Using machine learning on real-world data to predict metastatic status.

Authors

null

Foad H. Green

Syapse, San Francisco, CA

Foad H. Green , Hu T. Huang , Michelle Lerman , Mary Tran , Vinod Subramanian , Joshua Loving , Matthew J. Rioth

Sign-In to See More Abstracts, Journal Articles, Posters, Videos and Slides and to Bookmark Your Favorite Content.

Disclaimer

This material on this page is ©2024 American Society of Clinical Oncology, all rights reserved. Licensing available upon request. For more information, please contact licensing@asco.org

Poster Details

Meeting

2022 ASCO Annual Meeting

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 40, 2022 (suppl 16; abstr 1550)

DOI

10.1200/JCO.2022.40.16_suppl.1550

Abstract #

1550

Poster Bd #

143

Abstract Disclosures

Similar Posters

Poster

2020 ASCO Virtual Scientific Program

Predicting the risk of VISIT emergency department (ED) in lung cancer patients using machine learning.

Predicting the risk of VISIT emergency department (ED) in lung cancer patients using machine learning.

First Author: Pablo Rodriguez-Brazzarola

First Author: Jeffrey J. Kirshner