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Dive into the research topics where Tyler Ard is active.

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Featured researches published by Tyler Ard.


Stroke | 2008

Think to Move: a Neuromagnetic Brain-Computer Interface (BCI) System for Chronic Stroke

Ethan R. Buch; Cornelia Weber; Leonardo G. Cohen; Christoph Braun; Michael A. Dimyan; Tyler Ard; Jürgen Mellinger; Andrea Caria; Surjo R. Soekadar; Alissa Fourkas; Niels Birbaumer

Background and Purpose— Stroke is a leading cause of long-term motor disability among adults. Present rehabilitative interventions are largely unsuccessful in improving the most severe cases of motor impairment, particularly in relation to hand function. Here we tested the hypothesis that patients experiencing hand plegia as a result of a single, unilateral subcortical, cortical or mixed stroke occurring at least 1 year previously, could be trained to operate a mechanical hand orthosis through a brain-computer interface (BCI). Methods— Eight patients with chronic hand plegia resulting from stroke (residual finger extension function rated on the Medical Research Council scale=0/5) were recruited from the Stroke Neurorehabilitation Clinic, Human Cortical Physiology Section of the National Institute for Neurological Disorders and Stroke (NINDS) (n=5) and the Clinic of Neurology of the University of Tübingen (n=3). Diagnostic MRIs revealed single, unilateral subcortical, cortical or mixed lesions in all patients. A magnetoencephalography-based BCI system was used for this study. Patients participated in between 13 to 22 training sessions geared to volitionally modulate &mgr; rhythm amplitude originating in sensorimotor areas of the cortex, which in turn raised or lowered a screen cursor in the direction of a target displayed on the screen through the BCI interface. Performance feedback was provided visually in real-time. Successful trials (in which the cursor made contact with the target) resulted in opening/closing of an orthosis attached to the paralyzed hand. Results— Training resulted in successful BCI control in 6 of 8 patients. This control was associated with increased range and specificity of &mgr; rhythm modulation as recorded from sensors overlying central ipsilesional (4 patients) or contralesional (2 patients) regions of the array. Clinical scales used to rate hand function showed no significant improvement after training. Conclusions— These results suggest that volitional control of neuromagnetic activity features recorded over central scalp regions can be achieved with BCI training after stroke, and used to control grasping actions through a mechanical hand orthosis.


Scientific Data | 2018

A large, open source dataset of stroke anatomical brain images and manual lesion segmentations

Julia Anglin; Nick W. Banks; Matt Sondag; Kaori L. Ito; Hosung Kim; Jennifer Chan; Joyce Ito; Connie Jung; Nima Khoshab; Stephanie Lefebvre; William Nakamura; David Saldana; Allie Schmiesing; Cathy Tran; Danny Vo; Tyler Ard; Panthea Heydari; Bokkyu Kim; Lisa Aziz-Zadeh; Steven C. Cramer; Jingchun Liu; Surjo R. Soekadar; Jan Egil Nordvik; Lars T. Westlye; Junping Wang; Carolee J. Winstein; Chunshui Yu; Lei Ai; Bonhwang Koo; R. Cameron Craddock

Stroke is the leading cause of adult disability worldwide, with up to two-thirds of individuals experiencing long-term disabilities. Large-scale neuroimaging studies have shown promise in identifying robust biomarkers (e.g., measures of brain structure) of long-term stroke recovery following rehabilitation. However, analyzing large rehabilitation-related datasets is problematic due to barriers in accurate stroke lesion segmentation. Manually-traced lesions are currently the gold standard for lesion segmentation on T1-weighted MRIs, but are labor intensive and require anatomical expertise. While algorithms have been developed to automate this process, the results often lack accuracy. Newer algorithms that employ machine-learning techniques are promising, yet these require large training datasets to optimize performance. Here we present ATLAS (Anatomical Tracings of Lesions After Stroke), an open-source dataset of 304 T1-weighted MRIs with manually segmented lesions and metadata. This large, diverse dataset can be used to train and test lesion segmentation algorithms and provides a standardized dataset for comparing the performance of different segmentation methods. We hope ATLAS release 1.1 will be a useful resource to assess and improve the accuracy of current lesion segmentation methods.


ieee virtual reality conference | 2017

NIVR: Neuro imaging in virtual reality

Tyler Ard; David M. Krum; Thai Phan; Dominique Duncan; Ryan Essex; Mark T. Bolas; Arthur W. Toga

