Title of article :
Improved Functional Causal Likelihood-Based Causal Discovery Method for Diabetes Risk Factors
Author/Authors :
Gao, Xiue Lingnan Normal University - Guangdong, China , Xie, Wenxue Dalian University - Dalian, China , Wang, Zumin Dalian University - Dalian, China , Chen, Bo Lingnan Normal University - Guangdong, China , Zhou, Shengbin Lingnan Normal University - Guangdong, China
Abstract :
Diabetes mellitus is a disease that has reached epidemic proportions globally in recent years. Consequently, the prevention and
treatment of diabetes have become key social challenges. Most of the research on diabetes risk factors has focused on correlation
analysis with little investigation into the causality of these risk factors. However, understanding the causality is also essential to
preventing the disease. In this study, a causal discovery method for diabetes risk factors was developed based on an improved
functional causal likelihood (IFCL) model. Firstly, the issue of excessive redundant and false edges in functional causal
likelihood structures was resolved through the construction of an IFCL model using an adjustment threshold value. On this
basis, an IFCL-based causal discovery algorithm was designed, and a simulation experiment was performed with the developed
algorithm. The experimental results revealed that the causal structure generated using a dataset with a sample size of 2000
provided more information than that produced using a dataset with a sample size of 768. In addition, the causal structures
obtained with the developed algorithm had fewer redundant and false edges. The following six causal relationships were
identified: insulin→plasma glucose concentration, plasma glucose concentration→body mass index (BMI), triceps skin fold
thickness→BMI and age, diastolic blood pressure→BMI, and number of times pregnant→age. Furthermore, the reasonableness
of these causal relationships was investigated. The algorithm developed in this study enables the discovery of causal
relationships among various diabetes risk factors and can serve as a reference for future causality studies on diabetes risk factors.
Keywords :
IFCL , globally , BMI , China
Journal title :
Computational and Mathematical Methods in Medicine