利用血清脂质组学和机器学习预测运动性和非运动性帕金森病症状:一项为期两年的研究。

IF 6.7 1区 医学 Q1 NEUROSCIENCES
Jasmin Galper, Giorgia Mori, Gordon McDonald, Diba Ahmadi Rastegar, Russell Pickford, Simon J G Lewis, Glenda M Halliday, Woojin S Kim, Nicolas Dzamko
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引用次数: 0

摘要

找出导致帕金森病异质性运动和非运动表型临床进展的生物因素,可能有助于更好地了解疾病过程。目前已确定了几种与血脂相关的帕金森病遗传风险因素,帕金森病患者的血清脂质特征与对照组有明显区别。然而,血脂特征与临床结果的关联程度仍不清楚。非靶向高效液相色谱-串联质谱法在帕金森病受试者基线(n = 122)中发现了超过 900 种血清脂质,并评估了使用这些脂质的机器学习模型预测 2 年后运动和非运动临床评分(n = 67)的潜力。当基线血脂用于预测未来两年的统一帕金森病评分量表第三部分(UPDRS III)和老年抑郁量表评分时,机器学习模型表现最佳(归一化均方根误差均为 0.7)。机器学习模型的特征分析表明,溶血磷脂酰乙醇胺、磷脂酰胆碱、血小板活化因子、鞘磷脂、二酰甘油和三酰甘油的种类是预测运动和非运动评分的首要指标。与受试者的性别、年龄和帕金森病风险基因 LRRK2 的突变状态相比,血清脂质总体上对临床结果的预测更为重要。此外,研究还发现血脂比之前在该队列(迈克尔-J-福克斯基金会 LRRK2 临床队列联合会)中测量的 27 种血清细胞因子更能预测临床评分。这些结果表明,血脂变化可能与帕金森病的临床表型有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Prediction of motor and non-motor Parkinson's disease symptoms using serum lipidomics and machine learning: a 2-year study.

Prediction of motor and non-motor Parkinson's disease symptoms using serum lipidomics and machine learning: a 2-year study.

Identifying biological factors which contribute to the clinical progression of heterogeneous motor and non-motor phenotypes in Parkinson's disease may help to better understand the disease process. Several lipid-related genetic risk factors for Parkinson's disease have been identified, and the serum lipid signature of Parkinson's disease patients is significantly distinguishable from controls. However, the extent to which lipid profiles are associated with clinical outcomes remains unclear. Untargeted high-performance liquid chromatography-tandem mass spectrometry identified >900 serum lipids in Parkinson's disease subjects at baseline (n = 122), and the potential for machine learning models using these lipids to predict motor and non-motor clinical scores after 2 years (n = 67) was assessed. Machine learning models performed best when baseline serum lipids were used to predict the 2-year future Unified Parkinson's disease rating scale part three (UPDRS III) and Geriatric Depression Scale scores (both normalised root mean square error = 0.7). Feature analysis of machine learning models indicated that species of lysophosphatidylethanolamine, phosphatidylcholine, platelet-activating factor, sphingomyelin, diacylglycerol and triacylglycerol were top predictors of both motor and non-motor scores. Serum lipids were overall more important predictors of clinical outcomes than subject sex, age and mutation status of the Parkinson's disease risk gene LRRK2. Furthermore, lipids were found to better predict clinical scales than a panel of 27 serum cytokines previously measured in this cohort (The Michael J. Fox Foundation LRRK2 Clinical Cohort Consortium). These results suggest that lipid changes may be associated with clinical phenotypes in Parkinson's disease.

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来源期刊
NPJ Parkinson's Disease
NPJ Parkinson's Disease Medicine-Neurology (clinical)
CiteScore
9.80
自引率
5.70%
发文量
156
审稿时长
11 weeks
期刊介绍: npj Parkinson's Disease is a comprehensive open access journal that covers a wide range of research areas related to Parkinson's disease. It publishes original studies in basic science, translational research, and clinical investigations. The journal is dedicated to advancing our understanding of Parkinson's disease by exploring various aspects such as anatomy, etiology, genetics, cellular and molecular physiology, neurophysiology, epidemiology, and therapeutic development. By providing free and immediate access to the scientific and Parkinson's disease community, npj Parkinson's Disease promotes collaboration and knowledge sharing among researchers and healthcare professionals.
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