儿童心音分割中HSMMs时间模型的改进

J. Oliveira, Theofrastos Mantadelis, F. Renna, P. Gomes, M. Coimbra
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引用次数: 5

摘要

心音很难解释,因为a)它们是由几种不同的声音组成的,所有这些声音都包含在非常紧凑的时间窗口内;B)即使表现出相似的特征,它们也不同于面相;C)人的耳朵并没有天生的训练来识别心音。计算机辅助决策系统可能会有所帮助,但它们需要强大的信号处理算法。在本文中,我们使用一个真实的数据集来比较隐马尔可夫模型和几种隐半马尔可夫模型的性能,这些隐半马尔可夫模型使用泊松分布、高斯分布、伽玛分布以及非参数概率质量函数来建模逗留时间。使用与主题相关的方法,使用泊松分布作为逗留时间近似的模型被证明优于所有其他模型。该模型能够重建“真实”状态序列,每个状态的正可预测性为96%。最后,我们使用条件分布来计算分类的置信度。通过使用建议的置信度度量,我们能够识别错误的分类,并将我们的系统(平均而言)从每个样本的约83%提高到约90%的正可预测性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On modifying the temporal modeling of HSMMs for pediatric heart sound segmentation
Heart sounds are difficult to interpret because a) they are composed by several different sounds, all contained in very tight time windows; b) they vary from physiognomy even if the show similar characteristics; c) human ears are not naturally trained to recognize heart sounds. Computer assisted decision systems may help but they require robust signal processing algorithms. In this paper, we use a real life dataset in order to compare the performance of a hidden Markov model and several hidden semi Markov models that used the Poisson, Gaussian, Gamma distributions, as well as a non-parametric probability mass function to model the sojourn time. Using a subject dependent approach, a model that uses the Poisson distribution as an approximation for the sojourn time is shown to outperform all other models. This model was able to recreate the “true” state sequence with a positive predictability per state of 96%. Finally, we used a conditional distribution in order to compute the confidence of our classifications. By using the proposed confidence metric, we were able to identify wrong classifications and boost our system (in average) from an ≈ 83% up to ≈90% of positive predictability per sample.
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