Department of Internal Medicine, Michigan State University at Hurley Medical Center, Two Hurley Plaza, Ste 212, Flint, MI, 48503, USA.
Department of Internal Medicine/Pediatrics, Michigan State University at Hurley Medical Center, Flint, MI, USA.
Int J Colorectal Dis. 2021 Nov;36(11):2291-2303. doi: 10.1007/s00384-021-03929-3. Epub 2021 May 1.
Studies analyzing artificial intelligence (AI) in colonoscopies have reported improvements in detecting colorectal cancer (CRC) lesions, however its utility in the realworld remains limited. In this systematic review and meta-analysis, we evaluate the efficacy of AI-assisted colonoscopies against routine colonoscopy (RC).
We performed an extensive search of major databases (through January 2021) for randomized controlled trials (RCTs) reporting adenoma and polyp detection rates. Odds ratio (OR) and standardized mean differences (SMD) with 95% confidence intervals (CIs) were reported. Additionally, trial sequential analysis (TSA) was performed to guard against errors.
Six RCTs were included (4996 participants). The mean age (SD) was 51.99 (4.43) years, and 49% were females. Detection rates favored AI over RC for adenomas (OR 1.77; 95% CI: 1.570-2.08) and polyps (OR 1.91; 95% CI: 1.68-2.16). Secondary outcomes including mean number of adenomas (SMD 0.23; 95% CI: 0.18-0.29) and polyps (SMD 0.23; 95% CI: 0.17-0.29) detected per procedure favored AI. However, RC outperformed AI in detecting pedunculated polyps. Withdrawal times (WTs) favored AI when biopsies were included, while WTs without biopsies, cecal intubation times, and bowel preparation adequacy were similar.
Colonoscopies equipped with AI detection algorithms could significantly detect previously missed adenomas and polyps while retaining the ability to self-assess and improve periodically. More effective clearance of diminutive adenomas may allow lengthening in surveillance intervals, reducing the burden of surveillance colonoscopies, and increasing its accessibility to those at higher risk. TSA ruled out the risk for false-positive results and confirmed a sufficient sample size to detect the observed effect. Currently, these findings suggest that AI-assisted colonoscopy can serve as a useful proxy to address critical gaps in CRC identification.
分析结肠镜检查中人工智能(AI)的研究报告称,其在检测结直肠癌(CRC)病变方面有所改善,但在实际应用中仍存在局限性。在这项系统评价和荟萃分析中,我们评估了 AI 辅助结肠镜检查与常规结肠镜检查(RC)相比的疗效。
我们对主要数据库(截至 2021 年 1 月)进行了广泛检索,以查找报告腺瘤和息肉检测率的随机对照试验(RCT)。报告了比值比(OR)和标准化均数差(SMD)及其 95%置信区间(CI)。此外,还进行了试验序贯分析(TSA)以防止错误。
纳入了 6 项 RCT(4996 名参与者)。平均年龄(SD)为 51.99(4.43)岁,49%为女性。对于腺瘤(OR 1.77;95%CI:1.570-2.08)和息肉(OR 1.91;95%CI:1.68-2.16),AI 的检测率优于 RC。次要结局包括每例检测到的平均腺瘤数(SMD 0.23;95%CI:0.18-0.29)和息肉数(SMD 0.23;95%CI:0.17-0.29)也倾向于 AI。然而,RC 在检测有蒂息肉方面优于 AI。当包含活检时,AI 辅助结肠镜检查的撤镜时间(WTs)更有利,而不包含活检时的 WTs、盲肠插管时间和肠道准备充分性相似。
配备 AI 检测算法的结肠镜检查可以显著检测到以前错过的腺瘤和息肉,同时保持自我评估和定期改进的能力。更有效地清除微小腺瘤可能允许延长监测间隔,减少监测结肠镜检查的负担,并提高高危人群的可及性。TSA 排除了假阳性结果的风险,并确认了足够的样本量来检测到观察到的效果。目前,这些发现表明,AI 辅助结肠镜检查可以作为识别结直肠癌的一个有用工具。