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Dive into the research topics where Bardia Fallah Behabadi is active.

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Featured researches published by Bardia Fallah Behabadi.


Nature | 2014

Space-time wiring specificity supports direction selectivity in the retina

Jinseop S. Kim; Matthew J. Greene; Aleksandar Zlateski; Kisuk Lee; Mark F. Richardson; Srinivas C. Turaga; Michael Purcaro; Matthew Balkam; Amy Robinson; Bardia Fallah Behabadi; Michael Campos; Winfried Denk; H. Sebastian Seung; EyeWirers

How does the mammalian retina detect motion? This classic problem in visual neuroscience has remained unsolved for 50 years. In search of clues, here we reconstruct Off-type starburst amacrine cells (SACs) and bipolar cells (BCs) in serial electron microscopic images with help from EyeWire, an online community of ‘citizen neuroscientists’. On the basis of quantitative analyses of contact area and branch depth in the retina, we find evidence that one BC type prefers to wire with a SAC dendrite near the SAC soma, whereas another BC type prefers to wire far from the soma. The near type is known to lag the far type in time of visual response. A mathematical model shows how such ‘space–time wiring specificity’ could endow SAC dendrites with receptive fields that are oriented in space–time and therefore respond selectively to stimuli that move in the outward direction from the soma.


PLOS Computational Biology | 2012

Location-Dependent Excitatory Synaptic Interactions in Pyramidal Neuron Dendrites

Bardia Fallah Behabadi; Alon Polsky; Monika P. Jadi; Jackie Schiller; Bartlett W. Mel

Neocortical pyramidal neurons (PNs) receive thousands of excitatory synaptic contacts on their basal dendrites. Some act as classical driver inputs while others are thought to modulate PN responses based on sensory or behavioral context, but the biophysical mechanisms that mediate classical-contextual interactions in these dendrites remain poorly understood. We hypothesized that if two excitatory pathways bias their synaptic projections towards proximal vs. distal ends of the basal branches, the very different local spike thresholds and attenuation factors for inputs near and far from the soma might provide the basis for a classical-contextual functional asymmetry. Supporting this possibility, we found both in compartmental models and electrophysiological recordings in brain slices that the responses of basal dendrites to spatially separated inputs are indeed strongly asymmetric. Distal excitation lowers the local spike threshold for more proximal inputs, while having little effect on peak responses at the soma. In contrast, proximal excitation lowers the threshold, but also substantially increases the gain of distally-driven responses. Our findings support the view that PN basal dendrites possess significant analog computing capabilities, and suggest that the diverse forms of nonlinear response modulation seen in the neocortex, including uni-modal, cross-modal, and attentional effects, could depend in part on pathway-specific biases in the spatial distribution of excitatory synaptic contacts onto PN basal dendritic arbors.


Proceedings of the IEEE | 2014

An Augmented Two-Layer Model Captures Nonlinear Analog Spatial Integration Effects in Pyramidal Neuron Dendrites

Monika P. Jadi; Bardia Fallah Behabadi; Alon Poleg-Polsky; Jackie Schiller; Bartlett W. Mel

In pursuit of the goal to understand and eventually reproduce the diverse functions of the brain, a key challenge lies in reverse engineering the peculiar biology-based “technology” that underlies the brains remarkable ability to process and store information. The basic building block of the nervous system is the nerve cell, or “neuron,” yet after more than 100 years of neurophysiological study and 60 years of modeling, the information processing functions of individual neurons, and the parameters that allow them to engage in so many different types of computation (sensory, motor, mnemonic, executive, etc.) remain poorly understood. In this paper, we review both historical and recent findings that have led to our current understanding of the analog spatial processing capabilities of dendrites, the major input structures of neurons, with a focus on the principal cell type of the neocortex and hippocampus, the pyramidal neuron (PN). We encapsulate our current understanding of PN dendritic integration in an abstract layered model whose spatially sensitive branch-subunits compute multidimensional sigmoidal functions. Unlike the 1-D sigmoids found in conventional neural network models, multidimensional sigmoids allow the cell to implement a rich spectrum of nonlinear modulation effects directly within their dendritic trees.


