Lupsor-Platon Monica, Serban Teodora, Silion Alexandra Iulia, Tirpe George Razvan, Tirpe Alexandru, Florea Mira
Medical Imaging Department, Regional Institute of Gastroenterology and Hepatology, Iuliu Hatieganu University of Medicine and Pharmacy, 400162 Cluj-Napoca, Romania.
Medical Imaging Department, Iuliu Hatieganu University of Medicine and Pharmacy, 400162 Cluj-Napoca, Romania.
Cancers (Basel). 2021 Feb 14;13(4):790. doi: 10.3390/cancers13040790.
Global statistics show an increasing percentage of patients that develop non-alcoholic fatty liver disease (NAFLD) and NAFLD-related hepatocellular carcinoma (HCC), even in the absence of cirrhosis. In the present review, we analyzed the diagnostic performance of ultrasonography (US) in the non-invasive evaluation of NAFLD and NAFLD-related HCC, as well as possibilities of optimizing US diagnosis with the help of artificial intelligence (AI) assistance. To date, US is the first-line examination recommended in the screening of patients with clinical suspicion of NAFLD, as it is readily available and leads to a better disease-specific surveillance. However, the conventional US presents limitations that significantly hamper its applicability in quantifying NAFLD and accurately characterizing a given focal liver lesion (FLL). Ultrasound contrast agents (UCAs) are an essential add-on to the conventional B-mode US and to the Doppler US that further empower this method, allowing the evaluation of the enhancement properties and the vascular architecture of FLLs, in comparison to the background parenchyma. The current paper also explores the new universe of AI and the various implications of deep learning algorithms in the evaluation of NAFLD and NAFLD-related HCC through US methods, concluding that it could potentially be a game changer for patient care.
全球统计数据显示,即使在没有肝硬化的情况下,患非酒精性脂肪性肝病(NAFLD)和NAFLD相关肝细胞癌(HCC)的患者比例也在不断增加。在本综述中,我们分析了超声检查(US)在NAFLD和NAFLD相关HCC的非侵入性评估中的诊断性能,以及借助人工智能(AI)辅助优化US诊断的可能性。迄今为止,US是临床怀疑患有NAFLD患者筛查中推荐的一线检查方法,因为它易于获得且能实现更好的疾病特异性监测。然而,传统US存在局限性,严重阻碍了其在量化NAFLD和准确表征特定肝脏局灶性病变(FLL)方面的适用性。超声造影剂(UCA)是传统B超和多普勒超声必不可少的补充,它进一步增强了这种检查方法,与背景实质相比,能够评估FLL的增强特性和血管结构。本文还探讨了人工智能的新领域以及深度学习算法通过US方法在评估NAFLD和NAFLD相关HCC中的各种影响,得出结论认为,这可能会给患者护理带来重大改变。