Begashaw Getnet Bogale, Zewotir Temesgen, Fenta Haile Mekonnen
Department of Statistics, College of Science, Bahir Dar University, Bahir Dar, Ethiopia.
Department of Data Science, College of Natural and Computational Science, Debre Berhan University, Debre Berhan, Ethiopia.
Front Public Health. 2024 Dec 12;12:1399094. doi: 10.3389/fpubh.2024.1399094. eCollection 2024.
Dynamic Bayesian networks improve the modeling of complex systems by incorporating continuous probabilistic relationships between covariates that change over time. This study aimed to analyze the complex causal links contributing to child undernutrition using dynamic Bayesian network modeling, examining both the best- and worst-case scenarios. The Young Cohort of the Ethiopian Young Lives dataset from 2002-2016 was used to analyze the complex relationships among various covariates influencing child undernutrition. We used a built-in Bayes server tool to identify potential features, followed by building the structure of the directed acyclic graph using a structural learning algorithm. The maximum posterior is determined using the relevance tree algorithm. The node with the highest values of mutual information and target entropy reduction, along with the lowest value of target entropy, was considered to have the strongest predictive power in the dataset.
This study revealed that long-term participation in programs increased the likelihood of children being in a normal nutritional state. Key factors influencing the nutritional status of children under two years of age include the mother's education level, her subjective well-being, and the household's wealth quintile. Children with educated parents were more likely to have a healthy nutritional status. Additionally, the causal pathway of intervention programs → wealth quintile → child nutritional status consistently exceeded 90% in Waves 3, 4, and 5, indicating a strong relationship. Similarly, the relationship between intervention programs → food security → child nutritional status was nearly perfect at 99.99% in Waves 4 and 5, indicating a strong association. Finally, the study revealed that household participation in intervention programs significantly reduces undernutrition in best-case scenarios, while the absence of support poses a higher risk in worst-case conditions.
The comprehensive intervention program strongly improved household wealth, food security, and maternal well-being, which in turn affected children's nutritional status.
动态贝叶斯网络通过纳入随时间变化的协变量之间的连续概率关系,改进了复杂系统的建模。本研究旨在使用动态贝叶斯网络建模分析导致儿童营养不良的复杂因果联系,同时考察最佳和最坏情况。利用2002年至2016年埃塞俄比亚青年生活数据集的青年队列来分析影响儿童营养不良的各种协变量之间的复杂关系。我们使用内置的贝叶斯服务器工具来识别潜在特征,随后使用结构学习算法构建有向无环图的结构。使用相关树算法确定最大后验概率。在数据集中,互信息和目标熵减少值最高且目标熵值最低的节点被认为具有最强的预测能力。
本研究表明,长期参与项目会增加儿童处于正常营养状态的可能性。影响两岁以下儿童营养状况的关键因素包括母亲的教育水平、她的主观幸福感以及家庭的财富五分位数。父母受过教育的儿童更有可能拥有健康的营养状况。此外,干预项目→财富五分位数→儿童营养状况的因果路径在第3、4和5轮中始终超过90%,表明存在很强的关系。同样,干预项目→粮食安全→儿童营养状况之间的关系在第4和5轮中接近完美,为99.99%,表明存在很强的关联。最后,研究表明,在最佳情况下,家庭参与干预项目可显著降低营养不良情况,而在最坏情况下,缺乏支持则会带来更高风险。
综合干预项目有力地改善了家庭财富、粮食安全和母亲的幸福感,进而影响了儿童的营养状况。