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深度学习在 CT 血管造影中检测脑动脉瘤的应用

Deep Learning for Detecting Cerebral Aneurysms with CT Angiography.

机构信息

From the School of Electronic Information and Communications, Huazhong University of Science and Technology, South 1st Building, Luoyu Road 1037, Wuhan 430074, China (J.Y., C.H., Y.X.); Department of Radiology, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China (M.X., O.A., J.L., T.J., X. Long); Hubei Province Key Laboratory of Molecular Imaging, Wuhan, China (M.X., O.A., J.L., T.J., X. Long); Department of Radiology, Xin Cai People's Hospital, Xin Cai, China (Changde Li); and Huawei Technologies, Shenzhen, China (D.T., X. Liu, C.Z., Cixing Li).

出版信息

Radiology. 2021 Jan;298(1):155-163. doi: 10.1148/radiol.2020192154. Epub 2020 Nov 3.

Abstract

Background Cerebral aneurysm detection is a challenging task. Deep learning may become a supportive tool for more accurate interpretation. Purpose To develop a highly sensitive deep learning-based algorithm that assists in the detection of cerebral aneurysms on CT angiography images. Materials and Methods Head CT angiography images were retrospectively retrieved from two hospital databases acquired across four different scanners between January 2015 and June 2019. The data were divided into training and validation sets; 400 additional independent CT angiograms acquired between July and December 2019 were used for external validation. A deep learning-based algorithm was constructed and assessed. Both internal and external validation were performed. Jackknife alternative free-response receiver operating characteristic analysis was performed. Results A total of 1068 patients (mean age, 57 years ± 11 [standard deviation]; 660 women) were evaluated for a total of 1068 CT angiograms encompassing 1337 cerebral aneurysms. Of these, 534 CT angiograms (688 aneurysms) were assigned to the training set, and the remaining 534 CT angiograms (649 aneurysms) constituted the validation set. The sensitivity of the proposed algorithm for detecting cerebral aneurysms was 97.5% (633 of 649; 95% CI: 96.0, 98.6). Moreover, eight new aneurysms that had been overlooked in the initial reports were detected (1.2%, eight of 649). With the aid of the algorithm, the overall performance of radiologists in terms of area under the weighted alternative free-response receiver operating characteristic curve was higher by 0.01 (95% CI: 0.00, 0.03). Conclusion The proposed deep learning algorithm assisted radiologists in detecting cerebral aneurysms on CT angiography images, resulting in a higher detection rate. © RSNA, 2020 See also the editorial by Kallmes and Erickson in this issue.

摘要

背景 颅内动脉瘤检测是一项具有挑战性的任务。深度学习可能成为更准确解读的辅助工具。

目的 开发一种高度敏感的基于深度学习的算法,以辅助 CT 血管造影图像上颅内动脉瘤的检测。

材料和方法 回顾性检索了 2015 年 1 月至 2019 年 6 月期间在 4 台不同扫描仪上采集的来自 2 家医院数据库的头部 CT 血管造影图像。将数据分为训练集和验证集;2019 年 7 月至 12 月期间采集的 400 份额外独立 CT 血管造影用于外部验证。构建并评估了一种基于深度学习的算法。进行了内部和外部验证。进行了 Jackknife 替代自由响应接收器操作特征分析。

结果 共对 1068 例患者(平均年龄,57 岁±11[标准差];660 例女性)进行了 1068 次 CT 血管造影检查,共包含 1337 个颅内动脉瘤。其中,534 次 CT 血管造影(688 个动脉瘤)被分配到训练集,其余 534 次 CT 血管造影(649 个动脉瘤)构成验证集。所提出的算法检测颅内动脉瘤的灵敏度为 97.5%(633 个/649 个;95%CI:96.0,98.6)。此外,还检测到 8 个在初始报告中被忽视的新动脉瘤(1.2%,649 个中的 8 个)。在算法的辅助下,放射科医生在加权替代自由响应接收器操作特征曲线下的整体表现提高了 0.01(95%CI:0.00,0.03)。

结论 所提出的深度学习算法辅助放射科医生检测 CT 血管造影图像上的颅内动脉瘤,提高了检测率。 ©RSNA,2020 本期还刊登了 Kallmes 和 Erickson 的社论。

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