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Artificial intelligence–powered programmed death ligand 1 analyser reduces interobserver variation in tumour proportion score for non–small cell lung cancer with better prediction of immunotherapy response

Authors
Choi, S | Cho, SI | Ma, M | Park, S | Pereira, S | Aum, BJ | Shin, S | Paeng, K | Yoo, D | Jung, W | Ock, CY | Lee, SH | Choi, YL | Chung, JH | Mok, TS | Kim, H | Kim, S
Citation
European journal of cancer (Oxford, England : 1990), 170. : 17-26, 2022
Journal Title
European journal of cancer (Oxford, England : 1990)
ISSN
0959-80491879-0852
Abstract
BACKGROUND: Manual evaluation of programmed death ligand 1 (PD-L1) tumour proportion score (TPS) by pathologists is associated with interobserver bias. OBJECTIVE: This study explored the role of artificial intelligence (AI)-powered TPS analyser in minimisation of interobserver variation and enhancement of therapeutic response prediction. METHODS: A prototype model of an AI-powered TPS analyser was developed with a total of 802 non-small cell lung cancer (NSCLC) whole-slide images. Three independent board-certified pathologists labelled PD-L1 TPS in an external cohort of 479 NSCLC slides. For cases of disagreement between each pathologist and the AI model, the pathologists were asked to revise the TPS grade (<1%, 1%-49% and >/=50%) with AI assistance. The concordance rates among the pathologists with or without AI assistance and the effect of the AI-assisted revision on clinical outcome upon immune checkpoint inhibitor (ICI) treatment were evaluated. RESULTS: Without AI assistance, pathologists concordantly classified TPS in 81.4% of the cases. They revised their initial interpretation by using the AI model for the disagreement cases between the pathologist and the AI model (N = 91, 93 and 107 for each pathologist). The overall concordance rate among the pathologists was increased to 90.2% after the AI assistance (P < 0.001). A reduction in hazard ratio for overall survival and progression-free survival upon ICI treatment was identified in the TPS subgroups after the AI-assisted TPS revision. CONCLUSION: The AI-powered TPS analyser assistance improves the pathologists' consensus of reading and prediction of the therapeutic response, raising a possibility of standardised approach for the accurate interpretation.
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MeSH

DOI
10.1016/j.ejca.2022.04.011
PMID
35576849
Appears in Collections:
Journal Papers > School of Medicine / Graduate School of Medicine > Pathology
Ajou Authors
김, 석휘
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