Winchester Laura, Barber Imelda, Lawton Michael, Ash Jessica, Liu Benjamine, Evetts Samuel, Hopkins-Jones Lucinda, Lewis Suppalak, Bresner Catherine, Malpartida Ana Belen, Williams Nigel, Gentlemen Steve, Wade-Martins Richard, Ryan Brent, Holgado-Nevado Alejo, Hu Michele, Ben-Shlomo Yoav, Grosset Donald, Lovestone Simon
Department of Psychiatry, University of Oxford, Oxford OX3 7JX, UK.
Population Health Sciences, Bristol Medical School, University of Bristol, Bristol, UK.
Brain Commun. 2022 Dec 28;5(1):fcac343. doi: 10.1093/braincomms/fcac343. eCollection 2023.
Biomarkers to aid diagnosis and delineate the progression of Parkinson's disease are vital for targeting treatment in the early phases of the disease. Here, we aim to discover a multi-protein panel representative of Parkinson's and make mechanistic inferences from protein expression profiles within the broader objective of finding novel biomarkers. We used aptamer-based technology (SomaLogic®) to measure proteins in 1599 serum samples, 85 cerebrospinal fluid samples and 37 brain tissue samples collected from two observational longitudinal cohorts (the Oxford Parkinson's Disease Centre and Tracking Parkinson's) and the Parkinson's Disease Brain Bank, respectively. Random forest machine learning was performed to discover new proteins related to disease status and generate multi-protein expression signatures with potential novel biomarkers. Differential regulation analysis and pathway analysis were performed to identify functional and mechanistic disease associations. The most consistent diagnostic classifier signature was tested across modalities [cerebrospinal fluid (area under curve) = 0.74, = 0.0009; brain area under curve = 0.75, = 0.006; serum area under curve = 0.66, = 0.0002]. Focusing on serum samples and using only those with severe disease compared with controls increased the area under curve to 0.72 ( = 1.0 × 10). In the validation data set, we showed that the same classifiers were significantly related to disease status ( < 0.001). Differential expression analysis and weighted gene correlation network analysis highlighted key proteins and pathways with known relationships to Parkinson's. Proteins from the complement and coagulation cascades suggest a disease relationship to immune response. The combined analytical approaches in a relatively large number of samples, across tissue types, with replication and validation, provide mechanistic insights into the disease as well as nominate a protein signature classifier that deserves further biomarker evaluation.
有助于帕金森病诊断和描绘疾病进展的生物标志物对于在疾病早期阶段靶向治疗至关重要。在此,我们旨在发现一组代表帕金森病的多蛋白组合,并在寻找新型生物标志物这一更广泛目标内,从蛋白质表达谱中进行机制推断。我们使用基于适配体的技术(SomaLogic®)来测量分别从两个观察性纵向队列(牛津帕金森病中心和追踪帕金森病)以及帕金森病脑库收集的1599份血清样本、85份脑脊液样本和37份脑组织样本中的蛋白质。进行随机森林机器学习以发现与疾病状态相关的新蛋白质,并生成具有潜在新型生物标志物的多蛋白表达特征。进行差异调节分析和通路分析以确定功能性和机制性疾病关联。在不同检测方式中测试了最一致的诊断分类器特征[脑脊液(曲线下面积)= 0.74,P = 0.0009;脑曲线下面积 = 0.75,P = 0.006;血清曲线下面积 = 0.66,P = 0.0002]。聚焦于血清样本并仅使用与对照组相比患有严重疾病的样本,曲线下面积增加到0.72(P = 1.0×10)。在验证数据集中,我们表明相同的分类器与疾病状态显著相关(P < 0.001)。差异表达分析和加权基因共表达网络分析突出了与帕金森病具有已知关系的关键蛋白质和通路。来自补体和凝血级联反应的蛋白质表明疾病与免疫反应有关。在相对大量的样本中,跨组织类型,通过重复和验证的综合分析方法,为该疾病提供了机制性见解,并提名了一个值得进一步进行生物标志物评估的蛋白质特征分类器。