Smartphone application for artificial intelligence-based evaluation of stool state during bowel preparation before colonoscopy

IF 5 2区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY
Atsushi Inaba, Kensuke Shinmura, Hiroki Matsuzaki, Nobuyoshi Takeshita, Masashi Wakabayashi, Hironori Sunakawa, Keiichiro Nakajo, Tatsuro Murano, Tomohiro Kadota, Hiroaki Ikematsu, Tomonori Yano
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Abstract

Objectives

Colonoscopy (CS) is an important screening method for the early detection and removal of precancerous lesions. The stool state during bowel preparation (BP) should be properly evaluated to perform CS with sufficient quality. This study aimed to develop a smartphone application (app) with an artificial intelligence (AI) model for stool state evaluation during BP and to investigate whether the use of the app could maintain an adequate quality of CS.

Methods

First, stool images were collected in our hospital to develop the AI model and were categorized into grade 1 (solid or muddy stools), grade 2 (cloudy watery stools), and grade 3 (clear watery stools). The AI model for stool state evaluation (grades 1–3) was constructed and internally verified using the cross-validation method. Second, a prospective study was conducted on the quality of CS using the app in our hospital. The primary end-point was the proportion of patients who achieved Boston Bowel Preparation Scale (BBPS) ≥6 among those who successfully used the app.

Results

The AI model showed mean accuracy rates of 90.2%, 65.0%, and 89.3 for grades 1, 2, and 3, respectively. The prospective study enrolled 106 patients and revealed that 99.0% (95% confidence interval 95.3–99.9%) of patients achieved a BBPS ≥6.

Conclusion

The proportion of patients with BBPS ≥6 during CS using the developed app exceeded the set expected value. This app could contribute to the performance of high-quality CS in clinical practice.

结肠镜检查前肠道准备期间基于人工智能的粪便状态评估智能手机应用程序
目的 结肠镜检查(CS)是早期发现和切除癌前病变的重要筛查方法。要高质量地进行腹腔镜检查,就必须正确评估肠道准备(BP)过程中的粪便状态。本研究旨在开发一款带有人工智能(AI)模型的智能手机应用程序(App),用于肠道准备期间的粪便状态评估,并探讨使用该应用程序是否能保持足够的 CS 质量。方法首先,在我院收集粪便图像以开发 AI 模型,并将其分为 1 级(固体或泥状粪便)、2 级(混浊水样便)和 3 级(清水样便)。建立了粪便状态评估(1-3 级)人工智能模型,并使用交叉验证法进行了内部验证。其次,在本医院使用该应用程序对 CS 质量进行了前瞻性研究。结果人工智能模型显示,1、2、3 级的平均准确率分别为 90.2%、65.0% 和 89.3。该前瞻性研究共纳入 106 名患者,结果显示 99.0%(95% 置信区间 95.3-99.9%)的患者 BBPS ≥6。该应用程序有助于在临床实践中实施高质量的 CS。
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
Digestive Endoscopy
Digestive Endoscopy 医学-外科
CiteScore
10.10
自引率
15.10%
发文量
291
审稿时长
6-12 weeks
期刊介绍: Digestive Endoscopy (DEN) is the official journal of the Japan Gastroenterological Endoscopy Society, the Asian Pacific Society for Digestive Endoscopy and the World Endoscopy Organization. Digestive Endoscopy serves as a medium for presenting original articles that offer significant contributions to knowledge in the broad field of endoscopy. The Journal also includes Reviews, Original Articles, How I Do It, Case Reports (only of exceptional interest and novelty are accepted), Letters, Techniques and Images, abstracts and news items that may be of interest to endoscopists.
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