Building Tools for Machine Learning and Artificial Intelligence in Cancer Research: Best Practices and a Case Study with the PathML Toolkit for Computational Pathology.

Publication Type Academic Article
Authors Rosenthal J, Carelli R, Omar M, Brundage D, Halbert E, Nyman J, Hari S, Van Allen E, Marchionni L, Umeton R, Loda M
Journal Mol Cancer Res
Volume 20
Issue 2
Pagination 202-206
Date Published 12/08/2021
ISSN 1557-3125
Keywords Artificial Intelligence, Machine Learning, Neoplasms, Research Design
Abstract Imaging datasets in cancer research are growing exponentially in both quantity and information density. These massive datasets may enable derivation of insights for cancer research and clinical care, but only if researchers are equipped with the tools to leverage advanced computational analysis approaches such as machine learning and artificial intelligence. In this work, we highlight three themes to guide development of such computational tools: scalability, standardization, and ease of use. We then apply these principles to develop PathML, a general-purpose research toolkit for computational pathology. We describe the design of the PathML framework and demonstrate applications in diverse use cases. PathML is publicly available at www.pathml.com.
DOI 10.1158/1541-7786.MCR-21-0665
PubMed ID 34880124
PubMed Central ID PMC9127877
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