兰州大学循证社会科学交叉创新实验室 Innovation Laboratory of Evidence-based Social Sciences,Lanzhou University

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

2022

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.

研究类型
Meta分析
人群
混合人群
主题
["技术资源","医疗服务技术"]
作者
Swathikan Chidambaram; Viknesh Sounderajah; Nick Maynard; Sheraz R Markar
国家
United Kingdom
来源期刊
Ann Surg Oncol .
发布日期
2022
相关网址
https://www.healthsystemsevidence.org/articles/62fe6fc7ef088708d8e0f31a-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?source=saved_email
DOI
10.1245/s10434-021-10882-6
学科领域
DiseasesNon-communicable diseasesCancer