Dai Shixuan, Guo Xiaojing, Liu Shi, Tu Liping, Hu Xiaojuan, Cui Ji, Ruan QunSheng, Tan Xin, Lu Hao, Jiang Tao, Xu Jiatuo
Department of College of Traditional Chinese Medicine, Shanghai University of Traditional Chinese Medicine, 1200 Road, Shanghai, 201203, China.
Department of Anesthesiology, Naval Medical University, No. 800, Xiangyin Road, Shanghai,200433, China.
Heliyon. 2024 Apr 4;10(7):e29269. doi: 10.1016/j.heliyon.2024.e29269. eCollection 2024 Apr 15.
Metabolic associated fatty liver disease (MAFLD) is a widespread liver disease that can lead to liver fibrosis and cirrhosis. Therefore, it is essential to develop early diagnosic and screening methods.
We performed a cross-sectional observational study. In this study, based on data from 92 patients with MAFLD and 74 healthy individuals, we observed the characteristics of tongue images, tongue coating and intestinal flora. A generative adversarial network was used to extract tongue image features, and 16S rRNA sequencing was performed using the tongue coating and intestinal flora. We then applied tongue image analysis technology combined with microbiome technology to obtain an MAFLD early screening model with higher accuracy. In addition, we compared different modelling methods, including Extreme Gradient Boosting (XGBoost), random forest, neural networks(MLP), stochastic gradient descent(SGD), and support vector machine(SVM).
The results show that tongue-coating Streptococcus and Rothia, intestinal Blautia, and Streptococcus are potential biomarkers for MAFLD. The diagnostic model jointly incorporating tongue image features, basic information (gender, age, BMI), and tongue coating marker flora (Streptococcus, Rothia), can have an accuracy of 96.39%, higher than the accuracy value except for bacteria.
Combining computer-intelligent tongue diagnosis with microbiome technology enhances MAFLD diagnostic accuracy and provides a convenient early screening reference.
代谢相关脂肪性肝病(MAFLD)是一种广泛存在的肝脏疾病,可导致肝纤维化和肝硬化。因此,开发早期诊断和筛查方法至关重要。
我们进行了一项横断面观察性研究。在本研究中,基于92例MAFLD患者和74名健康个体的数据,我们观察了舌象、舌苔和肠道菌群的特征。使用生成对抗网络提取舌象特征,并对舌苔和肠道菌群进行16S rRNA测序。然后,我们应用舌象分析技术结合微生物组技术,获得了一个具有更高准确性的MAFLD早期筛查模型。此外,我们比较了不同的建模方法,包括极端梯度提升(XGBoost)、随机森林、神经网络(MLP)、随机梯度下降(SGD)和支持向量机(SVM)。
结果表明,舌苔中的链球菌和罗氏菌、肠道中的布劳特氏菌和链球菌是MAFLD的潜在生物标志物。联合纳入舌象特征、基本信息(性别、年龄、BMI)和舌苔标记菌群(链球菌、罗氏菌)的诊断模型,准确率可达96.39%,高于除细菌外的准确率值。
将计算机智能舌诊与微生物组技术相结合,可提高MAFLD的诊断准确性,并提供便捷的早期筛查参考。