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Dive into the research topics where Timothy J. Blanche is active.

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Featured researches published by Timothy J. Blanche.


Nature | 2017

Fully integrated silicon probes for high-density recording of neural activity

James J. Jun; Nicholas A. Steinmetz; Joshua H. Siegle; Daniel J. Denman; Marius Bauza; Brian Barbarits; Albert K. Lee; Costas A. Anastassiou; Alexandru Andrei; Çağatay Aydın; Mladen Barbic; Timothy J. Blanche; Vincent Bonin; João Couto; Barundeb Dutta; Sergey L. Gratiy; Diego A. Gutnisky; Michael Häusser; Bill Karsh; Peter Ledochowitsch; Carolina Mora Lopez; Catalin Mitelut; Silke Musa; Michael Okun; Marius Pachitariu; Jan Putzeys; P. Dylan Rich; Cyrille Rossant; Wei-lung Sun; Karel Svoboda

Sensory, motor and cognitive operations involve the coordinated action of large neuronal populations across multiple brain regions in both superficial and deep structures. Existing extracellular probes record neural activity with excellent spatial and temporal (sub-millisecond) resolution, but from only a few dozen neurons per shank. Optical Ca2+ imaging offers more coverage but lacks the temporal resolution needed to distinguish individual spikes reliably and does not measure local field potentials. Until now, no technology compatible with use in unrestrained animals has combined high spatiotemporal resolution with large volume coverage. Here we design, fabricate and test a new silicon probe known as Neuropixels to meet this need. Each probe has 384 recording channels that can programmably address 960 complementary metal–oxide–semiconductor (CMOS) processing-compatible low-impedance TiN sites that tile a single 10-mm long, 70 × 20-μm cross-section shank. The 6 × 9-mm probe base is fabricated with the shank on a single chip. Voltage signals are filtered, amplified, multiplexed and digitized on the base, allowing the direct transmission of noise-free digital data from the probe. The combination of dense recording sites and high channel count yielded well-isolated spiking activity from hundreds of neurons per probe implanted in mice and rats. Using two probes, more than 700 well-isolated single neurons were recorded simultaneously from five brain structures in an awake mouse. The fully integrated functionality and small size of Neuropixels probes allowed large populations of neurons from several brain structures to be recorded in freely moving animals. This combination of high-performance electrode technology and scalable chip fabrication methods opens a path towards recording of brain-wide neural activity during behaviour.


PLOS Computational Biology | 2012

Functional Connectivity and Tuning Curves in Populations of Simultaneously Recorded Neurons

Ian H. Stevenson; Brian M. London; Emily R. Oby; Nicholas A. Sachs; Jacob Reimer; Bernhard Englitz; Stephen V. David; Shihab A. Shamma; Timothy J. Blanche; Kenji Mizuseki; Amin Zandvakili; Nicholas G. Hatsopoulos; Lee E. Miller; Konrad P. Körding

How interactions between neurons relate to tuned neural responses is a longstanding question in systems neuroscience. Here we use statistical modeling and simultaneous multi-electrode recordings to explore the relationship between these interactions and tuning curves in six different brain areas. We find that, in most cases, functional interactions between neurons provide an explanation of spiking that complements and, in some cases, surpasses the influence of canonical tuning curves. Modeling functional interactions improves both encoding and decoding accuracy by accounting for noise correlations and features of the external world that tuning curves fail to capture. In cortex, modeling coupling alone allows spikes to be predicted more accurately than tuning curve models based on external variables. These results suggest that statistical models of functional interactions between even relatively small numbers of neurons may provide a useful framework for examining neural coding.


Journal of Neuroscience Methods | 2006

Nyquist interpolation improves neuron yield in multiunit recordings

Timothy J. Blanche; Nicholas V. Swindale

Multiunit electrodes, in particular tetrodes and polytrodes, are able to isolate action potentials from many neurons simultaneously. However, inaccuracies in the post-acquisition reconstruction of recorded spike waveforms can affect the reliability of spike detection and sorting. Here we show that bandlimited interpolation with sample-and-hold delay correction reduces waveform variability, leading to improved reliability of threshold-based event detection and improved spike sorting accuracy. Interpolation of continuously acquired data is, however, computationally expensive. A cost-benefit analysis was made of varying sampling rates from 12.5 kHz (no interpolation) to 100 kHz (eight times oversampling, with respect to the Nyquist frequency), taking into consideration the final application of the data. For most purposes, including spike sorting, sample rates below 25 kHz with bandlimited interpolation to 50 kHz were ideal, with negligible gains above this rate. A practical benefit, especially for large electrode arrays, is that the bandwidth and storage requirements can be greatly reduced by using data acquisition rates at or slightly above the Nyquist frequency.


Frontiers in Neuroinformatics | 2008

Python for large-scale electrophysiology

Martin A. Spacek; Timothy J. Blanche; Nicholas V. Swindale

Electrophysiology is increasingly moving towards highly parallel recording techniques which generate large data sets. We record extracellularly in vivo in cat and rat visual cortex with 54-channel silicon polytrodes, under time-locked visual stimulation, from localized neuronal populations within a cortical column. To help deal with the complexity of generating and analysing these data, we used the Python programming language to develop three software projects: one for temporally precise visual stimulus generation (“dimstim”); one for electrophysiological waveform visualization and spike sorting (“spyke”); and one for spike train and stimulus analysis (“neuropy”). All three are open source and available for download (http://swindale.ecc.ubc.ca/code). The requirements and solutions for these projects differed greatly, yet we found Python to be well suited for all three. Here we present our software as a showcase of the extensive capabilities of Python in neuroscience.


