精密医学
数字化病理学
人工智能
计算机科学
外科病理学
免疫系统
免疫疗法
机器学习
医学物理学
医学
生物信息学
病理
生物
免疫学
作者
Viktor H. Koelzer,Korsuk Sirinukunwattana,Jens Rittscher,Kirsten D. Mertz
出处
期刊:Virchows Archiv
[Springer Nature]
日期:2018-11-23
卷期号:474 (4): 511-522
被引量:105
标识
DOI:10.1007/s00428-018-2485-z
摘要
Abstract Clinical success of immunotherapy is driving the need for new prognostic and predictive assays to inform patient selection and stratification. This requirement can be met by a combination of computational pathology and artificial intelligence. Here, we critically assess computational approaches supporting the development of a standardized methodology in the assessment of immune-oncology biomarkers, such as PD-L1 and immune cell infiltrates. We examine immunoprofiling through spatial analysis of tumor-immune cell interactions and multiplexing technologies as a predictor of patient response to cancer treatment. Further, we discuss how integrated bioinformatics can enable the amalgamation of complex morphological phenotypes with the multiomics datasets that drive precision medicine. We provide an outline to machine learning (ML) and artificial intelligence tools and illustrate fields of application in immune-oncology, such as pattern-recognition in large and complex datasets and deep learning approaches for survival analysis. Synergies of surgical pathology and computational analyses are expected to improve patient stratification in immuno-oncology. We propose that future clinical demands will be best met by (1) dedicated research at the interface of pathology and bioinformatics, supported by professional societies, and (2) the integration of data sciences and digital image analysis in the professional education of pathologists.
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