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Deep-learned 3D black-blood imaging using automatic labelling technique and 3D convolutional neural networks for detecting metastatic brain tumors

机译:使用自动标记技术和3D卷积神经网络进行深度学习的3D黑血成像以检测转移性脑肿瘤

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摘要

Black-blood (BB) imaging is used to complement contrast-enhanced 3D gradient-echo (CE 3D-GRE) imaging for detecting brain metastases, requiring additional scan time. In this study, we proposed deep-learned 3D BB imaging with an auto-labelling technique and 3D convolutional neural networks for brain metastases detection without additional BB scan. Patients were randomly selected for training (29 sets) and testing (36 sets). Two neuroradiologists independently evaluated deep-learned and original BB images, assessing the degree of blood vessel suppression and lesion conspicuity. Vessel signals were effectively suppressed in all patients. The figure of merits, which indicate the diagnostic performance of radiologists, were 0.9708 with deep-learned BB and 0.9437 with original BB imaging, suggesting that the deep-learned BB imaging is highly comparable to the original BB imaging (difference was not significant; p = 0.2142). In per patient analysis, sensitivities were 100% for both deep-learned and original BB imaging; however, the original BB imaging indicated false positive results for two patients. In per lesion analysis, sensitivities were 90.3% for deep-learned and 100% for original BB images. There were eight false positive lesions on the original BB imaging but only one on the deep-learned BB imaging. Deep-learned 3D BB imaging can be effective for brain metastases detection.
机译:黑血(BB)成像用于补充对比增强的3D梯度回波(CE 3D-GRE)成像,以检测脑转移,需要额外的扫描时间。在这项研究中,我们提出了使用自动标记技术和3D卷积神经网络进行深度学习的3D BB成像,无需另外的BB扫描即可进行脑转移检测。随机选择患者进行训练(29套)和测试(36套)。两名神经放射科医生独立评估了深度学习的和原始的BB图像,评估了血管抑制的程度和病变的明显性。在所有患者中血管信号均得到有效抑制。表示放射线医师诊断性能的优值图是,深层BB成像为0.9708,原始BB成像为0.9437,这表明深度学习BB成像与原始BB成像具有高度可比性(差异不显着; p = 0.2142)。在每个患者的分析中,深度学习和原始BB成像的敏感性均为100%;然而,原始的BB成像显示两名患者的假阳性结果。在每个病灶分析中,深度学习的敏感性为90.3%,原始BB图像的敏感性为100%。原始BB影像上有8个假阳性病变,而深度学习BB影像上只有1个。深度学习的3D BB成像可有效检测脑转移。

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