Yang Baiyuan, Zhu Yongyun, Li Kelu, Wang Fang, Liu Bin, Zhou Qian, Tai Yuchao, Liu Zhaochao, Yang Lin, Ba Ruiqiong, Lei Chunyan, Ren Hui, Xu Zhong, Pang Ailan, Yang Xinglong
Department of Neurology, Chengdu Seventh People's Hospital (Affiliated Cancer Hospital of Chengdu Medical College), Chengdu, Sichuan Province, China.
Department of Neurology, The First Affiliated Hospital of Kunming Medical University, Kunming, Yunnan, China.
NPJ Parkinsons Dis. 2024 Oct 11;10(1):187. doi: 10.1038/s41531-024-00795-y.
There is an urgent need to identify predictive biomarkers of Parkinson's disease (PD) with cognitive impairment (PDCI) in order to individualize patient management, ensure timely intervention, and improve prognosis. The aim of this study was to screen for these biomarkers by comparing the plasma proteome and metabolome of PD patients with or without cognitive impairment. Proteomics and metabolomics analyses were performed on a discover cohort. A machine learning model was used to identify candidate protein and metabolite biomarkers of PDCI, which were validated in an independent cohort. The predictive ability of these biomarkers for PDCI was evaluated by plotting receiver operating characteristic curves and calculating the area under the curve (AUC). Moreover, we assessed the predictive ability of these proteins in combination with neuroimaging. In the discover cohort (n = 100), we identified 25 protein features with best results in the machine learning model, including top-ranked PSAP and H3C15. The two-proteins were used for model construction, achieving an Area under the curve (AUC) of 0.951 in the train set and AUC of 0.981 in the test set. Similarly, the model gives a rank list of endogenous metabolite features, Glycocholic Acid and 6-Methylnicotinamide were two top features. Combining these two markers further got the AUC of 0.969 in train set and 0.867 in the test set. To validate the performance of the protein biomarkers, we performed targeted analysis of selected proteins (H3C15 and PSAP) and proteins likely associated with PDCI (NCAM2 and LAMB2) using parallel reaction monitoring in validation cohort (n = 116). The AUC of the classifier built with H3C15 and PSAP is 0.813. Moreover, when combining H3C15, PSAP, NCAM2, and LAMB2, the model achieved AUC of 0.983 in the train set, AUC of 0.981 in the test set, and AUC of 0.839 in the validation set. Furthermore, we verified that these protein markers we discovered can improve the predictive effect of neuroimaging on PDCI: the classifier built with neuroimaging features had AUC of 0.833, which improved to 0.905 when combined with H3C15. Taken together, our integrated proteomics and metabolomics analysis successfully identified potential biomarkers for PDCI. Additionally, H3C15 showed promise in enhancing the predictive performance of neuroimaging for cognitive impairment.
迫切需要识别帕金森病(PD)伴认知障碍(PDCI)的预测性生物标志物,以便实现患者管理个体化、确保及时干预并改善预后。本研究的目的是通过比较有或无认知障碍的PD患者的血浆蛋白质组和代谢组来筛选这些生物标志物。对一个发现队列进行了蛋白质组学和代谢组学分析。使用机器学习模型识别PDCI的候选蛋白质和代谢物生物标志物,并在一个独立队列中进行验证。通过绘制受试者工作特征曲线并计算曲线下面积(AUC)来评估这些生物标志物对PDCI的预测能力。此外,我们评估了这些蛋白质与神经影像学相结合的预测能力。在发现队列(n = 100)中,我们在机器学习模型中确定了25个蛋白质特征,结果最佳,包括排名靠前的PSAP和H3C15。这两种蛋白质用于模型构建,在训练集中曲线下面积(AUC)为0.951,在测试集中为0.981。同样,该模型给出了内源性代谢物特征的排名列表,甘氨胆酸和6-甲基烟酰胺是两个顶级特征。将这两个标志物结合起来,在训练集中AUC为0.969,在测试集中为0.867。为了验证蛋白质生物标志物的性能,我们在验证队列(n = 116)中使用平行反应监测对选定蛋白质(H3C15和PSAP)以及可能与PDCI相关的蛋白质(NCAM2和LAMB2)进行了靶向分析。用H3C15和PSAP构建的分类器的AUC为0.813。此外,当将H3C15、PSAP、NCAM2和LAMB2结合起来时,该模型在训练集中AUC为0.983,在测试集中为0.981,在验证集中为0.839。此外,我们验证了我们发现的这些蛋白质标志物可以提高神经影像学对PDCI的预测效果:用神经影像学特征构建的分类器的AUC为0.833,与H3C15结合时提高到0.905。综上所述,我们的综合蛋白质组学和代谢组学分析成功识别了PDCI的潜在生物标志物。此外,H3C15在增强神经影像学对认知障碍的预测性能方面显示出前景。