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Building Semantic Causal Models to Predict Treatment Adherence for Tuberculosis Patients in Sub-Saharan Africa

机译:建立语义因果模型,以预测撒哈拉以南非洲结核病患者的治疗依从性

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Poor adherence to prescribed treatment is a major factor contributing to tuberculosis patients developing drug resistance and failing treatment. Treatment adherence behaviour is influenced by diverse personal, cultural and socio-economic factors that vary between regions and communities. Decision network models can potentially be used to predict treatment adherence behaviour. However, determining the network structure (identifying the factors and their causal relations) and the conditional probabilities is a challenging task. To resolve the former we developed an ontology supported by current scientific literature to categorise and clarify the similarity and granularity of factors.
机译:不良依赖于规定的治疗是有助于结核病患者发育耐药性和失败治疗的主要因素。治疗遵守行为受各地区和社区之间各种各样的个人,文化和社会经济因素的影响。决策网络模型可能用于预测治疗依从性行为。然而,确定网络结构(识别因子及其因果关系),条件概率是一个具有挑战性的任务。要解决前者,我们开发了目前科学文学支持的本体论,以分类和阐明因素的相似性和粒度。

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