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A Gastrointestinal Endoscopy Quality Control System Incorporated With Deep Learning Improved Endoscopist Performance in a Pretest and Post-Test Trial

机译:一种胃肠内镜内窥镜检查系统,其含有深度学习,提高了预测和测试后试验中的内窥镜表现

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INTRODUCTION: Gastrointestinal endoscopic quality is operator-dependent. To ensure the endoscopy quality, we constructed an endoscopic audit and feedback system named Endo.Adm and evaluated its effect in a form of pretest and posttest trial. METHODS: Endo.Adm system was developed using Python and Deep Convolutional Neural Ne2rk models. Sixteen endoscopists were recruited from Renmin Hospital of Wuhan University and were randomly assigned to undergo feedback of Endo.Adm or not (8 for the feedback group and 8 for the control group). The feedback group received weekly quality report cards which were automatically generated by Endo.Adm. We then compared the adenoma detection rate (ADR) and gastric precancerous conditions detection rate between baseline and postintervention phase for endoscopists in each group to evaluate the impact of Endo.Adm feedback. In total, 1,191 colonoscopies and 3,515 gastroscopies were included for analysis. RESULTS: ADR was increased after Endo.Adm feedback (10.8%–20.3%, P & 0.01, &odds ratio (OR) 2.13, 95% confidence interval (CI) 1.317–3.447), and endoscopists' ADR without feedback remained nearly unchanged (10.8%–10.9%, P = 0.57, OR 1.086, 95% CI 0.814–1.447). Gastric precancerous conditions detection rate increased in the feedback group (3%–7%, P & 0.01, OR 1.866, 95% CI 1.399–2.489) while no improvement was observed in the control group (3.9%–3.5%, P = 0.489, OR 0.856, 95% CI 0.550–1.332). DISCUSSION: Endo.Adm feedback contributed to multifaceted gastrointestinal endoscopic quality improvement. This system is practical to implement and may serve as a standard model for quality improvement in routine work ( http://www.chictr.org.cn/ , ChiCTR1900024153).
机译:介绍:胃肠内窥镜质量是依赖的操作员。为确保内窥镜检查质量,我们构建了一个名为Endo.adm的内窥镜审计和反馈系统,并以预测试和后测试的形式评估其效果。方法:使用Python和深卷积神经Ne2RK模型开发了Endo.adm系统。从武汉大学人民医院招募了16位内窥镜师,随机分配到Endo.adm的反馈(8为控制组的8号)的反馈。反馈组收到的每周质量报告卡,由Endo.adm自动生成。然后,我们将腺瘤检测率(ADR)和胃癌癌前病症进行比较,在每组内窥镜师的基线和后不能进行的临床前阶段之间的检测率来评估Endo.adm反馈的影响。共有1,191张结肠镜和3,515次胃镜分析。结果:endo.adm反馈后ADR增加(10.8%-20.3%,P& 0.01,& od; 0.13,95%置信区间(CI)1.317-3.447)和内窥镜师没有反馈的ADR仍然近似不变(10.8%-10.9%,p = 0.57或1.086,95%CI 0.814-1.447))。胃癌癌前条件检测率在反馈组(3%-7%,P& LT; 0.01或1.866,95%CI 1.399-2.489)中增加,同时对照组没有改善(3.9%-3.5%, P = 0.489,或0.856,95%CI 0.550-1.332)。讨论:ENDO.ADM反馈导致多方面的胃肠内镜内窥镜质量改进。该系统实际实施,可以作为日常工作质量改进的标准模型(http://www.chictr.org.cn/,chictr1900024153)。

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