A convolutional neural network for bleeding detection in capsule endoscopy using real clinical data.

IF 1.7 4区 医学 Q2 SURGERY
Dorothee Turck, Thomas Dratsch, Lorenz Schröder, Florian Lorenz, Johanna Dinter, Martin Bürger, Lars Schiffmann, Philipp Kasper, Gabriel Allo, Tobias Goeser, Seung-Hun Chon, Dirk Nierhoff
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引用次数: 0

Abstract

Background: The goal of the present study was to develop a convolutional neural network for the detection of bleedings in capsule endoscopy videos using realistic clinical data from one single-centre.

Methods: Capsule endoscopy videos from all 133 patients (79 male, 54 female; meanage = 53.73 years, SDage = 26.13) who underwent capsule endoscopy at our institution between January 2014 and August 2018 were screened for pathology. All videos were screened for pathology by two independent capsule experts and confirmed findings were checked again by a third capsule expert. From these videos, 125 pathological findings (individual episodes of bleeding spanning a total of 5696 images) and 103 non-pathological findings (sections of normal mucosal tissue without pathologies spanning a total of 7420 images) were used to develop and validate a neural network (Inception V3) using transfer learning.

Results: The overall accuracy of the model for the detection of bleedings was 90.6% [95%CI: 89.4%-91.7%], with a sensitivity of 89.4% [95%CI: 87.6%-91.2%] and a specificity of 91.7% [95%CI: 90.1%-93.2%].

Conclusion: Our results show that neural networks can detect bleedings in capsule endoscopy videos under realistic, clinical conditions with an accuracy of 90.6%, potentially reducing reading time per capsule and helping to improve diagnostic accuracy.

利用真实临床数据检测胶囊内镜出血的卷积神经网络。
研究背景本研究的目的是利用一个单中心的真实临床数据,开发一种用于检测胶囊内镜视频中出血的卷积神经网络:对2014年1月至2018年8月期间在我院接受胶囊内镜检查的所有133名患者(79名男性,54名女性;平均年龄=53.73岁,标化年龄=26.13岁)的胶囊内镜检查视频进行病理学筛查。所有视频均由两名独立的胶囊专家进行病理学筛查,并由第三名胶囊专家再次检查确认结果。在这些视频中,有125个病理结果(单个出血事件,共5696张图片)和103个非病理结果(正常粘膜组织切片,无病理结果,共7420张图片)被用于利用迁移学习开发和验证神经网络(Inception V3):结果:该模型检测出血的总体准确率为 90.6% [95%CI:89.4%-91.7%],灵敏度为 89.4% [95%CI:87.6%-91.2%],特异度为 91.7% [95%CI:90.1%-93.2%]:我们的研究结果表明,神经网络可以在真实的临床条件下检测胶囊内窥镜视频中的出血,准确率高达90.6%,从而有可能减少每个胶囊的读取时间,帮助提高诊断准确率。
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来源期刊
CiteScore
3.80
自引率
5.90%
发文量
39
审稿时长
6-12 weeks
期刊介绍: Minimally Invasive Therapy and Allied Technologies (MITAT) is an international forum for endoscopic surgeons, interventional radiologists and industrial instrument manufacturers. It is the official journal of the Society for Medical Innovation and Technology (SMIT) whose membership includes representatives from a broad spectrum of medical specialities, instrument manufacturing and research. The journal brings the latest developments and innovations in minimally invasive therapy to its readers. What makes Minimally Invasive Therapy and Allied Technologies unique is that we publish one or two special issues each year, which are devoted to a specific theme. Key topics covered by the journal include: interventional radiology, endoscopic surgery, imaging technology, manipulators and robotics for surgery and education and training for MIS.
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