抗抑郁和抗精神病药物反应的遗传决定因素。

IF 3.5 3区 医学 Q1 CLINICAL NEUROLOGY
Hans H Stassen, S Bachmann, R Bridler, K Cattapan, A M Hartmann, D Rujescu, E Seifritz, M Weisbrod, Chr Scharfetter
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引用次数: 0

摘要

如今,90%以上的重度抑郁症或精神分裂症住院病人都接受精神药物治疗。由于没有一种治疗方案是因果关系的,因此反应率不高,康复过程也很不一致。过去几十年来,对主要精神疾病的病因和发病机制进行的基因研究基本上都不成功。同样,预测精神药物治疗反应的基因研究也不是特别成功。在本项目中,我们招募了 902 名被 ICD-10 诊断为精神分裂症("F2 患者")或抑郁症("F3 患者")的住院患者。这项研究评估了当今的急性住院治疗方案,对康复时间和不良副作用进行了多达 8 次的重复测量。基因分型包括 100 个候选基因,通过 549 个单核苷酸多态性 (SNP) 计算出基因型模式。为了预测对精神药物治疗的反应,我们采用了一种多维方法,结合多层神经网络(NN)分析遗传多样性。这种新方法的核心是 "基因向量":(1) 评估观察到的基因的多维基因型模式;(2) 评估基因之间的相关性。通过这些方法,我们找到了具有治疗应答者特征,但在非应答者中罕见的多维基因型模式组合。所选择的方法提供了一种强大的技术,可以详细说明传统关联方法无法检测到的 SNP 数据的复杂结构。分子遗传学 NNs 使 "非应答者 "的正确分类率达到 100%,F2 患者中 "应答者 "的正确分类率为 94.7%,F3 患者中 "应答者 "的正确分类率为 82.6%。F2 和 F3 诊断组之间的分类器并非不相连,而是分别有 29.6% 和 35.7% 的重叠,这表明临床诊断可能并不构成病因实体。我们的研究结果表明,患者可能具有一种非特异性的生理遗传倾向,这种倾向通过为启动病情改善的外源触发因素设定不同的阈值("恢复倾向"),使患者能够、促进、阻碍或阻止重性精神障碍的康复。尽管这种倾向性与康复没有因果关系,但在临床上却可以作为一种 "替代物 "来使用。事实上,尽管治疗疾病的病因和发病机理尚不清楚,但临床医生对能够 "发挥作用 "的可靠工具也很感兴趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic determinants of antidepressant and antipsychotic drug response.

Today, more than 90% of inpatients hospitalized with Major Depression or Schizophrenia are treated with psychotropic drugs. Since none of the treatment options is causal, response rates are modest and the course of recovery is very heterogeneous. Genetic studies on the etiology and pathogenesis of major psychiatric disorders over the past decades have been largely unsuccessful. Likewise, genetic studies to predict response to psychopharmacological treatment have also not been particularly successful. In this project we have recruited 902 inpatients with ICD-10 diagnoses of schizophrenic ("F2 patients") or depressive disorders ("F3 patients"). The study assessed today's acute inpatient treatment regimens with up to 8 repeated measurements regarding the time course of recovery and adverse side effects. The genotyping included 100 candidate genes with genotypic patterns computed from 549 Single Nucleotide Polymorphisms (SNPs). To predict response to psychopharmacological treatment, we relied on a multidimensional approach to analyzing genetic diversity in combination with multilayer Neural Nets (NNs). Central to this new method were the "gene vectors" that (1) assessed the multidimensional genotypic patterns observed with genes; and (2) evaluated the correlations between genes. By means of these methods, we searched for combinations of multidimensional genotypic patterns that were characteristic of treatment responders while being rare among non-responders. The chosen method of approach provided a powerful technique to detail the complex structures of SNP data that are not detectable by conventional association methods. Molecular-genetic NNs enabled correct classification of 100% "non-responders", along with 94.7% correctly classified "responders" among the F2 patients, and 82.6% correctly classified "responders" among the F3 patients. The F2 and F3 classifiers were not disjoint but showed an overlap of 29.6% and 35.7% between the diagnostic groups, thus indicating that clinical diagnoses may not constitute etiologic entities. Our results suggested that patients may have an unspecific physical-genetic disposition that enables, facilitates, impedes or prevents recovery from major psychiatric disorders by setting various thresholds for exogenous triggers that initiate improvement ("recovery disposition"). Even though this disposition is not causally linked to recovery, it can nonetheless be clinically used in the sense of a "surrogate". Indeed, clinicians are also interested in reliable tools that can "do the job", despite the fact that etiology and pathogenesis of the treated disorders remain unknown.

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来源期刊
CiteScore
8.80
自引率
4.30%
发文量
154
审稿时长
6-12 weeks
期刊介绍: The original papers published in the European Archives of Psychiatry and Clinical Neuroscience deal with all aspects of psychiatry and related clinical neuroscience. Clinical psychiatry, psychopathology, epidemiology as well as brain imaging, neuropathological, neurophysiological, neurochemical and moleculargenetic studies of psychiatric disorders are among the topics covered. Thus both the clinician and the neuroscientist are provided with a handy source of information on important scientific developments.
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