首页> 外文会议>2012 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining. >Response Surface Modeling and Optimization to Elucidate the Differential Effects of Demographic Characteristics on HIV Prevalence in South Africa
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Response Surface Modeling and Optimization to Elucidate the Differential Effects of Demographic Characteristics on HIV Prevalence in South Africa

机译:响应面建模和优化,以阐明人口统计学特征对南非艾滋病毒流行的不同影响

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In this study, a Central Composite Face Centered (CCF) design was employed to study the individual and interaction effects of demographic characteristics on the spread of HIV in South Africa. The demographic characteristics studied for each pregnant mother attending an antenatal clinic in South Africa, were mother's age, partner's age, mother's level of education and parity. HIV status of an antenatal clinic attendee was found to be highly sensitive to changes in pregnant woman's age and partner's age, using the 2007 South African annual antenatal HIV and syphilis seroprevalence data. Individually the pregnant woman's level of education and parity had no significant effect on the HIV status. However, the latter two demographic characteristics exhibited significant effects on the HIV status of antenatal clinic attendees in two way interactions with other demographic characteristics. Using HIV as the optimization objective, the following summary statistics were obtained, R2 = 0.99 and two-factor interactions (2FI) model F-value of 63.77. The model F-value of 63.77 implied the 2FI model was significant and there was only a 0.01% chance this model value could occur due to noise. The model 'Lack of Fit' value of 0.01 implied that the 'Lack of Fit' was not significant relative to the pure error and thus there was a 99.88% chance that this 'Lack of Fit' F-value could occur due to noise. An adeq. precision value of 25 was obtained, suggesting that this 2FI model could be used to navigate the design space. A 3D response surface plot indicated that the highest rate of HIV positive individuals was obtainable at the highest age of the pregnant women and lowest age of their partners.
机译:在这项研究中,采用中央复合面部中心(CCF)设计来研究人口统计学特征对南非HIV传播的个体和相互作用影响。对每个在南非产前诊所就诊的怀孕母亲所进行的人口统计学特征是母亲的年龄,伴侣的年龄,母亲的受教育程度和均等。根据2007年南非年度产前HIV和梅毒血清学数据,发现产前诊所参加者的HIV状况对孕妇年龄和伴侣年龄的变化高度敏感。个别而言,孕妇的受教育程度和均等程度对艾滋病毒感染状况没有显着影响。但是,后两个人口统计学特征与其他人口统计学特征有两种相互作用,对产前门诊就诊者的HIV状况显示出显着影响。使用HIV作为优化目标,获得以下汇总统计数据,R2 = 0.99,两因素相互作用(2FI)模型F值为63.77。模型F值63.77表示2FI模型很重要,并且该模型值由于噪声而发生的可能性只有0.01%。模型的“缺乏拟合”值0.01表示相对于纯误差而言,“缺乏拟合”意义不大,因此,由于噪声而出现“缺乏拟合” F值的可能性为99.88%。足够获得的精度值为25,这表明该2FI模型可用于导航设计空间。 3D响应表面图表明,在孕妇的最高年龄和其伴侣的最低年龄,可以获得最高的HIV阳性人数。

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