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首页> 外文期刊>Pharmacogenetics and genomics >Multi-SNP pharmacogenomic classifier is superior to single-SNP models for predicting drug outcome in complex diseases.
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Multi-SNP pharmacogenomic classifier is superior to single-SNP models for predicting drug outcome in complex diseases.

机译:在预测复杂疾病中的药物预后方面,多SNP药物基因组分类器优于单SNP模型。

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OBJECTIVES: Most pharmacogenomic studies have attempted to identify single nucleotide polymorphism (SNP) markers that are predictive for treatment outcomes. It is, however, unlikely in complex diseases such as epilepsy, affecting heterogeneous populations, that a single SNP will adequately explain treatment outcomes. This study reports an approach to develop a multi-SNP model to classify treatment outcomes for such a disease and compares this with single-SNP models. METHODS: A prospectively collected dataset of outcomes in 115 patients newly treated for epilepsy, with genotyping for 4041 SNPs in 279 candidate genes, was used for the model development. A cross-validation-based methodology identified SNPs most influential in predicting seizure control after 1 year of drug treatment and then incorporated these into a multi-SNP classification model; using the k-Nearest Neighbour (kNN) supervised learning approach. The classifier was cross-validated to determine its effectiveness in predicting treatment outcome in the developmental cohort and then in two independent validation cohorts. In each, the classification by the multi-SNP model was compared with that of models using the individual SNPs alone. RESULTS: Five SNPs were selected for the multi-SNP model. Cross-validation showed that the multi-SNP model had a predictive accuracy of 83.5% in the developmental cohort and sensitivity and positive predictive values above 80% in both the independent validation cohorts. In all cases, the multi-SNP model classified the treatment outcomes better than those using any individual SNPs alone. CONCLUSION: The results show that a classifier using multiple SNPs can predict treatment outcome more reliably than single-SNP models. This multi-SNP classifier should be tested on data from newly diagnosed epilepsy populations to determine its broad clinical validity. Our method to developing a multi-SNP classifier could be applied to pharmacogenomic studies of other complex diseases.
机译:目的:大多数药物基因组学研究试图鉴定可预测治疗结果的单核苷酸多态性(SNP)标记。但是,在癫痫等复杂疾病(影响异质人群)中,单个SNP不可能充分解释治疗结果。这项研究报告了一种开发多SNP模型以对这种疾病的治疗结果进行分类的方法,并将其与单SNP模型进行了比较。方法:使用前瞻性收集的115例新近治疗癫痫患者的结局数据集,并对279个候选基因中的4041个SNP进行基因分型,用于模型开发。一种基于交叉验证的方法确定了在药物治疗1年后对预测癫痫发作控制最有影响的SNP,然后将其整合到多SNP分类模型中。使用k最近邻(kNN)监督学习方法。对分类器进行交叉验证,以确定其在预测发展队列中然后在两个独立的验证队列中预测治疗结果的有效性。在每种情况下,将多SNP模型的分类与单独使用单个SNP的分类进行了比较。结果:多SNP模型选择了五个SNP。交叉验证显示,多SNP模型在发育队列和敏感性中的预测准确性为83.5%,在两个独立验证队列中的阳性预测值均高于80%。在所有情况下,多SNP模型都比单独使用任何单个SNP更好地分类了治疗结局。结论:结果表明,与单个SNP模型相比,使用多个SNP的分类器可以更可靠地预测治疗结果。应该对来自新诊断的癫痫人群的数据进行测试,以确定其广泛的临床有效性。我们开发多SNP分类器的方法可用于其他复杂疾病的药物基因组学研究。

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