Interaction between Functional Connectivity and Neural Excitability in Autism: A Novel Framework for Computational Modeling and Application to Biological Data
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[1] Pengfei Xu,et al. Facial expression recognition: A meta-analytic review of theoretical models and neuroimaging evidence , 2021, Neuroscience & Biobehavioral Reviews.
[2] H. Branigan,et al. Glutamate and functional connectivity - support for the excitatory-inhibitory imbalance hypothesis in autism spectrum disorders , 2021, Psychiatry Research: Neuroimaging.
[3] Yuichi Yamashita,et al. Neural network modeling of altered facial expression recognition in autism spectrum disorders based on predictive processing framework , 2021, Scientific Reports.
[4] Logan Cross,et al. Using deep reinforcement learning to reveal how the brain encodes abstract state-space representations in high-dimensional environments , 2020, Neuron.
[5] Yukie Nagai,et al. Deficits in Prediction Ability Trigger Asymmetries in Behavior and Internal Representation , 2020, Frontiers in Psychiatry.
[6] Nancy Kanwisher,et al. Processing communicative facial and vocal cues in the superior temporal sulcus , 2020, NeuroImage.
[7] T. Ogata,et al. Paradoxical sensory reactivity induced by functional disconnection in a robot model of neurodevelopmental disorder , 2020, Neural Networks.
[8] T. Ogata,et al. Homogeneous Intrinsic Neuronal Excitability Induces Overfitting to Sensory Noise: A Robot Model of Neurodevelopmental Disorder , 2020, Frontiers in Psychiatry.
[9] Matthew W. Mosconi,et al. Familiality of behavioral flexibility and response inhibition deficits in autism spectrum disorder (ASD) , 2019, Molecular Autism.
[10] Gordon Cheng,et al. A Review on Neural Network Models of Schizophrenia and Autism Spectrum Disorder , 2019, Neural Networks.
[11] Peter Dayan,et al. Models that learn how humans learn: The case of decision-making and its disorders , 2019, PLoS Comput. Biol..
[12] Madhura R. Joglekar,et al. Task representations in neural networks trained to perform many cognitive tasks , 2019, Nature Neuroscience.
[13] Tetsuya Ogata,et al. A Neurorobotics Simulation of Autistic Behavior Induced by Unusual Sensory Precision , 2018, Computational Psychiatry.
[14] Masaru Mimura,et al. Machine learning approach to identify a resting-state functional connectivity pattern serving as an endophenotype of autism spectrum disorder , 2018, Brain Imaging and Behavior.
[15] Yukie Nagai,et al. Understanding the cognitive mechanisms underlying autistic behavior: a recurrent neural network study , 2018, 2018 Joint IEEE 8th International Conference on Development and Learning and Epigenetic Robotics (ICDL-EpiRob).
[16] J. Hegarty,et al. Cerebro-Cerebellar Functional Connectivity is Associated with Cerebellar Excitation–Inhibition Balance in Autism Spectrum Disorder , 2018, Journal of Autism and Developmental Disorders.
[17] Aaron R. Seitz,et al. Autistic traits, but not schizotypy, predict increased weighting of sensory information in Bayesian visual integration , 2017, bioRxiv.
[18] G. Rees,et al. Adults with autism over-estimate the volatility of the sensory environment , 2017, Nature Neuroscience.
[19] Shigeki Sugano,et al. Learning to Perceive the World as Probabilistic or Deterministic via Interaction With Others: A Neuro-Robotics Experiment , 2017, IEEE Transactions on Neural Networks and Learning Systems.
[20] Kai Li,et al. Computational approaches to fMRI analysis , 2017, Nature Neuroscience.
[21] Abigail Dickinson,et al. Measuring neural excitation and inhibition in autism: Different approaches, different findings and different interpretations , 2016, Brain Research.
[22] K. Stephan,et al. Can Bayesian Theories of Autism Spectrum Disorder Help Improve Clinical Practice? , 2016, Front. Psychiatry.
[23] Joshua B. Ewen,et al. The Disrupted Connectivity Hypothesis of Autism Spectrum Disorders: Time for the Next Phase in Research. , 2016, Biological psychiatry. Cognitive neuroscience and neuroimaging.
[24] Michael S. C. Thomas,et al. The over-pruning hypothesis of autism. , 2016, Developmental Science.
