Functional Brain Imaging Synthesis Based on Image Decomposition and Kernel Modeling: Application to Neurodegenerative Diseases
Metadatos
Mostrar el registro completo del ítemAutor
Martínez Murcia, Francisco Jesús; Gorriz Sáez, Juan Manuel; Ramírez Pérez De Inestrosa, Javier; Illán, Ignacio A.; Segovia Román, Fermín; Castillo Barnes, Diego; Salas González, DiegoEditorial
Frontiers Media
Materia
Alzheimer’s Disease (AD) Parkinson’s Disease (PD) Neuroimaging
Fecha
2017-11-14Referencia bibliográfica
Martínez Murcia, F.J. et. al. Front. Neuroinform. 11:65. [https://doi.org/10.3389/fninf.2017.00065]
Patrocinador
MINECO/ FEDER under the TEC2015-64718-R project and the Consejería de Economía, Innovación, Ciencia y Empleo (Junta de Andalucía, Spain) under the Excellence Project P11-TIC- 7103Resumen
The rise of neuroimaging in research and clinical practice, together with the development
of new machine learning techniques has strongly encouraged the Computer Aided
Diagnosis (CAD) of different diseases and disorders. However, these algorithms are often
tested in proprietary datasets to which the access is limited and, therefore, a direct
comparison between CAD procedures is not possible. Furthermore, the sample size is
often small for developing accurate machine learning methods. Multi-center initiatives
are currently a very useful, although limited, tool in the recruitment of large populations
and standardization of CAD evaluation. Conversely, we propose a brain image synthesis
procedure intended to generate a new image set that share characteristics with an
original one. Our system focuses on nuclear imaging modalities such as PET or SPECT
brain images. We analyze the dataset by applying PCA to the original dataset, and then
model the distribution of samples in the projected eigenbrain space using a Probability
Density Function (PDF) estimator. Once the model has been built, we can generate
new coordinates on the eigenbrain space belonging to the same class, which can be
then projected back to the image space. The system has been evaluated on different
functional neuroimaging datasets assessing the: resemblance of the synthetic images
with the original ones, the differences between them, their generalization ability and the
independence of the synthetic dataset with respect to the original. The synthetic images
maintain the differences between groups found at the original dataset, with no significant
differences when comparing them to real-world samples. Furthermore, they featured a
similar performance and generalization capability to that of the original dataset. These
results prove that these images are suitable for standardizing the evaluation of CAD
pipelines, and providing data augmentation in machine learning systems -e.g. in deep
learning-, or even to train future professionals at medical school.