人工智能在肝病管理中的作用。

The Kaohsiung journal of medical sciences Pub Date : 2024-11-01 Epub Date: 2024-10-23 DOI:10.1002/kjm2.12901
Ming-Ying Lu, Wan-Long Chuang, Ming-Lung Yu
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引用次数: 0

摘要

新生儿乙型肝炎病毒(HBV)疫苗的普及和针对丙型肝炎病毒(HCV)的直接作用抗病毒药物(DAA)的出现重塑了慢性肝病的流行病学。然而,慢性肝病管理的某些方面仍悬而未决。核苷酸类似物可以实现持续的 HBV DNA 抑制,但很少能实现功能性治愈。尽管DAAs具有很高的疗效,但成功的抗病毒治疗并不能消除肝细胞癌(HCC)的风险,这凸显了对高危人群进行HCC监测和为这些人群量身定制HCC治疗策略的成本效益识别的必要性。高通量基因组数据的获取加速了精准医疗的发展,而人工智能(AI)的出现则引领了精准医疗的新时代。人工智能可以从复杂的非线性数据中学习,并识别真实世界数据集中隐藏的模式。人工智能与多组学方法的结合可促进疾病诊断、生物标记物的发现以及疗效和预后的预测。人工智能算法已在多方面得到应用,包括无创检测、预测模型、图像诊断和组织病理学结果解读。人工智能可以为临床医生的决策提供支持,减轻临床负担,降低医疗费用。在这篇综述中,我们将介绍机器学习的基本概念,并回顾人工智能在慢性肝病管理中的作用。
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The role of artificial intelligence in the management of liver diseases.

Universal neonatal hepatitis B virus (HBV) vaccination and the advent of direct-acting antivirals (DAA) against hepatitis C virus (HCV) have reshaped the epidemiology of chronic liver diseases. However, some aspects of the management of chronic liver diseases remain unresolved. Nucleotide analogs can achieve sustained HBV DNA suppression but rarely lead to a functional cure. Despite the high efficacy of DAAs, successful antiviral therapy does not eliminate the risk of hepatocellular carcinoma (HCC), highlighted the need for cost-effective identification of high-risk populations for HCC surveillance and tailored HCC treatment strategies for these populations. The accessibility of high-throughput genomic data has accelerated the development of precision medicine, and the emergence of artificial intelligence (AI) has led to a new era of precision medicine. AI can learn from complex, non-linear data and identify hidden patterns within real-world datasets. The combination of AI and multi-omics approaches can facilitate disease diagnosis, biomarker discovery, and the prediction of treatment efficacy and prognosis. AI algorithms have been implemented in various aspects, including non-invasive tests, predictive models, image diagnosis, and the interpretation of histopathology findings. AI can support clinicians in decision-making, alleviate clinical burdens, and curtail healthcare expenses. In this review, we introduce the fundamental concepts of machine learning and review the role of AI in the management of chronic liver diseases.

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