Elsevier

NeuroImage

Volume 59, Issue 2, 16 January 2012, Pages 1230-1238
NeuroImage

Identification and characterisation of midbrain nuclei using optimised functional magnetic resonance imaging

https://doi.org/10.1016/j.neuroimage.2011.08.016Get rights and content
Under a Creative Commons license
open access

Abstract

Localising activity in the human midbrain with conventional functional MRI (fMRI) is challenging because the midbrain nuclei are small and located in an area that is prone to physiological artefacts. Here we present a replicable and automated method to improve the detection and localisation of midbrain fMRI signals. We designed a visual fMRI task that was predicted would activate the superior colliculi (SC) bilaterally. A limited number of coronal slices were scanned, orientated along the long axis of the brainstem, whilst simultaneously recording cardiac and respiratory traces. A novel anatomical registration pathway was used to optimise the localisation of the small midbrain nuclei in stereotactic space. Two additional structural scans were used to improve registration between functional and structural T1-weighted images: an echo-planar image (EPI) that matched the functional data but had whole-brain coverage, and a whole-brain T2-weighted image. This pathway was compared to conventional registration pathways, and was shown to significantly improve midbrain registration. To reduce the physiological artefacts in the functional data, we estimated and removed structured noise using a modified version of a previously described physiological noise model (PNM). Whereas a conventional analysis revealed only unilateral SC activity, the PNM analysis revealed the predicted bilateral activity. We demonstrate that these methods improve the measurement of a biologically plausible fMRI signal. Moreover they could be used to investigate the function of other midbrain nuclei.

Highlights

► Functional MRI of the midbrain is difficult because it is small and prone to noise. ► Our midbrain optimised group registration allows accurate localisation of activity. ► We model and remove the structured physiological noise in the data. ► These optimisations improve the detection of a visually induced midbrain signal. ► These methods are automated and are applicable to any midbrain nuclei.

Abbreviations

PNM
physiological noise model
RETROICOR
retrospective image correction

Keywords

fMRI
Midbrain
Superior colliculi
Physiological noise
Registration

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