A deep-learning radiomics model for predicting survival in early-stage non-small cell lung cancer.

Authors

Tafadzwa Chaunzwa

Tafadzwa Lawrence Chaunzwa

Computational Imaging and Bioinformatics Laboratory, Harvard Medical School, Boston, MA

Tafadzwa Lawrence Chaunzwa , David C. Christiani , Michael Lanuti , Andrea Shafer , Nancy Diao , Raymond H. Mak , Hugo Aerts

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Poster Details

Meeting

2018 ASCO Annual Meeting

Session Type

Poster Session

Session Title

Lung Cancer—Non-Small Cell Local-Regional/Small Cell/Other Thoracic Cancers

Track

Lung Cancer

Sub Track

Local-Regional Non–Small Cell Lung Cancer

Citation

J Clin Oncol 36, 2018 (suppl; abstr 8528)

DOI

10.1200/JCO.2018.36.15_suppl.8528

Abstract #

8528

Poster Bd #

134

Abstract Disclosures

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