Abstract

Resting state fMRI (rfMRI) is gaining in popularity, being easy to acquire and with promising clinical applications. However, rfMRI studies, especially those involving clinical groups, still lack reproducibility, largely due to the different analysis settings. This is particularly important for the development of imaging biomarkers. The aim of this work was to evaluate the reproducibility of our recent study regarding the functional connectivity of the basal ganglia network in early Parkinson's disease (PD) (Szewczyk-Krolikowski et al., 2014). In particular, we systematically analysed the influence of two rfMRI analysis steps on the results: the individual cleaning (artefact removal) of fMRI data and the choice of the set of independent components (template) used for dual regression.Our experience suggests that the use of a cleaning approach based on single-subject independent component analysis, which removes non neural-related sources of inter-individual variability, can help to increase the reproducibility of clinical findings. A template generated using an independent set of healthy controls is recommended for studies where the aim is to detect differences from a “healthy” brain, rather than an “average” template, derived from an equal number of patients and controls. While, exploratory analyses (e.g. testing multiple resting state networks) should be used to formulate new hypotheses, careful validation is necessary before promising findings can be translated into useful biomarkers.

Highlights

  • Resting state functional MRI has been shown to be a promising tool for exploring brain functions and assessing their alteration in neurodegenerative conditions (Barkhof et al, 2014)

  • Spatial correlation analysis of subject-specific basal ganglia network (BGN) maps with respect to the ones obtained with manual cleaning showed a significant increase with cleaning, especially when using independent component analysis (ICA)-based approaches

  • The results of the ROI analysis in the basal ganglia (Fig. 4 and Table 2) are in line with the results obtained in the subsample, with the main between-group difference localised in the putamen

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Summary

Introduction

Resting state functional MRI (rfMRI) has been shown to be a promising tool for exploring brain functions and assessing their alteration in neurodegenerative conditions (Barkhof et al, 2014). Several resting state networks (RSNs) have been identified (Beckmann and Smith, 2004; Smith et al, 2009) and associated with specific brain functions through the comparison with results obtained from task-based fMRI experiments (Smith et al, 2009; Zamboni et al, 2013). With observed alterations of RSNs reported in subjects with clinical symptoms and increased at-risk of developing pathology

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