Application of A Causal Discovery Model to Study The Effect of Iron Supplementation in Children with Iron Deficiency Anemia

F. A. Nugroho, T. Ederveen, A. Wibowo, J. Boekhorst, M. D. de Jonge, T. Heskes
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引用次数: 1

Abstract

Most clinical studies are descriptive, measuring different parameters that are associated with certain treatment effects, while causal relations cannot be confirmed. Computational models aid researchers to make predictions of causality and help to focus on the most relevant part of the data. This study used a computational model to find a causal link between iron supplementation effectiveness, RTI, and systemic inflammation parameters, and gut microbiome profiles. We used a causal discovery algorithm on a randomized controlled trial dataset (n=72) of 6 month-old infants from Kenya. We also used correlation and partial correlation to determine the causal effect of any causal link. We found that (1) expression of the Transferrin Receptor (TfR) has a positive causal link with the serum TfR-Ferritin ratio, whereasserumFerritin levels have a negative causal link to TfR expression. (2) C-Reactive Protein (CRP) together with IL-8 and IL-1B have a positive causal relation with IL-6. (3) No causal link between iron supplementation and gut microbiome profile. The first and second result is in accordance with the currentbiological research findings. While the third result shows no causality model, the skeleton might give information for future studies on understanding the gut microbiome profile. Computer modeling helped to uncover causality between clinical parameters in iron deficiency anemia children with iron-micronutrient supplementation. This could lead to more focused studies to better understand the iron supplementation practice as well as the biological mechanism of RTI, gut microbiome alteration, and iron supplementation.
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应用因果发现模型研究补铁对缺铁性贫血儿童的影响
大多数临床研究是描述性的,测量与某些治疗效果相关的不同参数,而因果关系无法确认。计算模型帮助研究人员预测因果关系,并帮助关注数据中最相关的部分。本研究使用计算模型来寻找补铁效果、RTI、全身炎症参数和肠道微生物群特征之间的因果关系。我们对来自肯尼亚的6个月大婴儿的随机对照试验数据集(n=72)使用了因果发现算法。我们还使用相关和部分相关来确定任何因果关系的因果效应。我们发现:(1)转铁蛋白受体(TfR)的表达与血清TfR-铁蛋白比值呈正相关,而血清铁蛋白水平与TfR表达呈负相关。(2) c -反应蛋白(CRP)、IL-8、IL-1B与IL-6呈正相关。(3)补铁与肠道微生物群之间没有因果关系。第一、二项结果与目前生物学研究成果一致。虽然第三个结果没有显示因果关系模型,但骨骼可能为未来了解肠道微生物组概况的研究提供信息。计算机模型有助于揭示缺铁性贫血儿童补充微量铁元素的临床参数之间的因果关系。这可能会导致更有针对性的研究,以更好地了解铁补充实践以及RTI的生物学机制,肠道微生物组改变和铁补充。
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