Litcius/Paper detail

Prediction of blood pressure variability using deep neural networks

Hiroshi Koshimizu, Ryosuke Kojima, Kazuomi Kario, Yasushi Okuno

2020International Journal of Medical Informatics73 citationsDOIOpen Access PDF

Abstract

PURPOSE: The purpose of our study was to predict blood pressure variability from time-series data of blood pressure measured at home and data obtained through medical examination at a hospital. Previous studies have reported the blood pressure variability is a significant independent risk factor for cardiovascular disease. METHODS: We adopted standard deviation for a certain period and predicted variabilities and mean values of blood pressure for 4 weeks using multi-input multi-output deep neural networks. In designing the prediction model, we prepared a dataset from a clinical study. The dataset included past time-series data for blood pressure and medical examination data such as gender, age, and others. As evaluation metrics, we used the standard deviation ratio (SR) and the root-mean-square error (RMSE). Moreover, we used cross-validation as the evaluation method. RESULTS: The prediction performances of blood pressure variability and mean value after 1-4 weeks showed the SRs were "0.67" to "0.70", the RMSEs were "5.04" to "6.65" mmHg, respectively. Additionally, our models were able to work for a participant with high variability in blood pressure values due to its multi-output nature. CONCLUSION: The results of this study show that our models can predict blood pressure over 4 weeks. Our models work for an individual with high variability of blood pressure. Therefore, we consider that our prediction models are valuable for blood pressure management.

Topics & Concepts

Blood pressureStandard deviationMean squared errorMedicineStatisticsMean blood pressureComputer scienceMathematicsInternal medicineHeart rateArtificial Intelligence in HealthcareMachine Learning in HealthcareNon-Invasive Vital Sign Monitoring
Prediction of blood pressure variability using deep neural networks | Litcius