Assisted Diagnosis of Parkinsonism Based on the Striatal Morphology
Metadatos
Mostrar el registro completo del ítemAutor
Segovia, Fermín; Gorriz Sáez, Juan Manuel; Ramírez Pérez De Inestrosa, Javier; Martínez Murcia, Francisco Jesús; Castillo Barnes, DiegoEditorial
World Scientific Publishing Company
Materia
Parkinsonism Machine learning Striatal morphology Striatum
Fecha
2019-05-14Referencia bibliográfica
Segovia, F., Górriz, J. M., Ramírez, J., Martínez-Murcia, F. J., & Castillo-Barnes, D. (2019). Assisted Diagnosis of Parkinsonism Based on the Striatal Morphology. International journal of neural systems, 1950011-1950011.
Patrocinador
This work was supported by the MINECO/ FEDER under the TEC2015-64718-R project, the Ministry of Economy, Innovation, Science and Employment of the Junta de Andaluc´ıa under the P11-TIC-7103 Excellence Project and the Vicerectorate of Research and Knowledge Transfer of the University of Granada.Resumen
Parkinsonism is a clinical syndrome characterized by the progressive loss of striatal dopamine. Its diagnosis
is usually corroborated by neuroimaging data such as DaTSCAN neuroimages that allow visualizing
the possible dopamine deficiency. During the last decade, a number of computer systems have been
proposed to automatically analyze DaTSCAN neuroimages, eliminating the subjectivity inherent to the
visual examination of the data. In this work, we propose a computer system based on machine learning
to separate Parkinsonian patients and control subjects using the size and shape of the striatal region,
modeled from DaTSCAN data. First, an algorithm based on adaptative thresholding is used to parcel
the striatum. This region is then divided into two according to the brain hemisphere division and characterized
with 152 measures, extracted from the volume and its three possible 2-dimensional projections.
Afterwards, the Bhattacharyya distance is used to discard the least discriminative measures and, finally,
the neuroimage category is estimated by means of a Support Vector Machine classifier. This method was
evaluated using a dataset with 189 DaTSCAN neuroimages, obtaining an accuracy rate over 94%. This
rate outperforms those obtained by previous approaches that use the intensity of each striatal voxel as
a feature.