Prospective validation of machine learning-based approaches to predict potentially preventable emergency visits and hospitalizations.

Authors

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Isabel D Friesner

University of California, San Francisco, San Francisco, CA

Isabel D Friesner, Kevin Miao, Justice Dahle, Travis Zack, Jean Feng, Sasha Yousefi, Bilwa Buchake, Parambir Kaur, Pelin Cinar, Wesley Allen Kidder, Anobel Y. Odisho, Julian C. Hong

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Poster Details

Meeting

2023 ASCO Quality Care Symposium

Session Type

Poster Session

Session Title

Poster Session A

Track

Quality, Safety, and Implementation Science,Cost, Value, and Policy,Patient Experience,Survivorship

Sub Track

Prospective Risk Assessment and Reduction

Citation

JCO Oncol Pract 19, 2023 (suppl 11; abstr 404)

DOI

10.1200/OP.2023.19.11_suppl.404

Abstract #

404

Poster Bd #

H14

Abstract Disclosures

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