Proceedings of the National Academy of Sciences of the United States of America | 2014

Mechanisms underlying subunit independence in pyramidal neuron dendrites

Bardia Fallah Behabadi; Bartlett W. Mel

Significance Historically, neurons were thought to collect synaptic currents from across their dendritic trees and passively conduct them to the soma where action potentials (APs) are generated. More recent studies have shown that dendrites can generate local spikes and thus may function as independent computational subunits. It remains unknown, however, how dendrites can maintain the integrity and separateness of their local computations, which depend on voltage, despite the repeated synchronization of dendritic potentials by back-propagating somatic APs. This modeling study identifies three biophysical specializations that allow dendrites to remain functionally independent in a firing neuron, one of which is the somatic spiking mechanism itself. Our results suggest that a major class of neurons has been optimized for subunitized computation. Pyramidal neuron (PN) dendrites compartmentalize voltage signals and can generate local spikes, which has led to the proposal that their dendrites act as independent computational subunits within a multilayered processing scheme. However, when a PN is strongly activated, back-propagating action potentials (bAPs) sweeping outward from the soma synchronize dendritic membrane potentials many times per second. How PN dendrites maintain the independence of their voltage-dependent computations, despite these repeated voltage resets, remains unknown. Using a detailed compartmental model of a layer 5 PN, and an improved method for quantifying subunit independence that incorporates a more accurate model of dendritic integration, we first established that the output of each dendrite can be almost perfectly predicted by the intensity and spatial configuration of its own synaptic inputs, and is nearly invariant to the rate of bAP-mediated “cross-talk” from other dendrites over a 100-fold range. Then, through an analysis of conductance, voltage, and current waveforms within the model cell, we identify three biophysical mechanisms that together help make independent dendritic computation possible in a firing neuron, suggesting that a major subtype of neocortical neuron has been optimized for layered, compartmentalized processing under in-vivo–like spiking conditions.


bioRxiv | 2018

Classical-contextual interactions in V1 may rely on dendritic computations

Lei Jin; Bardia Fallah Behabadi; Monica P. Jadi; Chaithanya Ramachandra; Bartlett W. Mel

A signature feature of the neocortex is the dense network of horizontal connections (HCs) through which pyramidal neurons (PNs) exchange “contextual” information. In primary visual cortex (V1), HCs are thought to facilitate boundary detection, a crucial operation for object recognition, but how HCs modulate PN responses to boundary cues within their classical receptive fields (CRF) remains unknown. We began by “asking” natural images, through a structured data collection and ground truth labeling process, what function a V1 cell should use to compute boundary probability from aligned edge cues within and outside its CRF. The “answer” was an asymmetric 2-D sigmoidal function, whose nonlinear form provides the first normative account for the “multiplicative” center-flanker interactions previously reported in V1 neurons (Kapadia et al. 1995, 2000; Polat et al. 1998). Using a detailed compartmental model, we then show that this boundary-detecting classical-contextual interaction function can be computed with near perfect accuracy by NMDAR-dependent spatial synaptic interactions within PN dendrites – the site where classical and contextual inputs first converge in the cortex. In additional simulations, we show that local interneuron circuitry activated by HCs can powerfully leverage the nonlinear spatial computing capabilities of PN dendrites, providing the cortex with a highly flexible substrate for integration of classical and contextual information. Significance Statement In addition to the driver inputs that establish their classical receptive fields, cortical pyramidal neurons (PN) receive a much larger number of “contextual” inputs from other PNs through a dense plexus of horizontal connections (HCs). However by what mechanisms, and for what behavioral purposes, HC’s modulate PN responses remains unclear. We pursued these questions in the context of object boundary detection in visual cortex, by combining an analysis of natural boundary statistics with detailed modeling PNs and local circuits. We found that nonlinear synaptic interactions in PN dendrites are ideally suited to solve the boundary detection problem. We propose that PN dendrites provide the core computing substrate through which cortical neurons modulate each other’s responses depending on context.


Archive | 2011

Method and apparatus for neural temporal coding, learning and recognition

Victor Hokkiu Chan; Jason Frank Hunzinger; Bardia Fallah Behabadi


Archive | 2011

Method and apparatus of controlling noise associated with synaptic inputs based on neuronal firing rate

Victor Hokkiu Chan; Bardia Fallah Behabadi; Jason Frank Hunzinger


Neural Computation | 2007

J4 at Sweet 16: A New Wrinkle?

Bardia Fallah Behabadi; Bartlett W. Mel


Archive | 2015

Event-driven spatio-temporal short-time fourier transform processing for asynchronous pulse-modulated sampled signals

Xin Wang; Young Cheul Yoon; Bardia Fallah Behabadi


Archive | 2017

SIMULTANEOUS MAPPING AND PLANNING BY A ROBOT

Ali-akbar Agha-mohammadi; Bardia Fallah Behabadi; Christopher Gerard Lott; Shayegan Omidshafiei; Kiran Kumar Somasundaram; Sarah Paige Gibson; Casimir Matthew Wierzynski; Saurav Agarwal; Gerhard Reitmayr; Spindola Serafin Diaz

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Bartlett W. Mel

University of Southern California

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Monika P. Jadi

Salk Institute for Biological Studies

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Jackie Schiller

Technion – Israel Institute of Technology

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Alon Poleg-Polsky

University of Colorado Denver

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