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一个基于医学云的呼吸速率测量及呼吸障碍分层分类平台。

A medical cloud-based platform for respiration rate measurement and hierarchical classification of breath disorders.

作者信息

Fekr Atena Roshan, Janidarmian Majid, Radecka Katarzyna, Zilic Zeljko

机构信息

Department of Electrical and Computer Engineering, McGill University, 3480 University Street Montreal H3A 0E9, Canada.

出版信息

Sensors (Basel). 2014 Jun 24;14(6):11204-24. doi: 10.3390/s140611204.

Abstract

The measurement of human respiratory signals is crucial in cyberbiological systems. A disordered breathing pattern can be the first symptom of different physiological, mechanical, or psychological dysfunctions. Therefore, a real-time monitoring of the respiration patterns, as well as respiration rate is a critical need in medical applications. There are several methods for respiration rate measurement. However, despite their accuracy, these methods are expensive and could not be integrated in a body sensor network. In this work, we present a real-time cloud-based platform for both monitoring the respiration rate and breath pattern classification, remotely. The proposed system is designed particularly for patients with breathing problems (e.g., respiratory complications after surgery) or sleep disorders. Our system includes calibrated accelerometer sensor, Bluetooth Low Energy (BLE) and cloud-computing model. We also suggest a procedure to improve the accuracy of respiration rate for patients at rest positions. The overall error in the respiration rate calculation is obtained 0.53% considering SPR-BTA spirometer as the reference. Five types of respiration disorders, Bradapnea, Tachypnea, Cheyn-stokes, Kaussmal, and Biot's breathing are classified based on hierarchical Support Vector Machine (SVM) with seven different features. We have evaluated the performance of the proposed classification while it is individualized to every subject (case 1) as well as considering all subjects (case 2). Since the selection of kernel function is a key factor to decide SVM's performance, in this paper three different kernel functions are evaluated. The experiments are conducted with 11 subjects and the average accuracy of 94.52% for case 1 and the accuracy of 81.29% for case 2 are achieved based on Radial Basis Function (RBF). Finally, a performance evaluation has been done for normal and impaired subjects considering sensitivity, specificity and G-mean parameters of different kernel functions.

摘要

人体呼吸信号的测量在网络生物系统中至关重要。呼吸模式紊乱可能是不同生理、机械或心理功能障碍的首要症状。因此,实时监测呼吸模式以及呼吸频率是医疗应用中的关键需求。有多种测量呼吸频率的方法。然而,尽管这些方法准确,但它们成本高昂且无法集成到人体传感器网络中。在这项工作中,我们提出了一个基于云的实时平台,用于远程监测呼吸频率和呼吸模式分类。所提出的系统是专门为有呼吸问题(如术后呼吸并发症)或睡眠障碍的患者设计的。我们的系统包括校准后的加速度计传感器、低功耗蓝牙(BLE)和云计算模型。我们还提出了一种提高静止状态患者呼吸频率测量准确性的程序。以SPR - BTA肺活量计为参考,呼吸频率计算的总体误差为0.53%。基于具有七种不同特征的分层支持向量机(SVM)对呼吸急促、呼吸过速、潮式呼吸、库斯莫尔呼吸和比奥呼吸这五种呼吸障碍进行了分类。我们评估了所提出分类方法在针对每个个体(案例1)以及考虑所有个体(案例2)时的性能。由于核函数的选择是决定支持向量机性能的关键因素,本文评估了三种不同的核函数。对11名受试者进行了实验,基于径向基函数(RBF),案例1的平均准确率达到94.52%,案例2的准确率达到81.29%。最后,针对正常和受损受试者,考虑不同核函数的敏感性、特异性和G均值参数进行了性能评估。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e921/4118343/253bd44ef6e1/sensors-14-11204f1.jpg

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