Soumita Ghosh, Xun Zhao, Mouaid Alim, Michael Brudno, Mamatha Bhat
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引用次数: 0
Abstract
Advancements in omics technologies and artificial intelligence (AI) methodologies are fuelling our progress towards personalised diagnosis, prognosis and treatment strategies in hepatology. This review provides a comprehensive overview of the current landscape of AI methods used for analysis of omics data in liver diseases. We present an overview of the prevalence of different omics levels across various liver diseases, as well as categorise the AI methodology used across the studies. Specifically, we highlight the predominance of transcriptomic and genomic profiling and the relatively sparse exploration of other levels such as the proteome and methylome, which represent untapped potential for novel insights. Publicly available database initiatives such as The Cancer Genome Atlas and The International Cancer Genome Consortium have paved the way for advancements in the diagnosis and treatment of hepatocellular carcinoma. However, the same availability of large omics datasets remains limited for other liver diseases. Furthermore, the application of sophisticated AI methods to handle the complexities of multiomics datasets requires substantial data to train and validate the models and faces challenges in achieving bias-free results with clinical utility. Strategies to address the paucity of data and capitalise on opportunities are discussed. Given the substantial global burden of chronic liver diseases, it is imperative that multicentre collaborations be established to generate large-scale omics data for early disease recognition and intervention. Exploring advanced AI methods is also necessary to maximise the potential of these datasets and improve early detection and personalised treatment strategies.
omics技术和人工智能(AI)方法的进步推动了我们在肝脏病学的个性化诊断、预后和治疗策略方面取得进展。本综述全面概述了当前用于分析肝病中的全息数据的人工智能方法。我们概述了各种肝病中不同分子水平的流行情况,并对各项研究中使用的人工智能方法进行了分类。具体来说,我们强调了转录组和基因组剖析的主导地位,以及对蛋白质组和甲基组等其他层面相对稀少的探索,而这些层面代表着新见解尚未开发的潜力。癌症基因组图谱》(The Cancer Genome Atlas)和国际癌症基因组联盟(The International Cancer Genome Consortium)等公共数据库计划为肝细胞癌的诊断和治疗铺平了道路。然而,对于其他肝脏疾病来说,大型全息数据集的可用性仍然有限。此外,应用复杂的人工智能方法来处理复杂的多组学数据集需要大量数据来训练和验证模型,在获得无偏差的临床实用结果方面也面临挑战。本文讨论了解决数据匮乏和把握机遇的策略。鉴于慢性肝病给全球带来的沉重负担,当务之急是建立多中心合作,以生成用于早期疾病识别和干预的大规模组学数据。探索先进的人工智能方法也是必要的,这样才能最大限度地发挥这些数据集的潜力,改善早期检测和个性化治疗策略。
期刊介绍:
Gut is a renowned international journal specializing in gastroenterology and hepatology, known for its high-quality clinical research covering the alimentary tract, liver, biliary tree, and pancreas. It offers authoritative and current coverage across all aspects of gastroenterology and hepatology, featuring articles on emerging disease mechanisms and innovative diagnostic and therapeutic approaches authored by leading experts.
As the flagship journal of BMJ's gastroenterology portfolio, Gut is accompanied by two companion journals: Frontline Gastroenterology, focusing on education and practice-oriented papers, and BMJ Open Gastroenterology for open access original research.