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Dive into the research topics where Timothy A. Machado is active.

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Featured researches published by Timothy A. Machado.


Journal of Neurophysiology | 2010

Fast Nonnegative Deconvolution for Spike Train Inference From Population Calcium Imaging

Joshua T. Vogelstein; Adam M. Packer; Timothy A. Machado; Tanya Sippy; Baktash Babadi; Rafael Yuste; Liam Paninski

Fluorescent calcium indicators are becoming increasingly popular as a means for observing the spiking activity of large neuronal populations. Unfortunately, extracting the spike train of each neuron from a raw fluorescence movie is a nontrivial problem. This work presents a fast nonnegative deconvolution filter to infer the approximately most likely spike train of each neuron, given the fluorescence observations. This algorithm outperforms optimal linear deconvolution (Wiener filtering) on both simulated and biological data. The performance gains come from restricting the inferred spike trains to be positive (using an interior-point method), unlike the Wiener filter. The algorithm runs in linear time, and is fast enough that even when simultaneously imaging >100 neurons, inference can be performed on the set of all observed traces faster than real time. Performing optimal spatial filtering on the images further refines the inferred spike train estimates. Importantly, all the parameters required to perform the inference can be estimated using only the fluorescence data, obviating the need to perform joint electrophysiological and imaging calibration experiments.


Nature | 2010

Functional connectivity in the retina at the resolution of photoreceptors.

Greg D. Field; Jeffrey L. Gauthier; Alexander Sher; Martin Greschner; Timothy A. Machado; Lauren H. Jepson; Jonathon Shlens; Deborah E. Gunning; Keith Mathieson; W. Dabrowski; Liam Paninski; Alan Litke; E. J. Chichilnisky

To understand a neural circuit requires knowledge of its connectivity. Here we report measurements of functional connectivity between the input and ouput layers of the macaque retina at single-cell resolution and the implications of these for colour vision. Multi-electrode technology was used to record simultaneously from complete populations of the retinal ganglion cell types (midget, parasol and small bistratified) that transmit high-resolution visual signals to the brain. Fine-grained visual stimulation was used to identify the location, type and strength of the functional input of each cone photoreceptor to each ganglion cell. The populations of ON and OFF midget and parasol cells each sampled the complete population of long- and middle-wavelength-sensitive cones. However, only OFF midget cells frequently received strong input from short-wavelength-sensitive cones. ON and OFF midget cells showed a small non-random tendency to selectively sample from either long- or middle-wavelength-sensitive cones to a degree not explained by clumping in the cone mosaic. These measurements reveal computations in a neural circuit at the elementary resolution of individual neurons.


Cell | 2016

Spinal Inhibitory Interneuron Diversity Delineates Variant Motor Microcircuits

Jay B. Bikoff; Mariano I. Gabitto; Andre F. Rivard; Estelle Drobac; Timothy A. Machado; Andrew Miri; Susan Brenner-Morton; Erica Famojure; Carolyn Diaz; Francisco J. Alvarez; George Z. Mentis; Thomas M. Jessell

Animals generate movement by engaging spinal circuits that direct precise sequences of muscle contraction, but the identity and organizational logic of local interneurons that lie at the core of these circuits remain unresolved. Here, we show that V1 interneurons, a major inhibitory population that controls motor output, fractionate into highly diverse subsets on the basis of the expression of 19 transcription factors. Transcriptionally defined V1 subsets exhibit distinct physiological signatures and highly structured spatial distributions with mediolateral and dorsoventral positional biases. These positional distinctions constrain patterns of input from sensory and motor neurons and, as such, suggest that interneuron position is a determinant of microcircuit organization. Moreover, V1 diversity indicates that different inhibitory microcircuits exist for motor pools controlling hip, ankle, and foot muscles, revealing a variable circuit architecture for interneurons that control limb movement.


The Journal of Neuroscience | 2012

Efficient coding of spatial information in the primate retina

Eizaburo Doi; Jeffrey L. Gauthier; Greg D. Field; Jonathon Shlens; Alexander Sher; Martin Greschner; Timothy A. Machado; Lauren H. Jepson; Keith Mathieson; Deborah E. Gunning; Alan Litke; Liam Paninski; E. J. Chichilnisky; Eero P. Simoncelli

Sensory neurons have been hypothesized to efficiently encode signals from the natural environment subject to resource constraints. The predictions of this efficient coding hypothesis regarding the spatial filtering properties of the visual system have been found consistent with human perception, but they have not been compared directly with neural responses. Here, we analyze the information that retinal ganglion cells transmit to the brain about the spatial information in natural images subject to three resource constraints: the number of retinal ganglion cells, their total response variances, and their total synaptic strengths. We derive a model that optimizes the transmitted information and compare it directly with measurements of complete functional connectivity between cone photoreceptors and the four major types of ganglion cells in the primate retina, obtained at single-cell resolution. We find that the ganglion cell population exhibited 80% efficiency in transmitting spatial information relative to the model. Both the retina and the model exhibited high redundancy (∼30%) among ganglion cells of the same cell type. A novel and unique prediction of efficient coding, the relationships between projection patterns of individual cones to all ganglion cells, was consistent with the observed projection patterns in the retina. These results indicate a high level of efficiency with near-optimal redundancy in visual signaling by the retina.


