Spatially aware deep learning reveals tumor heterogeneity patterns that encode distinct kidney cancer states

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Abstract

Clear cell renal cell carcinoma (ccRCC) is molecularly heterogeneous, immune infiltrated, and selectively sensitive to immune checkpoint inhibition (ICI). However, the joint tumor-immune states that mediate ICI response remain elusive. We develop spatially aware deep-learning models of tumor and immune features to learn representations of ccRCC tumors using diagnostic whole-slide images (WSIs) in untreated and treated contexts (n = 1,102 patients). We identify patterns of grade heterogeneity in WSIs not achievable through human pathologist analysis, and these graph-based “microheterogeneity” structures associate with PBRM1 loss of function and with patient outcomes. Joint analysis of tumor phenotypes and immune infiltration identifies a subpopulation of highly infiltrated, microheterogeneous tumors responsive to ICI. In paired multiplex immunofluorescence images of ccRCC, microheterogeneity associates with greater PD1 activation in CD8+ lymphocytes and increased tumor-immune interactions. Our work reveals spatially interacting tumor-immune structures underlying ccRCC biology that may also inform selective response to ICI.

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Nyman, J., Denize, T., Bakouny, Z., Labaki, C., Titchen, B. M., Bi, K., … Van Allen, E. M. (2023). Spatially aware deep learning reveals tumor heterogeneity patterns that encode distinct kidney cancer states. Cell Reports Medicine, 4(9). https://doi.org/10.1016/j.xcrm.2023.101189

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