Machine learning-based approach to the risk assessment of potentially preventable outpatient cancer treatment-related emergency care and hospitalizations.

Authors

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Kevin Miao

University of California, San Francisco, San Francisco, CA

Kevin Miao, Justice Dahle, Sasha Yousefi, Bilwa Buchake, Parambir Kaur, Anobel Y. Odisho, Pelin Cinar, Julian C. Hong

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Poster Details

Meeting

2021 ASCO Quality Care Symposium

Session Type

Poster Session

Session Title

Poster Session B: Patient Experience; Quality, Safety, and Implementation Science; Technology and Innovation in Quality of Care

Track

Technology and Innovation in Quality of Care,Patient Experience,Quality, Safety, and Implementation Science,Cost, Value, and Policy,Health Care Access, Equity, and Disparities

Sub Track

Use of IT/Analytics to Improve Quality

Citation

J Clin Oncol 39, 2021 (suppl 28; abstr 333)

DOI

10.1200/JCO.2020.39.28_suppl.333

Abstract #

333

Poster Bd #

F11

Abstract Disclosures

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