Machine learning algorithms to predict financial toxicity associated with breast cancer treatment.

Authors

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Chris Sidey-Gibbons

The University of Texas MD Anderson Cancer Center, Houston, TX

Chris Sidey-Gibbons , Malke Asaad , André Pfob , Stefanos Boukovalas , Yu-Li Lin , Anaeze Offodile II

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Poster Details

Meeting

2020 ASCO Virtual Scientific Program

Session Type

Poster Session

Session Title

Care Delivery and Regulatory Policy

Track

Care Delivery and Quality Care

Sub Track

Clinical Informatics/Advanced Algorithms/Machine Learning

Citation

J Clin Oncol 38: 2020 (suppl; abstr 2047)

DOI

10.1200/JCO.2020.38.15_suppl.2047

Abstract #

2047

Poster Bd #

39

Abstract Disclosures

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