Time-domain heart rate variability features for automatic congestive heart failure prediction

被引:8
作者
Moses, Jeban Chandir [1 ]
Adibi, Sasan [1 ]
Angelova, Maia [1 ,2 ]
Islam, Sheikh Mohammed Shariful [3 ]
机构
[1] Deakin Univ, Sch Informat Technol, Burwood, Vic 3125, Australia
[2] Aston Univ, Aston Digital Futures Inst, Coll Phys Sci & Engn, Birmingham, England
[3] Deakin Univ, Inst Phys Act & Nutr IPAN, Burwood, Vic 3125, Australia
关键词
Heart failure; Heart rhythm; Time-domain; Machine learning; Prediction; DIAGNOSIS; EXERCISE;
D O I
10.1002/ehf2.14593
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
AimsHeart failure is a serious condition that often goes undiagnosed in primary care due to the lack of reliable diagnostic tools and the similarity of its symptoms with other diseases. Non-invasive monitoring of heart rate variability (HRV), which reflects the activity of the autonomic nervous system, could offer a novel and accurate way to detect and manage heart failure patients. This study aimed to assess the feasibility of using machine learning techniques on HRV data as a non-invasive biomarker to classify healthy adults and those with heart failure.Methods and resultsWe used digitized electrocardiogram recordings from 54 adults with normal sinus rhythm and 44 adults categorized into New York Heart Association classes 1, 2, and 3, suffering from congestive heart failure. All recordings were sourced from the PhysioNet database. Following data pre-processing, we performed time-domain HRV analysis on all individual recordings, including root mean square of the successive difference in adjacent RR interval (RRi) (RMSSD), the standard deviation of RRi (SDNN, the NN stands for natural or sinus intervals), the standard deviation of the successive differences between successive RRi (SDSD), the number or percentage of RRi longer than 50 ms (NN50 and pNN50), and the average value of RRi [mean RR interval (mRRi)]. In our experimental classification performance evaluation, on the computed HRV parameters, we optimized hyperparameters and performed five-fold cross-validation using four machine learning classification algorithms: support vector machine, k-nearest neighbour (KNN), naive Bayes, and decision tree (DT). We evaluated the prediction accuracy of these models using performance criteria, namely, precision, recall, specificity, F1 score, and overall accuracy. For added insight, we also presented receiver operating characteristic (ROC) plots and area under the ROC curve (AUC) values. The overall best performance accuracy of 77% was achieved when KNN and DT were trained on computed HRV parameters with a 5 min time window. KNN obtained an AUC of 0.77, while DT attained 0.78. Additionally, in the classification of severe congestive heart failure, KNN and DT had the best accuracy of 91%, with KNN achieving an AUC of 0.88 and DT obtaining 0.92.ConclusionsThe results show that HRV can accurately predict severe congestive heart failure. The findings of this study could inform the use of machine learning approaches on non-invasive HRV, to screen congestive heart failure individuals in primary care.
引用
收藏
页码:378 / 389
页数:12
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