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Frontiers in Neuroinformatics

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https://www.readbyqxmd.com/read/30210327/decentralized-analysis-of-brain-imaging-data-voxel-based-morphometry-and-dynamic-functional-network-connectivity
#1
Harshvardhan Gazula, Bradley T Baker, Eswar Damaraju, Sergey M Plis, Sandeep R Panta, Rogers F Silva, Vince D Calhoun
In the field of neuroimaging, there is a growing interest in developing collaborative frameworks that enable researchers to address challenging questions about the human brain by leveraging data across multiple sites all over the world. Additionally, efforts are also being directed at developing algorithms that enable collaborative analysis and feature learning from multiple sites without requiring the often large data to be centrally located. In this paper, we propose two new decentralized algorithms: (1) A decentralized regression algorithm for performing a voxel-based morphometry analysis on structural magnetic resonance imaging (MRI) data and, (2) A decentralized dynamic functional network connectivity algorithm which includes decentralized group ICA and sliding-window analysis of functional MRI data...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30197593/neuroscience-information-toolbox-an-open-source-toolbox-for-eeg-fmri-multimodal-fusion-analysis
#2
Li Dong, Cheng Luo, Xiaobo Liu, Sisi Jiang, Fali Li, Hongshuo Feng, Jianfu Li, Diankun Gong, Dezhong Yao
Recently, scalp electroencephalography (EEG) and functional magnetic resonance imaging (fMRI) multimodal fusion has been pursued in an effort to study human brain function and dysfunction to obtain more comprehensive information on brain activity in which the spatial and temporal resolutions are both satisfactory. However, a more flexible and easy-to-use toolbox for EEG-fMRI multimodal fusion is still lacking. In this study, we therefore developed a freely available and open-source MATLAB graphical user interface toolbox, known as the Neuroscience Information Toolbox (NIT), for EEG-fMRI multimodal fusion analysis...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30186131/intra-and-inter-scanner-reliability-of-voxel-wise-whole-brain-analytic-metrics-for-resting-state-fmri
#3
Na Zhao, Li-Xia Yuan, Xi-Ze Jia, Xu-Feng Zhou, Xin-Ping Deng, Hong-Jian He, Jianhui Zhong, Jue Wang, Yu-Feng Zang
As the multi-center studies with resting-state functional magnetic resonance imaging (RS-fMRI) have been more and more applied to neuropsychiatric studies, both intra- and inter-scanner reliability of RS-fMRI are becoming increasingly important. The amplitude of low frequency fluctuation (ALFF), regional homogeneity (ReHo), and degree centrality (DC) are 3 main RS-fMRI metrics in a way of voxel-wise whole-brain (VWWB) analysis. Although the intra-scanner reliability (i.e., test-retest reliability) of these metrics has been widely investigated, few studies has investigated their inter-scanner reliability...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30158864/sparse-ordinal-logistic-regression-and-its-application-to-brain-decoding
#4
Emi Satake, Kei Majima, Shuntaro C Aoki, Yukiyasu Kamitani
Brain decoding with multivariate classification and regression has provided a powerful framework for characterizing information encoded in population neural activity. Classification and regression models are respectively used to predict discrete and continuous variables of interest. However, cognitive and behavioral parameters that we wish to decode are often ordinal variables whose values are discrete but ordered, such as subjective ratings. To date, there is no established method of predicting ordinal variables in brain decoding...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30154711/robust-ensemble-classification-methodology-for-i123-ioflupane-spect-images-and-multiple-heterogeneous-biomarkers-in-the-diagnosis-of-parkinson-s-disease
#5
Diego Castillo-Barnes, Javier Ramírez, Fermín Segovia, Francisco J Martínez-Murcia, Diego Salas-Gonzalez, Juan M Górriz
In last years, several approaches to develop an effective Computer-Aided-Diagnosis (CAD) system for Parkinson's Disease (PD) have been proposed. Most of these methods have focused almost exclusively on brain images through the use of Machine-Learning algorithms suitable to characterize structural or functional patterns. Those patterns provide enough information about the status and/or the progression at intermediate and advanced stages of Parkinson's Disease. Nevertheless this information could be insufficient at early stages of the pathology...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30154710/uncertainpy-a-python-toolbox-for-uncertainty-quantification-and-sensitivity-analysis-in-computational-neuroscience
#6
Simen Tennøe, Geir Halnes, Gaute T Einevoll
Computational models in neuroscience typically contain many parameters that are poorly constrained by experimental data. Uncertainty quantification and sensitivity analysis provide rigorous procedures to quantify how the model output depends on this parameter uncertainty. Unfortunately, the application of such methods is not yet standard within the field of neuroscience. Here we present Uncertainpy, an open-source Python toolbox, tailored to perform uncertainty quantification and sensitivity analysis of neuroscience models...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30123121/reproducing-polychronization-a-guide-to-maximizing-the-reproducibility-of-spiking-network-models
#7
Robin Pauli, Philipp Weidel, Susanne Kunkel, Abigail Morrison
