pyPCG:一个专门用于心音分析的Python工具箱。

IF 2.3 4区 医学 Q3 BIOPHYSICS Physiological measurement Pub Date : 2024-12-05 DOI:10.1088/1361-6579/ad9af7
Kristof Müller, Janka Hatvani, Miklos Koller, Márton Áron Goda
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引用次数: 0

摘要

目的:心音造影近年来在低成本和远程监测中越来越受欢迎,包括被动胎心监测。分析心音数据的方法的发展试图利用这一机会,近年来,许多这样的算法和模型已经发表。在这些方法中,几乎没有标准化,这些模型的多个部分必须根据具体情况重新实现。包含心音记录的数据集在数据存储和标记方面也缺乏标准化,特别是在胎儿心音图方面。方法:我们提出了一个工具箱,可以作为未来心音分析标准框架的基础。这个工具箱包含一些最广泛使用的处理步骤,使用这些步骤,可以创建复杂的分析管道。这些函数可以单独测试。由于步骤的相互依赖性,我们使用两个心音图数据集验证了当前的分割阶段,一个是胎儿数据集,包含50个一分钟腹部PCG记录,其中包括6758个S1和6729个S2标签,另一个是2022年PhysioNet挑战赛中使用的数据集的过滤版本,包含413条记录,其中包括9795个S1和9761个S2标签。我们的结果与其他常见和公开可用的分割方法进行了比较,例如使用Neurokit2库的峰值检测和施普林格等人的隐藏半马尔可夫模型。我们的最佳模型在胎儿S1检测中获得了96.1%的F1评分和11.7 ms的平均绝对误差,在PhysioNet S1检测中获得了81.3%的F1评分和50.5 ms的平均绝对误差。意义:我们的检测方法在胎儿数据集上优于所有其他测试方法,并且取得了与PhysioNet数据集上的最新技术相当的结果。信号的准确分割对于精确统计度量的计算和分类模型的创建至关重要。我们的工具箱包含与前面步骤兼容的特征提取和统计计算函数。我们所有的方法都可以针对特定的数据集进行微调。pyPCG可在https://pypcg-toolbox.readthedocs.io/en/latest/上获得。
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pyPCG: a Python toolbox specialized for phonocardiography analysis.

Objective: Phonocardiography has recently gained popularity in low-cost and remote monitoring, including passive fetal heart monitoring. The development of methods which analyse phonocardiographic data tries to capitalize on this opportunity, and in recent years a multitude of such algorithms and models have been published. In these approaches there is little to no standardization and multiple parts of these models have to be reimplemented on a case-by-case basis. Datasets containing heart sound recordings also lack standardization in both data storage and labeling, especially in fetal phonocardiography.

Approach: We are presenting a toolbox that can serve as a basis for a future standard framework for heart sound analysis. This toolbox contains some of the most widely used processing steps and with these, complex analysis pipelines can be created. These functions can be tested individually.

Main results: Due to the interdependence of the steps, we validated the current segmentation stage using two phonocardiogram datasets, a fetal dataset comprising 50 one-minute abdominal PCG recordings, which include 6758 S1 and 6729 S2 labels and a filtered version of the dataset used in the 2022 PhysioNet Challenge, containing 413 records with 9795 S1 and 9761 S2 labels. Our results were compared to other common and publicly available segmentation methods, such as peak detection with the Neurokit2 library, and the Hidden Semi-Markov Model by Springer et al. Our best model achieved a 96.1% F1 score and 11.7 ms mean absolute error for fetal S1 detection, and 81.3% F1 score and 50.5 ms mean absolute error for PhysioNet S1 detection.

Significance: Our detection method outperformed all other tested methods on the fetal dataset and achieved results comparable to the state of the art on the PhysioNet dataset. Accurate segmentation of signals is critical for the calculation of accurate statistical measures and the creation of classification models. Our toolbox contains functions for both feature extraction and calculation of statistics which are compatible with the previous steps. All of our methods can be fine tuned for specific datasets. pyPCG is available on https://pypcg-toolbox.readthedocs.io/en/latest/.

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来源期刊
Physiological measurement
Physiological measurement 生物-工程:生物医学
CiteScore
5.50
自引率
9.40%
发文量
124
审稿时长
3 months
期刊介绍: Physiological Measurement publishes papers about the quantitative assessment and visualization of physiological function in clinical research and practice, with an emphasis on the development of new methods of measurement and their validation. Papers are published on topics including: applied physiology in illness and health electrical bioimpedance, optical and acoustic measurement techniques advanced methods of time series and other data analysis biomedical and clinical engineering in-patient and ambulatory monitoring point-of-care technologies novel clinical measurements of cardiovascular, neurological, and musculoskeletal systems. measurements in molecular, cellular and organ physiology and electrophysiology physiological modeling and simulation novel biomedical sensors, instruments, devices and systems measurement standards and guidelines.
期刊最新文献
Generative adversarial networks with fully connected layers to denoise PPG signals. Detection of occult hemorrhage using multivariate non-invasive technologies: a porcine study. REDT: a specialized transformer model for the respiratory phase and adventitious sound detection. PhysioEx: a new Python library for explainable sleep staging through deep learning. A low-cost PPG sensor-based empirical study on healthy aging based on changes in PPG morphology.
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