Development of a tongue image-based machine learning tool for the diagnosis of gastric cancer: a prospective multicentre clinical cohort study

Yuan Li(Zhejiang Cancer Hospital), Lin Yang(Westlake University), Shichuan Zhang(Westlake University), Zhiyuan Xu(Zhejiang Cancer Hospital), Jiang‐Jiang Qin(Zhejiang Cancer Hospital), Yunfu Shi(Zhejiang Chinese Medical University), Pengcheng Yu(Zhejiang Chinese Medical University), Yi Wang(Zhejiang Chinese Medical University), Zhehan Bao(Zhejiang Chinese Medical University), Yuhang Xia(Zhejiang Chinese Medical University), Jiancheng Sun(Wenzhou Medical University), Weiyang He(Sichuan Cancer Hospital), Tianhui Chen(Zhejiang Cancer Hospital), Xiaolei Chen(Wenzhou Medical University), Can Hu(Zhejiang Chinese Medical University), Yunlong Zhang(Westlake University), Changwu Dong(Anhui University of Traditional Chinese Medicine), Ping Zhao(Shanghai University of Traditional Chinese Medicine), Yanan Wang(Zhejiang Chinese Medical University), Nan Jiang(Anhui University of Traditional Chinese Medicine), Bin Lv(Zhejiang Chinese Medical University), Yingwei Xue(Harbin Medical University), Baoping Jiao(Shanxi Provincial Cancer Hospital), Hongyu Gao(Harbin Medical University), Kequn Chai(Tongde Hospital of Zhejiang Province), Jun Li(Shanxi Provincial Cancer Hospital), Hao Wang(Harbin Medical University), Xibo Wang(Harbin Medical University), Xiaoqing Guan(Zhejiang Cancer Hospital), Xu Liu(Renji Hospital), Gang Zhao(Renji Hospital), Zhichao Zheng(Liaoning Cancer Hospital & Institute), Jie Yan(Liaoning Cancer Hospital & Institute), Hou‐Yong Yu(Liaoning Cancer Hospital & Institute), Luchuan Chen(Fujian Medical University), Zaisheng Ye(Fujian Medical University), H You(First People's Hospital of Yuhang District), Yu Bao(Sichuan Cancer Hospital), Xi Cheng(Zhejiang Cancer Hospital), Pei-Zheng Zhao(Shanghai University of Traditional Chinese Medicine), Liang Wang(Quzhou City People's Hospital), Wenting Zeng(Shanxi Provincial Cancer Hospital), Yanfei Tian(Liaoning Cancer Hospital & Institute), Ming Chen(Shandong Tumor Hospital), You You(Zigong First People's Hospital), Guihong Yuan(Hainan Medical College Hospital), Hua Ruan(Hangzhou Hospital of Traditional Chinese Medicine), Xiaole Gao(First Affiliated Hospital of Henan University of Science and Technology), Jingli Xu(Zhejiang Chinese Medical University), Handong Xu(Zhejiang Chinese Medical University), Lingbin Du(Zhejiang Cancer Hospital), Shengjie Zhang(Westlake University), Huanying Fu(Zhejiang Cancer Hospital), Xiangdong Cheng(Zhejiang Cancer Hospital)
EClinicalMedicine
February 6, 2023
Cited by 157Open Access
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Abstract

Background: Tongue images (the colour, size and shape of the tongue and the colour, thickness and moisture content of the tongue coating), reflecting the health state of the whole body according to the theory of traditional Chinese medicine (TCM), have been widely used in China for thousands of years. Herein, we investigated the value of tongue images and the tongue coating microbiome in the diagnosis of gastric cancer (GC). Methods: From May 2020 to January 2021, we simultaneously collected tongue images and tongue coating samples from 328 patients with GC (all newly diagnosed with GC) and 304 non-gastric cancer (NGC) participants in China, and 16 S rDNA was used to characterize the microbiome of the tongue coating samples. Then, artificial intelligence (AI) deep learning models were established to evaluate the value of tongue images and the tongue coating microbiome in the diagnosis of GC. Considering that tongue imaging is more convenient and economical as a diagnostic tool, we further conducted a prospective multicentre clinical study from May 2020 to March 2022 in China and recruited 937 patients with GC and 1911 participants with NGC from 10 centres across China to further evaluate the role of tongue images in the diagnosis of GC. Moreover, we verified this approach in another independent external validation cohort that included 294 patients with GC and 521 participants with NGC from 7 centres. This study is registered at ClinicalTrials.gov, NCT01090362. Findings: For the first time, we found that both tongue images and the tongue coating microbiome can be used as tools for the diagnosis of GC, and the area under the curve (AUC) value of the tongue image-based diagnostic model was 0.89. The AUC values of the tongue coating microbiome-based model reached 0.94 using genus data and 0.95 using species data. The results of the prospective multicentre clinical study showed that the AUC values of the three tongue image-based models for GCs reached 0.88-0.92 in the internal verification and 0.83-0.88 in the independent external verification, which were significantly superior to the combination of eight blood biomarkers. Interpretation: Our results suggest that tongue images can be used as a stable method for GC diagnosis and are significantly superior to conventional blood biomarkers. The three kinds of tongue image-based AI deep learning diagnostic models that we developed can be used to adequately distinguish patients with GC from participants with NGC, even early GC and precancerous lesions, such as atrophic gastritis (AG). Funding: The National Key R&D Program of China (2021YFA0910100), Program of Zhejiang Provincial TCM Sci-tech Plan (2018ZY006), Medical Science and Technology Project of Zhejiang Province (2022KY114, WKJ-ZJ-2104), Zhejiang Provincial Research Center for Upper Gastrointestinal Tract Cancer (JBZX-202006), Natural Science Foundation of Zhejiang Province (HDMY22H160008), Science and Technology Projects of Zhejiang Province (2019C03049), National Natural Science Foundation of China (82074245, 81973634, 82204828), and Chinese Postdoctoral Science Foundation (2022M713203).


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