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Development of a Tongue Image-Based Machine Learning Tool for the Diagnosis of Gastric Cancer: a Prospective Multicentre Clinical Cohort Study.

EClinicalMedicine(2023)

Univ Chinese Acad Sci | Westlake Univ | Zhejiang Chinese Med Univ | Wenzhou Med Univ | Anhui Univ Tradit Chinese Med | Harbin Med Univ | Shanxi Canc Hosp | Shanghai Jiao Tong Univ | China Med Univ | Fujian Med Univ | Yuhang Dist Peoples Hosp | Sichuan Canc Hosp | Zhejiang Canc Hosp | Yueyang Cent Hosp | Kecheng Dist Peoples Hosp | Shandong Canc Hosp | Zigong Fourth Peoples Hosp | Hainan Canc Hosp | Linping Dist Hosp Tradit Chinese Med | Henan Univ Sci & Technol

Cited 39|Views29
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). Copyright (c) 2023 The Author(s). Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
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Gastric cancer,Tongue images,Artificial intelligence,Traditional Chinese medicine,Tongue coating microbiome
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要点】:本研究首次发现舌像及其微生物组可作为诊断胃癌的工具,舌像诊断模型的准确度优于传统血液生物标志物。

方法】:通过收集舌像及舌苔样本,利用16 S rDNA测序分析舌苔微生物组,并建立人工智能深度学习模型进行诊断评估。

实验】:在2020年5月至2021年1月间收集了328例新诊断的胃癌患者和304例非胃癌参与者的舌像及舌苔样本,并在2020年5月至2022年3月间进行前瞻性多中心临床研究,招募了937例胃癌患者和1911例非胃癌参与者,另外在独立的外部验证队列中验证了该方法,其中包含7个中心的294例胃癌患者和521例非胃癌参与者。