Modeling Dense Multimodal Interactions Between Biological Pathways and Histology for Survival Prediction
arxiv(2023)
摘要
Integrating whole-slide images (WSIs) and bulk transcriptomics for predicting
patient survival can improve our understanding of patient prognosis. However,
this multimodal task is particularly challenging due to the different nature of
these data: WSIs represent a very high-dimensional spatial description of a
tumor, while bulk transcriptomics represent a global description of gene
expression levels within that tumor. In this context, our work aims to address
two key challenges: (1) how can we tokenize transcriptomics in a semantically
meaningful and interpretable way?, and (2) how can we capture dense multimodal
interactions between these two modalities? Specifically, we propose to learn
biological pathway tokens from transcriptomics that can encode specific
cellular functions. Together with histology patch tokens that encode the
different morphological patterns in the WSI, we argue that they form
appropriate reasoning units for downstream interpretability analyses. We
propose fusing both modalities using a memory-efficient multimodal Transformer
that can model interactions between pathway and histology patch tokens. Our
proposed model, SURVPATH, achieves state-of-the-art performance when evaluated
against both unimodal and multimodal baselines on five datasets from The Cancer
Genome Atlas. Our interpretability framework identifies key multimodal
prognostic factors, and, as such, can provide valuable insights into the
interaction between genotype and phenotype, enabling a deeper understanding of
the underlying biological mechanisms at play. We make our code public at:
https://github.com/ajv012/SurvPath.
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