基于光纤光栅生物传感器光谱数据特征的手足口病分类

A. Mahmood, S. Azzuhri, Adnan N. Qureshi, Palwasha Jaan, Iqra Sadia
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引用次数: 0

摘要

手足口病(手足口病)是一种常见的由肠道病毒和柯萨奇家族感染的儿童病毒性疾病。目前的实验室鉴定是基于RT-PCR检测,这种方法昂贵、耗时且不适合大流行。SPR- TFBG用单克隆抗体(Mab)实现生物功能化。Mab是一种与病毒有亲和力的生物受体,用于检测EV-A71。建立了用SPR-TFBG生物传感器检测EV-71病毒的660份不同病毒杂质样品的反射光谱数据集。根据波长信息,提取的信号有大约4000个不同的特征。基于感兴趣区域分析选择第一个子集,将其维数从4000个特征降至1496个特征。利用均值、方差、偏度、均方根、峰度、标准差、极差、波峰因子、脉冲因子和形状因子等10个特征,基于统计特征工程程序对大特征集进行降维。随后,通过支持向量机对病毒(信号)数据进行分类,并用不同类型的核对其进行评价。对于分类器的评估,我们使用准确性,灵敏度,精度和F1分数性能指标。得到的精度结果,线性SVM为87.88,径向基为86.06,s形SVM为75.76,多项式SVM为75.15。实验结果表明,线性支持向量机的性能优于径向核、多项式核和s型核。这是因为不需要将数据投影到更高的维度,因为数据显示出线性特性,这是由白色神经网络(WNN)非线性测试证实的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hand-Foot-Mouth Disease Classification using Features from Fibre Grating Biosensor Spectral Data
Hand, Foot and Mouth disease (HFMD) is a common viral childhood disease affected by the family of enterovirus and Coxsackie. Current laboratory identification is based on the RT-PCR test, which is expensive, time-consuming, and unsuitable for the pandemic. The SPR- TFBG was biofunctionalized with monoclonal antibody (Mab). Mab is a bioreceptor with an affinity for the virus for detecting EV-A71. A dataset of reflectance spectra of 660 samples of different virus impurities measured with SPR-TFBG biosensor to detect EV-71 virus was developed. The extracted signal has around 4000 different features based on wavelength information. The first subset was selected based on the region of interest analysis, and the dimension has reduced from 4000 to 1496 features. The dimensionality of the large feature set is reduced based on the statistical feature engineering procedure using 10 features including mean, variance, skewness, RMS, kurtosis, standard deviation, range, crest factor, impulse factor and shape factor. Subsequently, classification of the virus (signal) data is achieved through SVM and it is evaluated with different types of kernels. For the evaluation of classifiers, we used accuracy, sensitivity, precision and F1 score performance metrics. The obtained results of accuracy are 87.88 for linear SVM, 86.06 for radial basis, 75.76 for sigmoid SVM, and 75.15 for polynomial SVM, respectively. The results show that for our experiments, Linear SVM performs better than radial, polynomial and sigmoid kernels. This is because projecting the data onto higher dimensions is not required as data exhibits linear properties confirmed by White Neural Network (WNN) test for nonlinearity.
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