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Deep learning model for pathological invasiveness prediction using smartphone-based surgical resection images in clinical stage IA lung adenocarcinoma (SuRImage): a prospective, multicentric, diagnostic study

  • Lintong Yao
  • , Linghan Cai
  • , Maotao Weng
  • , Qiaxuan Li
  • , Fengchun Liu
  • , Yingwei Lu
  • , Jiawen Cui
  • , Hongwei Lin
  • , Henian Yao
  • , Daipeng Xie
  • , Shaowei Wu
  • , Luyu Huang
  • , Canjia Cai
  • , Yu Lei
  • , Ruihao Xie
  • , Qi Zhang
  • , Minjian Li
  • , Weijie Zhan
  • , Fasheng Li
  • , Wenxin Zeng
  • Fanjun Zeng, Haihui Zhong, Zhu Liang, Jinchi Dai, Boyu Lin, Dongkun Zhang, Baozhen Zeng, Guangyi Wang, Lawrence Wing-Chi Chan, Michael Lanuti, Guibin Qiao, Cheng Lu, Zaiyi Liu, Qingling Zhang*, Yongbing Zhang*, Haiyu Zhou*
*Corresponding author for this work
  • Division of Thoracic Surgery
  • Harbin Institute of Technology
  • Zhejiang University
  • South China University of Technology
  • Guangdong Medical College
  • Huizhou Central People’s Hospital
  • Sun Yat-Sen University
  • Charité – Universitätsmedizin Berlin
  • Shantou University
  • Meizhou People’s Hospital
  • Guangdong Provincial Key Laboratory of Artificial Intelligence in Medical Image Analysis and Application
  • Hong Kong Polytechnic University
  • Massachusetts General Hospital
  • Southern Medical University

Research output: Contribution to journalArticlepeer-review

Abstract

SummaryBackgroundIn clinical stage IA lung adenocarcinoma (LUAD), rapid and accurate intraoperative diagnosis is crucial to decide whether to perform segmentectomy and lobectomy. Frozen section analysis is time consuming and not always reliable for LUAD diagnosis and grading. We developed deep learning models using surgical resection images to assist in prompt diagnosis and risk stratification of stage IA LUAD to aid in surgical decision making.MethodsIn this prospective, multicentre cohort, patients with clinical stage IA LUAD were enrolled from June 1, 2020, to Sept 30, 2023, from three hospitals in China. Surgical resection images of LUAD were captured using smartphones under natural lighting conditions in the operating theatre. Deep learning models were established based on these images for three tasks: identification of invasive lung adenocarcinoma from non-invasive lung adenocarcinoma lesions; diagnosis of adenocarcinoma in situ, minimally invasive adenocarcinoma, and invasive lung adenocarcinoma; and grading of adenocarcinoma in situ, minimally invasive adenocarcinoma, invasive lung adenocarcinoma grade 1, grade 2, and grade 3 according to the International Association for the Study of Lung Cancer Grading System. The study is registered with the Chinese Clinical Trial Registry, ChiCTR2300075999.FindingsWe enrolled 1529 patients with 2344 surgical section images from Guangdong Provincial People’s Hospital, 116 patients with 307 images from Affiliated Hospital of Guangdong Medical University, and 82 patients with 259 images from Meizhou People’s Hospital. The area under curve for the surgical resection image-based model (SuRImage) was 0·84 (95% CI 0·82–0·86) for invasive lung adenocarcinoma identification, 0·87 (0·86–0·88) for invasive lung adenocarcinoma diagnosis, and 0·85 (0·83–0·86) for invasive lung adenocarcinoma grading in Guangdong Provincial People’s Hospital. SuRImage showed better diagnosis performance than frozen section. Assisted with SuRImage, average diagnostic accuracy of thoracic surgeons could be improved from 63·80% (95% CI 60·57–67·03) to 73·44% (67·68–79·19) for invasive lung adenocarcinoma grading.InterpretationThis first-in-field diagnostic study focused on intraoperative diagnosis based on surgical resection images in stage IA LUAD and provides insights into the macroscopic morphological features for pathological invasiveness. By elucidating macroscopic morphological indicators of invasiveness, SuRImage empowers surgeons to make more precise, timely decisions, optimise intervention strategies, and streamline the surgical workflow.FundingNational Key R&D Program of China; National Natural Science Foundation of China; International Science and Technology Cooperation Program of Guangdong; Natural Science Foundation of Guangdong; Beijing Xisike Clinical Oncology Research Foundation; Meizhou Medical and Health Scientific Research Projects.

Original languageEnglish
Article number100965
JournalThe Lancet Digital Health
DOIs
StateAccepted/In press - 2025
Externally publishedYes

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well-being

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