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Automated Segmentation of Left Ventricular Myocardium on Cardiac Computed Tomography Using Deep Learning

机译:利用深度学习,左心室心肌左心室心肌的自动分割

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OBJECTIVE:To evaluate the accuracy of a deep learning-based automated segmentation of the left ventricle (LV) myocardium using cardiac CT.MATERIALS AND METHODS:To develop a fully automated algorithm, 100 subjects with coronary artery disease were randomly selected as a development set (50 training / 20 validation / 30 internal test). An experienced cardiac radiologist generated the manual segmentation of the development set. The trained model was evaluated using 1000 validation set generated by an experienced technician. Visual assessment was performed to compare the manual and automatic segmentations. In a quantitative analysis, sensitivity and specificity were calculated according to the number of pixels where two three-dimensional masks of the manual and deep learning segmentations overlapped. Similarity indices, such as the Dice similarity coefficient (DSC), were used to evaluate the margin of each segmented masks.RESULTS:The sensitivity and specificity of automated segmentation for each segment (1-16 segments) were high (85.5-100.0%). The DSC was 88.3 ± 6.2%. Among randomly selected 100 cases, all manual segmentation and deep learning masks for visual analysis were classified as very accurate to mostly accurate and there were no inaccurate cases (manual vs. deep learning: very accurate, 31 vs. 53; accurate, 64 vs. 39; mostly accurate, 15 vs. 8). The number of very accurate cases for deep learning masks was greater than that for manually segmented masks.CONCLUSION:We present deep learning-based automatic segmentation of the LV myocardium and the results are comparable to manual segmentation data with high sensitivity, specificity, and high similarity scores.Copyright ? 2020 The Korean Society of Radiology.
机译:目的:评价左心室(LV)心肌的深度学习自动分割的准确性,使用心脏CT.Materials和方法:为了开发全自动算法,随机选择100个具有冠状动脉疾病的受试者作为开发集(50培训/ 20验证/ 30内部测试)。经验丰富的心脏放射科医生产生了开发集的手动分割。使用经验丰富的技术人员生成的1000个验证集进行评估训练模型。进行视觉评估以比较手动和自动分割。在定量分析中,根据手动和深度学习分割的两个三维掩模重叠的像素数来计算灵敏度和特异性。相似性指数,例如骰子相似度系数(DSC),用于评估每个分段的掩码的余量。结果:每个段(1-16个段)的自动分割的灵敏度和特异性高(85.5-100.0%) 。 DSC为88.3±6.2%。在随机选择的100例中,对视觉分析的所有手动分割和深度学习掩模被归类为非常准确的,大多数准确,并且没有不准确的情况(手册与深度学习:非常准确,31个与53;准确,64个与53;准确,64 vs. 39;大多数准确,15名与8)。深度学习面具的非常准确的案例数量大于手动细分掩码。结论:我们呈现LV心肌的深度学习的自动分割,结果与具有高灵敏度,特异性和高的手动分段数据相当相似性得分。 2020韩国放射学会。

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