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A novel approach for modeling malaria incidence using complex categorical household data: The minimum message length (MML) method applied to Indonesian data

机译:一种使用复杂的分类家庭数据对疟疾发病率建模的新颖方法:应用于印度尼西亚数据的最小消息长度(MML)方法

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We investigated the application of a Minimum Message Length (MML) modeling approach to identify the simplest model that would explain two target malaria incidence variables: incidence in the short term and on the average longer term, in two areas in Indonesia, based on a range of ecological variables including environmental and socio-economic ones. The approach is suitable for dealing with a variety of problems such as complexity and where there are missing values in the data. It can detect weak relations, is resistant to overfitting and can show the way in which many variables, working together, contribute to explaining malaria incidence. This last point is a major strength of the method as it allows many variables to be analysed. Data were obtained at household level by questionnaire for villages in West Timor and Central Java. Data were collected on 26 variables in nine categories: stratum (a village-level variable based on the API/AMI categories), ecology, occupation, preventative measures taken, health care facilities, the immediate environment, household characteristics, socio-economic status and perception of malaria cause. Several models were used and the simplest (best) model, that is the one with the minimum message length was selected for each area. The results showed that consistent predictors of malaria included combinations of ecology (coastal), preventative (clean backyard) and environment (mosquito breeding place, garden and rice cultivation). The models also showed that most of the other variables were not good predictors and this is discussed in the paper. We conclude that the method has potential for identifying simple predictors of malaria and that it could be used to focus malaria management on combinations of variables rather than relying on single ones that may not be consistently reliable
机译:我们调查了最小消息长度(MML)建模方法的应用,以识别可以解释两个目标疟疾发病率变量的最简单模型:基于范围的印度尼西亚两个地区的短期和平均长期发病率生态变量,包括环境和社会经济变量。该方法适用于处理各种问题,例如复杂性以及数据中缺少值的地方。它可以检测到弱关系,可以防止过度拟合,并且可以显示许多变量共同起作用来解释疟疾发病率的方式。最后一点是该方法的主要优势,因为它可以分析许多变量。通过问卷调查在西帝汶和中爪哇的村庄获得了家庭一级的数据。收集了9个类别的26个变量的数据:地层(基于API / AMI类别的村庄级变量),生态,职业,采取的预防措施,卫生保健设施,即时环境,家庭特征,社会经济状况和对疟疾起因的认识。使用了几种模型,并且为每个区域选择了最简单的(最佳)模型,即消息长度最小的模型。结果表明,疟疾的一致预测指标包括生态(沿海),预防(后院干净)和环境(蚊子繁殖地,花园和水稻种植)的组合。该模型还表明,大多数其他变量都不是很好的预测指标,本文对此进行了讨论。我们得出的结论是,该方法具有识别简单的疟疾预测因素的潜力,可以用于将疟疾管理的重点放在变量的组合上,而不是依靠可能不稳定的单个变量

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