人工智能为中心的系统在使用计算机断层扫描成像对上消化道恶性肿瘤进行诊断和术后监测中的诊断性能:诊断准确性的系统评价和荟萃分析。

Diagnostic Performance of Artificial Intelligence-Centred Systems in the Diagnosis and Postoperative Surveillance of Upper Gastrointestinal Malignancies Using Computed Tomography Imaging: A Systematic Review and Meta-Analysis of Diagnostic Accuracy.

机构信息

Department of Surgery and Cancer, Imperial College London, London, UK.

Institute of Global Health Innovation, Imperial College London, London, UK.

出版信息

Ann Surg Oncol. 2022 Mar;29(3):1977-1990. doi: 10.1245/s10434-021-10882-6. Epub 2021 Nov 11.

Abstract

BACKGROUND

Upper gastrointestinal cancers are aggressive malignancies with poor prognosis, even following multimodality therapy. As such, they require timely and accurate diagnostic and surveillance strategies; however, such radiological workflows necessitate considerable expertise and resource to maintain. In order to lessen the workload upon already stretched health systems, there has been increasing focus on the development and use of artificial intelligence (AI)-centred diagnostic systems. This systematic review summarizes the clinical applicability and diagnostic performance of AI-centred systems in the diagnosis and surveillance of esophagogastric cancers.

METHODS

A systematic review was performed using the MEDLINE, EMBASE, Cochrane Review, and Scopus databases. Articles on the use of AI and radiomics for the diagnosis and surveillance of patients with esophageal cancer were evaluated, and quality assessment of studies was performed using the QUADAS-2 tool. A meta-analysis was performed to assess the diagnostic accuracy of sequencing methodologies.

RESULTS

Thirty-six studies that described the use of AI were included in the qualitative synthesis and six studies involving 1352 patients were included in the quantitative analysis. Of these six studies, four studies assessed the utility of AI in gastric cancer diagnosis, one study assessed its utility for diagnosing esophageal cancer, and one study assessed its utility for surveillance. The pooled sensitivity and specificity were 73.4% (64.6-80.7) and 89.7% (82.7-94.1), respectively.

CONCLUSIONS

AI systems have shown promise in diagnosing and monitoring esophageal and gastric cancer, particularly when combined with existing diagnostic methods. Further work is needed to further develop systems of greater accuracy and greater consideration of the clinical workflows that they aim to integrate within.

摘要

背景

上消化道癌症是预后较差的侵袭性恶性肿瘤,即使采用多模式治疗也是如此。因此,它们需要及时、准确的诊断和监测策略;然而,这种放射学工作流程需要相当的专业知识和资源来维持。为了减轻已经紧张的卫生系统的工作量,人们越来越关注人工智能(AI)为中心的诊断系统的开发和使用。本系统评价总结了 AI 为中心的系统在诊断和监测食管胃交界癌中的临床适用性和诊断性能。

方法

使用 MEDLINE、EMBASE、Cochrane Review 和 Scopus 数据库进行系统评价。评估了关于 AI 和放射组学用于诊断和监测食管癌患者的文章,并使用 QUADAS-2 工具对研究进行质量评估。进行了荟萃分析以评估测序方法的诊断准确性。

结果

纳入了 36 项描述 AI 使用的定性综合研究和 6 项涉及 1352 名患者的定量分析研究。在这 6 项研究中,有 4 项研究评估了 AI 在胃癌诊断中的应用价值,1 项研究评估了其在食管癌诊断中的应用价值,1 项研究评估了其在监测中的应用价值。汇总的敏感性和特异性分别为 73.4%(64.6-80.7)和 89.7%(82.7-94.1)。

结论

AI 系统在诊断和监测食管和胃癌方面显示出了一定的前景,特别是当与现有的诊断方法结合使用时。需要进一步的工作来进一步开发更准确的系统,并更多地考虑它们旨在集成的临床工作流程。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3ca9/8810479/48430c45837d/10434_2021_10882_Fig1_HTML.jpg

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