Any modeler who has attempted to reproduce a spiking neural network model from its description in a paper has discovered what a painful endeavor this is. Even when all parameters appear to have been specified, which is rare, typically the initial attempt to reproduce the network does not yield results that are recognizably akin to those in the original publication. Causes include inaccurately reported or hidden parameters (e.g., wrong unit or the existence of an initialization distribution), differences in implementation of model dynamics, and ambiguities in the text description of the network experiment...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30108496/spatiotemporal-analysis-of-developing-brain-networks
#8
Ping He, Xiaohua Xu, Han Zhang, Gang Li, Jingxin Nie, Pew-Thian Yap, Dinggang Shen
Recent advances in MRI have made it easier to collect data for studying human structural and functional connectivity networks. Computational methods can reveal complex spatiotemporal dynamics of the human developing brain. In this paper, we propose a Developmental Meta-network Decomposition (DMD) method to decompose a series of developmental networks into a set of Developmental Meta-networks (DMs), which reveal the underlying changes in connectivity over development. DMD circumvents the limitations of traditional static network decomposition methods by providing a novel exploratory approach to capture the spatiotemporal dynamics of developmental networks...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30108495/parameter-optimization-using-covariance-matrix-adaptation-evolutionary-strategy-cma-es-an-approach-to-investigate-differences-in-channel-properties-between-neuron-subtypes
#9
Zbigniew Jȩdrzejewski-Szmek, Karina P Abrahao, Joanna Jȩdrzejewska-Szmek, David M Lovinger, Kim T Blackwell
Computational models in neuroscience can be used to predict causal relationships between biological mechanisms in neurons and networks, such as the effect of blocking an ion channel or synaptic connection on neuron activity. Since developing a biophysically realistic, single neuron model is exceedingly difficult, software has been developed for automatically adjusting parameters of computational neuronal models. The ideal optimization software should work with commonly used neural simulation software; thus, we present software which works with models specified in declarative format for the MOOSE simulator...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30065642/exoskeleton-robot-assisted-therapy-in-stroke-patients-a-lesion-mapping-study
#10
Antonio Cerasa, Loris Pignolo, Vera Gramigna, Sebastiano Serra, Giuseppe Olivadese, Federico Rocca, Paolo Perrotta, Giuliano Dolce, Aldo Quattrone, Paolo Tonin
Background : Technology-supported rehabilitation is emerging as a solution to support therapists in providing a high-intensity, repetitive and task-specific treatment, aimed at improving stroke recovery. End-effector robotic devices are known to positively affect the recovery of arm functions, however there is a lack of evidence regarding exoskeletons. This paper evaluates the impact of cerebral lesion load on the response to a validated robotic-assisted rehabilitation protocol. Methods : Fourteen hemiparetic patients were assessed in a within-subject design (age 66...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30050424/epinetlab-a-software-for-seizure-onset-zone-identification-from-intracranial-eeg-signal-in-epilepsy
#11
Lucia R Quitadamo, Elaine Foley, Roberto Mai, Luca de Palma, Nicola Specchio, Stefano Seri
The pre-operative workup of patients with drug-resistant epilepsy requires in some candidates the identification from intracranial EEG (iEEG) of the seizure-onset zone (SOZ), defined as the area responsible of the generation of the seizure and therefore candidate for resection. High-frequency oscillations (HFOs) contained in the iEEG signal have been proposed as biomarker of the SOZ. Their visual identification is a very onerous process and an automated detection tool could be an extremely valuable aid for clinicians, reducing operator-dependent bias, and computational time...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30050423/multi-template-mesiotemporal-lobe-segmentation-effects-of-surface-and-volume-feature-modeling
#12
Hosung Kim, Benoit Caldairou, Andrea Bernasconi, Neda Bernasconi
Numerous neurological disorders are associated with atrophy of mesiotemporal lobe structures, including the hippocampus (HP), amygdala (AM), and entorhinal cortex (EC). Accurate segmentation of these structures is, therefore, necessary for understanding the disease process and patient management. Recent multiple-template segmentation algorithms have shown excellent performance in HP segmentation. Purely surface-based methods precisely describe structural boundary but their performance likely depends on a large template library, as segmentation suffers when the boundaries of template and individual MRI are not well aligned while volume-based methods are less dependent...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30042671/adaptive-multisensorial-physiological-and-social-the-next-generation-of-telerehabilitation-systems
#13
Elena Navarro, Pascual González, Víctor López-Jaquero, Francisco Montero, José P Molina, Dulce Romero-Ayuso
Some people require special treatments for rehabilitating physical, cognitive or even social capabilities after an accident or degenerative illness. However, the ever-increasing costs of looking after an aging population, many of whom suffer chronic diseases, is straining the finances of healthcare systems around Europe. This situation has given rise to a great deal of attention being paid to the development of telerehabilitation (TR) systems, which have been designed to take rehabilitation beyond hospitals and care centers...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30042670/using-neuron-for-reaction-diffusion-modeling-of-extracellular-dynamics
