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支持向量回归在人体血红蛋白无创检测中的应用
引用本文:袁境泽,卢启鹏,王静丽,丁海泉,高洪智,吴春阳,李晚侠.支持向量回归在人体血红蛋白无创检测中的应用[J].分析化学,2017,45(9).
作者姓名:袁境泽  卢启鹏  王静丽  丁海泉  高洪智  吴春阳  李晚侠
作者单位:1. 中国科学院长春光学精密机械与物理研究所,长春130000;中国科学院大学,北京 100049;2. 中国科学院长春光学精密机械与物理研究所,长春,130000;3. 吉林大学第一医院肿瘤中心,长春,130021
基金项目:国家高技术研究发展计划(863计划),国家自然科学基金,吉林省科技发展计划项目,应用光学国家重点实验室基金资助项目.This work was supported by the National High Technology Research and Development Program of China,the National Natural Science Foundation of China
摘    要:采用线性渐变滤光片(Linear variable filter, LVF),优化设计高性能、便携式的人体血液成分近红外检测设备,研究了支持向量回归(Support vector regression, SVR)模型对人体血红蛋白(Hemoglobin, Hb)的预测能力及稳定性,以实现贫血疾病的无创诊断.无创采集100位志愿者食指前端光谱信息并划分定标集、验证集1和2.应用网格搜索方法优选惩罚参数与核函数参数c=5.28, g=0.33,用以建立稳健的SVR模型.随后,分别对验证集1和2中Hb水平进行定量分析.实验结果表明: 预测标准偏差(RMSEP) 分别为10.20 g/L和10.85 g/L,相对预测标准偏差(R-RMSEP) 为6.85%和7.48%,测量精度较高且SVR模型对不同样品的适应性较强,基本满足临床检测要求.基于SVR算法自行设计的LVF型近红外光谱检测设备在贫血症的无创诊断中有着良好的应用前景.

关 键 词:无创检测  人血红蛋白  近红外光谱  支持向量回归  便携式仪器

Support Vector Regression for Non-invasive Detection of Human Hemoglobin
YUAN Jing-Ze,LU Qi-Peng,WANG Jing-Li,DING Hai-Quan,GAO Hong-Zhi,WU Chun-Yang,LI Wan-Xia.Support Vector Regression for Non-invasive Detection of Human Hemoglobin[J].Chinese Journal of Analytical Chemistry,2017,45(9).
Authors:YUAN Jing-Ze  LU Qi-Peng  WANG Jing-Li  DING Hai-Quan  GAO Hong-Zhi  WU Chun-Yang  LI Wan-Xia
Abstract:To facilitate noninvasive diagnosis of anemia, high-performance and portable near infrared (NIR) spectrometer for human blood constituents was designed and fabricated based on linear variable filter (LVF).Meanwhile, the performance of support vector regression (SVR) model for quantitative analysis of human hemoglobin (Hb) was investigated.Spectral data were collected noninvasively from 100 volunteers by self-designed LVF-NIR spectrometer, then divided into calibration set, validation set 1 and 2.To establish a robust SVR model, grid search method was applied to optimize the penalty parameter and kernel function parameter c=5.28, g=0.33.Then, Hb levels in the validation 1 and 2 sets were quantitatively analyzed.The results showed that the root mean square error of prediction (RMSEP) were 10.20 g/L and 10.85 g/L, respectively, and the relative RMSEP (R-RMSEP) were 6.85% and 7.48%, respectively.The results indicated that the SVR model had high prediction accuracy to Hb level and adaptability to different samples, and could satisfy the requirements of clinical measurement.Based on the SVR algorithm, the self-designed LVF-NIR spectrometer has a wide application prospect in the field of non-invasive anemia diagnosis.
Keywords:Non-invasive detection  Hemoglobin  Near-infrared spectroscopy  Support vector regression  Portable device
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