Transcriptomics profiling of Parkinson's disease progression subtypes reveals distinctive patterns of gene expression.

IF 2.8 Q2 CLINICAL NEUROLOGY Journal of Central Nervous System Disease Pub Date : 2025-01-27 eCollection Date: 2025-01-01 DOI:10.1177/11795735241286821
Carlo Fabrizio, Andrea Termine, Carlo Caltagirone
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Abstract

Background: Parkinson's Disease (PD) varies widely among individuals, and Artificial Intelligence (AI) has recently helped to identify three disease progression subtypes. While their clinical features are already known, their gene expression profiles remain unexplored.

Objectives: The objectives of this study were (1) to describe the transcriptomics characteristics of three PD progression subtypes identified by AI, and (2) to evaluate if gene expression data can be used to predict disease subtype at baseline.

Design: This is a retrospective longitudinal cohort study utilizing the Parkinson's Progression Markers Initiative (PPMI) database.

Methods: Whole blood RNA-Sequencing data underwent differential gene expression analysis, followed by multiple pathway analyses. A Machine Learning (ML) classifier, namely XGBoost, was trained using data from multiple modalities, including gene expression values.

Results: Our study identified differentially expressed genes (DEGs) that were uniquely associated with Parkinson's disease (PD) progression subtypes. Importantly, these DEGs had not been previously linked to PD. Gene-pathway analysis revealed both distinct and shared characteristics between the subtypes. Notably, two subtypes displayed opposite expression patterns for pathways involved in immune response alterations. In contrast, the third subtype exhibited a more unique profile characterized by increased expression of genes related to detoxification processes. All three subtypes showed a significant modulation of pathways related to the regulation of gene expression, metabolism, and cell signaling. ML revealed that the progression subtype with the worst prognosis can be predicted at baseline with 0.877 AUROC, yet the contribution of gene expression was marginal for the prediction of the subtypes.

Conclusion: This study provides novel information regarding the transcriptomics profiles of PD progression subtypes, which may foster precision medicine with relevant indications for a finer-grained diagnosis and prognosis.

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帕金森病进展亚型的转录组学分析揭示了基因表达的独特模式。
背景:帕金森病(PD)在个体之间差异很大,人工智能(AI)最近帮助确定了三种疾病进展亚型。虽然他们的临床特征已经已知,但他们的基因表达谱仍未被探索。目的:本研究的目的是(1)描述人工智能识别的三种PD进展亚型的转录组学特征,(2)评估基因表达数据是否可以用于基线预测疾病亚型。设计:这是一项利用帕金森病进展标志物倡议(PPMI)数据库的回顾性纵向队列研究。方法:对全血rna测序数据进行差异基因表达分析,并进行多途径分析。机器学习(ML)分类器,即XGBoost,使用包括基因表达值在内的多种模式数据进行训练。结果:我们的研究确定了与帕金森病(PD)进展亚型独特相关的差异表达基因(DEGs)。重要的是,这些deg以前并没有与PD联系起来。基因通路分析显示,这些亚型之间既有不同的特征,也有共同的特征。值得注意的是,两种亚型在涉及免疫反应改变的途径中表现出相反的表达模式。相比之下,第三亚型表现出更独特的特征,其特征是与解毒过程相关的基因表达增加。所有三种亚型都显示出与基因表达、代谢和细胞信号传导调节相关的途径的显著调节。ML显示预后最差的进展亚型在基线时AUROC为0.877,但基因表达对亚型预测的贡献很小。结论:本研究为PD进展亚型的转录组学谱提供了新的信息,可能为精准医学提供相关适应症,以实现更精细的诊断和预后。
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来源期刊
CiteScore
6.90
自引率
0.00%
发文量
39
审稿时长
8 weeks
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