304
.
Heilmann
,
S.
,
K.
Ratnakumar
,
E.
Langdon
,
E.
Kansler
,
I.
Kim
,
N.R.
Campbell
,
E.
Perry
,
A.
McMahon
,
C.
Kaufman
,
E.
van Rooijen
, et al
.
2015
.
A quantitative system for studying metastasis using transparent zebrafish
.
Cancer Res.
75
:
4272
4282
.
Hsu
,
A.P.
,
A.
Donkó
,
M.E.
Arrington
,
M.
Swamydas
,
D.
Fink
,
A.
Das
,
O.
Escobedo
,
V.
Bonagura
,
P.
Szabolcs
,
H.N.
Steinberg
, et al
.
2019
.
Dominant activating RAC2 mutation with lymphopenia, immunodeficiency, and cytoskeletal defects
.
Blood
.
133
:
1977
1988
.
Huemer
,
K.
,
J.M.
Squirrell
,
R.
Swader
,
D.C.
LeBert
,
A.
Huttenlocher
, and
K.W.
Eliceiri
.
2017
.
zWEDGI: Wounding and entrapment device for imaging live zebrafish larvae
.
Zebrafish
.
14
:
42
50
.
Hunter
,
M.V.
,
R.
Moncada
,
J.M.
Weiss
,
I.
Yanai
, and
R.M.
White
.
2021
.
Spatially resolved transcriptomics reveals the architecture of the tumor-microenvironment interface
.
Nat. Commun.
12
:
6278
.
Joshi
,
S.
,
A.R.
Singh
,
M.
Zulcic
,
L.
Bao
,
K.
Messer
,
T.
Ideker
,
J.
Dutkowski
, and
D.L.
Durden
.
2014
.
Rac2 controls tumor growth, metastasis and M1-M2 macrophage differentiation in vivo
.
PLoS One
.
9
:e95893.
Kitamura
,
T.
,
B.-Z.
Qian
, and
J.W.
Pollard
.
2015
.
Immune cell promotion of metastasis
.
Nat. Rev. Immunol.
15
:
73
86
.
Kwan
,
K.M.
,
E.
Fujimoto
,
C.
Grabher
,
B.D.
Mangum
,
M.E.
Hardy
,
D.S.
Campbell
,
J.M.
Parant
,
H.J.
Yost
,
J.P.
Kanki
, and
C.-B.
Chien
.
2007
.
The Tol2kit: A multisite gateway-based construction kit for Tol2 transposon transgenesis constructs
.
Dev. Dyn.
236
:
3088
3099
.
Li
,
L.
,
B.
Yan
,
Y.-Q.
Shi
,
W.-Q.
Zhang
, and
Z.-L.
Wen
.
2012
.
Live imaging reveals differing roles of macrophages and neutrophils during zebrafish tail fin regeneration
.
J. Biol. Chem.
287
:
25353
25360
.
Linde
,
N.
,
M.
Casanova-Acebes
,
M.S.
Sosa
,
A.
Mortha
,
A.
Rahman
,
E.
Farias
,
K.
Harper
,
E.
Tardio
,
I.
Reyes Torres
,
J.
Jones
, et al
.
2018
.
Macrophages orchestrate breast cancer early dissemination and metastasis
.
Nat. Commun.
9
:
21
.
Mishra
,
A.K.
,
M.
Rodriguez
,
A.Y.
Torres
,
M.
Smith
,
A.
Rodriguez
,
A.
Bond
,
M.A.
Morrissey
, and
D.J.
Montell
.
2023
.
Hyperactive Rac stimulates cannibalism of living target cells and enhances CAR-M-mediated cancer cell killing
.
Proc. Natl. Acad. Sci. USA
.
120
:e2310221120.
Miskolci
,
V.
,
J.
Squirrell
,
J.
Rindy
,
W.
Vincent
,
J.D.
Sauer
,
A.
Gibson
,
K.W.
Eliceiri
, and
A.
Huttenlocher
.
2019
.
Distinct inflammatory and wound healing responses to complex caudal fin injuries of larval zebrafish
.
Elife
.
8
:e45976.
Miskolci
,
V.
,
B.
Wu
,
Y.
Moshfegh
,
D.
Cox
, and
L.
Hodgson
.
2016
.
Optical tools to study the isoform-specific roles of small GTPases in immune cells
.
J. Immunol.
196
:
3479
3493
.
Paterson
,
N.
, and
T.
Lämmermann
.
2022
.
Macrophage network dynamics depend on haptokinesis for optimal local surveillance
.
Elife
.
11
:e75354.
Roh-Johnson
,
M.
,
A.N.
Shah
,
J.A.
Stonick
,
K.R.
Poudel
,
J.
Kargl
,
G.H.
Yang
,
J.
di Martino
,
R.E.
Hernandez
,
C.E.
Gast
,
L.R.
Zarour
, et al
.
2017
.
Macrophage-dependent cytoplasmic transfer during melanoma invasion In Vivo
.
Dev. Cell
.
43
:
