深度学习
生物标志物发现
人工智能
特征(语言学)
癌症
计算机科学
基因组学
模式
生物
疾病
机器学习
计算生物学
生物信息学
病理
医学
内科学
基因组
蛋白质组学
基因
社会科学
生物化学
语言学
哲学
社会学
作者
Richard J. Chen,Ming Y. Lu,Drew F. K. Williamson,Tiffany Chen,Jana Lipková,Zahra Noor,Muhammad Shaban,Maha Shady,Mane Williams,Bumjin Joo,Faisal Mahmood
出处
期刊:Cancer Cell
[Cell Press]
日期:2022-08-01
卷期号:40 (8): 865-878.e6
被引量:255
标识
DOI:10.1016/j.ccell.2022.07.004
摘要
The rapidly emerging field of computational pathology has demonstrated promise in developing objective prognostic models from histology images. However, most prognostic models are either based on histology or genomics alone and do not address how these data sources can be integrated to develop joint image-omic prognostic models. Additionally, identifying explainable morphological and molecular descriptors from these models that govern such prognosis is of interest. We use multimodal deep learning to jointly examine pathology whole-slide images and molecular profile data from 14 cancer types. Our weakly supervised, multimodal deep-learning algorithm is able to fuse these heterogeneous modalities to predict outcomes and discover prognostic features that correlate with poor and favorable outcomes. We present all analyses for morphological and molecular correlates of patient prognosis across the 14 cancer types at both a disease and a patient level in an interactive open-access database to allow for further exploration, biomarker discovery, and feature assessment.
科研通智能强力驱动
Strongly Powered by AbleSci AI