HIV-1药物性神经元损伤的分类方法

Men-Zhao Wang, Jialin C. Zheng, Zhengxin Chen, Yong Shi
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引用次数: 4

摘要

hiv -1相关性痴呆(HAD)是发生在艾滋病患者中枢神经系统的最具破坏性的疾病。不同治疗下的神经元损伤是HAD的早期指标,可用于设计和研究预防或逆转HAD相关神经元死亡的特异性治疗方法。使用计算机图像程序定量估计培养皮层神经元的神经突、树突、分支节点和细胞体的变化。采用9个属性(变量),G2(未治疗对照组)和G4 (gp120治疗组)2类来描述神经元损伤状态。我们课题组采用了多种分类方法。在本文中,我们将重点放在使用逻辑回归方法进行分类,并将所得的预测精度与先前使用两类多准则线性规划(MCLP)和神经网络(NN)模型的预测精度进行比较。结果表明,逻辑回归获得了最好的分类精度。作为一项先导研究,它证明了统计方法在HAD相关神经元损伤分类挖掘中的应用和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification methods for HIV-1 medicated neuronal damage
HIV-1-associated dementia (HAD) is the most devastating disease happened in the central nervous system of AIDS patients. Neuronal damage, the early indicator of HAD, under different treatments can be applied to design and study specific therapies for the prevention or reversal of the neuronal death associated with HAD. A computer-based image program was used to quantitatively estimate the change of neurites, arbors, branch nodes, and cell bodies in cultured cortical neurons. Nine attributes (variables) and two classes G2 (non-treatment control group) and G4 (gp120-treatment group) were considered to describe the statuses of neuronal damage. Various classification methods have been carried out in our research group. In this paper, we focus on using logistic regression method for classification, and compare the resulting predictive accuracy with that of using two-class multiple criteria linear programming (MCLP) and neural networks (NN) models conducted earlier. The results show that logistic regression obtained the best classification accuracy. As a pilot study, it demonstrates the use and effectiveness of statistical method in the classification mining of neuronal damage associated with HAD.
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