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人工智能辅助内镜诊断系统对提高结肠镜检查中受训者内镜质量的影响:前瞻性、随机、多中心研究。

Impact of an artificial intelligence-aided endoscopic diagnosis system on improving endoscopy quality for trainees in colonoscopy: Prospective, randomized, multicenter study.

机构信息

Department of Gastroenterology, National Hospital Organization Ureshino Medical Center, Ureshino, Japan.

Division of Gastroenterology, Department of Internal Medicine, Faculty of Medicine, Saga University, Saga, Japan.

出版信息

Dig Endosc. 2024 Jan;36(1):40-48. doi: 10.1111/den.14573. Epub 2023 May 29.

DOI:10.1111/den.14573
PMID:37079002
Abstract

OBJECTIVE

This study was performed to evaluate whether the use of CAD EYE (Fujifilm, Tokyo, Japan) for colonoscopy improves colonoscopy quality in gastroenterology trainees.

METHODS

The patients in this multicenter randomized controlled trial were divided into Group A (observation using CAD EYE) and Group B (standard observation). Six trainees performed colonoscopies using a back-to-back method in pairs with gastroenterology experts. The primary end-point was the trainees' adenoma detection rate (ADR), and the secondary end-points were the trainees' adenoma miss rate (AMR) and Assessment of Competency in Endoscopy (ACE) tool scores. Each trainee's learning curve was evaluated using a cumulative sum (CUSUM) control chart.

RESULTS

We analyzed data for 231 patients (Group A, n = 113; Group B, n = 118). The ADR was not significantly different between the two groups. Group A had a significantly lower AMR (25.6% vs. 38.6%, P = 0.033) and number of missed adenomas per patient (0.5 vs. 0.9, P = 0.004) than Group B. Group A also had significantly higher ACE tool scores for pathology identification (2.26 vs. 2.07, P = 0.030) and interpretation and identification of pathology location (2.18 vs. 2.00, P = 0.038). For the CUSUM learning curve, Group A showed a trend toward a lower number of cases of missed multiple adenomas by the six trainees.

CONCLUSION

CAD EYE did not improve ADR but decreased the AMR and improved the ability to accurately locate and identify colorectal adenomas. CAD EYE can be assumed to be beneficial for improving colonoscopy quality in gastroenterology trainees.

TRIAL REGISTRATION

University Hospital Medical Information Network Clinical Trials Registry (UMIN000044031).

摘要

目的

本研究旨在评估 CAD EYE(富士胶片,东京,日本)在结肠镜检查中是否有助于提高消化科受训者的结肠镜检查质量。

方法

这项多中心随机对照试验的患者被分为 A 组(使用 CAD EYE 观察)和 B 组(标准观察)。六名受训者使用背靠背方法与消化科专家配对进行结肠镜检查。主要终点是受训者的腺瘤检出率(ADR),次要终点是受训者的腺瘤漏诊率(AMR)和内镜评估能力(ACE)工具评分。使用累积和(CUSUM)控制图评估每位受训者的学习曲线。

结果

我们分析了 231 名患者的数据(A 组,n=113;B 组,n=118)。两组的 ADR 无显著差异。A 组的 AMR(25.6%比 38.6%,P=0.033)和每位患者漏诊的腺瘤数(0.5 比 0.9,P=0.004)明显低于 B 组。A 组在病理识别(2.26 比 2.07,P=0.030)和病理位置的解释和识别(2.18 比 2.00,P=0.038)方面的 ACE 工具评分也明显更高。对于 CUSUM 学习曲线,A 组的六名受训者漏诊多个腺瘤的病例数呈下降趋势。

结论

CAD EYE 并未提高 ADR,但降低了 AMR,并提高了准确定位和识别结直肠腺瘤的能力。可以假设 CAD EYE 有助于提高消化科受训者的结肠镜检查质量。

试验注册

大学医院医疗信息网临床试验注册(UMIN000044031)。

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