Preprocessing of 18F-DMFP-PET Data Based on Hidden Markov Random Fields and the Gaussian Distribution
Metadatos
Mostrar el registro completo del ítemAutor
Segovia Román, Fermín; Gorriz Sáez, Juan Manuel; Ramírez Pérez De Inestrosa, Javier; Martínez Murcia, Francisco Jesús; Salas González, DiegoEditorial
Frontiers Media
Materia
PET image segmentation 18F-DMFP-PET data intensity normalization
Fecha
2017-10-09Referencia bibliográfica
Segovia Román, F. et. al. Front. Aging Neurosci. 9:326. [https://doi.org/10.3389/fnagi.2017.00326]
Patrocinador
MINECO under the TEC2012- 34306 and TEC2015-64718-R projects; Ministry of Economy, Innovation, Science and Employment of the Junta de Andalucía under the Excellence Projects P09-TIC-4530; P11-TIC-7103; Talent Hub project approved by the Andalucía Talent Hub Program; European Union’s Seventh Framework Program, Marie Sklodowska-Curie actions (COFUND — Grant Agreement no. 291780; Ministry of Economy, Innovation, Science and Employment of the Junta de AndalucíaResumen
18F-DMFP-PET is an emerging neuroimaging modality used to diagnose Parkinson’s
disease (PD) that allows us to examine postsynaptic dopamine D2/3 receptors. Like other
neuroimaging modalities used for PD diagnosis, most of the total intensity of 18F-DMFPPET
images is concentrated in the striatum. However, other regions can also be useful
for diagnostic purposes. An appropriate delimitation of the regions of interest contained
in 18F-DMFP-PET data is crucial to improve the automatic diagnosis of PD. In this
manuscript we propose a novel methodology to preprocess 18F-DMFP-PET data that
improves the accuracy of computer aided diagnosis systems for PD. First, the data were
segmented using an algorithm based on Hidden Markov Random Field. As a result, each
neuroimage was divided into 4 maps according to the intensity and the neighborhood
of the voxels. The maps were then individually normalized so that the shape of their
histograms could be modeled by a Gaussian distribution with equal parameters for all the
neuroimages. This approach was evaluated using a dataset with neuroimaging data from
87 parkinsonian patients. After these preprocessing steps, a Support Vector Machine
classifier was used to separate idiopathic and non-idiopathic PD. Data preprocessed by
the proposed method provided higher accuracy results than the ones preprocessed with
previous approaches.