Ding Haiquan, Lu Qipeng, Gao Hongzhi, Peng Zhongqi
State Key Laboratory of Applied Optics, Changchun Institute of Optics, Fine Mechanics and Physics, Chinese Academy of Sciences, Changchun, Jilin, 130033, China.
Biomed Opt Express. 2014 Mar 12;5(4):1145-52. doi: 10.1364/BOE.5.001145. eCollection 2014 Apr 1.
To facilitate non-invasive diagnosis of anemia, specific equipment was developed, and non-invasive hemoglobin (HB) detection method based on back propagation artificial neural network (BP-ANN) was studied. In this paper, we combined a broadband light source composed of 9 LEDs with grating spectrograph and Si photodiode array, and then developed a high-performance spectrophotometric system. By using this equipment, fingertip spectra of 109 volunteers were measured. In order to deduct the interference of redundant data, principal component analysis (PCA) was applied to reduce the dimensionality of collected spectra. Then the principal components of the spectra were taken as input of BP-ANN model. On this basis we obtained the optimal network structure, in which node numbers of input layer, hidden layer, and output layer was 9, 11, and 1. Calibration and correction sample sets were used for analyzing the accuracy of non-invasive hemoglobin measurement, and prediction sample set was used for testing the adaptability of the model. The correlation coefficient of network model established by this method is 0.94, standard error of calibration, correction, and prediction are 11.29g/L, 11.47g/L, and 11.01g/L respectively. The result proves that there exist good correlations between spectra of three sample sets and actual hemoglobin level, and the model has a good robustness. It is indicated that the developed spectrophotometric system has potential for the non-invasive detection of HB levels with the method of BP-ANN combined with PCA.
为便于贫血的无创诊断,研发了特定设备,并研究了基于反向传播人工神经网络(BP-ANN)的无创血红蛋白(HB)检测方法。本文将由9个发光二极管组成的宽带光源与光栅光谱仪和硅光电二极管阵列相结合,进而开发出一种高性能分光光度系统。利用该设备测量了109名志愿者的指尖光谱。为扣除冗余数据的干扰,采用主成分分析(PCA)对采集到的光谱进行降维。然后将光谱的主成分作为BP-ANN模型的输入。在此基础上得到了最优网络结构,其中输入层、隐藏层和输出层的节点数分别为9、11和1。用校准和校正样本集分析无创血红蛋白测量的准确性,用预测样本集测试模型的适应性。该方法建立的网络模型相关系数为0.94,校准、校正和预测的标准误差分别为11.29g/L、11.47g/L和11.01g/L。结果证明,三个样本集的光谱与实际血红蛋白水平之间存在良好的相关性,且模型具有良好的稳健性。表明所开发的分光光度系统结合PCA方法和BP-ANN对无创检测HB水平具有潜在应用价值。