Misawa Masashi, Kudo Shin-Ei
Digestive Disease Center, Showa University Northern Yokohama Hospital, Tsuzuki, Yokohama, Japan.
Digestion. 2025;106(2):138-145. doi: 10.1159/000543345. Epub 2024 Dec 26.
Artificial intelligence (AI) has significantly impacted medical imaging, particularly in gastrointestinal endoscopy. Computer-aided detection and diagnosis systems (CADe and CADx) are thought to enhance the quality of colonoscopy procedures.
Colonoscopy is essential for colorectal cancer screening but often misses a significant percentage of adenomas. AI-assisted systems employing deep learning offer improved detection and differentiation of colorectal polyps, potentially increasing adenoma detection rates by 8%-10%. The main benefit of CADe is in detecting small adenomas, whereas it has a limited impact on advanced neoplasm detection. Recent advancements include real-time CADe systems and CADx for histopathological predictions, aiding in the differentiation of neoplastic and nonneoplastic lesions. Biases such as the Hawthorne effect and potential overdiagnosis necessitate large-scale clinical trials to validate the long-term benefits of AI. Additionally, novel concepts such as computer-aided quality improvement systems are emerging to address limitations facing current CADe systems.
Despite the potential of AI for enhancing colonoscopy outcomes, its effectiveness in reducing colorectal cancer incidence and mortality remains unproven. Further prospective studies are essential to establish the overall utility and clinical benefits of AI in colonoscopy.
人工智能(AI)对医学成像产生了重大影响,尤其是在胃肠内镜检查方面。计算机辅助检测和诊断系统(CADe和CADx)被认为可以提高结肠镜检查程序的质量。
结肠镜检查对于结直肠癌筛查至关重要,但通常会遗漏相当比例的腺瘤。采用深度学习的人工智能辅助系统能够更好地检测和区分结直肠息肉,有可能将腺瘤检测率提高8%-10%。CADe的主要益处在于检测小腺瘤,而对晚期肿瘤检测的影响有限。最近的进展包括实时CADe系统和用于组织病理学预测的CADx,有助于区分肿瘤性和非肿瘤性病变。霍桑效应和潜在的过度诊断等偏差需要大规模临床试验来验证人工智能的长期益处。此外,诸如计算机辅助质量改进系统等新概念正在兴起,以解决当前CADe系统面临的局限性。
尽管人工智能有提高结肠镜检查结果的潜力,但其在降低结直肠癌发病率和死亡率方面的有效性仍未得到证实。进一步的前瞻性研究对于确定人工智能在结肠镜检查中的整体效用和临床益处至关重要。