Heart Rate Variability Based Prediction of Personalized Drug Therapeutic Response: The Present Status and the Perspectives | Bentham Science
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Current Topics in Medicinal Chemistry

Editor-in-Chief

ISSN (Print): 1568-0266
ISSN (Online): 1873-4294

Review Article

Heart Rate Variability Based Prediction of Personalized Drug Therapeutic Response: The Present Status and the Perspectives

Author(s): Zejun Pei, Manhong Shi, Junping Guo* and Bairong Shen*

Volume 20, Issue 18, 2020

Page: [1640 - 1650] Pages: 11

DOI: 10.2174/1568026620666200603105002

Price: $65

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Abstract

Heart rate variability (HRV) signals are reported to be associated with the personalized drug response in many diseases such as major depressive disorder, epilepsy, chronic pain, hypertension, etc. But the relationships between HRV signals and the personalized drug response in different diseases and patients are complex and remain unclear. With the fast development of modern smart sensor technologies and the popularization of big data paradigm, more and more data on the HRV and drug response will be available, it then provides great opportunities to build models for predicting the association of the HRV with personalized drug response precisely. We here review the present status of the HRV data resources and models for predicting and evaluating of personalized drug responses in different diseases. The future perspectives on the integration of knowledge and personalized data at different levels such as, genomics, physiological signals, etc. for the application of HRV signals to the precision prediction of drug therapy and their response will be provided.

Keywords: Heart rate variability, Computational models, Personalized drug therapy, Prediction of drug response, Brain activity, Respiration signals.

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