Author:
Moore Michael R.,Friesner Isabel D.,Rizk Emanuelle M.,Fullerton Benjamin T.,Mondal Manas,Trager Megan H.,Mendelson Karen,Chikeka Ijeuru,Kurc Tahsin,Gupta Rajarsi,Rohr Bethany R.,Robinson Eric J.,Acs Balazs,Chang Rui,Kluger Harriet,Taback Bret,Geskin Larisa J.,Horst Basil,Gardner Kevin,Niedt George,Celebi Julide T.,Gartrell-Corrado Robyn D.,Messina Jane,Ferringer Tammie,Rimm David L.,Saltz Joel,Wang Jing,Vanguri Rami,Saenger Yvonne M.
Abstract
AbstractAccurate prognostic biomarkers in early-stage melanoma are urgently needed to stratify patients for clinical trials of adjuvant therapy. We applied a previously developed open source deep learning algorithm to detect tumor-infiltrating lymphocytes (TILs) in hematoxylin and eosin (H&E) images of early-stage melanomas. We tested whether automated digital (TIL) analysis (ADTA) improved accuracy of prediction of disease specific survival (DSS) based on current pathology standards. ADTA was applied to a training cohort (n = 80) and a cutoff value was defined based on a Receiver Operating Curve. ADTA was then applied to a validation cohort (n = 145) and the previously determined cutoff value was used to stratify high and low risk patients, as demonstrated by Kaplan–Meier analysis (p ≤ 0.001). Multivariable Cox proportional hazards analysis was performed using ADTA, depth, and ulceration as co-variables and showed that ADTA contributed to DSS prediction (HR: 4.18, CI 1.51–11.58, p = 0.006). ADTA provides an effective and attainable assessment of TILs and should be further evaluated in larger studies for inclusion in staging algorithms.
Funder
Yale SPORE in Skin Cancer,United States
Navigate BioPharma
National Institutes of Health
Irving Institute for Clinical and Translational Research
Publisher
Springer Science and Business Media LLC
Cited by
21 articles.
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