计算机科学
数字化病理学
医学
队列
肿瘤科
精确肿瘤学
精密医学
人工智能
内科学
机器学习
癌症
医学物理学
病理
作者
Eytan Ruppin,Danh-Tai Hoang,Gal Dinstag,Leandro C. Hermida,Doreen S. Ben-Zvi,Efrat Elis,Katherine Caley,Stephen‐John Sammut,Sanju Sinha,Neelam Sinha,Christopher H. Dampier,Chani Stossel,Tejas Patil,Arun Rajan,Wiem Lassoued,Julius Strauss,Shania Bailey,Clint Allen,Jason M. Redman,Tuvik Beker
出处
期刊:Research Square - Research Square
日期:2023-09-15
被引量:4
标识
DOI:10.21203/rs.3.rs-3193270/v1
摘要
Advances in artificial intelligence have paved the way for leveraging hematoxylin and eosin (H&E)-stained tumor slides for precision oncology. We present ENLIGHT-DeepPT, an approach for predicting response to multiple targeted and immunotherapies from H&E-slides. In difference from existing approaches that aim to predict treatment response directly from the slides, ENLIGHT-DeepPT is an indirect two-step approach consisting of (1) DeepPT, a new deep-learning framework that predicts genome-wide tumor mRNA expression from slides, and (2) ENLIGHT, which predicts response based on the DeepPT inferred expression values. DeepPT successfully predicts transcriptomics in all 16 TCGA cohorts tested and generalizes well to two independent datasets. Our key contribution is showing that ENLIGHT-DeepPT successfully predicts true responders in five independent patients' cohorts involving four different treatments spanning six cancer types with an overall odds ratio of 2.44, increasing the baseline response rate by 43.47% among predicted responders, without the need for any treatment data for training. Furthermore, its prediction accuracy on these datasets is comparable to a supervised approach predicting the response directly from the images, which needs to be trained and tested on the same cohort. ENLIGHT-DeepPT future application could provide clinicians with rapid treatment recommendations to an array of different therapies and importantly, may contribute to advancing precision oncology in developing countries.
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