形态学(生物学)
深度学习
人工智能
计算机科学
计算生物学
生物
动物
作者
Benoît Schmauch,Loïc Herpin,Antoine Olivier,Thomas Duboudin,Rémy Dubois,Lucie Gillet,Jean-Baptiste Schiratti,Valentina Di Proietto,Delphine Le Corre,A Bourgoin,Julien Taı̈eb,Jean‐François Emile,Wolf H. Fridman,Elodie Pronier,Pierre Laurent‐Puig,Éric Durand
标识
DOI:10.1101/2024.07.22.604083
摘要
Abstract Spatial Transcriptomics (spTx) offers unprecedented insights into the spatial arrangement of the tumor microenvironment, tumor initiation/progression and identification of new therapeutic target candidates. However, spTx remains complex and unlikely to be routinely used in the near future. Hematoxylin and eosin (H&E) stained histological slides, on the other hand, are routinely generated for a large fraction of cancer patients. Here, we present a novel deep learning-based approach for multiscale integration of spTx with tumor morphology (MISO). We trained MISO to predict spTx from H&E on a new unpublished dataset of 72 10X Genomics Visium samples, and derived a novel estimate of the upper bound on the achievable performance. We demonstrate that MISO enables near single-cell-resolution, spatially-resolved gene expression prediction from H&E. In addition, MISO provides an effective patient representation framework that enables downstream predictive tasks such as molecular phenotyping or MSI prediction.
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