Artificial Intelligence–Powered Spatial Analysis of Tumor-Infiltrating Lymphocytes as Complementary Biomarker for Immune Checkpoint Inhibition in Non–Small-Cell Lung Cancer

Sehhoon Park(Samsung Medical Center), Chan‐Young Ock, Hyojin Kim(Seoul National University Bundang Hospital), Sérgio Pereira, Seonwook Park(Samsung Medical Center), Minuk Ma, Sangjoon Choi(Samsung Medical Center), Seokhwi Kim(Ajou University), Seunghwan Shin, Brian Jaehong Aum, Kyunghyun Paeng, Donggeun Yoo, Hongui Cha(Samsung Medical Center), Sunyoung Park(Samsung Medical Center), Koung Jin Suh(Seoul National University Bundang Hospital), Hyun Ae Jung(Samsung Medical Center), Se Hyun Kim(Seoul National University Bundang Hospital), Yu Jung Kim(Seoul National University Bundang Hospital), Jong‐Mu Sun(Samsung Medical Center), Jin-Haeng Chung(Seoul National University Bundang Hospital), Jin Seok Ahn(Samsung Medical Center), Myung‐Ju Ahn(Samsung Medical Center), Jong Seok Lee(Samsung Medical Center), Keunchil Park(Samsung Medical Center), Sang Yong Song(Samsung Medical Center), Yung‐Jue Bang(Seoul National University), Yoon‐La Choi(Samsung Medical Center), Tony Mok(Chinese University of Hong Kong), Se‐Hoon Lee(Samsung (South Korea))
Journal of Clinical Oncology
March 10, 2022
Cited by 277Open Access
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Abstract

PURPOSE Biomarkers on the basis of tumor-infiltrating lymphocytes (TIL) are potentially valuable in predicting the effectiveness of immune checkpoint inhibitors (ICI). However, clinical application remains challenging because of methodologic limitations and laborious process involved in spatial analysis of TIL distribution in whole-slide images (WSI). METHODS We have developed an artificial intelligence (AI)–powered WSI analyzer of TIL in the tumor microenvironment that can define three immune phenotypes (IPs): inflamed, immune-excluded, and immune-desert. These IPs were correlated with tumor response to ICI and survival in two independent cohorts of patients with advanced non–small-cell lung cancer (NSCLC). RESULTS Inflamed IP correlated with enrichment in local immune cytolytic activity, higher response rate, and prolonged progression-free survival compared with patients with immune-excluded or immune-desert phenotypes. At the WSI level, there was significant positive correlation between tumor proportion score (TPS) as determined by the AI model and control TPS analyzed by pathologists ( P < .001). Overall, 44.0% of tumors were inflamed, 37.1% were immune-excluded, and 18.9% were immune-desert. Incidence of inflamed IP in patients with programmed death ligand-1 TPS at < 1%, 1%-49%, and ≥ 50% was 31.7%, 42.5%, and 56.8%, respectively. Median progression-free survival and overall survival were, respectively, 4.1 months and 24.8 months with inflamed IP, 2.2 months and 14.0 months with immune-excluded IP, and 2.4 months and 10.6 months with immune-desert IP. CONCLUSION The AI-powered spatial analysis of TIL correlated with tumor response and progression-free survival of ICI in advanced NSCLC. This is potentially a supplementary biomarker to TPS as determined by a pathologist.


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