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Diagnostic Performance of Artificial Intelligence-Based Models for the Detection of Early Esophageal Cancers in Barret’s Esophagus: A Meta-Analysis of Patient-Based Studies

机译:基于人工智能的诊断性能检测丸子食管早期食管癌:基于患者研究的荟萃分析

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Introduction Barret’s esophagus (BE) is a precursor of adenocarcinoma of the esophagus. The detection of high-grade dysplasia and adenocarcinoma at an early stage can improve survival but is very challenging.?Artificial intelligence (AI)-based models have been claimed to improve diagnostic accuracy. The aim of the current study was to carry out a meta-analysis of papers reporting the results of artificial intelligence-based models used in real-time white light endoscopy of patients with BE to detect early esophageal adenocarcinoma (EEAC). Methods This meta-analysis was?registered with the International Prospective Register of Systematic Reviews (PROSPERO; Reg No. CRD42021246148) and its conduction and reporting followed the Preferred Reporting Items for Systematic Review and Meta-Analysis of Diagnostic Test Accuracy (PRISMA-DTA) statement guidelines. All peer-reviewed and preprint original articles that reported the sensitivity and specificity of AI-based models on white light endoscopic imaging as an index test against the standard criterion of histologically proven early oesophageal cancer on the background of Barret's esophagus reported as per-patient analysis were considered for inclusion. There was no restriction on type and year of publication, however, articles published in the English language were searched.?The search engines used included Medline, PubMed, EMBASE, EMCARE, AMED, BNI, and HMIC.?The search?strategy included the following keywords for all search engines: ("Esophageal Cancer" OR "Esophageal Neoplasms" OR " Oesophageal Cancer" OR "Oesophageal Neoplasms” OR "Barrett's Esophagus" OR "Barrett's Oesophagus") And ("Artificial Intelligence" OR "Deep Learning" OR "Machine Learning" OR "Convolutional Network"). This search was conducted on November 30, 2020. Duplicate studies were excluded. Studies that reported more than one dataset per patient for the diagnostic accuracy of the AI-based model?were included twice. Quantitative and qualitative data, including first author, year of publication, true positives (TP), false negatives (FN), false positives (FP), true negatives (TN), the threshold of the index test, and country where the study was conducted, were extracted using a data extraction sheet. The Quality Appraisal for Diverse Studies 2 (QUADS-2) tool was used to assess the quality of each study.?Data were analyzed using MetaDTA, interactive online software for meta-analysis of diagnostic studies. The diagnostic performance of the meta-analysis was assessed by a summary receiver operating characteristics (sROC) plot. A meta-analysis tree was constructed using?MetaDTA software to determine the effect of cumulative sensitivity and specificity on surveillance of patients with BE in terms of miss rate and overdiagnosis. Results The literature search revealed 171 relevant records. After removing duplicates, 117 records were screened. Full-text articles of 28 studies were assessed for eligibility. Only three studies reporting four datasets met the inclusion criteria. The summary sensitivity and specificity of AI-based models were 0.90 (95% CI, 0.83- 0.944) and 0.86 (95% CI, 0.781-0.91), respectively. The area under the curve for all the available evidence was 0.88. Conclusion Collective evidence for the routine usage of AI-based models in the detection of EEAC is encouraging but is limited by the low number of studies. Further prospective studies reporting the patient-based diagnostic accuracy of such models are required.
机译:介绍啤酒丸的食道(BE)是食道腺癌的前兆。在早期阶段的高级发育性和腺癌的检测可以提高生存,但非常具有挑战性。已被声称智能(AI)基础的模型提高诊断准确性。目前研究的目的是进行报告,报告患者实时白光内窥镜检查的人工智能的模型结果的荟萃分析,以检测早期食管腺癌(EEAC)。方法此荟萃分析?注册了国际上的系统评论预期登记册(Prospero; Reg No.CRD42021246148)及其传导和报告遵循了系统审查的首选报告项目和诊断测试准确性的荟萃分析(Prisma-DTA)声明指南。所有同行评审和预印的原始文章报告了在白光内窥镜成像上作为针对组织学前早期食管癌的标准标准的指标试验,以对每患者分析报告的Barret食管背景上的标准标准的指标测试被认为包含在内。没有限制出版物类型和年份,但是,搜索了用英语发表的文章。使用包括Medline,PubMed,Embase,Emcare,Amed,BNI和HMIC的搜索引擎。搜索?策略包括在内以下所有搜索引擎的关键词:(“食管癌”或“食管肿瘤”或“食管肿瘤”或“食管肿瘤”或“Barrett的食道”或“Barrett的食道”)和(“人工智能”或“深度学习”或“深度学习”或“机器学习”或“卷积网络”)。该搜索是在2020年11月30日进行的。排除了重复研究。研究了每位患者报告多个数据集的基于AI的模型的诊断准确性?包括两次。定量和定性数据,包括第一作者,出版年份,真正的积极(TP),假否定(FN),假阳性(FP),真正的否定(TN),指数测试的门槛以及研究所在的国家/地区进行,是额外的使用数据提取纸张CTED。用于各种研究2(Quads-2)工具的质量评估用于评估每项研究的质量。使用Metadta,互动在线软件进行诊断研究的互动在线软件进行分析。通过摘要接收器操作特性(SROC)图来评估META分析的诊断性能。使用ΔEyDTA软件构建了META分析树,以确定累积敏感性和特异性对患者的累积敏感性和特异性的影响。结果文献搜索揭示了171个相关记录。删除重复后,筛选了117条记录。分析了28项研究的全文文章以获得资格。报告四项数据只有三项数据集符合纳入标准。 SI基模型的总结敏感性和特异性分别为0.90(95%CI,0.83- 0.944)和0.86(95%CI,0.781-0.91)。所有可用证据的曲线下的区域为0.88。结论常规用途的集体证据在检测EAC检测中的常规用途是令人鼓舞的,但受到较低的研究数量的限制。需要报告此类模型的患者的诊断准确性的进一步前瞻性研究是必需的。

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