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脂质组学预测帕金森病严重程度:一项机器学习分析。

Lipidomics Prediction of Parkinson's Disease Severity: A Machine-Learning Analysis.

机构信息

Department of Industrial Engineering & Management, Ben-Gurion University of the Negev, Israel.

Department of Neurology, Columbia University Irving Medical Center, New York, NY, USA.

出版信息

J Parkinsons Dis. 2021;11(3):1141-1155. doi: 10.3233/JPD-202476.

Abstract

BACKGROUND

The role of the lipidome as a biomarker for Parkinson's disease (PD) is a relatively new field that currently only focuses on PD diagnosis.

OBJECTIVE

To identify a relevant lipidome signature for PD severity markers.

METHODS

Disease severity of 149 PD patients was assessed by the Unified Parkinson's Disease Rating Scale (UPDRS) and the Montreal Cognitive Assessment (MoCA). The lipid composition of whole blood samples was analyzed, consisting of 517 lipid species from 37 classes; these included all major classes of glycerophospholipids, sphingolipids, glycerolipids, and sterols. To handle the high number of lipids, the selection of lipid species and classes was consolidated via analysis of interrelations between lipidomics and disease severity prediction using the random forest machine-learning algorithm aided by conventional statistical methods.

RESULTS

Specific lipid classes dihydrosphingomyelin (dhSM), plasmalogen phosphatidylethanolamine (PEp), glucosylceramide (GlcCer), dihydro globotriaosylceramide (dhGB3), and to a lesser degree dihydro GM3 ganglioside (dhGM3), as well as species dhSM(20:0), PEp(38:6), PEp(42:7), GlcCer(16:0), GlcCer(24:1), dhGM3(22:0), dhGM3(16:0), and dhGB3(16:0) contribute to PD severity prediction of UPDRS III score. These, together with age, age at onset, and disease duration, also contribute to prediction of UPDRS total score. We demonstrate that certain lipid classes and species interrelate differently with the degree of severity of motor symptoms between men and women, and that predicting intermediate disease stages is more accurate than predicting less or more severe stages.

CONCLUSION

Using machine-learning algorithms and methodologies, we identified lipid signatures that enable prediction of motor severity in PD. Future studies should focus on identifying the biological mechanisms linking GlcCer, dhGB3, dhSM, and PEp with PD severity.

摘要

背景

脂质组作为帕金森病 (PD) 的生物标志物是一个相对较新的领域,目前仅专注于 PD 的诊断。

目的

确定与 PD 严重程度标志物相关的脂质组特征。

方法

使用统一帕金森病评定量表 (UPDRS) 和蒙特利尔认知评估 (MoCA) 评估 149 名 PD 患者的疾病严重程度。分析全血样本的脂质组成,包括 37 类中的 517 种脂质;这些包括甘油磷脂、鞘脂、甘油酯和固醇的所有主要类。为了处理大量的脂质,使用随机森林机器学习算法结合常规统计方法分析脂质组学与疾病严重程度预测之间的相互关系,对脂质种类和类别的选择进行了整合。

结果

特定的脂质类二氢神经酰胺 (dhSM)、脑苷脂磷脂酰乙醇胺 (PEp)、葡萄糖脑苷脂 (GlcCer)、二氢神经节苷脂 (dhGB3),以及程度较轻的二氢 GM3 神经节苷脂 (dhGM3),以及 dhSM(20:0)、PEp(38:6)、PEp(42:7)、GlcCer(16:0)、GlcCer(24:1)、dhGM3(22:0)、dhGM3(16:0)和 dhGB3(16:0)有助于预测 UPDRS III 评分的 PD 严重程度。这些,加上年龄、发病年龄和疾病持续时间,也有助于预测 UPDRS 总分。我们证明,某些脂质类和物种与男女运动症状的严重程度有不同的关联,并且预测中间疾病阶段比预测较轻或较重的阶段更准确。

结论

使用机器学习算法和方法,我们确定了能够预测 PD 运动严重程度的脂质特征。未来的研究应集中于识别将 GlcCer、dhGB3、dhSM 和 PEp 与 PD 严重程度联系起来的生物学机制。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/aeab/8355022/b64025435e62/nihms-1681333-f0001.jpg

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