Application of artificial intelligence in clinical diagnosis and treatment: an overview of systematic reviews

IF 4.4 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Shouyuan Wu , Jianjian Wang , Qiangqiang Guo , Hui Lan , Juanjuan Zhang , Ling Wang , Estill Janne , Xufei Luo , Qi Wang , Yang Song , Joseph L. Mathew , Yangqin Xun , Nan Yang , Myeong Soo Lee , Yaolong Chen
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引用次数: 2

Abstract

Objective

This study aimed to summarize the characteristics and methodological quality of systematic reviews on the application of artificial intelligence (AI) in clinical diagnosis and treatment.

Methods

We systematically searched seven English- and Chinese-language literature databases to identify systematic reviews on the application of AI, deep learning, or machine learning in the diagnosis and treatment of any disease published in 2020. We evaluated the methodological quality of the included systematic reviews using “A Measurement tool for the assessment of multiple systematic reviews” (AMSTAR). We also conducted meta-analyses on the diagnostic accuracy of AI on selected disease categories with a large number of included studies and low clinical heterogeneity.

Results

A total of 40 systematic reviews reporting 1,083 original studies were included, covering 31 diseases from 11 groups of diseases. Eleven systematic reviews were related to neoplasms and nine were systematic reviews related to diseases of the digestive system. We selected digestive system diseases for the meta-analysis. The pooled sensitivities (with 95% confidence interval (CI)) of AI to assist the diagnosis of helicobacter pylori, gastrointestinal ulcers, hemorrhage, esophageal tumors, gastric tumors, and intestinal tumors (with 95% CI) were 0.91 (0.83–0.95), 0.99 (0.76–1.00), 0.95 (0.83–0.99), 0.90 (0.85–0.93), 0.90 (0.82–0.95), and 0.93 (0.88–0.96), respectively, and the pooled specificities were 0.82 (0.77–0.87), 0.97 (0.86–1.00), 1.00 (0.99–1.00), 0.80 (0.71–0.87), 0.93 (0.87–0.97), and 0.89 (0.85–0.92), respectively. The AMSTAR items “the list of included studies” (n = 39, 97.5%) and “the characteristics of the included studies” (n = 39, 97.5%) had the highest compliance among the reviews; the compliance was relatively low to the items “the consideration of publication status” (n = 1, 2.5%), “the consideration of scientific quality” (n = 19, 47.5%), “data synthesis methods” (n = 18, 45.0%), and “ the evaluation of publication bias” (n = 13, 32.5%).

Conclusions

The main subjects of systematic reviews on AI applications in clinical diagnosis and treatment published in 2020 were diseases of the digestive system and neoplasms. The methodological quality of the systematic reviews on AI needs to be improved, paying particular attention to publication bias and the rigorous evaluation of the quality of the included studies.

人工智能在临床诊疗中的应用:系统综述
目的总结人工智能(AI)在临床诊疗中的应用系统综述的特点和方法学质量。方法我们系统检索了7个中英文文献数据库,以确定2020年发表的关于人工智能、深度学习或机器学习在任何疾病诊断和治疗中的应用的系统综述。我们使用“多系统评价评估的测量工具”(AMSTAR)评估纳入的系统评价的方法学质量。我们还对人工智能对选定疾病类别的诊断准确性进行了荟萃分析,纳入了大量研究,临床异质性低。结果共纳入系统综述40篇,原始研究1083篇,涵盖11组疾病31种疾病。11篇系统综述与肿瘤相关,9篇与消化系统疾病相关。我们选择消化系统疾病进行meta分析。人工智能辅助诊断幽门螺杆菌、胃肠道溃疡、出血、食管肿瘤、胃肿瘤、肠道肿瘤的综合敏感性(95%可信区间CI)分别为0.91(0.83-0.95)、0.99(0.76-1.00)、0.95(0.83-0.99)、0.90(0.85-0.93)、0.90(0.82 - 0.87)、0.97(0.86-1.00)、1.00(0.99 - 1.00)、0.80(0.71-0.87)、0.93(0.87-0.97)、0.89(0.85-0.92)。分别。AMSTAR项目“纳入研究列表”(n = 39, 97.5%)和“纳入研究的特征”(n = 39, 97.5%)的依从性最高;“对发表状态的考虑”(n = 1, 2.5%)、“对科学质量的考虑”(n = 19, 47.5%)、“数据综合方法”(n = 18, 45.0%)和“对发表偏倚的评价”(n = 13, 32.5%)的依从性相对较低。结论2020年发表的人工智能在临床诊疗中的应用系统综述以消化系统疾病和肿瘤为主。人工智能系统综述的方法学质量需要提高,特别注意发表偏倚和对纳入研究质量的严格评估。
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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来源期刊
Intelligent medicine
Intelligent medicine Surgery, Radiology and Imaging, Artificial Intelligence, Biomedical Engineering
CiteScore
5.20
自引率
0.00%
发文量
19
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