Cell | 2015

Primacy of Flexor Locomotor Pattern Revealed by Ancestral Reversion of Motor Neuron Identity

Timothy A. Machado; Eftychios A. Pnevmatikakis; Liam Paninski; Thomas M. Jessell; Andrew Miri

Spinal circuits can generate locomotor output in the absence of sensory or descending input, but the principles of locomotor circuit organization remain unclear. We sought insight into these principles by considering the elaboration of locomotor circuits across evolution. The identity of limb-innervating motor neurons was reverted to a state resembling that of motor neurons that direct undulatory swimming in primitive aquatic vertebrates, permitting assessment of the role of motor neuron identity in determining locomotor pattern. Two-photon imaging was coupled with spike inference to measure locomotor firing in hundreds of motor neurons in isolated mouse spinal cords. In wild-type preparations, we observed sequential recruitment of motor neurons innervating flexor muscles controlling progressively more distal joints. Strikingly, after reversion of motor neuron identity, virtually all firing patterns became distinctly flexor like. Our findings show that motor neuron identity directs locomotor circuit wiring and indicate the evolutionary primacy of flexor pattern generation.


PLOS Computational Biology | 2018

Community-based benchmarking improves spike rate inference from two-photon calcium imaging data

Philipp Berens; Jeremy Freeman; Thomas Deneux; Nikolay Chenkov; Thomas McColgan; Artur Speiser; Jakob H. Macke; Srinivas C. Turaga; Patrick J. Mineault; Peter Rupprecht; Stephan Gerhard; Rainer W. Friedrich; Johannes Friedrich; Liam Paninski; Marius Pachitariu; Kenneth D. Harris; Ben Bolte; Timothy A. Machado; Dario L. Ringach; Jasmine Stone; Luke Edward Rogerson; Nicolas J. Sofroniew; Jacob Reimer; Emmanouil Froudarakis; Thomas Euler; Miroslav Román Rosón; Lucas Theis; As Tolias; Matthias Bethge

In recent years, two-photon calcium imaging has become a standard tool to probe the function of neural circuits and to study computations in neuronal populations. However, the acquired signal is only an indirect measurement of neural activity due to the comparatively slow dynamics of fluorescent calcium indicators. Different algorithms for estimating spike rates from noisy calcium measurements have been proposed in the past, but it is an open question how far performance can be improved. Here, we report the results of the spikefinder challenge, launched to catalyze the development of new spike rate inference algorithms through crowd-sourcing. We present ten of the submitted algorithms which show improved performance compared to previously evaluated methods. Interestingly, the top-performing algorithms are based on a wide range of principles from deep neural networks to generative models, yet provide highly correlated estimates of the neural activity. The competition shows that benchmark challenges can drive algorithmic developments in neuroscience.


Neuron | 2016

Simultaneous Denoising, Deconvolution, and Demixing of Calcium Imaging Data

Eftychios A. Pnevmatikakis; Daniel Soudry; Yuanjun Gao; Timothy A. Machado; Josh Merel; David Pfau; Thomas Reardon; Yu Mu; Clay O. Lacefield; Weijian Yang; Misha B. Ahrens; Randy M. Bruno; Thomas M. Jessell; Darcy S. Peterka; Rafael Yuste; Liam Paninski


neural information processing systems | 2014

Clustered factor analysis of multineuronal spike data

Lars Buesing; Timothy A. Machado; John P. Cunningham; Liam Paninski


The Annals of Applied Statistics | 2017

Robust and scalable Bayesian analysis of spatial neural tuning function data

Kamiar Rahnama Rad; Timothy A. Machado; Liam Paninski


Investigative Ophthalmology & Visual Science | 2009

Functional Identification of Individual Cones in the Receptive Fields of Primate Retinal Ganglion Cells

Alexander Sher; Jeffrey L. Gauthier; Greg D. Field; Martin Greschner; Jonathon Shlens; Timothy A. Machado; Deborah E. Gunning; Keith Mathieson; Alan Litke; E. J. Chichilnisky

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Alan Litke

University of California

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Jeffrey L. Gauthier

Salk Institute for Biological Studies

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Martin Greschner

Salk Institute for Biological Studies

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Keith Mathieson

University of Strathclyde

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Thomas M. Jessell

Howard Hughes Medical Institute

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