Authors
Benjamin H Kann, Jirapat Likitlersuang, Dennis Bontempi, Zezhong Ye, Sanjay Aneja, Richard Bakst, Hillary R Kelly, Amy F Juliano, Sam Payabvash, Jeffrey P Guenette, Ravindra Uppaluri, Danielle N Margalit, Jonathan D Schoenfeld, Roy B Tishler, Robert Haddad, Hugo JWL Aerts, Joaquin J Garcia, Yael Flamand, Rathan M Subramaniam, Barbara A Burtness, Robert L Ferris
Publication date
2023/6/1
Journal
The Lancet Digital Health
Volume
5
Issue
6
Pages
e360-e369
Publisher
Elsevier
Description
Background
Pretreatment identification of pathological extranodal extension (ENE) would guide therapy de-escalation strategies for in human papillomavirus (HPV)-associated oropharyngeal carcinoma but is diagnostically challenging. ECOG-ACRIN Cancer Research Group E3311 was a multicentre trial wherein patients with HPV-associated oropharyngeal carcinoma were treated surgically and assigned to a pathological risk-based adjuvant strategy of observation, radiation, or concurrent chemoradiation. Despite protocol exclusion of patients with overt radiographic ENE, more than 30% had pathological ENE and required postoperative chemoradiation. We aimed to evaluate a CT-based deep learning algorithm for prediction of ENE in E3311, a diagnostically challenging cohort wherein algorithm use would be impactful in guiding decision-making.
Methods
For this retrospective evaluation of deep learning …
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