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TME-guided deep learning predicts chemotherapy and immunotherapy response in gastric cancer with attention-enhanced residual Swin Transformer

  • Shengtian Sang
  • , Zepang Sun
  • , Wenbo Zheng
  • , Wei Wang
  • , Md Tauhidul Islam
  • , Yijun Chen
  • , Qingyu Yuan
  • , Chuanli Cheng
  • , Sujuan Xi
  • , Zhen Han
  • , Taojun Zhang
  • , Lin Wu
  • , Wencheng Li
  • , Jingjing Xie
  • , Wanying Feng
  • , Yan Chen
  • , Wenjun Xiong
  • , Jiang Yu
  • , Guoxin Li
  • , Zhenhui Li
  • Yuming Jiang
  • Guangzhou Medical College
  • Nanfang Hospital
  • Sun Yat-Sen University Cancer Center
  • Stanford University
  • Wake Forest University
  • The Seventh Affiliated Hospital of Sun Yat-sen University
  • The Third Affiliated Hospital of Kunming Medical University
  • University of California at Davis
  • Southern Medical University
  • Shenzhen Hospital of Integrated Traditional Chinese and Western Medicine
  • Guangdong Provincial Hospital of Traditional Chinese Medicine
  • Tsinghua University

Research output: Contribution to journalArticlepeer-review

11 Scopus citations

Abstract

Adjuvant chemotherapy and immune checkpoint blockade exert quite durable anti-tumor responses, but the lack of effective biomarkers limits the therapeutic benefits. Utilizing multi-cohorts of 3,095 patients with gastric cancer, we propose an attention-enhanced residual Swin Transformer network to predict chemotherapy response (main task), and two predicting subtasks (ImmunoScore and periostin [POSTN]) are used as intermediate tasks to improve the model's performance. Furthermore, we assess whether the model can identify which patients would benefit from immunotherapy. The deep learning model achieves high accuracy in predicting chemotherapy response and the tumor microenvironment (ImmunoScore and POSTN). We further find that the model can identify which patient may benefit from checkpoint blockade immunotherapy. This approach offers precise chemotherapy and immunotherapy response predictions, opening avenues for personalized treatment options. Prospective studies are warranted to validate its clinical utility.

Original languageEnglish
Article number102242
JournalCell Reports Medicine
Volume6
Issue number8
DOIs
StatePublished - Aug 19 2025

Keywords

  • chemotherapy response
  • immunotherapy
  • medical imaging
  • multitask Swin Transformer
  • tumor microenvironment

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