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Machine learning in computational histopathology: Challenges and opportunities

2023·62 Zitationen·Genes Chromosomes and CancerOpen Access
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62

Zitationen

3

Autoren

2023

Jahr

Abstract

Digital histopathological images, high-resolution images of stained tissue samples, are a vital tool for clinicians to diagnose and stage cancers. The visual analysis of patient state based on these images are an important part of oncology workflow. Although pathology workflows have historically been conducted in laboratories under a microscope, the increasing digitization of histopathological images has led to their analysis on computers in the clinic. The last decade has seen the emergence of machine learning, and deep learning in particular, a powerful set of tools for the analysis of histopathological images. Machine learning models trained on large datasets of digitized histopathology slides have resulted in automated models for prediction and stratification of patient risk. In this review, we provide context for the rise of such models in computational histopathology, highlight the clinical tasks they have found success in automating, discuss the various machine learning techniques that have been applied to this domain, and underscore open problems and opportunities.

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Autoren

Institutionen

Themen

AI in cancer detectionRadiomics and Machine Learning in Medical ImagingDigital Imaging for Blood Diseases
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