Predictive Models for Sasang Constitution Types Using Genetic Factors

H. Ban, Siwoo Lee, Hee-Jeong Jin
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Abstract

Predictive Models for Sasang Constitution Types Using Genetic Factors Hyo-Jeong Ban ・ Siwoo Lee ・ Hee-Jeong Jin Intellectual Information Team, Korea Institute of Oriental Medicine, Senior Researcher Future Medicine Division, Korea Institute of Oriental Medicine, Principal Researcher Intellectual Information Team, Korea Institute of Oriental Medicine, Principal Researcher Objectives Genome-wide association studies(GWAS) is a useful method to identify genetic associations for various phenotypes. The purpose of this study was to develop predictive models for Sasang constitution types using genetic factors. Methods The genotypes of the 1,999 subjects was performed using Axiom Precision Medicine Research Array (PMRA) by Life Technologies. All participants were prescribed Sasang Constitution-specific herbal remedies for the treatment, and showed improvement of original symptoms as confirmed by Korean medicine doctor. The genotypes were imputed by using the IMPUTE program. Association analysis was conducted using a logistic regression model to discover Single Nucleotide Polymorphism (SNP), adjusting for age, sex, and BMI. Results & Conclusions We developed models to predict Korean medicine constitution types using identified genectic factors and sex, age, BMI using Random Forest (RF), Support Vector Machine (SVM), and Neural Network (NN). Each maximum Area Under the Curve (AUC) of Teaeum, Soeum, Soyang is 0.894, 0.868, 0.767, respectively. Each AUC of the models increased by 6~17% more than that of models except for genetic factors. By developing the predictive models, we confirmed usefulness of genetic factors related with types. It demonstrates a mechanism for more accurate prediction through genetic factors related with type.
利用遗传因子建立沙桑体质类型预测模型
韩国东方医学研究所知识信息团队,韩国东方医学研究所未来医学部高级研究员,韩国东方医学研究所知识信息团队首席研究员,韩国东方医学研究所知识信息团队首席研究员,目标全基因组关联研究(GWAS)是识别各种表型遗传关联的有用方法。本研究的目的是利用遗传因子建立沙桑体质类型的预测模型。方法采用美国生命科技公司Axiom精密医学研究阵列(PMRA)对1999名受试者进行基因分型。所有参与者都服用了针对沙尚体质的草药治疗,经韩国医生证实,症状得到了改善。利用IMPUTE程序进行基因型的归算。采用logistic回归模型进行关联分析,以发现单核苷酸多态性(SNP),调整年龄、性别和BMI。结果与结论采用随机森林(Random Forest, RF)、支持向量机(Support Vector Machine, SVM)和神经网络(Neural Network, NN)建立了基于已识别遗传因素和性别、年龄、BMI的韩国体质类型预测模型。Teaeum、Soeum、Soyang的最大曲线下面积(Area Under Curve, AUC)分别为0.894、0.868、0.767。除遗传因素外,各模型的AUC均比其他模型高出6~17%。通过建立预测模型,我们证实了与类型相关的遗传因素的有效性。它展示了一种通过与类型相关的遗传因素进行更准确预测的机制。
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