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Learning Through Chain Event Graphs: The Role of Maternal Factors in Childhood Type 1 Diabetes

机译:通过连锁事件图学习:母体因素在儿童型1型糖尿病中的作用

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Chain event graphs (CEGs) are a graphical representation of a statistical model derived from event trees. They have previously been applied to cohort studies but not to case-control studies. In this paper, we apply the CEG framework to a Yorkshire, United Kingdom, case-control study of childhood type 1 diabetes (1993-1994) in order to examine 4 exposure variables associated with the mother, 3 of which are fully observed (her school-leaving-age, amniocenteses during pregnancy, and delivery type) and 1 with missing values (her rhesus factor), while incorporating previous type 1 diabetes knowledge. We conclude that the unknown rhesus factor values were likely to be missing not at random and were mainly rhesus-positive. The mother's school-leaving-age and rhesus factor were not associated with the diabetes status of the child, whereas having at least 1 amniocentesis procedure and, to a lesser extent, birth by cesarean delivery were associated; the combination of both procedures further increased the probability of diabetes. This application of CEGs to case-control data allows for the inclusion of missing data and prior knowledge, while investigating associations in the data. Communication of the analysis with the clinical expert is more straightforward than with traditional modeling, and this approach can be applied retrospectively or when assumptions for traditional analyses are not held.
机译:链事件图(CEGS)是源自事件树的统计模型的图形表示。他们以前已被应用于队列研究,而不是案例控制研究。在本文中,我们将CEG框架应用于约克郡,英国,儿童型1型糖尿病(1993-1994)的案例控制研究,以检查与母亲相关的4个暴露变量,其中3个被完全观察到(她学龄儿童,妊娠期间的羊膜切除症,交付类型)和1个缺失值(她的恒河因子),同时纳入先前的1型糖尿病知识。我们得出结论,未知的恒河区因子值可能缺失而不是随机缺失,主要是恒河阳性。母亲的学龄儿童和恒河猴无关与孩子的糖尿病状态无关,而至少有1个羊膜穿孔程序,并且在较小程度上,通过剖宫产递送出生;两种程序的组合进一步增加了糖尿病的概率。 CEGS对案例控制数据的这种应用允许包含缺失的数据和先验知识,同时调查数据中的关联。与临床专家的分析通信比传统建模更简单,并且这种方法可以回顾性或未举行传统分析的假设。

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