Dias Pinto João Rafael, Faustinoni Neto Benedito, Munhoz Luciana, Kerkis Irina, Araldi Rodrigo Pinheiro
BioDecision Analytics Ltd., São Paulo 01451-917, SP, Brazil.
Post-Graduation Program in Structural and Functional Biology, Paulista School of Medicine, Federal University of São Paulo (UNIFESP), São Paulo 04023-062, SP, Brazil.
Cells. 2025 Jun 25;14(13):976. doi: 10.3390/cells14130976.
Huntington's Disease (HD) remains without disease-modifying treatments, with existing therapies primarily targeting chorea symptoms and offering limited benefits. This study aims to identify druggable genes and potential biomarkers for HD, focusing on using RNA-Seq analysis to uncover molecular targets and improve clinical trial outcomes.
We reanalyzed transcriptomic data from six independent studies comparing cortex samples of HD patients and healthy controls. The Propensity Score Matching (PSM) algorithm was applied to match cases and controls by age. Differential expression analysis (DEA) coupled with machine learning algorithms were coupled to identify differentially expressed genes (DEGs) and potential biomarkers in HD.
Our analysis identified 5834 DEGs, including 394 putative druggable genes involved in processes like neuroinflammation, metal ion dysregulation, and blood-brain barrier dysfunction. These genes' expression levels correlated with CAG repeat length, disease onset, and progression. We also identified FTH1 as a promising biomarker for HD, with its expression downregulated in the prefrontal cortex and upregulated in peripheral blood in a CAG repeat-dependent manner.
This study highlights the potential of FTH1 as both a biomarker and a therapeutic target for HD. Advanced bioinformatics approaches like RNA-Seq and PSM are crucial for uncovering novel targets in HD, paving the way for better therapeutic interventions and improved clinical trial outcomes. Further validation of FTH1's role is needed to confirm its utility in HD.
亨廷顿舞蹈症(HD)仍然没有疾病修饰疗法,现有治疗主要针对舞蹈症症状,疗效有限。本研究旨在识别HD的可成药基因和潜在生物标志物,重点是利用RNA测序分析来揭示分子靶点并改善临床试验结果。
我们重新分析了六项独立研究的转录组数据,这些研究比较了HD患者和健康对照的皮质样本。应用倾向得分匹配(PSM)算法按年龄匹配病例和对照。将差异表达分析(DEA)与机器学习算法相结合,以识别HD中的差异表达基因(DEG)和潜在生物标志物。
我们的分析确定了5834个DEG,包括394个假定的可成药基因,这些基因参与神经炎症、金属离子失调和血脑屏障功能障碍等过程。这些基因的表达水平与CAG重复长度、疾病发作和进展相关。我们还确定FTH1是HD的一个有前景的生物标志物,其在额叶前皮质中表达下调,在周围血中以CAG重复依赖的方式上调。
本研究强调了FTH1作为HD生物标志物和治疗靶点的潜力。RNA测序和PSM等先进的生物信息学方法对于揭示HD中的新靶点至关重要,为更好的治疗干预和改善临床试验结果铺平了道路。需要进一步验证FTH1的作用,以确认其在HD中的效用。