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Artificial intelligence-quantified tumour-lymphocyte spatial interaction predicts disease-free survival in resected lung adenocarcinoma: A graph-based, multicentre study

Feng, Zhengyun; Lin, Huan; Liu, Zaiyi; Yan, Lixu; Wang, Yumeng; Li, Bingbing; Liu, Entao; Han, Chu; Shi, Zhenwei; Lu, Cheng; Liu, Zhenbing; Pang, Cheng; Li, Zhenhui*; Cui, Yanfen*; Pan, Xipeng*; Chen, Xin*
Science Citation Index Expanded
广东省人民医院; 广东省心血管病研究所; 桂林电子科技大学; 南方医科大学; 中国医学科学院; 1

摘要

Background and Objective: A high degree of lymphocyte infiltration is related to superior outcomes amongst patients with lung adenocarcinoma. Recent evidence indicates that the spatial interactions be-tween tumours and lymphocytes also influence the anti-tumour immune responses, but the spatial anal-ysis at the cellular level remains insufficient. Methods: We proposed an artificial intelligence-quantified Tumour-Lymphocyte Spatial Interaction score (TLSI-score) by calculating the ratio between the number of spatial adjacent tumour-lymphocyte and the number of tumour cells based on topology cell graph constructed using H&E-stained whole-slide images. The association of TLSI-score with disease-free survival (DFS) was explored in 529 patients with lung adenocarcinoma across three independent cohorts (D1, 275; V1, 139; V2, 115). Results: After adjusting for pTNM stage and other clinicopathologic risk factors, a higher TLSI-score was independently associated with longer DFS than a low TLSI-score in the three cohorts [D1, adjusted hazard ratio (HR), 0.674; 95% confidence interval (CI) 0.463-0.983; p = 0.040; V1, adjusted HR, 0.408; 95% CI 0.223-0.746; p = 0.004; V2, adjusted HR, 0.294; 95% CI 0.130-0.666; p = 0.003]. By integrating the TLSI-score with clinicopathologic risk factors, the integrated model (full model) improves the prediction of DFS in three independent cohorts (C-index, D1, 0.716 vs. 0.701; V1, 0.666 vs. 0.645; V2, 0.708 vs. 0.662) Conclusions: TLSI-score shows the second highest relative contribution to the prognostic prediction model, next to the pTNM stage. TLSI-score can assist in the characterising of tumour microenvironment and is expected to promote individualized treatment and follow-up decision-making in clinical practice.

关键词

Tumour-infiltrating lymphocyte Artificial intelligence Lung adenocarcinoma Spatial interaction Microenvironment