人工智能对最新一代 4K 结肠镜检查的影响。

Zofia Orzeszko, Tomasz Gach, Paweł Bogacki, Beata Markowska, Rafal Solecki, Mirosław Szura
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引用次数: 0

摘要

<b>简介:</b> 结肠镜检查是检测结肠直肠癌(CRC)的一种广受赞誉的筛查方法。结肠镜检查最重要的质量指标是腺瘤检出率(ADR)、盲肠插管率(CIR)、退出时间(WT)和肠道准备(波士顿肠道准备量表;BBPS)。在现代内窥镜检查实践中,高清白光可视化和先进的成像技术增强了人眼的功能。这种检查方法的主要局限性在于可疑病灶的检出率。下一代 4K 分辨率内窥镜和基于人工智能(AI)的计算机辅助检测(CADe)可能是提高检测质量的下一步。<b>目的:</b>旨在通过回顾性分析评估在最新一代内窥镜和4K可视化环境中实施CADe的效果。使用奥林巴斯Endo-Aid CADe AI系统和最新的X1系列内窥镜(采用LED照明和4K超高分辨率技术)。第一组包括使用Endo-Aid CADe连续进行的1,000次检查,第二组包括未使用CADe系统的前1,000次连续检查。每组评估 ADR、高级腺瘤检出率 (AADR)、息肉检出率 (PDR) 和每位患者息肉平均得分 (MPP)<b>结果:</b> 共有 2000 名参与者参与分析,根据 CADe 的实施情况分为两组。分析组的总体 PDR 相似(人工智能组:46.7% <i>vs.</i> 非人工智能组:44.9%,P = 0.419)。ADR(29.7% <i>vs.</i>28.9%,P = 0.694)和AADR(6.9% <i>vs.</i>7.1%,P = 0.861)均无明显变化。不过,MPP 有了明显的提高。MPP 从非 AI 组的 0.85 升至 AI 组的 1.26(P<0.001)。对每个肠段分别进行的比较分析表明,左结肠的 PDR 显著增加(29.3 <i>vs.</i> 18.0%,P<0.001),其他肠段和其他参数没有差异。对各节段的 MPP 分别进行调查后发现,右侧结肠(0.33 <i>vs.</i> 0.23,P = 0.032)和左侧结肠(0.47 <i>vs.</i> 0.28,P<0.001)的差异显著。根据肠道准备情况进行调整后,AI 组的 PDR 和 MPP 一直较高(分别为 29.3 <i>vs.</i> 19.0%, P<0.001 和 0.48 <i>vs.</i> 0.30, P<0.001)。此外,与整体分析相比,人工智能的实施对右侧结肠的 MPP 有明显影响(0.33<i>vs.</i> 0.24,P = 0.051)。前瞻性随机对照试验(RCT)包括使用最新一代结肠镜进行的手术,应能阐明人工智能在高分辨率结肠镜检查中的作用。
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Effect of artificial intelligence implementation to the latest generation 4K colonoscopy.

<b>Indroduction:</b> Colonoscopy is an acclaimed screening test to detect colorectal cancer (CRC). The most important quality indicators for colonoscopy are adenoma detection rate (ADR), cecal intubation rate (CIR), withdrawal time (WT), and bowel preparation (Boston Bowel Preparation Scale; BBPS). In modern endoscopy practice, the human eye is enhanced by highdefinition white-light visualization and advanced imaging technology. The main limitation of this procedure is the detection rate of suspicious lesions. The next generation of endoscopes with 4K resolution and computer-aided detection (CADe) based on artificial intelligence (AI) may be the next step to improve the quality of tests performed.<b>Aim:</b> The aim was to assess the effect of CADe implementation in the environment of the latest generation of endoscopes and 4K visualization in retrospective analysis.<b>Methods:</b> The study included 2,000 patients over 18 years old who underwent colonoscopy for various indications. Olympus Endo-Aid CADe AI system was used, together with the latest X1 series endoscope set using LED lighting and 4K ultra high-resolution technology. Group I consisted of 1,000 consecutive tests performed using Endo-Aid CADe, and group II the first 1,000 consecutive tests without the CADe system. ADR, Advanced adenoma detection rate (AADR), polyp detection rate (PDR), and mean polyp per patient score (MPP) were assessed in each group<b>Results:</b> A total of 2,000 participants were included in the analysis, divided into two groups regarding CADe implementation. The overall PDR was similar in the analyzed groups (AI: 46.7% <i>vs.</i> non-AI: 44.9%, P = 0.419). Both ADR (29.7 <i>vs.</i> 28.9%, P = 0.694) and AADR (6.9 <i>vs.</i> 7.1%, P = 0.861) changed unremarkably. However, a significant elevation in MPP was noted. The MPP rose from 0.85 in the non-AI group to 1.26 in the AI group (P<0.001). The comparative analysis conducted separately for each segment of the bowel revealed that PDR remarkably increased in the left colon (29.3 <i>vs.</i> 18.0%, P<0.001), with no difference for other segments and other parameters. Investigating the MPP separately in each segment showed a significant difference for the right colon (0.33 <i>vs.</i> 0.23, P = 0.032) and the left colon (0.47 <i>vs.</i> 0.28, P<0.001). When adjusted to bowel preparation the PDR and MPP were constantly higher in the AI group (29.3 <i>vs.</i> 19.0%, P<0.001, and 0.48 <i>vs.</i> 0.30, P<0.001, respectively). In addition, the significant impact of AI implementation on MPP faded in the right colon (0.33 <i>vs.</i> 0.24, P = 0.051) when compared with the overall analysis.<b>Conclusions:</b> Although recently published evidence is optimistic regarding AI efficiency in improving the quality of colonoscopy, the provided results widen the overall perspective. Prospective randomized controlled trials (RCTs) including procedures performed with newest generation scopes should elucidate the role of AI in high-resolution colonoscopy.

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