Division of Preventive Medicine, School of Medicine, The University of Alabama at Birmingham, Birmingham, AL, 35205, USA.
Department of Medicine, Section of Gastroenterology and Hepatology, West Virginia University School of Medicine, Morgantown, WV, USA.
Dig Dis Sci. 2024 Oct;69(10):3681-3689. doi: 10.1007/s10620-024-08610-7. Epub 2024 Sep 16.
Artificial intelligence (AI) has emerged as a promising tool for detecting and characterizing colorectal polyps during colonoscopy, offering potential enhancements in traditional colonoscopy procedures to improve outcomes in patients with inadequate bowel preparation.
This study aimed to assess the impact of an AI tool on computer-aided detection (CADe) assistance during colonoscopy in this population.
This case-control study utilized propensity score matching (PSM) for age, sex, race, and colonoscopy indication to analyze a database of patients who underwent colonoscopy at a single tertiary referral center between 2017 and 2023. Patients were excluded if the procedure was incomplete or aborted owing to poor preparation. The patients were categorized based on the use of AI during colonoscopy. Data on patient demographics and colonoscopy performance metrics were collected. Univariate and multivariate logistic regression models were used to compare the groups.
After PSM patients with adequately prepped colonoscopies (n = 1466), the likelihood of detecting hyperplastic polyps (OR = 2.0, 95%CI 1.7-2.5, p < 0.001), adenomas (OR = 1.47, 95%CI 1.19-1.81, p < 0.001), and sessile serrated polyps (OR = 1.90, 95%CI 1.20-3.03, p = 0.007) significantly increased with the inclusion of CADe. In inadequately prepped patients (n = 160), CADe exhibited a more pronounced impact on the polyp detection rate (OR = 4.34, 95%CI 1.6-6.16, p = 0.049) and adenomas (OR = 2.9, 95%CI 2.20-8.57, p < 0.001), with a marginal increase in withdrawal and procedure times.
This study highlights the significant improvement in detecting diminutive polyps (< 5 mm) and sessile polyps using CADe, although notably, this benefit was only seen in patients with adequate bowel preparation. In conclusion, the integration of AI in colonoscopy, driven by artificial intelligence, promises to significantly enhance lesion detection and diagnosis, revolutionize the procedure's effectiveness, and improve patient outcomes.
人工智能(AI)已成为一种有前途的工具,可用于在结肠镜检查中检测和描述结直肠息肉,为传统结肠镜检查程序提供潜在增强,以改善准备不充分的患者的治疗效果。
本研究旨在评估 AI 工具在该人群中对结肠镜检查中计算机辅助检测(CADe)辅助的影响。
本病例对照研究采用倾向评分匹配(PSM)对年龄、性别、种族和结肠镜检查指征进行匹配,分析了 2017 年至 2023 年间在一家三级转诊中心接受结肠镜检查的患者数据库。如果手术因准备不充分而不完整或中止,则将患者排除在外。根据结肠镜检查中是否使用 AI 将患者进行分类。收集患者人口统计学和结肠镜检查性能指标数据。使用单变量和多变量逻辑回归模型对组间进行比较。
经过 PSM 后,对充分准备的结肠镜检查患者(n=1466),检测增生性息肉(OR=2.0,95%CI 1.7-2.5,p<0.001)、腺瘤(OR=1.47,95%CI 1.19-1.81,p<0.001)和无蒂锯齿状息肉(OR=1.90,95%CI 1.20-3.03,p=0.007)的可能性显著增加,纳入 CADe 后。在准备不充分的患者(n=160)中,CADe 对息肉检测率(OR=4.34,95%CI 1.6-6.16,p=0.049)和腺瘤(OR=2.9,95%CI 2.20-8.57,p<0.001)的影响更为显著,且退镜和手术时间略有增加。
本研究强调了 CADe 在检测小息肉(<5mm)和无蒂息肉方面的显著改善,尽管值得注意的是,这种益处仅见于肠道准备充分的患者。总之,人工智能驱动的人工智能在结肠镜检查中的整合有望显著提高病变检测和诊断的效果,彻底改变该程序的效果,并改善患者的预后。