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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Detection of coronary occlusions using autoregressive modeling of diastolic heart sounds
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Detection of coronary occlusions using autoregressive modeling of diastolic heart sounds

机译:使用舒张性心音的自回归模型检测冠状动脉闭塞

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摘要

Recordings of diastolic heart sound segments were modeled by autoregressive (AR) methods including the adaptive recursive least-squares lattice (RLSL) and the gradient lattice predictor (GAL). Application of the Akaike criterion demonstrated that between 5 and 15 AR coefficients are required to describe a diastolic segment completely. The reflection coefficients, prediction coefficients, zeros of the polynomial of the inverse filter, and AR spectrum were determined over a number (N=20-30) of diastolic segments. Preliminary results indicate that the averaged AR spectrum and the zeros of the inverse filter polynomial can be used to distinguish between normal patients and those with coronary artery disease.
机译:舒张期心音段的记录通过自回归(AR)方法建模,包括自适应递归最小二乘方格(RLSL)和梯度格预测器(GAL)。 Akaike准则的应用表明,需要5到15个AR系数才能完全描述舒张段。反射系数,预测系数,逆滤波器的多项式的零和AR光谱是在多个(N = 20-30)舒张节段上确定的。初步结果表明,平均AR谱和逆滤波器多项式的零可用于区分正常患者和患有冠心病的患者。

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