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Single-point curved fiber optic pulse sensor for physiological signal prediction based on the genetic algorithm-support vector regression model

Xiong, Liwen; Zhong, Haihua; Wan, Shengpeng*; Yu, Junsong
Science Citation Index Expanded
南昌航空大学

摘要

For hypertensive patients, a real-time human physiological signal monitoring system helps to track blood pressure status and provides valuable data to clinicians for early diagnosis and timely intervention. Optical fiber pulse sensing has superior conditions such as resistance to electromagnetic interference and richness of measured pulse characteristics. In this study, a monitoring system based on a single-point curved fiber pulse sensor (CFPS) was used to collect the pulse wave signal of a human radial artery. The features of the pulse wave signal were used to estimate the pulse wave transit time (PTT) and Blood Pressure-systolic blood pressure (SBP) and dia-stolic blood pressure (DBP)-based on support vector regression (SVR) optimized by a genetic algorithm (GA) (GA-SVR model). The results show that the root mean square error (RMSE) of SBP, DBP and PTT were 1.571 mmHg, 3.250 mmHg and 5.719 ms, respectively, and the results met the Advancement of Medical Instrumen-tation (AAMI) criteria. Therefore, a real-time pulse wave monitoring system based on a single-point CFPS can well predict human physiological signals such as PTT, SBP and DBP.

关键词

Pulse sensor Pulse wave transit time Blood pressure Curved fiber Genetic algorithm Support vector regression