Department of Chemical Engineering and Biotechnology, University of Cambridge, Tennis Court Road, Cambridge CB2 1QT, United Kingdom.
Mol Cell Proteomics. 2010 Mar;9(3):510-22. doi: 10.1074/mcp.M900372-MCP200. Epub 2009 Dec 10.
The search for biomarkers to diagnose psychiatric disorders such as schizophrenia has been underway for decades. Many molecular profiling studies in this field have focused on identifying individual marker signals that show significant differences in expression between patients and the normal population. However, signals for multiple analyte combinations that exhibit patterned behaviors have been less exploited. Here, we present a novel approach for identifying biomarkers of schizophrenia using expression of serum analytes from first onset, drug-naïve patients and normal controls. The strength of patterned signals was amplified by analyzing data in reproducing kernel spaces. This resulted in the identification of small sets of analytes referred to as targeted clusters that have discriminative power specifically for schizophrenia in both human and rat models. These clusters were associated with specific molecular signaling pathways and less strongly related to other neuropsychiatric disorders such as major depressive disorder and bipolar disorder. These results shed new light concerning how complex neuropsychiatric diseases behave at the pathway level and demonstrate the power of this approach in identification of disease-specific biomarkers and potential novel therapeutic strategies.
几十年来,人们一直在寻找生物标志物来诊断精神疾病,如精神分裂症。该领域的许多分子分析研究都集中在识别个体标记信号上,这些信号在患者和正常人群之间的表达存在显著差异。然而,对表现出模式行为的多种分析物组合的信号的研究则较少。在这里,我们提出了一种使用首发、未经药物治疗的患者和正常对照者的血清分析物表达来识别精神分裂症生物标志物的新方法。通过在再生核空间中分析数据,放大了模式信号的强度。这导致了被称为靶向簇的小分析物集的识别,这些簇在人类和大鼠模型中对精神分裂症具有特异性的判别能力。这些簇与特定的分子信号通路相关,与其他神经精神疾病(如重度抑郁症和双相情感障碍)的相关性较弱。这些结果为复杂的神经精神疾病在通路水平上的表现提供了新的认识,并证明了这种方法在识别疾病特异性生物标志物和潜在新的治疗策略方面的强大功能。