Suppr超能文献

深度学习在磁共振血管成像中的应用:脑动脉瘤的自动检测。

Deep Learning for MR Angiography: Automated Detection of Cerebral Aneurysms.

机构信息

From the Department of Diagnostic and Interventional Radiology (D.U., A.Y., T.S., S.D., A.S., Y.M.) and Department of Premier Preventive Medicine (S.F.), Osaka City University Graduate School of Medicine, 1-4-3 Asahi-machi, Abeno-ku, Osaka 545-8585, Japan; LPixel, Tokyo, Japan (M.N., A.C., Y.S.); and Department of Radiology, Osaka City University Hospital, Osaka, Japan (Y.K.).

出版信息

Radiology. 2019 Jan;290(1):187-194. doi: 10.1148/radiol.2018180901. Epub 2018 Oct 23.

Abstract

Purpose To develop and evaluate a supportive algorithm using deep learning for detecting cerebral aneurysms at time-of-flight MR angiography to provide a second assessment of images already interpreted by radiologists. Materials and Methods MR images reported by radiologists to contain aneurysms were extracted from four institutions for the period from November 2006 through October 2017. The images were divided into three data sets: training data set, internal test data set, and external test data set. The algorithm was constructed by deep learning with the training data set, and its sensitivity to detect aneurysms in the test data sets was evaluated. To find aneurysms that had been overlooked in the initial reports, two radiologists independently performed a blinded interpretation of aneurysm candidates detected by the algorithm. When there was disagreement, the final diagnosis was made in consensus. The number of newly detected aneurysms was also evaluated. Results The training data set, which provided training and validation data, included 748 aneurysms (mean size, 3.1 mm ± 2.0 [standard deviation]) from 683 examinations; 318 of these examinations were on male patients (mean age, 63 years ± 13) and 365 were on female patients (mean age, 64 years ± 13). Test data were provided by the internal test data set (649 aneurysms [mean size, 4.1 mm ± 3.2] in 521 examinations, including 177 male patients and 344 female patients with mean age of 66 years ± 12 and 67 years ± 13, respectively) and the external test data set (80 aneurysms [mean size, 4.1 mm ± 2.1] in 67 examinations, including 19 male patients and 48 female patients with mean age of 63 years ± 12 and 68 years ± 12, respectively). The sensitivity was 91% (592 of 649) and 93% (74 of 80) for the internal and external test data sets, respectively. The algorithm improved aneurysm detection in the internal and external test data sets by 4.8% (31 of 649) and 13% (10 of 80), respectively, compared with the initial reports. Conclusion A deep learning algorithm detected cerebral aneurysms in radiologic reports with high sensitivity and improved aneurysm detection compared with the initial reports. © RSNA, 2018 See also the editorial by Flanders in this issue.

摘要

目的 开发并评估一种基于深度学习的支持算法,用于检测时间飞越磁共振血管造影中的脑动脉瘤,以对放射科医生已经解释过的图像进行二次评估。

材料与方法 从 2006 年 11 月至 2017 年 10 月,从四个机构提取放射科医生报告中含有动脉瘤的磁共振图像。这些图像被分为三个数据集:训练数据集、内部测试数据集和外部测试数据集。使用深度学习构建算法,并评估其在测试数据集中检测动脉瘤的敏感性。为了发现初始报告中遗漏的动脉瘤,两位放射科医生独立对算法检测到的动脉瘤候选者进行了盲法解读。当存在分歧时,以共识做出最终诊断。还评估了新发现的动脉瘤数量。

结果 训练数据集(提供训练和验证数据)包含 683 次检查中的 748 个动脉瘤(平均大小为 3.1 mm ± 2.0 [标准差]);其中 318 次检查为男性患者(平均年龄为 63 岁 ± 13 岁),365 次检查为女性患者(平均年龄为 64 岁 ± 13 岁)。内部测试数据集(521 次检查中的 649 个动脉瘤[平均大小为 4.1 mm ± 3.2],包括 177 名男性患者和 344 名女性患者,平均年龄分别为 66 岁 ± 12 岁和 67 岁 ± 13 岁)和外部测试数据集(67 次检查中的 80 个动脉瘤[平均大小为 4.1 mm ± 2.1],包括 19 名男性患者和 48 名女性患者,平均年龄分别为 63 岁 ± 12 岁和 68 岁 ± 12 岁)提供了测试数据。内部和外部测试数据集的敏感性分别为 91%(592/649)和 93%(74/80)。与初始报告相比,该算法分别提高了内部和外部测试数据集的动脉瘤检测率 4.8%(31/649)和 13%(10/80)。

结论 深度学习算法可高度敏感地检测放射报告中的脑动脉瘤,并与初始报告相比提高了动脉瘤的检出率。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验