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Heart Motion Abnormality Detection via an Information Measure and Bayesian Filtering

机译:通过信息量度和贝叶斯滤波检测心脏运动异常

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This study investigates heart wall motion abnormality detection with an information theoretic measure of heart motion based on the Shannon's differential entropy (SDE) and recursive Bayesian filtering. Heart wall motion is generally analyzed using functional images which are subject to noise and segmentation inaccuracies, and incorporation of prior knowledge is crucial in improving the accuracy. The Kalman filter, a well known recursive Bayesian filter, is used in this study to estimate the left ventricular (LV) cavity points given incomplete and noisy data, and given a dynamic model. However, due to similarities between the statistical information of normal and abnormal heart motions, detecting and classifying abnormality is a challenging problem which we proposed to investigate with a global measure based on the SDE. We further derive two other possible information theoretic abnormality detection criteria, one is based on Renyi entropy and the other on Fisher information. The proposed method analyzes wall motion quantitatively by constructing distributions of the normalized radial distance estimates of the LV cavity. Using 269×20 segmented LV cavities of short-axis magnetic resonance images obtained from 30 subjects, the experimental analysis demonstrates that the proposed SDE criterion can lead to significant improvement over other features that are prevalent in the literature related to the LV cavity, namely, mean radial displacement and mean radial velocity.
机译:本研究使用基于香农微分熵(SDE)和递归贝叶斯滤波的心脏运动信息理论方法研究心脏壁运动异常检测。通常使用易受噪声和分割不精确影响的功能图像来分析心脏壁运动,并且结合先验知识对于提高准确性至关重要。卡尔曼滤波器是一种众所周知的递归贝叶斯滤波器,在本研究中用于估计给定不完整和嘈杂数据并给定动态模型的左心室(LV)腔点。然而,由于正常和异常心脏运动的统计信息之间的相似性,检测和分类异常是一个具有挑战性的问题,我们建议采用基于SDE的全局措施进行调查。我们进一步推导了另外两种可能的信息理论异常检测标准,一种基于Renyi熵,另一种基于Fisher信息。所提出的方法通过构造LV腔的归一化径向距离估计的分布来定量地分析壁运动。使用从30位受试者获得的269×20分割的短轴磁共振图像的LV腔,实验分析表明,提出的SDE标准可以显着改善与LV腔相关的文献中普遍存在的其他特征,即平均径向位移和平均径向速度。

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