Building functional neuromarkers from resting state fMRI to describe physiopathological traits
Abstract
The overarching goal of this work has been that of devising novel methods
for building functional neuromarkers from resting-state fMRI data to describe
healthy and pathological human behaviour. Observing spontaneous uctuations
of the BOLD signal, resting-state fMRI allows to have an insight into the
functional organisation of the brain and to detect functional networks that are
consistent across subjects. Studying how patterns of functional connectivity
vary both in healthy subjects and in subjects a ected by a neurodegenerative
disease is a way to shed light on the physiological and pathological mechanisms
governing our nervous system.
The rst part of this thesis is devoted to the description of fully data-driven
feature extraction techniques based on clustering aimed at supporting the diagnosis
of neurodegenerative diseases (e.g., amyotrophic lateral sclerosis and
Parkinson's disease). The high-dimensional nature of resting state fMRI data
implies the need of suitable feature selection techniques. Traditional univariate
techniques are fast and straightforward to interpret, but are unable to unveil
relationships among multiple features. For this reason, this work presents a
methodology based on consensus clustering, a particular approach to the clustering
problem that consists in combining di erent partitions of the same data
set to produce more stable solutions. One of the objectives of fMRI data analysis
is to determine regions that show an abnormal 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. Here,
stochastic rank aggregation is applied to identify brain regions that exhibit a
coherent behaviour in groups of subjects a ected by the same disorder. The
proposed methodology was validated on real data and the results are consistent
with previous literature, thus indicating that this approach might be suitable
to support early diagnosis of neurodegenerative diseases... [edited by Author]