Wang Xiao-Xiao, Song Yu-Yun, Jin Rui, Wang Zi-Long, Li Xiao-He, Yang Qiang, Teng Xiao, Liu Fang-Fang, Wu Nan, Xie Yan-Di, Rao Hui-Ying, Liu Feng
Peking University People's Hospital, Peking University Hepatology Institute, Infectious Disease and Hepatology Center of Peking University People's Hospital, Beijing Key Laboratory of Hepatitis C and Immunotherapy for Liver Diseases, Beijing International Cooperation Base for Science and Technology on NAFLD Diagnosis, Beijing 100044, China.
Hangzhou Choutu Technology Co., Ltd., Hangzhou 310052, China.
Diagnostics (Basel). 2024 Dec 23;14(24):2889. doi: 10.3390/diagnostics14242889.
Metabolic dysfunction-associated steatotic liver disease (MASLD) is characterized by the accumulation of fat in the liver, excluding excessive alcohol consumption and other known causes of liver injury. Animal models are often used to explore different pathogenic mechanisms and therapeutic targets of MASLD. The aim of this study is to apply an artificial intelligence (AI) system based on second-harmonic generation (SHG)/two-photon-excited fluorescence (TPEF) technology to automatically assess the dynamic patterns of hepatic steatosis in MASLD mouse models.
We evaluated the characteristics of hepatic steatosis in mouse models of MASLD using AI analysis based on SHG/TPEF images. Six different models of MASLD were induced in C57BL/6 mice by feeding with a western or high-fat diet, with or without fructose in their drinking water, and/or by weekly injections of carbon tetrachloride.
Body weight, serum lipids, and liver enzyme markers increased at 8 and 16 weeks in each model compared to baseline. Steatosis grade showed a steady upward trend. However, the non-alcoholic steatohepatitis (NASH) Clinical Research Network (CRN) histological scoring method detected no significant difference between 8 and 16 weeks. In contrast, AI analysis was able to quantify dynamic changes in the area, number, and size of hepatic steatosis automatically and objectively, making it more suitable for preclinical MASLD animal experiments.
AI recognition technology may be a new tool for the accurate diagnosis of steatosis in MASLD, providing a more precise and objective method for evaluating steatosis in preclinical murine MASLD models under various experimental and treatment conditions.
代谢功能障碍相关脂肪性肝病(MASLD)的特征是肝脏中脂肪堆积,排除过量饮酒和其他已知的肝损伤原因。动物模型常用于探索MASLD的不同致病机制和治疗靶点。本研究的目的是应用基于二次谐波产生(SHG)/双光子激发荧光(TPEF)技术的人工智能(AI)系统,自动评估MASLD小鼠模型中肝脂肪变性的动态模式。
我们使用基于SHG/TPEF图像的AI分析评估了MASLD小鼠模型中肝脂肪变性的特征。通过喂食西方饮食或高脂饮食、饮用水中添加或不添加果糖和/或每周注射四氯化碳,在C57BL/6小鼠中诱导出六种不同的MASLD模型。
与基线相比,各模型在第8周和第16周时体重、血脂和肝酶标志物均升高。脂肪变性分级呈稳定上升趋势。然而,非酒精性脂肪性肝炎(NASH)临床研究网络(CRN)组织学评分方法在第8周和第16周之间未检测到显著差异。相比之下,AI分析能够自动、客观地量化肝脂肪变性面积、数量和大小的动态变化,使其更适合于临床前MASLD动物实验。
AI识别技术可能是准确诊断MASLD中脂肪变性的新工具,为在各种实验和治疗条件下评估临床前小鼠MASLD模型中的脂肪变性提供了一种更精确、客观的方法。