Wei Huangwei, Wu Chunle, Yuan Yulin, Lai Lichuan
Department of Neurology, The People's Hospital of Guangxi Zhuang Autonomous Region, Nanning, China.
Department of Blood Transfusion, The People's Hospital of Guangxi Zhuang Autonomous Region, Nanning, China.
Front Aging Neurosci. 2023 Sep 20;15:1249682. doi: 10.3389/fnagi.2023.1249682. eCollection 2023.
Alzheimer's disease (AD) is an age-associated neurodegenerative disease, and the currently available diagnostic modalities and therapeutic agents are unsatisfactory due to its high clinical heterogeneity. Necroptosis is a common type of programmed cell death that has been shown to be activated in AD.
In this study, we first investigated the expression profiles of necroptosis-related genes (NRGs) and the immune landscape of AD based on GSE33000 dataset. Next, the AD samples in the GSE33000 dataset were extracted and subjected to consensus clustering based upon the differentially expressed NRGs. Key genes associated with necroptosis clusters were identified using Weighted Gene Co-Expression Network Analysis (WGCNA) algorithm, and then intersected with the key gene related to AD. Finally, we developed a diagnostic model for AD by comparing four different machine learning approaches. The discrimination performance and clinical relevance of the diagnostic model were assessed using various evaluation metrics, including the nomogram, calibration plot, decision curve analysis (DCA), and independent validation datasets.
Aberrant expression patterns of NRGs and specific immune landscape were identified in the AD samples. Consensus clustering revealed that patients in the GSE33000 dataset could be classified into two necroptosis clusters, each with distinct immune landscapes and enriched pathways. The Extreme Gradient Boosting (XGB) was found to be the most optimal diagnostic model for the AD based on the predictive ability and reliability of the models constructed by four machine learning approaches. The five most important variables, including ACAA2, BHLHB4, CACNA2D3, NRN1, and TAC1, were used to construct a five-gene diagnostic model. The constructed nomogram, calibration plot, DCA, and external independent validation datasets exhibited outstanding diagnostic performance for AD and were closely related with the pathologic hallmarks of AD.
This work presents a novel diagnostic model that may serve as a framework to study disease heterogeneity and provide a plausible mechanism underlying neuronal loss in AD.
阿尔茨海默病(AD)是一种与年龄相关的神经退行性疾病,由于其高度的临床异质性,目前可用的诊断方法和治疗药物并不理想。坏死性凋亡是一种常见的程序性细胞死亡类型,已被证明在AD中被激活。
在本研究中,我们首先基于GSE33000数据集研究了坏死性凋亡相关基因(NRGs)的表达谱和AD的免疫格局。接下来,提取GSE33000数据集中的AD样本,并基于差异表达的NRGs进行一致性聚类。使用加权基因共表达网络分析(WGCNA)算法识别与坏死性凋亡簇相关的关键基因,然后与AD相关的关键基因进行交集分析。最后,我们通过比较四种不同的机器学习方法开发了一种AD诊断模型。使用包括列线图、校准图、决策曲线分析(DCA)和独立验证数据集在内的各种评估指标评估诊断模型的辨别性能和临床相关性。
在AD样本中鉴定出NRGs的异常表达模式和特定的免疫格局。一致性聚类显示,GSE33000数据集中的患者可分为两个坏死性凋亡簇,每个簇具有不同的免疫格局和富集通路。基于四种机器学习方法构建的模型的预测能力和可靠性,发现极端梯度提升(XGB)是AD的最佳诊断模型。使用包括ACAA2、BHLHB4、CACNA2D3、NRN1和TAC1在内的五个最重要变量构建了一个五基因诊断模型。构建的列线图、校准图、DCA和外部独立验证数据集对AD表现出出色的诊断性能,并且与AD的病理特征密切相关。
这项工作提出了一种新颖的诊断模型,该模型可作为研究疾病异质性的框架,并为AD中神经元丢失提供合理的机制。