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个性化机器学习-纳米柱摩擦电脉冲传感器用于无袖带血压连续监测。

Personalized Machine Learning-Coupled Nanopillar Triboelectric Pulse Sensor for Cuffless Blood Pressure Continuous Monitoring.

机构信息

State Key Laboratory of Optoelectronic Materials and Technologies, Guangdong Province Key Laboratory of Display Material and Technology, School of Electronics and Information Technology, Sun Yat-sen University, Guangzhou 510006, China.

The First Affiliated Hospital of Sun Yat-sen University, Sun Yat-sen University, Guangzhou 510080, China.

出版信息

ACS Nano. 2023 Dec 12;17(23):24242-24258. doi: 10.1021/acsnano.3c09766. Epub 2023 Nov 20.

Abstract

A wearable system that can continuously track the fluctuation of blood pressure (BP) based on pulse signals is highly desirable for the treatments of cardiovascular diseases, yet the sensitivity, reliability, and accuracy remain challenging. Since the correlations of pulse waveforms to BP are highly individualized due to the diversity of the patients' physiological characteristics, wearable sensors based on universal designs and algorithms often fail to derive BP accurately when applied on individual patients. Herein, a wearable triboelectric pulse sensor based on a biomimetic nanopillar layer was developed and coupled with Personalized Machine Learning (ML) to provide accurate and continuous monitoring of BP. Flexible conductive nanopillars as the triboelectric layer were fabricated through soft lithography replication of a cicada wing, which could effectively enhance the sensor's output performance to detect weak signal characteristics of pulse waveform for BP derivation. The sensors were coupled with a personalized Partial Least-Squares Regression (PLSR) ML to derive unknown BP based on individual pulse characteristics with reasonable accuracy, avoiding the issue of individual variability that was encountered by General PLSR ML or formula algorithms. The cuffless and intelligent design endow this ML-sensor as a highly promising platform for the care and treatments of hypertensive patients.

摘要

一种基于脉搏信号的可穿戴系统,能够连续跟踪血压(BP)的波动,这对心血管疾病的治疗非常理想,但灵敏度、可靠性和准确性仍然具有挑战性。由于患者生理特征的多样性,脉搏波形与血压的相关性具有高度的个体差异性,因此基于通用设计和算法的可穿戴传感器在应用于个体患者时,往往无法准确地测量血压。在此,开发了一种基于仿生纳米柱层的可穿戴摩擦电脉冲传感器,并结合个性化机器学习(ML),为血压的精确和连续监测提供了一种方法。作为摩擦电层的柔性导电纳米柱通过蝉翼的软光刻复制制造而成,这可以有效地增强传感器的输出性能,以检测脉搏波形的微弱信号特征,从而推导出血压。传感器与个性化偏最小二乘回归(PLSR)ML 相结合,基于个体脉搏特征以合理的精度推导出未知的 BP,避免了通用 PLSR ML 或公式算法所遇到的个体变异性问题。无袖带和智能设计使这种 ML 传感器成为高血压患者护理和治疗的极具前景的平台。

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