Medical Data Analytic Centre, Prince of Wales Hospital and the University is The Chinese University of Hong Kong, Hong Kong, China.
Department of Medicine and Therapeutics, Prince of Wales Hospital and the University is The Chinese University of Hong Kong, Hong Kong, China.
Clin Mol Hepatol. 2023 Feb;29(Suppl):S171-S183. doi: 10.3350/cmh.2022.0426. Epub 2022 Dec 12.
Inflammation is the key driver of liver fibrosis progression in non-alcoholic fatty liver disease (NAFLD). Unfortunately, it is often challenging to assess inflammation in NAFLD due to its dynamic nature and poor correlation with liver biochemical markers. Liver histology keeps its role as the standard tool, yet it is well-known for substantial sampling, intraobserver, and interobserver variability. Serum proinflammatory cytokines and apoptotic markers, namely cytokeratin-18, are well-studied with reasonable accuracy, whereas serum metabolomics and lipidomics have been adopted in some commercially available diagnostic models. Ultrasound and computed tomography imaging techniques are attractive due to their wide availability; yet their accuracies may not be comparable with magnetic resonance imaging-based tools. Machine learning and deep learning models, be they supervised or unsupervised learning, are promising tools to identify various subtypes of NAFLD, including those with dominating liver inflammation, contributing to sustainable care pathways for NAFLD.
炎症是非酒精性脂肪性肝病 (NAFLD) 肝纤维化进展的关键驱动因素。不幸的是,由于其动态性质和与肝生化标志物的相关性差,NAFLD 中的炎症往往难以评估。肝脏组织学仍然是标准工具,但它因大量采样、观察者内和观察者间的变异性而广为人知。血清促炎细胞因子和凋亡标志物,即细胞角蛋白 18,已经得到了很好的研究,具有合理的准确性,而血清代谢组学和脂质组学已经被一些商业上可用的诊断模型采用。超声和计算机断层扫描成像技术因其广泛的可用性而具有吸引力;然而,它们的准确性可能无法与基于磁共振成像的工具相媲美。机器学习和深度学习模型,无论是监督学习还是无监督学习,都是识别各种类型的 NAFLD 的有前途的工具,包括那些以肝脏炎症为主导的类型,为 NAFLD 的可持续护理途径做出贡献。