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首页> 外文期刊>European neuropsychopharmacology: the journal of the European College of Neuropsychopharmacology >The combined effect of genetic polymorphisms and clinical parameters on treatment outcome in treatment-resistant depression
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The combined effect of genetic polymorphisms and clinical parameters on treatment outcome in treatment-resistant depression

机译:遗传多态性和临床参数对难治性抑郁症治疗效果的综合影响

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For over a decade, the European Group for the Study of Resistant Depression (GSRD) has examined single nucleotide polymorphisms (SNP) and clinical parameters in regard to treatment outcome. However, an interaction based model combining these factors has not been established yet. Regarding the low effect of individual SNPs, a model investigating the interactive role of SNPs and clinical variables in treatment-resistant depression (TRD) seems auspicious. Thus 225 patients featured in previous work of the GSRD were enrolled in this investigation. According to data availability and previous positive results, 12 SNPs in HTR2A, COMT, ST8SIA2, PPP3CC and BDNF as well as 8 clinical variables featured in other GSRD studies were chosen for this investigation. Random forests algorithm were used for variable shrinkage and k-means clustering for surfacing variable characteristics determining treatment outcome. Using these machine learning and clustering algorithms, we detected a set of 3 SNPs and a clinical variable that was significantly associated with treatment response. About 62% of patients exhibiting the allelic combination of GG-GG-TT for rs6265, rs7430 and rs6313 of the BDNF, PPP3CC and HTR2A genes, respectively, and without melancholia showed a HAM-D decline under 17 compared to about 34% of the whole study sample. Our random forests prediction model for treatment outcome showed that combining clinical and genetic variables gradually increased the prediction performance recognizing correctly 25% of responders using all 4 factors. Thus, we could confirm our previous findings and furthermore show the strength of an interaction-based model combining statistical algorithms in identifying and operating treatment predictors. (C) 2015 Elsevier B.V. and ECNP. All rights reserved.
机译:十多年来,欧洲抗抑郁研究小组(GSRD)研究了单核苷酸多态性(SNP)和有关治疗结果的临床参数。但是,尚未建立结合这些因素的基于交互的模型。关于单个SNP的低效,研究SNP和临床变量在抗药性抑郁症(TRD)中相互作用的模型似乎是吉祥的。因此,本研究招募了225位以GSRD以前的工作为特征的患者。根据数据可用性和先前的积极结果,选择了HTR2A,COMT,ST8SIA2,PPP3CC和BDNF中的12个SNP以及其他GSRD研究中的8个临床变量进行了这项研究。随机森林算法用于可变收缩率和k-均值聚类,以显示决定治疗结果的可变特征。使用这些机器学习和聚类算法,我们检测到一组3个SNP和一个与治疗反应显着相关的临床变量。约有62%的患者分别对BDNF,PPP3CC和HTR2A基因的rs6265,rs7430和rs6313进行GG-GG-TT等位基因组合,而没有忧郁症的患者HAM-D下降到17以下,而约34%整个研究样本。我们针对治疗结果的随机森林预测模型表明,结合临床变量和遗传变量逐渐提高了预测性能,可以正确识别使用所有4个因素的25%的响应者。因此,我们可以证实我们先前的发现,并进一步证明结合了统计算法的基于交互的模型在识别和操作治疗预测因子方面的优势。 (C)2015 Elsevier B.V.和ECNP。版权所有。

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