AI-based algorithm for clinical decision support system in colonoscopy

D. Mtvralashvili, D. Shakhmatov, A. Likutov, A. G. Zapolsky, D. I. Suslova, A. Borodinov, O. Sushkov, S. Achkasov
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引用次数: 0

Abstract

AIM: to estimate the implementation of the original method that uses artificial intelligence (AI) to detect colorectal neoplasms.MATERIALS AND METHODS: we selected 1070 colonoscopy videos from our archive with 5 types of lesions: hyperplastic polyp, serrated adenoma, adenoma with low-grade dysplasia, adenoma with high-grade dysplasia and invasive cancer. Then 9838 informative frames were selected, including 6543 with neoplasms. Lesions were annotated to obtain data set that was finally used for training a convolution al neural network (YOLOv5).RESULTS: the trained algorithm is able to detect neoplasms with an accuracy of 83.2% and a sensitivity of 77.2% on a test sample of the dataset. The most common algorithm errors were revealed and analyzed.CONCLUSION: the obtained data set provided an AI-based algorithm that can detect colorectal neoplasms in the video stream of a colonoscopy recording. Further development of the technology probably will provide creation of a clinical decision support system in colonoscopy.
基于人工智能的结肠镜临床决策支持系统
目的:评估使用人工智能(AI)检测结直肠肿瘤的原始方法的实施情况。材料和方法:我们从我们的档案中选择了1070个结肠镜检查视频,其中包括5种病变:增生性息肉、锯状腺瘤、低级别非典型增生腺瘤、高级别非典型增生腺瘤和浸润性癌。然后选择9838个信息帧,其中6543个包含肿瘤。对病灶进行注释以获得最终用于训练卷积神经网络(YOLOv5)的数据集。结果:训练后的算法能够在数据集的测试样本上检测肿瘤,准确率为83.2%,灵敏度为77.2%。揭示并分析了最常见的算法错误。结论:获得的数据集提供了一种基于人工智能的算法,可以在结肠镜检查记录的视频流中检测结直肠肿瘤。该技术的进一步发展可能会为结肠镜检查提供临床决策支持系统的创建。
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