General Information
    • ISSN: 1793-8201 (Print), 2972-4511 (Online)
    • Abbreviated Title: Int. J. Comput. Theory Eng.
    • Frequency: Quarterly
    • DOI: 10.7763/IJCTE
    • Editor-in-Chief: Prof. Mehmet Sahinoglu
    • Associate Editor-in-Chief: Assoc. Prof. Alberto Arteta, Assoc. Prof. Engin Maşazade
    • Managing Editor: Ms. Mia Hu
    • Abstracting/Indexing: Scopus (Since 2022), INSPEC (IET), CNKI,  Google Scholar, EBSCO, etc.
    • Average Days from Submission to Acceptance: 192 days
    • E-mail: ijcte@iacsitp.com
    • Journal Metrics:

Editor-in-chief
Prof. Mehmet Sahinoglu
Computer Science Department, Troy University, USA
I'm happy to take on the position of editor in chief of IJCTE. We encourage authors to submit papers concerning any branch of computer theory and engineering.

IJCTE 2017 Vol.9(3): 202-206 ISSN: 1793-8201
DOI: 10.7763/IJCTE.2017.V9.1138

Cuffless Blood Pressure Estimation Based on Photoplethysmography Signal and Its Second Derivative

Mengyang Liu, Lai-Man Po, and Hong Fu

Abstract—Abstract—In personal healthcare, blood pressure (BP) is an important vital sign to be monitored frequently. However, traditional BP measurement devices require cuff’s inflation and deflation that is very uncomfortable for many users. Cuffless noninvasive BP estimation methods are very attractive especially on using Photoplethysmography (PPG) approach for achieving continuous BP monitoring and minimal user’s inconvenience. From recent studies on the second derivative of PPG (SDPPG) for vascular aging, SDPPG contains the information about aortic compliance and stiffness, which is highly related to blood pressure. To making use of this new finding, 14 new SDPPG based features are proposed in this paper. They are combined with conventional 21 time-scale PPG features to develop a Support Vector Regression based BP estimator. Experimental results demonstrated that the combined features based BP estimator could improve accuracy of the conventional time-scale PPG based BP estimation by 40%.

Index Terms—Index Terms—Blood pressure, photoplethysmography (PPG), second derivative wave, support vector regression.

Mengyang Liu was with City University of Hong Kong, Hong Kong SAR, China. He is now with the Department of Computer Science, Chu Hai College of Higher Education, Hong Kong SAR, China (e-mail: lmyleon2014@gmail.com). Lai-Man Po is with City University of Hong Kong, Hong Kong SAR, China (e-mail: eelmpo@cityu.edu.hk). Hong Fu is with the Computer Science Department, Chu Hai College of Higher Education, Hong Kong SAR, China (e-mail: hongfu@chuhai.edu.hk).

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Cite:Mengyang Liu, Lai-Man Po, and Hong Fu, "Cuffless Blood Pressure Estimation Based on Photoplethysmography Signal and Its Second Derivative," International Journal of Computer Theory and Engineering vol. 9, no. 3, pp. 202-206, 2017.


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