74 research outputs found
Compression system for the phonocardiographic signal
An FPGA-based approach is proposed for implementing a compression system developed specifically for the signal of phonocardiogram. The compression method offers better rate and distorsion than standard audio compression techniques. Both the algorithm and the details on the solutions adopted for its implementation are presented in this paper.This work has been supported by Ministerio de Ciencia y Tecnología of Spain, under grant TIN2006-15460-C04-04
A phonocardiographic-based fiber-optic sensor and adaptive filtering system for noninvasive continuous fetal heart rate monitoring
This paper focuses on the design, realization, and verification of a novel phonocardiographic-based fiber-optic sensor and adaptive signal processing system for noninvasive continuous fetal heart rate (fHR) monitoring. Our proposed system utilizes two Mach-Zehnder interferometeric sensors. Based on the analysis of real measurement data, we developed a simplified dynamic model for the generation and distribution of heart sounds throughout the human body. Building on this signal model, we then designed, implemented, and verified our adaptive signal processing system by implementing two stochastic gradient-based algorithms: the Least Mean Square Algorithm (LMS), and the Normalized Least Mean Square (NLMS) Algorithm. With this system we were able to extract the fHR information from high quality fetal phonocardiograms (fPCGs), filtered from abdominal maternal phonocardiograms (mPCGs) by performing fPCG signal peak detection. Common signal processing methods such as linear filtering, signal subtraction, and others could not be used for this purpose as fPCG and mPCG signals share overlapping frequency spectra. The performance of the adaptive system was evaluated by using both qualitative (gynecological studies) and quantitative measures such as: Signal-to-Noise Ratio-SNR, Root Mean Square Error-RMSE, Sensitivity-S+, and Positive Predictive Value-PPV.Web of Science174art. no. 89
High Resolution Phonocardiograph Incorporating Digital Recording and Analog Spectral Analysis
This study is concerned with the development of a phonocardiographic instrumentation system. The goal is to provide heart sound recordings with readily available frequency spectra of the selected signals. A possible use of the system is in the area of identification and diagnosis of heart murmurs.Mechanical Engineerin
Design Methodology of a New Wavelet Basis Function for Fetal Phonocardiographic Signals
Fetal phonocardiography (fPCG) based antenatal care system is economical and has a potential to use for long-term monitoring due to noninvasive nature of the system. The main limitation of this technique is that noise gets superimposed on the useful signal during its acquisition and transmission. Conventional filtering may result into loss of valuable diagnostic information from these signals. This calls for a robust, versatile, and adaptable denoising method applicable in different operative circumstances. In this work, a novel algorithm based on wavelet transform has been developed for denoising of fPCG signals. Successful implementation of wavelet theory in denoising is heavily dependent on selection of suitable wavelet basis function. This work introduces a new mother wavelet basis function for denoising of fPCG signals. The performance of newly developed wavelet is found to be better when compared with the existing wavelets. For this purpose, a two-channel filter bank, based on characteristics of fPCG signal, is designed. The resultant denoised fPCG signals retain the important diagnostic information contained in the original fPCG signal
A feasibility study of the Spatio-temporal analysis of cardiac precordial vibrations
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Review and classification of variability analysis techniques with clinical applications
Analysis of patterns of variation of time-series, termed variability analysis, represents a rapidly evolving discipline with increasing applications in different fields of science. In medicine and in particular critical care, efforts have focussed on evaluating the clinical utility of variability. However, the growth and complexity of techniques applicable to this field have made interpretation and understanding of variability more challenging. Our objective is to provide an updated review of variability analysis techniques suitable for clinical applications. We review more than 70 variability techniques, providing for each technique a brief description of the underlying theory and assumptions, together with a summary of clinical applications. We propose a revised classification for the domains of variability techniques, which include statistical, geometric, energetic, informational, and invariant. We discuss the process of calculation, often necessitating a mathematical transform of the time-series. Our aims are to summarize a broad literature, promote a shared vocabulary that would improve the exchange of ideas, and the analyses of the results between different studies. We conclude with challenges for the evolving science of variability analysis
NRC-Net: Automated noise robust cardio net for detecting valvular cardiac diseases using optimum transformation method with heart sound signals
Cardiovascular diseases (CVDs) can be effectively treated when detected
early, reducing mortality rates significantly. Traditionally, phonocardiogram
(PCG) signals have been utilized for detecting cardiovascular disease due to
their cost-effectiveness and simplicity. Nevertheless, various environmental
and physiological noises frequently affect the PCG signals, compromising their
essential distinctive characteristics. The prevalence of this issue in
overcrowded and resource-constrained hospitals can compromise the accuracy of
medical diagnoses. Therefore, this study aims to discover the optimal
transformation method for detecting CVDs using noisy heart sound signals and
propose a noise robust network to improve the CVDs classification
performance.For the identification of the optimal transformation method for
noisy heart sound data mel-frequency cepstral coefficients (MFCCs), short-time
Fourier transform (STFT), constant-Q nonstationary Gabor transform (CQT) and
continuous wavelet transform (CWT) has been used with VGG16. Furthermore, we
propose a novel convolutional recurrent neural network (CRNN) architecture
called noise robust cardio net (NRC-Net), which is a lightweight model to
classify mitral regurgitation, aortic stenosis, mitral stenosis, mitral valve
prolapse, and normal heart sounds using PCG signals contaminated with
respiratory and random noises. An attention block is included to extract
important temporal and spatial features from the noisy corrupted heart
sound.The results of this study indicate that,CWT is the optimal transformation
method for noisy heart sound signals. When evaluated on the GitHub heart sound
dataset, CWT demonstrates an accuracy of 95.69% for VGG16, which is 1.95%
better than the second-best CQT transformation technique. Moreover, our
proposed NRC-Net with CWT obtained an accuracy of 97.4%, which is 1.71% higher
than the VGG16
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