Towards data-driven decision-making for breast cancer patients undergoing mastectomy and reconstruction: Prediction of individual patient-reported outcomes at two-year follow-up using machine learning.

Authors

null

André Pfob

PROVE Center, Harvard Medical School & Brigham and Women’s Hospital, Boston, MA

André Pfob , Babak Mehrara , Jonas Nelson , Edwin G. Wilkins , Andrea Pusic , Chris Sidey-Gibbons

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

2020 ASCO Virtual Scientific Program

Session Type

Poster Discussion Session

Session Title

Breast Cancer—Local/Regional/Adjuvant

Track

Breast Cancer

Sub Track

Local-Regional Therapy

Clinical Trial Registration Number

NCT01723423

Citation

J Clin Oncol 38: 2020 (suppl; abstr 520)

DOI

10.1200/JCO.2020.38.15_suppl.520

Abstract #

520

Poster Bd #

12

Abstract Disclosures

Similar Posters

First Author: Thomas J Roberts

First Author: Benjamin Glass

Poster

2020 ASCO Virtual Scientific Program

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

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

First Author: Chris Sidey-Gibbons