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Multi-centroid diastolic duration distribution based HSMM for heart sound segmentation

机译:基于多质心舒张期持续时间分布的HSMM用于心音分割

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This paper presents a multi-centroid diastolic duration model for the hidden semi-Markov model (HSMM) based heart sound segmentation. The centroids are calculated by hierarchical agglomerative clustering of the neighboring diastolic duration values using Ward's method until center of clusters are found at least a systolic duration apart. The multiple peak distribution yields a sharper gradient of likelihood around the expected centroids and improves the discriminability of similar observations. The peak density at each centroid acts as a reference point for the HSMM to determine the origin of the hidden-state and adjust the corresponding state duration based on the maximum likelihood criterion. This model overcomes the limitation of the single peak mean value model that may overfit the duration distribution when the heart rate variation is relatively large. An extended logistic regression-HSMM algorithm using the proposed duration model is presented for the heart sound segmentation. In addition, the total variation filter is used to attenuate the effect of noises and emphasize the fundamental heart sounds, S1 and S2. The proposed method is evaluated on the training-set-a of 2016 Physionet/Computing in Cardiology Challenge and yields an average F-1 score of 98.36 +/- 0.43. (C) 2018 Elsevier Ltd. All rights reserved.
机译:本文提出了一种基于隐藏半马尔可夫模型(HSMM)的心音分割的多质心舒张期模型。质心是通过使用沃德(Ward's)方法对相邻舒张期持续时间值进行分层聚集聚类计算得出的,直到发现聚类中心至少间隔了一个收缩期。多个峰分布在预期质心附近产生了更大的似然梯度,并改善了类似观测值的可分辨性。每个质心处的峰值密度充当HSMM的参考点,以基于最大似然准则确定隐藏状态的起点并调整相应的状态持续时间。该模型克服了单峰值平均值模型的局限性,后者在心率变化较大时可能会过度拟合持续时间分布。提出了一种使用提出的持续时间模型的扩展逻辑回归-HSMM算法进行心音分割。此外,总变化滤波器用于减弱噪声的影响并强调基本的心音S1和S2。在2016年Physionet / Computing in Cardiology Challenge的训练集a上评估了提出的方法,得出的平均F-1分数为98.36 +/- 0.43。 (C)2018 Elsevier Ltd.保留所有权利。

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