用于肝脏对比增强超声的人工智能:系统综述。

IF 3 3区 医学 Q2 GASTROENTEROLOGY & HEPATOLOGY
Digestion Pub Date : 2024-09-23 DOI:10.1159/000541540
James A Brooks, Michael Kallenbach, Iuliana-Pompilia Radu, Annalisa Berzigotti, Christoph F Dietrich, Jakob N Kather, Tom Luedde, Tobias P Seraphin
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引用次数: 0

摘要

导言 人工智能(AI)在医学尤其是消化内科领域的研究进展迅速,首批人工智能工具已进入常规临床实践,例如结肠直肠癌筛查。对比增强超声(CEUS)是一种高度可靠、低风险、低成本的肝脏检查诊断方法。然而,医生需要多年的培训和经验才能掌握这项技术,而且,尽管已尽一切努力使CEUS标准化,但人们通常认为它仍存在很大的医生间差异。正如内窥镜检查所显示的那样,人工智能有望帮助各种培训水平的检查人员做出决策并提高效率。方法 在这篇系统性综述中,我们分析并比较了 2010 年 1 月至 2024 年 2 月间发表的将人工智能方法应用于肝脏 CEUS 检查的原创性研究。我们在 PubMed、Web of Science 和 IEEE 上进行了结构化文献检索。两位独立审稿人对文章进行了筛选,随后从纳入的文章中提取了相关的方法学特征,如队列规模、验证过程、使用的机器学习算法以及指示性的性能指标。结果 我们共纳入了 41 项研究,其中大部分研究将人工智能方法应用于与肝脏病灶相关的分类任务。这些任务包括区分良性与恶性或对实体本身进行分类,而少数研究则试图直接从CEUS对肿瘤分级、微血管侵犯状态或对经导管动脉化疗栓塞的反应进行分类。一些文章试图分割或检测肝脏病灶,另一些文章则旨在预测消融术后的生存率和复发率。大多数研究(25/41)使用手工挑选和/或注释的图像作为其模型的数据输入。我们观察到大多数报告的模型性能良好或较高,准确率在 58.6% 到 98.9% 之间,但我们注意到普遍缺乏外部验证。结论 尽管已有多项将人工智能方法应用于肝脏CEUS检查的概念验证研究,并报告了较高的性能,但仍需要更多前瞻性的、经过外部验证的多中心研究,才能将此类算法从案头带到床旁。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence for Contrast-Enhanced Ultrasound of the Liver: A Systematic Review.

Introduction: The research field of artificial intelligence (AI) in medicine and especially in gastroenterology is rapidly progressing with the first AI tools entering routine clinical practice, for example, in colorectal cancer screening. Contrast-enhanced ultrasound (CEUS) is a highly reliable, low-risk, and low-cost diagnostic modality for the examination of the liver. However, doctors need many years of training and experience to master this technique and, despite all efforts to standardize CEUS, it is often believed to contain significant interrater variability. As has been shown for endoscopy, AI holds promise to support examiners at all training levels in their decision-making and efficiency.

Methods: In this systematic review, we analyzed and compared original research studies applying AI methods to CEUS examinations of the liver published between January 2010 and February 2024. We performed a structured literature search on PubMed, Web of Science, and IEEE. Two independent reviewers screened the articles and subsequently extracted relevant methodological features, e.g., cohort size, validation process, machine learning algorithm used, and indicative performance measures from the included articles.

Results: We included 41 studies with most applying AI methods for classification tasks related to focal liver lesions. These included distinguishing benign versus malignant or classifying the entity itself, while a few studies tried to classify tumor grading, microvascular invasion status, or response to transcatheter arterial chemoembolization directly from CEUS. Some articles tried to segment or detect focal liver lesions, while others aimed to predict survival and recurrence after ablation. The majority (25/41) of studies used hand-picked and/or annotated images as data input to their models. We observed mostly good to high reported model performances with accuracies ranging between 58.6% and 98.9%, while noticing a general lack of external validation.

Conclusion: Even though multiple proof-of-concept studies for the application of AI methods to CEUS examinations of the liver exist and report high performance, more prospective, externally validated, and multicenter research is needed to bring such algorithms from desk to bedside.

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来源期刊
Digestion
Digestion 医学-胃肠肝病学
CiteScore
7.90
自引率
0.00%
发文量
39
审稿时长
6-12 weeks
期刊介绍: ''Digestion'' concentrates on clinical research reports: in addition to editorials and reviews, the journal features sections on Stomach/Esophagus, Bowel, Neuro-Gastroenterology, Liver/Bile, Pancreas, Metabolism/Nutrition and Gastrointestinal Oncology. Papers cover physiology in humans, metabolic studies and clinical work on the etiology, diagnosis, and therapy of human diseases. It is thus especially cut out for gastroenterologists employed in hospitals and outpatient units. Moreover, the journal''s coverage of studies on the metabolism and effects of therapeutic drugs carries considerable value for clinicians and investigators beyond the immediate field of gastroenterology.
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