NeuRoNe Lab, Department of Management and Innovation Systems, University of Salerno, Fisciano, Salerno, Italy.
Department of Medical, Surgical, Neurological, Metabolic and Aging Sciences, University of Campania "Luigi Vanvitelli", Naples, Italy.
Neuroinformatics. 2019 Oct;17(4):479-496. doi: 10.1007/s12021-018-9412-y.
The main challenge in analysing functional magnetic resonance imaging (fMRI) data from extended samples of subject (N > 100) is to extract as much relevant information as possible from big amounts of noisy data. When studying neurodegenerative diseases with resting-state fMRI, one of the objectives is to determine regions with abnormal background activity with respect to a healthy brain and this is often attained with comparative statistical models applied to single voxels or brain parcels within one or several functional networks. In this work, we propose a novel approach based on clustering and stochastic rank aggregation to identify parcels that exhibit a coherent behaviour in groups of subjects affected by the same disorder and apply it to default-mode network independent component maps from resting-state fMRI data sets. Brain voxels are partitioned into parcels through k-means clustering, then solutions are enhanced by means of consensus techniques. For each subject, clusters are ranked according to their median value and a stochastic rank aggregation method, TopKLists, is applied to combine the individual rankings within each class of subjects. For comparison, the same approach was tested on an anatomical parcellation. We found parcels for which the rankings were different among control subjects and subjects affected by Parkinson's disease and amyotrophic lateral sclerosis and found evidence in literature for the relevance of top ranked regions in default-mode brain activity. The proposed framework represents a valid method for the identification of functional neuromarkers from resting-state fMRI data, and it might therefore constitute a step forward in the development of fully automated data-driven techniques to support early diagnoses of neurodegenerative diseases.
分析功能磁共振成像 (fMRI) 扩展样本数据(N > 100)的主要挑战是从大量嘈杂数据中提取尽可能多的相关信息。当使用静息态 fMRI 研究神经退行性疾病时,目标之一是确定相对于健康大脑具有异常背景活动的区域,这通常是通过应用于单个体素或一个或多个功能网络内脑区的比较统计模型来实现的。在这项工作中,我们提出了一种基于聚类和随机秩聚合的新方法,用于识别在受相同疾病影响的一组受试者中表现出一致行为的脑区,并将其应用于静息态 fMRI 数据集的默认模式网络独立成分图。通过 k-means 聚类将脑体素划分为脑区,然后通过共识技术增强解决方案。对于每个受试者,根据其中位数对簇进行排序,并应用随机秩聚合方法 TopKLists 将个体在每个受试者类中的排名进行组合。为了进行比较,我们还在解剖分割上测试了相同的方法。我们发现了在对照组和帕金森病和肌萎缩侧索硬化症受试者中排名不同的脑区,并在文献中找到了默认模式脑活动中排名靠前的区域的相关性的证据。所提出的框架代表了一种从静息态 fMRI 数据中识别功能神经标志物的有效方法,因此它可能是开发完全自动化数据驱动技术以支持神经退行性疾病早期诊断的重要一步。