A Low Cost Implementation Of Multi-parameter Patient Monitor Using Intersection Kernel Support Vector Machine Classifier

被引:0
|
作者
Mohan, Dhanya [1 ]
Kumar, C. Santhosh [1 ]
机构
[1] Amrita Vishwa Vidyapeetham, Dept ECE, Machine Intelligence Res Lab, Coimbatore 641112, Tamil Nadu, India
关键词
D O I
10.1063/1.4942689
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Predicting the physiological condition (normal/abnormal) of a patient is highly desirable to enhance the quality of health care. Multi-parameter patient monitors (MPMs) using heart rate, arterial blood pressure, respiration rate and oxygen saturation (SpO(2)) as input parameters were developed to monitor the condition of patients, with minimum human resource utilization. The Support vector machine (SVM), an advanced machine learning approach popularly used for classification and regression is used for the realization of MPMs. For making MPMs cost effective, we experiment on the hardware implementation of the MPM using support vector machine classifier. The training of the system is done using the matlab environment and the detection of the alarm/noalarm condition is implemented in hardware. We used different kernels for SVM classification and note that the best performance was obtained using intersection kernel SVM (IKSVM). The intersection kernel support vector machine classifier MPM has outperformed the best known MPM using radial basis function kernel by an absoute improvement of 2.74% in accuracy, 1.86% in sensitivity and 3.01% in specificity. The hardware model was developed based on the improved performance system using Verilog Hardware Description Language and was implemented on Altera cyclone-II development board.
引用
收藏
页数:6
相关论文
共 50 条
  • [21] Lithofacies identification using support vector machine based on local deep multi-kernel learning
    Liu, Xing-Ye
    Zhou, Lin
    Chen, Xiao-Hong
    Li, Jing-Ye
    PETROLEUM SCIENCE, 2020, 17 (04) : 954 - 966
  • [22] CREDIT SCORING USING MULTI-KERNEL SUPPORT VECTOR MACHINE AND CHAOS PARTICLE SWARM OPTIMIZATION
    Ling, Yun
    Cao, Qiuyan
    Zhang, Hua
    INTERNATIONAL JOURNAL OF COMPUTATIONAL INTELLIGENCE AND APPLICATIONS, 2012, 11 (03)
  • [23] Support Vector Machine Regression for Forecasting Electricity Demand for Large Commercial Buildings by using Kernel Parameter and Storage Effect
    Samarawickrama, N. G. I. S.
    Hemapala, K. T. M. U.
    Jayasekara, A. G. B. P.
    2ND INTERNATIONAL MERCON 2016 MORATUWA ENGINEERING RESEARCH CONFERENCE, 2016, : 162 - 167
  • [24] Lithofacies identi cation using support vector machine based on local deep multi-kernel learning
    XingYe Liu
    Lin Zhou
    XiaoHong Chen
    JingYe Li
    Petroleum Science, 2020, 17 (04) : 954 - 966
  • [25] Lithofacies identi cation using support vector machine based on local deep multi-kernel learning
    Xing-Ye Liu
    Lin Zhou
    Xiao-Hong Chen
    Jing-Ye Li
    Petroleum Science, 2020, (04) : 954 - 966
  • [26] Automatic Sleep Staging using Multi-dimensional Feature Extraction and Multi-kernel Fuzzy Support Vector Machine
    Zhang, Yanjun
    Zhang, Xiangmin
    Liu, Wenhui
    Luo, Yuxi
    Yu, Enjia
    Zou, Keju
    Liu, Xiaoliang
    JOURNAL OF HEALTHCARE ENGINEERING, 2014, 5 (04) : 505 - 520
  • [27] Expeditious diagnosis of linear array failure using support vector machine with low-degree polynomial kernel
    Yeo, B. -K.
    Lu, Y.
    IET MICROWAVES ANTENNAS & PROPAGATION, 2012, 6 (13) : 1473 - 1480
  • [28] Brain tumor diagnosis from MR images using boosted multi-gradient support vector machine classifier
    Kalaiselvi, S.
    Thailambal, G.
    Measurement: Sensors, 2024, 32
  • [29] Fault Diagnosis of Roller Bearing Using Parameter Evaluation Technique and Multi-Class Support Vector Machine
    Susilo, Didik Djoko
    Widodo, Achmad
    Prahasto, Toni
    Nizam, Muhammad
    INTERNATIONAL CONFERENCE ON ENGINEERING, SCIENCE AND NANOTECHNOLOGY 2016 (ICESNANO 2016), 2017, 1788