
pmid: 28113253
the objective of this study was to develop a method to identify respiratory phases (i.e., inhale or exhale) of seismocardiogram (SCG) cycles. An SCG signal is obtained by placing an accelerometer on the sternum to capture cardiac vibrations.SCGs from 19 healthy subjects were collected, preprocessed, segmented, and labeled. To extract the most important features, each SCG cycle was divided to equal-sized bins in time and frequency domains, and the average value of each bin was defined as a feature. Support vector machines was employed for feature selection and identification. The features were selected based on the total accuracy. The identification was performed in two scenarios: leave-one-subject-out (LOSO), and subject-specific (SS).time-domain features resulted in better performance. The time-domain features that had higher accuracies included the characteristic points correlated with aortic-valve opening, aortic-valve closure, and the length of cardiac cycle. The average total identification accuracies were 88.1% and 95.4% for LOSO and SS scenarios, respectively.the proposed method was an efficient, reliable, and accurate approach to identify the respiratory phases of SCG cycles.The results obtained from this study can be employed to enhance the extraction of clinically valuable information such as systolic time intervals.
Adult, Male, Support Vector Machine, ta213, Systolic time intervals (STI), Reproducibility of Results, Models, Biological, Sensitivity and Specificity, Pattern Recognition, Automated, Ballistocardiography, Oscillometry, Accelerometry, Respiratory phase identification, Respiratory Mechanics, Humans, Computer Simulation, Support vector machine (SVM), Seismocardiogram (SCG), Algorithms, ta217
Adult, Male, Support Vector Machine, ta213, Systolic time intervals (STI), Reproducibility of Results, Models, Biological, Sensitivity and Specificity, Pattern Recognition, Automated, Ballistocardiography, Oscillometry, Accelerometry, Respiratory phase identification, Respiratory Mechanics, Humans, Computer Simulation, Support vector machine (SVM), Seismocardiogram (SCG), Algorithms, ta217
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