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基于深度学习的系统作为小肠胶囊内镜阅读的初步筛查的临床应用价值。

Clinical usefulness of a deep learning-based system as the first screening on small-bowel capsule endoscopy reading.

机构信息

Department of Gastroenterology, Graduate School of Medicine, The University of Tokyo, Tokyo, Japan.

AI Medical Service Inc., Tokyo, Japan.

出版信息

Dig Endosc. 2020 May;32(4):585-591. doi: 10.1111/den.13517. Epub 2019 Oct 2.

DOI:10.1111/den.13517
PMID:31441972
Abstract

BACKGROUND AND AIM

To examine whether our convolutional neural network (CNN) system based on deep learning can reduce the reading time of endoscopists without oversight of abnormalities in the capsule-endoscopy reading process.

METHODS

Twenty videos of the entire small-bowel capsule endoscopy procedure were prepared, each of which included 0-5 lesions of small-bowel mucosal breaks (erosions or ulcerations). At another institute, two reading processes were compared: (A) endoscopist-alone readings and (B) endoscopist readings after the first screening by the proposed CNN. In process B, endoscopists read only images detected by CNN. Two experts and four trainees independently read 20 videos each (10 for process A and 10 for process B). Outcomes were reading time and detection rate of mucosal breaks by endoscopists. Gold standard was findings at the original institute by two experts.

RESULTS

Mean reading time of small-bowel sections by endoscopists was significantly shorter during process B (expert, 3.1 min; trainee, 5.2 min) compared to process A (expert, 12.2 min; trainee, 20.7 min) (P < 0.001). For 37 mucosal breaks, detection rate by endoscopists did not significantly decrease in process B (expert, 87%; trainee, 55%) compared to process A (expert, 84%; trainee, 47%). Experts detected all eight large lesions (>5 mm), but trainees could not, even when supported by the CNN.

CONCLUSIONS

Our CNN-based system for capsule endoscopy videos reduced the reading time of endoscopists without decreasing the detection rate of mucosal breaks. However, the reading level of endoscopists should be considered when using the system.

摘要

背景与目的

研究我们基于深度学习的卷积神经网络(CNN)系统是否可以在不忽视胶囊内镜检查过程中异常情况的前提下,减少内镜医师的阅读时间。

方法

准备 20 段完整小肠胶囊内镜检查过程的视频,每个视频包含 0-5 个小肠黏膜破裂(糜烂或溃疡)病变。在另一家机构,比较了两种阅读过程:(A)内镜医师单独阅读和(B)在提出的 CNN 进行初次筛查后由内镜医师进行阅读。在过程 B 中,内镜医师仅阅读 CNN 检测到的图像。两名专家和四名学员各自阅读 20 个视频(A 过程 10 个,B 过程 10 个)。结果是内镜医师检测黏膜破裂的阅读时间和检出率。金标准是由两位专家在原始机构的发现。

结果

内镜医师在过程 B 时阅读小肠节段的平均时间明显短于过程 A(专家 3.1 分钟;学员 5.2 分钟)(P<0.001)。在 37 个黏膜破裂中,内镜医师在过程 B 时的检出率与过程 A 相比没有显著下降(专家 87%;学员 55%)(P<0.001)。专家检测到所有 8 个大病变(>5 毫米),但学员即使有 CNN 的支持也无法检测到。

结论

我们基于 CNN 的胶囊内镜视频系统减少了内镜医师的阅读时间,而不会降低黏膜破裂的检出率。然而,在使用该系统时,应该考虑内镜医师的阅读水平。

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