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1.
J Neurosci Methods ; 257: 76-96, 2016 Jan 15.
Article in English | MEDLINE | ID: mdl-26434707

ABSTRACT

BACKGROUND: Voltage-sensitive dye optical imaging is a promising technique for studying in vivo neural assemblies dynamics where functional clustering can be visualized in the imaging plane. Its practical potential is however limited by many artifacts. NEW METHOD: We present a novel method, that we call "SMCS" (Spatially Structured Sparse Morphological Component Separation), to separate the relevant biological signal from noise and artifacts. It extends Generalized Linear Models (GLM) by using a set of convex non-smooth regularization priors adapted to the morphology of the sources and artifacts to capture. RESULTS: We make use of first order proximal splitting algorithms to solve the corresponding large scale optimization problem. We also propose an automatic parameters selection procedure based on statistical risk estimation methods. COMPARISON WITH EXISTING METHODS: We compare this method with blank subtraction and GLM methods on both synthetic and real data. It shows encouraging perspectives for the observation of complex cortical dynamics. CONCLUSIONS: This work shows how recent advances in source separation can be integrated into a biophysical model of VSDOI. Going beyond GLM methods is important to capture transient cortical events such as propagating waves.


Subject(s)
Image Processing, Computer-Assisted/methods , Pattern Recognition, Automated/methods , Voltage-Sensitive Dye Imaging/methods , Algorithms , Animals , Artifacts , Cats , Evoked Potentials , Linear Models , Mice , Models, Neurological , Neurons/physiology , Somatosensory Cortex/physiology , Touch Perception/physiology , Vibrissae/physiology , Visual Cortex/physiology , Visual Perception/physiology
2.
Neuroimage Clin ; 4: 718-29, 2014.
Article in English | MEDLINE | ID: mdl-24936423

ABSTRACT

In the context of Alzheimer's disease, two challenging issues are (1) the characterization of local hippocampal shape changes specific to disease progression and (2) the identification of mild-cognitive impairment patients likely to convert. In the literature, (1) is usually solved first to detect areas potentially related to the disease. These areas are then considered as an input to solve (2). As an alternative to this sequential strategy, we investigate the use of a classification model using logistic regression to address both issues (1) and (2) simultaneously. The classification of the patients therefore does not require any a priori definition of the most representative hippocampal areas potentially related to the disease, as they are automatically detected. We first quantify deformations of patients' hippocampi between two time points using the large deformations by diffeomorphisms framework and transport these deformations to a common template. Since the deformations are expected to be spatially structured, we perform classification combining logistic loss and spatial regularization techniques, which have not been explored so far in this context, as far as we know. The main contribution of this paper is the comparison of regularization techniques enforcing the coefficient maps to be spatially smooth (Sobolev), piecewise constant (total variation) or sparse (fused LASSO) with standard regularization techniques which do not take into account the spatial structure (LASSO, ridge and ElasticNet). On a dataset of 103 patients out of ADNI, the techniques using spatial regularizations lead to the best classification rates. They also find coherent areas related to the disease progression.


Subject(s)
Alzheimer Disease/pathology , Alzheimer Disease/physiopathology , Hippocampus/pathology , Hippocampus/physiopathology , Models, Neurological , Cognitive Dysfunction/pathology , Cognitive Dysfunction/physiopathology , Databases, Factual/statistics & numerical data , Disease Progression , Humans , Image Processing, Computer-Assisted , Logistic Models , Magnetic Resonance Imaging
3.
Article in English | MEDLINE | ID: mdl-21095743

ABSTRACT

The work reported in this paper aimed at developing and testing an automated method to calculate the biodistribution of a specific PET tracer in mouse brain PET/CT images using an MRI-based 3D digital atlas. Surface-based registration strategy and affine transformation estimation were considered. Such an approach allowed overcoming the lack of anatomical information in the inner regions of PET/CT brain scans. Promising results were obtained in one mouse (on two scans) and will be extended to a neuroinflammation mouse model to characterize the pathology and its evolution. Major improvements are expected regarding automation, time computation, robustness and reproducibility of mouse brain segmentation. Due to its generic implementation, this method could be successfully applied to PET/CT brain scans of other species (rat, primate) for which 3D digital atlases are available.


Subject(s)
Brain/pathology , Imaging, Three-Dimensional/methods , Magnetic Resonance Imaging/methods , Positron-Emission Tomography/methods , Tomography, X-Ray Computed/methods , Algorithms , Animals , Automation , Brain/metabolism , Brain Mapping/methods , Image Processing, Computer-Assisted , Mice , Whole Body Imaging
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