Journal of Neuroscience Methods | 2015

Strategies for optical control and simultaneous electrical readout of extended cortical circuits.

Peter Ledochowitsch; Azadeh Yazdan-Shahmorad; K.E. Bouchard; Camilo Diaz-Botia; Timothy L. Hanson; Jiwei He; Bryan A. Seybold; E. Olivero; Elizabeth A.K. Phillips; Timothy J. Blanche; Christoph E. Schreiner; Andrea Hasenstaub; E.F. Chang; Philip N. Sabes; Michel M. Maharbiz

BACKGROUND To dissect the intricate workings of neural circuits, it is essential to gain precise control over subsets of neurons while retaining the ability to monitor larger-scale circuit dynamics. This requires the ability to both evoke and record neural activity simultaneously with high spatial and temporal resolution. NEW METHOD In this paper we present approaches that address this need by combining micro-electrocorticography (μECoG) with optogenetics in ways that avoid photovoltaic artifacts. RESULTS We demonstrate that variations of this approach are broadly applicable across three commonly studied mammalian species - mouse, rat, and macaque monkey - and that the recorded μECoG signal shows complex spectral and spatio-temporal patterns in response to optical stimulation. COMPARISON WITH EXISTING METHODS While optogenetics provides the ability to excite or inhibit neural subpopulations in a targeted fashion, large-scale recording of resulting neural activity remains challenging. Recent advances in optical physiology, such as genetically encoded Ca(2+) indicators, are promising but currently do not allow simultaneous recordings from extended cortical areas due to limitations in optical imaging hardware. CONCLUSIONS We demonstrate techniques for the large-scale simultaneous interrogation of cortical circuits in three commonly used mammalian species.


PLOS ONE | 2013

Construction of Direction Selectivity through Local Energy Computations in Primary Visual Cortex

Timm Lochmann; Timothy J. Blanche; Daniel A. Butts

Despite detailed knowledge about the anatomy and physiology of neurons in primary visual cortex (V1), the large numbers of inputs onto a given V1 neuron make it difficult to relate them to the neuron’s functional properties. For example, models of direction selectivity (DS), such as the Energy Model, can successfully describe the computation of phase-invariant DS at a conceptual level, while leaving it unclear how such computations are implemented by cortical circuits. Here, we use statistical modeling to derive a description of DS computation for both simple and complex cells, based on physiologically plausible operations on their inputs. We present a new method that infers the selectivity of a neuron’s inputs using extracellular recordings in macaque in the context of random bar stimuli and natural movies in cat. Our results suggest that DS is initially constructed in V1 simple cells through summation and thresholding of non-DS inputs with appropriate spatiotemporal relationships. However, this de novo construction of DS is rare, and a majority of DS simple cells, and all complex cells, appear to receive both excitatory and suppressive inputs that are already DS. For complex cells, these numerous DS inputs typically span a fraction of their overall receptive fields and have similar spatiotemporal tuning but different phase and spatial positions, suggesting an elaboration to the Energy Model that incorporates spatially localized computation. Furthermore, we demonstrate how these computations might be constructed from biologically realizable components, and describe a statistical model consistent with the feed-forward framework suggested by Hubel and Wiesel.


design, automation, and test in europe | 2013

Cyborg insects, neural interfaces and other things: building interfaces between the synthetic and the multicellular

J. Van Kleef; Travis L. Massey; Peter Ledochowitsch; Rikky Muller; R. Tiefenauer; Timothy J. Blanche; Hirotaka Sato; Michel M. Maharbiz

In the original demonstration of insect flight control [2,4], flight initiation, cessation and elevation control were accomplished through neural stimulus of the brain which elicited, suppressed or modulated wing oscillation. Turns were triggered through the direct muscular stimulus of either of the basalar muscles. We characterized the response times, success rates, and free-flight trajectories elicited by our neural control systems in remotely controlled beetles.


Journal of Neurophysiology | 2005

Polytrodes: High-Density Silicon Electrode Arrays for Large-Scale Multiunit Recording

Timothy J. Blanche; Martin A. Spacek; Jamille F. Hetke; Nicholas V. Swindale


international conference on solid state sensors actuators and microsystems | 2013

Nanoflex for neural nanoprobes

Peter Ledochowitsch; R. Tiefenauer; B. Pepin; Michel M. Maharbiz; Timothy J. Blanche


international conference of the ieee engineering in medicine and biology society | 2014

High-density optrodes for multi-scale electrophysiology and optogenetic stimulation.

Maysamreza Chamanzar; Mykhailo Borysov; Michel M. Maharbiz; Timothy J. Blanche

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Martin A. Spacek

University of British Columbia

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Nicholas V. Swindale

University of British Columbia

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J. Van Kleef

University of California

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R. Tiefenauer

University of California

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Rikky Muller

University of California

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Albert K. Lee

Howard Hughes Medical Institute

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