Augmenting care in hepatocellular carcinoma with artificial intelligence

Flora Wen Xin Xu, Sarah S. Tang, Hann Natalie Soh, N. Pang, G. Bonney
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Abstract

Hepatocellular carcinoma (HCC) is the fourth leading cause of cancer-related death worldwide and prognosis remains poor. The recent paradigm shifts in management algorithms of such patients have resulted in unique challenges in the early identification of HCC, prognosis, surgical outcomes, prioritization of potential transplant recipients, donor-recipient matching, and so on. In recent years, advancements in artificial intelligence (AI) capabilities have shown potential in HCC treatment. In this narrative review, we outline first the different types of AI models that are applied in clinical practice and then focus on the frontiers of AI research in the diagnosis, prognostication, and treatment of HCC, particularly in classification of indeterminate liver lesions, tumor staging, survival prediction, improving equity in transplant recipient selection, prediction of treatment response and prognosis. We show that US coupled with AI-driven predictive models can provide accurate noninvasive screening tools for early disease. While AI models applied to contrast-enhanced CT, MRI and PET studies may appear to have limited clinical utility in disease diagnosis and differentials, owing to their accuracy, we highlighted the importance of such models in predicting pathological findings preoperatively. Despite the availability of many accurate, sensitive, and specific AI algorithms that outperform traditional scoring systems, they have not been widely used in clinical practice. The challenges in AI application, including distributional shift and imbalanced data, lack of standardization, and the ‘black box’ phenomenon, are addressed here. The importance of AI in the future of HCC makes it important for clinicians to have a good understanding of different AI techniques, their benefits, and potential pitfalls.
人工智能在肝癌护理中的应用
肝细胞癌(HCC)是全球癌症相关死亡的第四大原因,预后仍然很差。最近这类患者的管理算法的范式转变导致了HCC的早期识别、预后、手术结果、潜在移植受体的优先排序、供体-受体匹配等方面的独特挑战。近年来,人工智能(AI)能力的进步在HCC治疗中显示出潜力。在这篇叙述性综述中,我们首先概述了应用于临床实践的不同类型的人工智能模型,然后重点介绍了人工智能在HCC的诊断、预后和治疗方面的前沿研究,特别是在不确定肝病变的分类、肿瘤分期、生存预测、提高移植受体选择的公平性、预测治疗反应和预后方面。我们表明,美国与人工智能驱动的预测模型相结合,可以为早期疾病提供准确的无创筛查工具。虽然应用于对比增强CT、MRI和PET研究的人工智能模型在疾病诊断和鉴别方面的临床应用可能有限,但由于它们的准确性,我们强调了这些模型在术前预测病理结果方面的重要性。尽管有许多准确、敏感和特定的人工智能算法优于传统的评分系统,但它们尚未广泛应用于临床实践。本文解决了人工智能应用中的挑战,包括分布转移和数据不平衡、缺乏标准化和“黑箱”现象。鉴于人工智能在HCC治疗中的重要性,临床医生必须充分了解不同的人工智能技术、它们的益处和潜在的缺陷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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