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人工智能辅助结肠镜检查系统在临床实践中的能力评估:一项分析。

Evaluation of the competence of an artificial intelligence-assisted colonoscopy system in clinical practice: A analysis.

作者信息

Zuo Wei, Dai Yongyu, Huang Xiumei, Peng Ren-Qun, Li Xinghui, Liu Hao

机构信息

Department of Gastroenterology, Chongqing Rongchang District People's Hospital, Chongqing, China.

出版信息

Front Med (Lausanne). 2023 Apr 6;10:1158574. doi: 10.3389/fmed.2023.1158574. eCollection 2023.

Abstract

BACKGROUND

Artificial intelligence-assisted colonoscopy (AIAC) has been proposed and validated in recent years, but the effectiveness of clinic application remains unclear since it was only validated in some clinical trials rather than normal conditions. In addition, previous clinical trials were mostly concerned with colorectal polyp identification, while fewer studies are focusing on adenoma identification and polyps size measurement. In this study, we validated the effectiveness of AIAC in the clinical environment and further investigated its capacity for adenoma identification and polyps size measurement.

METHODS

The information of 174 continued patients who went for coloscopy in Chongqing Rongchang District People's hospital with detected colon polyps was retrospectively collected, and their coloscopy images were divided into three validation datasets, polyps dataset, polyps/adenomas dataset (all containing narrow band image, NBI images), and polyp size measurement dataset (images with biopsy forceps and polyps) to assess the competence of the artificial intelligence system, and compare its diagnostic ability with endoscopists with different experiences.

RESULTS

A total of 174 patients were included, and the sensitivity of the colorectal polyp recognition model was 99.40%, the accuracy of the colorectal adenoma diagnostic model was 93.06%, which was higher than that of endoscopists, and the mean absolute error of the polyp size measurement model was 0.62 mm and the mean relative error was 10.89%, which was lower than that of endoscopists.

CONCLUSION

Artificial intelligence-assisted model demonstrated higher competence compared with endoscopists and stable diagnosis ability in clinical use.

摘要

背景

近年来,人工智能辅助结肠镜检查(AIAC)已被提出并得到验证,但由于仅在一些临床试验而非正常情况下得到验证,其临床应用的有效性仍不明确。此外,以往的临床试验大多关注大肠息肉的识别,而关注腺瘤识别和息肉大小测量的研究较少。在本研究中,我们验证了AIAC在临床环境中的有效性,并进一步研究了其识别腺瘤和测量息肉大小的能力。

方法

回顾性收集重庆荣昌区人民医院174例接受结肠镜检查且检测出结肠息肉的连续患者的信息,将其结肠镜图像分为三个验证数据集,即息肉数据集、息肉/腺瘤数据集(均包含窄带图像、NBI图像)和息肉大小测量数据集(带有活检钳和息肉的图像),以评估人工智能系统的能力,并将其诊断能力与不同经验的内镜医师进行比较。

结果

共纳入174例患者,大肠息肉识别模型的灵敏度为99.40%,大肠腺瘤诊断模型的准确率为93.06%,均高于内镜医师,息肉大小测量模型的平均绝对误差为0.62毫米,平均相对误差为10.89%,均低于内镜医师。

结论

与内镜医师相比,人工智能辅助模型在临床应用中表现出更高的能力和稳定的诊断能力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d41b/10118043/b6d42413458c/fmed-10-1158574-g001.jpg

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