Development and external validation of a logistic regression derived algorithm to estimate a 12-month post open defecation free slippage risk

W. Simangolwa
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Abstract

Appropriate open defecation free (ODF) sustainability interventions are key to further mobilise communities to consume sanitation and hygiene products and services that enhance household’s quality of life and embed household behavioural change for heathier communities. This study aims to develop a logistic regression derived risk algorithm to estimate a 12-month ODF slippage risk and externally validate the model in an independent data set. ODF slippage occurs when one or more toilet adequacy parameters are no longer present for one or more toilets in a community. Data in the Zambia district health information software for water sanitation and hygiene management information system for Chungu and Chabula chiefdoms was used for the study. The data was retrieved from the date of chief Chungu and Chabula chiefdoms' attainment of ODF status in October 2016 for 12 months until September 2017 for the development and validation data sets respectively. Data was assumed to be missing completely at random and the complete case analysis approach was used. The events per variables were satisfactory for both the development and validation data sets. Multivariable regression with a backwards selection procedure was used to decide candidate predictor variables with p < 0.05 meriting inclusion. To correct for optimism, the study compared amount of heuristic shrinkage by comparing the model’s apparent C-statistic to the C- statistic computed by nonparametric bootstrap resampling. In the resulting model, an increase in the covariates ‘months after ODF attainment’, ‘village population’ and ‘latrine built after CLTS’, were all associated with a higher probability of ODF slippage. Conversely, an increase in the covariate ‘presence of a handwashing station with soap’, was associated with reduced probability of ODF slippage. The predictive performance of the model was improved by the heuristic shrinkage factor of 0.988. The external validation confirmed good prediction performance with an area under the receiver operating characteristic curve of 0.85 and no significant lack of fit (Hosmer-Lemeshow test: p = 0.246). The results must be interpreted with caution in regions where the ODF definitions, culture and other factors are different from those asserted in the study.
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开发和外部验证逻辑回归推导算法,以估计露天排便后12个月的无滑动风险
适当的无露天排便(ODF)可持续性干预措施是进一步动员社区消费环境卫生和个人卫生产品和服务的关键,这些产品和服务可提高家庭生活质量,并促进家庭行为改变,以实现更健康的社区。本研究旨在开发一种逻辑回归衍生的风险算法来估计12个月的ODF滑动风险,并在独立数据集中对模型进行外部验证。当一个社区中的一个或多个厕所不再存在一个或多个厕所充分性参数时,就会发生ODF滑移。该研究使用了赞比亚地区卫生信息软件中的数据,用于春古和查布拉酋邦的水卫生和卫生管理信息系统。数据从2016年10月春古酋长和查布拉酋长获得ODF地位之日起检索,持续12个月,分别用于开发和验证数据集,直至2017年9月。假设数据完全随机丢失,采用完整案例分析法。每个变量的事件对于开发和验证数据集都是令人满意的。采用反向选择程序的多变量回归来确定p < 0.05值得纳入的候选预测变量。为了纠正乐观主义,研究通过比较模型的表观C-统计量与非参数自举重采样计算的C-统计量来比较启发式收缩量。在最终的模型中,协变量“达到ODF后的月数”、“村庄人口”和“CLTS后建造的厕所”的增加都与ODF滑移的更高概率相关。相反,协变量“用肥皂洗手站的存在”的增加与ODF滑动的可能性降低有关。启发式收缩因子为0.988,提高了模型的预测性能。外部验证证实预测效果良好,受试者工作特征曲线下面积为0.85,没有明显的拟合缺失(Hosmer-Lemeshow检验:p = 0.246)。在ODF定义、文化和其他因素与研究中断言的不同的地区,必须谨慎解释结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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