#14
Adam J H Newton, Robert A McDougal, Michael L Hines, William W Lytton
Development of credible clinically-relevant brain simulations has been slowed due to a focus on electrophysiology in computational neuroscience, neglecting the multiscale whole-tissue modeling approach used for simulation in most other organ systems. We have now begun to extend the NEURON simulation platform in this direction by adding extracellular modeling. The extracellular medium of neural tissue is an active medium of neuromodulators, ions, inflammatory cells, oxygen, NO and other gases, with additional physiological, pharmacological and pathological agents...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30034333/geometric-convolutional-neural-network-for-analyzing-surface-based-neuroimaging-data
#15
Si-Baek Seong, Chongwon Pae, Hae-Jeong Park
In machine learning, one of the most popular deep learning methods is the convolutional neural network (CNN), which utilizes shared local filters and hierarchical information processing analogous to the brain's visual system. Despite its popularity in recognizing two-dimensional (2D) images, the conventional CNN is not directly applicable to semi-regular geometric mesh surfaces, on which the cerebral cortex is often represented. In order to apply the CNN to surface-based brain research, we propose a geometric CNN (gCNN) that deals with data representation on a mesh surface and renders pattern recognition in a multi-shell mesh structure...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30034332/intranat-electrodes-a-free-database-and-visualization-software-for-intracranial-electroencephalographic-data-processed-for-case-and-group-studies
#16
Pierre Deman, Manik Bhattacharjee, François Tadel, Anne-Sophie Job, Denis Rivière, Yann Cointepas, Philippe Kahane, Olivier David
In some cases of pharmaco-resistant and focal epilepsies, intracranial recordings performed epidurally (electrocorticography, ECoG) and/or in depth (stereoelectroencephalography, SEEG) can be required to locate the seizure onset zone and the eloquent cortex before surgical resection. In SEEG, each electrode contact records brain's electrical activity in a spherical volume of 3 mm diameter approximately. The spatial coverage is around 1% of the brain and differs between patients because the implantation of electrodes is tailored for each case...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/30008668/corrigendum-extremely-scalable-spiking-neuronal-network-simulation-code-from-laptops-to-exascale-computers
#17
Jakob Jordan, Tammo Ippen, Moritz Helias, Itaru Kitayama, Mitsuhisa Sato, Jun Igarashi, Markus Diesmann, Susanne Kunkel
[This corrects the article DOI: 10.3389/fninf.2018.00002.].
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/29997492/findsim-a-framework-for-integrating-neuronal-data-and-signaling-models
#18
Nisha A Viswan, Gubbi Vani HarshaRani, Melanie I Stefan, Upinder S Bhalla
Current experiments touch only small but overlapping parts of very complex subcellular signaling networks in neurons. Even with modern optical reporters and pharmacological manipulations, a given experiment can only monitor and control a very small subset of the diverse, multiscale processes of neuronal signaling. We have developed FindSim (Framework for Integrating Neuronal Data and SIgnaling Models) to anchor models to structured experimental datasets. FindSim is a framework for integrating many individual electrophysiological and biochemical experiments with large, multiscale models so as to systematically refine and validate the model...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/29973875/differential-path-length-factor-s-effect-on-the-characterization-of-brain-s-hemodynamic-response-function-a-functional-near-infrared-study
#19
Muhammad A Kamran, Malik M N Mannann, Myung Yung Jeong
Functional near-infrared spectroscopy (fNIRS) has evolved as a neuro-imaging modality over the course of the past two decades. The removal of superfluous information accompanying the optical signal, however, remains a challenge. A comprehensive analysis of each step is necessary to ensure the extraction of actual information from measured fNIRS waveforms. A slight change in shape could alter the features required for fNIRS-BCI applications. In the present study, the effect of the differential path-length factor (DPF) values on the characteristics of the hemodynamic response function (HRF) was investigated...
2018: Frontiers in Neuroinformatics
https://www.readbyqxmd.com/read/29970996/classification-of-alzheimer-s-disease-by-combination-of-convolutional-and-recurrent-neural-networks-using-fdg-pet-images
#20
Manhua Liu, Danni Cheng, Weiwu Yan
Alzheimer's disease (AD) is an irreversible brain degenerative disorder affecting people aged older than 65 years. Currently, there is no effective cure for AD, but its progression can be delayed with some treatments. Accurate and early diagnosis of AD is vital for the patient care and development of future treatment. Fluorodeoxyglucose positrons emission tomography (FDG-PET) is a functional molecular imaging modality, which proves to be powerful to help understand the anatomical and neural changes of brain related to AD...
2018: Frontiers in Neuroinformatics
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