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KMID : 1120220110020020075
Osong Public Health and Research Perspectives
2011 Volume.2 No. 2 p.75 ~ p.82
Development of a Predictive Model for Type 2 Diabetes Mellitus Using Genetic and Clinical Data
Lee Ju-Young

Keam Bhum-Suk
Jang Eun-Jung
Park Mi-Sun
Lee Ji-Young
Kim Dan-Bi
Lee Chang-Hoon
Kim Tak
Oh Berm-Seok
Park Heon-Jin
Kwack Kyu-Bum
Chu Chae-Shin
Kim Hyung-Lae
Abstract
Objectives: Recent genetic association studies have provided convincing evidence that several novel loci and single nucleotide polymorphisms (SNPs) are associated with the risk of developing type 2 diabetes mellitus (T2DM). The aims of this study were: 1) to develop a predictive model of T2DM using genetic and clinical data; and 2) to compare misclassification rates of different models.

Methods: We selected 212 individuals with newly diagnosed T2DM and 472 controls aged in their 60s from the Korean Genome and Epidemiology Study. A total of 499 known SNPs from 87 T2DM-related genes were genotyped using germline DNA. SNPs were analyzed for significant association with T2DM using various classification algorithms including Quest (Quick, Unbiased, Efficient, Statistical tree), Support Vector Machine, C4.5, logistic regression, and K-nearest neighbor.

Results: We tested these models using the complete Korean Genome and Epidemiology Study cohort (n = 10,038) and computed the T2DM misclassification rates for each model. Average misclassification rates ranged at 28.2?52.7%. The misclassification rates for the logistic and machine-learning algorithms were lower than the statistical tree algorithms. Using 1-to-1 matched data, the misclassification rate of the statistical tree QUEST algorithm using body mass index and SNP variables was the lowest, but overall the logistic regression performed best.

Conclusions: The K-nearest neighbor method exhibited more robust results than other algorithms. For clinical and genetic data, our ¡°multistage adjustment¡± model outperformed other models in yielding lower rates of misclassification. To improve the performance of these models, further studies using warranted, strategies to estimate better classifiers for the quantification of SNPs need to be developed.
KEYWORD
classification, early predictive model, single nucleotide polymorphism (SNP), type 2 diabetes mellitus (T2DM)
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