Triple‐negative breast cancer survival prediction using artificial intelligence through integrated analysis of tertiary lymphoid structures and tumor budding

Author:

Hou Xupeng12345,Li Xueyang1234,Han Yunwei1234,Xu Hua6,Xie Yongjie1234,Zhou Tianxing1234,Xue Tongyuan1234ORCID,Qian Xiaolong1234,Li Jiazhen1234,Wang Hayson Chenyu6,Yan Jingrui1234,Guo Xiaojing1234,Liu Ying6,Liu Jing12345ORCID

Affiliation:

1. Department of Breast Cancer Tianjin Medical University Cancer Institute and Hospital Tianjin China

2. National Clinical Research Center for Cancer Key Laboratory of Cancer Prevention and Therapy Tianjin's Clinical Research Center for Cancer Tianjin China

3. Key Laboratory of Cancer Prevention and Therapy Tianjin’s Clinical Research Center for Cancer Tianjin China

4. Key Laboratory of Breast Cancer Prevention and Therapy Tianjin Medical University Ministry of Education Tianjin China

5. Department of Breast Surgery Fudan University Shanghai Cancer Center Shanghai China

6. Department of Plastic and Reconstructive Surgery Shanghai Ninth People's Hospital Shanghai Jiao Tong University School of Medicine Shanghai China

Abstract

AbstractBackgroundTriple‐negative breast cancer (TNBC) is a highly heterogeneous and clinically aggressive disease. Accumulating evidence indicates that tertiary lymphoid structures (TLSs) and tumor budding (TB) are significantly correlated with the outcomes of patients who have TNBC, but no integrated TLS‐TB profile has been established to predict their survival. The objective of this study was to investigate the relationship between the TLS/TB ratio and clinical outcomes of patients with TNBC using artificial intelligence (AI)‐based analysis.MethodsThe infiltration levels of TLSs and TB were evaluated using hematoxylin and eosin staining, immunohistochemistry staining, and AI‐based analysis. Various cellular subtypes within TLS were determined by multiplex immunofluorescence. Subsequently, the authors established a nomogram model, conducted calibration curve analyses, and performed decision curve analyses using R software.ResultsIn both the training and validation cohorts, the antitumor/protumor model established by the authors demonstrated a positive correlation between the TLS/TB index and the overall survival (OS) and relapse‐free survival (RFS) of patients with TNBC. Notably, patients who had a high percentage of CD8‐positive T cells, CD45RO‐positive T cells, or CD20‐positive B cells within the TLSs experienced improved OS and RFS. Furthermore, the authors developed a comprehensive TLS‐TB profile nomogram based on the TLS/TB index. This novel model outperformed the classical tumor‐lymph node‐metastasis staging system in predicting the OS and RFS of patients with TNBC.ConclusionsA novel strategy for predicting the prognosis of patients with TNBC was established through integrated AI‐based analysis and a machine‐learning workflow. The TLS/TB index was identified as an independent prognostic factor for TNBC. This nomogram‐based TLS‐TB profile would help improve the accuracy of predicting the prognosis of patients who have TNBC.

Publisher

Wiley

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