Deep learning on tertiary lymphoid structures in hematoxylin-eosin predicts cancer prognosis and immunotherapy response

被引:0
作者
Ziqiang Chen
Xiaobing Wang
Zelin Jin
Bosen Li
Dongxian Jiang
Yanqiu Wang
Mengping Jiang
Dandan Zhang
Pei Yuan
Yahui Zhao
Feiyue Feng
Yicheng Lin
Liping Jiang
Chenxi Wang
Weida Meng
Wenjing Ye
Jie Wang
Wenqing Qiu
Houbao Liu
Dan Huang
Yingyong Hou
Xuefei Wang
Yuchen Jiao
Jianming Ying
Zhihua Liu
Yun Liu
机构
[1] Fudan University,MOE Key Laboratory of Metabolism and Molecular Medicine, Department of Biochemistry and Molecular Biology, School of Basic Medical Sciences and Shanghai Xuhui Central Hospital
[2] Fudan University,State Key Laboratory of Medical Neurobiology and MOE Frontiers Center for Brain Science, Institutes of Brain Science
[3] Chinese Academy of Medical Sciences and Peking Union Medical College,State Key Laboratory of Molecular Oncology, National Cancer Center, National Clinical Research Center for Cancer, Cancer Hospital
[4] Fudan University,Department of General Surgery/Gastric Cancer Center, Zhongshan Hospital
[5] Fudan University,Department of Pathology, Zhongshan Hospital
[6] International Peace Maternity and Child Health Hospital Affiliated to Shanghai Jiao Tong University School of Medicine,Departments of Pathology
[7] Chinese Academy of Medical Sciences and Peking Union Medical College,Department of Pathology, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital
[8] Chinese Academy of Medical Sciences and Peking Union Medical College,Thoracic Surgery Department, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital
[9] Fudan University,Division of Rheumatology and Immunology, Huashan Hospital
[10] Fudan University Shanghai Cancer Center,Departments of Thoracic Surgery
[11] Shanghai Xuhui Central Hospital,Department of General Surgery/Biliary Tract Disease Center, Zhongshan Hospital
[12] Fudan University,Department of Pathology, Fudan University Shanghai Cancer Center, Shanghai, China; Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China; Institute of Pathology
[13] Fudan University,Department of General Surgery, Zhongshan Hospital (Xiamen)
[14] Fudan University,undefined
来源
npj Precision Oncology | / 8卷
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摘要
Tertiary lymphoid structures (TLSs) have been associated with favorable immunotherapy responses and prognosis in various cancers. Despite their significance, their quantification using multiplex immunohistochemistry (mIHC) staining of T and B lymphocytes remains labor-intensive, limiting its clinical utility. To address this challenge, we curated a dataset from matched mIHC and H&E whole-slide images (WSIs) and developed a deep learning model for automated segmentation of TLSs. The model achieved Dice coefficients of 0.91 on the internal test set and 0.866 on the external validation set, along with intersection over union (IoU) scores of 0.819 and 0.787, respectively. The TLS ratio, defined as the segmented TLS area over the total tissue area, correlated with B lymphocyte levels and the expression of CXCL13, a chemokine associated with TLS formation, in 6140 patients spanning 16 tumor types from The Cancer Genome Atlas (TCGA). The prognostic models for overall survival indicated that the inclusion of the TLS ratio with TNM staging significantly enhanced the models’ discriminative ability, outperforming the traditional models that solely incorporated TNM staging, in 10 out of 15 TCGA tumor types. Furthermore, when applied to biopsied treatment-naïve tumor samples, higher TLS ratios predicted a positive immunotherapy response across multiple cohorts, including specific therapies for esophageal squamous cell carcinoma, non-small cell lung cancer, and stomach adenocarcinoma. In conclusion, our deep learning-based approach offers an automated and reproducible method for TLS segmentation and quantification, highlighting its potential in predicting immunotherapy response and informing cancer prognosis.
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  • [21] Wang Y(2023)Association of machine learning-based assessment of tumor-infiltrating lymphocytes on standard histologic images with outcomes of immunotherapy in patients with NSCLC JAMA Oncol. 9 1559-541.e5
  • [22] Crombe A(2021)Using machine learning algorithms to predict immunotherapy response in patients with advanced melanoma Clin. Cancer Res. 27 62-1204
  • [23] Roulleau-Dugage M(2023)Biology-guided deep learning predicts prognosis and cancer immunotherapy response Nat. Commun. 14 245-56
  • [24] Italiano A(2022)Deep learning-based image analysis predicts PD-L1 status from H&E-stained histopathology images in breast cancer Nat. Commun. 13 e0256907-1085
  • [25] Bera K(2019)Artificial intelligence algorithms to assess hormonal status from tissue microarrays in patients with breast cancer JAMA Netw. Open 2 107635-82
  • [26] Schalper KA(2018)Classification and mutation prediction from non-small cell lung cancer histopathology images using deep learning Nat. Med. 24 5-1235
  • [27] Rimm DL(2020)Deep learning-based classification and mutation prediction from histopathological images of hepatocellular carcinoma Clin. Transl. Med. 10 527-1844
  • [28] Velcheti V(2020)A deep learning diagnostic platform for diffuse large B-cell lymphoma with high accuracy across multiple hospitals Nat. Commun. 11 1195-195.e9
  • [29] Madabhushi A(2017)Large scale tissue histopathology image classification, segmentation, and visualization via deep convolutional activation features BMC Bioinformatics 18 44-1304
  • [30] Skrede OJ(1979)A threshold selection method from gray-level histograms IEEE Trans. Syst. Man Cybern. 9 1084-247