549
562.e6
.
Rosowski
,
E.E.
,
Q.
Deng
,
N.P.
Keller
, and
A.
Huttenlocher
.
2016
.
Rac2 functions in both neutrophils and macrophages to mediate motility and host defense in larval zebrafish
.
J. Immunol.
197
:
4780
4790
.
Rosowski
,
E.E.
,
N.
Raffa
,
B.P.
Knox
,
N.
Golenberg
,
N.P.
Keller
, and
A.
Huttenlocher
.
2018
.
Macrophages inhibit Aspergillus fumigatus germination and neutrophil-mediated fungal killing
.
PLoS Pathog.
14
:e1007229.
Roussos
,
E.T.
,
M.
Balsamo
,
S.K.
Alford
,
J.B.
Wyckoff
,
B.
Gligorijevic
,
Y.
Wang
,
M.
Pozzuto
,
R.
Stobezki
,
S.
Goswami
,
J.E.
Segall
, et al
.
2011
.
Mena invasive (MenaINV) promotes multicellular streaming motility and transendothelial migration in a mouse model of breast cancer
.
J. Cell Sci.
124
:
2120
2131
.
Schindelin
,
J.
,
I.
Arganda-Carreras
,
E.
Frise
,
V.
Kaynig
,
M.
Longair
,
T.
Pietzsch
,
S.
Preibisch
,
C.
Rueden
,
S.
Saalfeld
,
B.
Schmid
, et al
.
2012
.
Fiji: An open-source platform for biological-image analysis
.
Nat. Methods
.
9
:
676
682
.
Shin
,
M.
,
I.
Male
,
T.J.
Beane
,
J.A.
Villefranc
,
F.O.
Kok
,
L.J.
Zhu
, and
N.D.
Lawson
.
2016
.
Vegfc acts through ERK to induce sprouting and differentiation of trunk lymphatic progenitors
.
Development
.
143
:
3785
3795
.
Weber
,
M.
,
J.
Huisken
,
A.
Schlaeppi
, and
A.
Graves
.
2021
.
Light sheet microscopy of fast cardiac dynamics in zebrafish embryos
.
J. Vis. Exp.
174
:e62741.
Weiss
,
J.M.
,
M.V.
Hunter
,
N.M.
Cruz
,
A.
Baggiolini
,
M.
Tagore
,
Y.
Ma
,
S.
Misale
,
M.
Marasco
,
T.
Simon-Vermot
,
N.R.
Campbell
, et al
.
2022
.
Anatomic position determines oncogenic specificity in melanoma
.
Nature
.
604
:
354
361
.
Wheeler
,
A.P.
,
C.M.
Wells
,
S.D.
Smith
,
F.M.
Vega
,
R.B.
Henderson
,
V.L.
Tybulewicz
, and
A.J.
Ridley
.
2006
.
Rac1 and Rac2 regulate macrophage morphology but are not essential for migration
.
J. Cell Sci.
119
:
2749
2757
.
Wyckoff
,
J.B.
,
Y.
Wang
,
E.Y.
Lin
,
J.F.
Li
,
S.
Goswami
,
E.R.
Stanley
,
J.E.
Segall
,
J.W.
Pollard
, and
J.
Condeelis
.
2007
.
Direct visualization of macrophage-assisted tumor cell intravasation in mammary tumors
.
Cancer Res.
67
:
2649
2656
.
Xue
,
Q.
,
S.R.S.
Varady
,
T.Q.A.
Waddell
,
M.R.
Roman
,
J.
Carrington
, and
M.
Roh-Johnson
.
2023
.
Lack of Paxillin phosphorylation promotes single-cell migration in vivo
.
J. Cell Biol.
222
:e202206078.

Author notes

Disclosures: All authors have completed and submitted the ICMJE Form for Disclosure of Potential Conflicts of Interest. R.M. White reported personal fees from Qiagen outside the submitted work. No other disclosures were reported.

V. Miskolci’s current affiliation is Department of Microbiology, Biochemistry and Molecular Genetics, New Jersey Medical School, Rutgers Health, Newark, NJ, USA.

This article is distributed under the terms of an Attribution–Noncommercial–Share Alike–No Mirror Sites license for the first six months after the publication date (see http://www.rupress.org/terms/). After six months it is available under a Creative Commons License (Attribution–Noncommercial–Share Alike 4.0 International license, as described at https://creativecommons.org/licenses/by-nc-sa/4.0/).