Deep Learning to Detect Pancreatic Cystic Lesions on Abdominal Computed Tomography Scans: Development and Validation Study.

IF 3.5 3区 医学 Q1 CLINICAL NEUROLOGY
Neuroscientist Pub Date : 2023-03-17 DOI:10.2196/40702
Maria Montserrat Duh, Neus Torra-Ferrer, Meritxell Riera-Marín, Dídac Cumelles, Júlia Rodríguez-Comas, Javier García López, Mª Teresa Fernández Planas
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引用次数: 0

Abstract

Background: Pancreatic cystic lesions (PCLs) are frequent and underreported incidental findings on computed tomography (CT) scans and can evolve to pancreatic cancer-the most lethal cancer, with less than 5 months of life expectancy.

Objective: The aim of this study was to develop and validate an artificial deep neural network (attention gate U-Net, also named "AGNet") for automated detection of PCLs. This kind of technology can help radiologists to cope with an increasing demand of cross-sectional imaging tests and increase the number of PCLs incidentally detected, thus increasing the early detection of pancreatic cancer.

Methods: We adapted and evaluated an algorithm based on an attention gate U-Net architecture for automated detection of PCL on CTs. A total of 335 abdominal CTs with PCLs and control cases were manually segmented in 3D by 2 radiologists with over 10 years of experience in consensus with a board-certified radiologist specialized in abdominal radiology. This information was used to train a neural network for segmentation followed by a postprocessing pipeline that filtered the results of the network and applied some physical constraints, such as the expected position of the pancreas, to minimize the number of false positives.

Results: Of 335 studies included in this study, 297 had a PCL, including serous cystadenoma, intraductal pseudopapillary mucinous neoplasia, mucinous cystic neoplasm, and pseudocysts . The Shannon Index of the chosen data set was 0.991 with an evenness of 0.902. The mean sensitivity obtained in the detection of these lesions was 93.1% (SD 0.1%), and the specificity was 81.8% (SD 0.1%).

Conclusions: This study shows a good performance of an automated artificial deep neural network in the detection of PCL on both noncontrast- and contrast-enhanced abdominal CT scans.

深度学习检测腹部计算机断层扫描上的胰腺囊性病变:开发与验证研究。
背景:胰腺囊性病变(PCLs)是计算机断层扫描(CT)中经常出现且未被充分报告的偶然发现,可演变为胰腺癌--最致命的癌症,预期寿命不到 5 个月:本研究旨在开发和验证一种用于自动检测 PCL 的人工深度神经网络(注意门 U-Net,又称 "AGNet")。这种技术可以帮助放射科医生应对日益增长的横断面成像检测需求,增加偶然发现的 PCL 的数量,从而提高胰腺癌的早期发现率:我们改编并评估了一种基于注意力门 U-Net 架构的算法,用于 CT 上 PCL 的自动检测。两名拥有 10 年以上经验的放射科医生与一名拥有腹部放射学专业认证的放射科医生达成共识,对 335 例带有 PCL 的腹部 CT 和对照病例进行了三维人工分割。这些信息被用于训练神经网络进行分割,然后通过后处理管道对网络结果进行过滤,并应用一些物理约束条件,如胰腺的预期位置,以尽量减少假阳性的数量:本研究共纳入 335 项研究,其中 297 项有 PCL,包括浆液性囊腺瘤、导管内假乳头状粘液瘤、粘液性囊性肿瘤和假性囊肿。所选数据集的香农指数为 0.991,均匀度为 0.902。检测这些病变的平均灵敏度为 93.1%(SD 0.1%),特异性为 81.8%(SD 0.1%):本研究表明,人工深度神经网络在非对比度增强和对比度增强腹部 CT 扫描中检测 PCL 方面表现良好。
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来源期刊
Neuroscientist
Neuroscientist 医学-临床神经学
CiteScore
11.50
自引率
0.00%
发文量
68
期刊介绍: Edited by Stephen G. Waxman, The Neuroscientist (NRO) reviews and evaluates the noteworthy advances and key trends in molecular, cellular, developmental, behavioral systems, and cognitive neuroscience in a unique disease-relevant format. Aimed at basic neuroscientists, neurologists, neurosurgeons, and psychiatrists in research, academic, and clinical settings, The Neuroscientist reviews and updates the most important new and emerging basic and clinical neuroscience research.
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