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Motion-corrected coronary calcium scores by a convolutional neural network: a robotic simulating study

机译:卷积神经网络的运动矫正冠状动脉钙分数:机器人模拟研究

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摘要

Objective To classify motion-induced blurred images of calcified coronary plaques so as to correct coronary calcium scores on nontriggered chest CT, using a deep convolutional neural network (CNN) trained by images of motion artifacts. Methods Three artificial coronary arteries containing nine calcified plaques of different densities (high, medium, and low) and sizes (large, medium, and small) were attached to a moving robotic arm. The artificial arteries moving at 0-90 mm/s were scanned to generate nine categories (each from one calcified plaque) of images with motion artifacts. An inception v3 CNN was fine-tuned and validated. Agatston scores of the predicted classification by CNN were considered as corrected scores. Variation of Agatston scores on moving plaque and by CNN correction was calculated using the scores at rest as reference. Results The overall accuracy of CNN classification was 79.2 +/- 6.1% for nine categories. The accuracy was 88.3 +/- 4.9%, 75.9 +/- 6.4%, and 73.5 +/- 5.0% for the high-, medium-, and low-density plaques, respectively. Compared with the Agatston score at rest, the overall median score variation was 37.8% (1st and 3rd quartile, 10.5% and 68.8%) in moving plaques. CNN correction largely decreased the variation to 3.7% (1.9%, 9.1%) (p < 0.001, Mann-Whitney U test) and improved the sensitivity (percentage of non-zero scores among all the scores) from 65 to 85% for detection of coronary calcifications. Conclusions In this experimental study, CNN showed the ability to classify motion-induced blurred images and correct calcium scores derived from nontriggered chest CT. CNN correction largely reduces the overall Agatston score variation and increases the sensitivity to detect calcifications.
机译:目的探讨钙化冠状动脉斑块的运动诱导的模糊图像,以便使用运动伪影图像训练的深卷积神经网络(CNN)来纠正冠状动脉钙得分。方法将三种人工冠状动脉含有九种钙化斑块的不同密度(高,培养基,低)和尺寸(大,培养基和小)附着于移动机器人臂。扫描以0-90mm / s的人工动脉扫描以产生具有运动伪影的九个类别(来自一个钙化斑块)的图像。 Inception V3 CNN精细调整并验证。 CNN预测分类的Agatston评分被认为是纠正的分数。使用休息时间作为参考的分数计算移动牙菌斑和CNN校正上的Agatston评分的变化。结果9个类别的CNN分类的总体准确性为79.2 +/- 6.1%。精度分别为88.3 +/- 4.9%,75.9 +/- 6.4%,75.9 +/- 6.4%,高密度和低密度斑块分别为73.5 +/- 5.0%。与休息时的agatston得分相比,在移动斑块中,整体中位数变异为37.8%(第1和第3四宫,10.5%和68.8%)。 CNN校正在很大程度上降低了3.7%(1.9%,9.1%)(P <0.001,Mann-Whitney U测试)的变化,并从65到85%的检测改善了灵敏度(所有分数之间的非零分数的百分比)冠状动脉钙化。结论在该实验研究中,CNN显示了对运动诱导的模糊图像和源自非触发胸CT的钙分数的能力进行分类。 CNN校正大大降低了整体agatston得分变化,并增加了检测钙化的敏感性。

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