[25] Zonglei Zhen,et al. Functional integration of the posterior superior temporal sulcus correlates with facial expression recognition , 2016, Human brain mapping.
[26] Galit Yovel,et al. Two neural pathways of face processing: A critical evaluation of current models , 2015, Neuroscience & Biobehavioral Reviews.
[27] André Longtin,et al. Differential effects of excitatory and inhibitory heterogeneity on the gain and asynchronous state of sparse cortical networks , 2014, Front. Comput. Neurosci..
[28] Chris Eliasmith,et al. The Competing Benefits of Noise and Heterogeneity in Neural Coding , 2014, Neural Computation.
[29] Karl J. Friston,et al. Computational psychiatry: the brain as a phantastic organ. , 2014, The lancet. Psychiatry.
[30] Karl J. Friston,et al. Human Neuroscience Hypothesis and Theory Article an Aberrant Precision Account of Autism , 2022 .
[31] Takashi Yamada,et al. Altered Network Topologies and Hub Organization in Adults with Autism: A Resting-State fMRI Study , 2014, PloS one.
[32] Shigeki Sugano,et al. Learning to Reproduce Fluctuating Time Series by Inferring Their Time-Dependent Stochastic Properties: Application in Robot Learning Via Tutoring , 2013, IEEE Transactions on Autonomous Mental Development.
[33] Daniel P. Kennedy,et al. The Autism Brain Imaging Data Exchange: Towards Large-Scale Evaluation of the Intrinsic Brain Architecture in Autism , 2013, Molecular Psychiatry.
[34] Matthew W. Mosconi,et al. Reduced behavioral flexibility in autism spectrum disorders. , 2013, Neuropsychology.
[35] Johan Wagemans,et al. Weak priors versus overfitting of predictions in autism: Reply to Pellicano and Burr (TICS, 2012) , 2013, i-Perception.
[36] D. Burr,et al. When the world becomes ‘too real’: a Bayesian explanation of autistic perception , 2012, Trends in Cognitive Sciences.
[37] J. Tani,et al. Spontaneous Prediction Error Generation in Schizophrenia , 2012, PloS one.
[38] J F Mejias,et al. Optimal heterogeneity for coding in spiking neural networks. , 2012, Physical review letters.
[39] Qingyang Li,et al. Emotional perception: Meta-analyses of face and natural scene processing , 2011, NeuroImage.
[40] John P O'Doherty,et al. Model-based approaches to neuroimaging: combining reinforcement learning theory with fMRI data. , 2010, Wiley interdisciplinary reviews. Cognitive science.
[41] Jun Tani,et al. Emergence of Functional Hierarchy in a Multiple Timescale Neural Network Model: A Humanoid Robot Experiment , 2008, PLoS Comput. Biol..
[42] J. Haxby,et al. Neural systems for recognition of familiar faces , 2007, Neuropsychologia.
[43] N. Makris,et al. Decreased volume of left and total anterior insular lobule in schizophrenia , 2006, Schizophrenia Research.
[44] W. Goodman,et al. Disgust and the insula: fMRI responses to pictures of mutilation and contamination , 2004, Neuroreport.
[45] Yingli Lu,et al. Regional homogeneity approach to fMRI data analysis , 2004, NeuroImage.
[46] B. Argall,et al. Integration of Auditory and Visual Information about Objects in Superior Temporal Sulcus , 2004, Neuron.
[47] G. Rizzolatti,et al. Both of Us Disgusted in My Insula The Common Neural Basis of Seeing and Feeling Disgust , 2003, Neuron.
[48] Karl J. Friston,et al. Dynamic causal modelling , 2003, NeuroImage.
[49] J. Haxby,et al. Human neural systems for face recognition and social communication , 2002, Biological Psychiatry.
[50] A. Couteur,et al. Autism Diagnostic Interview-Revised: A revised version of a diagnostic interview for caregivers of individuals with possible pervasive developmental disorders , 1994, Journal of autism and developmental disorders.
[51] H. Seo,et al. Timescales of cognition in the brain , 2021, Current Opinion in Behavioral Sciences.
[52] Khundrakpam Budhachandra,et al. The Neuro Bureau Preprocessing Initiative: open sharing of preprocessed neuroimaging data and derivatives , 2013 .