Rates of procedures among those with incidentally detected pulmonary nodules: A real-world data assessment.

Authors

null

Jeffrey C. Thompson

Abramson Cancer Center, University of Pennsylvania, Philadelphia, PA

Jeffrey C. Thompson, Stacey DaCosta Byfield, Pamela Hansen, Jamie Tucker, Anil Vachani

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Poster Details

Meeting

2022 ASCO Quality Care Symposium

Session Type

Poster Session

Session Title

Poster Session B

Track

Palliative and Supportive Care,Technology and Innovation in Quality of Care,Quality, Safety, and Implementation Science

Sub Track

Real-World Evidence

Citation

J Clin Oncol 40, 2022 (suppl 28; abstr 405)

DOI

10.1200/JCO.2022.40.28_suppl.405

Abstract #

405

Poster Bd #

F8

Abstract Disclosures

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