Visualization is a critical component of neuroimaging, and how to best view data that is naturally three dimensional is a long standing question in neuroscience. Many approaches, programs, and techniques have been developed specifically for neuroimaging. However, exploration of 3D information through a 2D screen is inherently limited. Many neuroscientific researchers hope that with the recent commercialization and popularization of VR, it can offer the next-step in data visualization and exploration. Neuro Imaging in Virtual Reality (NIVR), is a visualization suite that employs various immersive visualizations to represent neuroimaging information in VR. Some established techniques, such as raymarching volume visualization, are paired with newer techniques, such as near-field rendering, to provide a broad basis of how we can leverage VR to improve visualization and navigation of neuroimaging data. Several of the neuroscientific visualization approaches presented are, to our knowledge, the first of their kind. NIVR offers not only an exploration of neuroscientific data visualization, but also a tool to expose and educate the public regarding recent advancements in the field of neuroimaging. By providing an engaging experience to explore new techniques and discoveries in neuroimaging, we hope to spark scientific interest through a broad audience. Furthermore, neuroimaging offers deep and expansive datasets; a single scan can involve several gigabytes of information. Visualization and exploration of this type of information can be challenging, and real-time exploration of this information in VR even more so. NIVR explores pathways which make this possible, and offers preliminary stereo visualizations of these types of massive data.


Nature Neuroscience | 2018

Integration of gene expression and brain-wide connectivity reveals the multiscale organization of mouse hippocampal networks

Michael S. Bienkowski; Ian Bowman; Monica Y. Song; Lin Gou; Tyler Ard; Kaelan Cotter; Muye Zhu; Nora L. Benavidez; Seita Yamashita; Jaspar Abu-Jaber; Sana Azam; Darrick Lo; Nicholas N. Foster; Houri Hintiryan; Hong-Wei Dong

Understanding the organization of the hippocampus is fundamental to understanding brain function related to learning, memory, emotions, and diseases such as Alzheimer’s disease. Physiological studies in humans and rodents have suggested that there is both structural and functional heterogeneity along the longitudinal axis of the hippocampus. However, the recent discovery of discrete gene expression domains in the mouse hippocampus has provided the opportunity to re-evaluate hippocampal connectivity. To integrate mouse hippocampal gene expression and connectivity, we mapped the distribution of distinct gene expression patterns in mouse hippocampus and subiculum to create the Hippocampus Gene Expression Atlas (HGEA). Notably, previously unknown subiculum gene expression patterns revealed a hidden laminar organization. Guided by the HGEA, we constructed the most detailed hippocampal connectome available using Mouse Connectome Project (http://www.mouseconnectome.org) tract tracing data. Our results define the hippocampus’ multiscale network organization and elucidate each subnetwork’s unique brain-wide connectivity patterns.Bienkowski et al. have created a new subregional atlas of the mouse hippocampus that integrates gene expression with anatomical connectivity to reveal the multiscale organization of the hippocampus and its connections throughout the brain.


Journal of Digital Imaging | 2018

Using Virtual Reality to Improve Performance and User Experience in Manual Correction of MRI Segmentation Errors by Non-experts

Dominique Duncan; Rachael Garner; Ivan Zrantchev; Tyler Ard; Bradley Newman; Adam Saslow; Emily Wanserski; Arthur W. Toga

Segmentation of MRI scans is a critical part of the workflow process before we can further analyze neuroimaging data. Although there are several automatic tools for segmentation, no segmentation software is perfectly accurate, and manual correction by visually inspecting the segmentation errors is required. The process of correcting these errors is tedious and time-consuming, so we present a novel method of performing this task in a head-mounted virtual reality interactive system with a new software, Virtual Brain Segmenter (VBS). We provide the results of user testing on 30 volunteers to show the benefits of our tool as a more efficient, intuitive, and engaging alternative compared with the current method of correcting segmentation errors.


ieee virtual reality conference | 2017

VRAIN: Virtual reality assisted intervention for neuroimaging

Dominique Duncan; Bradley Newman; Adam Saslow; Emily Wanserski; Tyler Ard; Ryan Essex; Arthur W. Toga

The USC Stevens Neuroimaging and Informatics Institute in the Laboratory of Neuro Imaging (http://loni.usc.edu) has the largest collection/repository of neuroanatomical MRI scans in the world and is at the forefront of both brain imaging and data storage/processing technology. One of our workflow processes involves algorithmic segmentation of MRI scans into labeled anatomical regions (using FreeSurfer, currently the best software for this purpose). This algorithm is imprecise, and users must tediously correct errors manually by using a mouse and keyboard to edit individual MRI slices at a time. We demonstrate preliminary work to improve efficiency of this task by translating it into 3 dimensions and utilizing virtual reality user interfaces to edit multiple slices of data simultaneously.


bioRxiv | 2017

The Anatomical Tracings of Lesions After Stroke (ATLAS) Dataset - Release 1.1

Julia Anglin; Nick W. Banks; Matt Sondag; Kaori L. Ito; Hosung Kim; Jennifer Chan; Joyce Ito; Connie Jung; Stephanie Lefebvre; William Nakamura; David Saldana; Allie Schmiesing; Cathy Tran; Danny Vo; Tyler Ard; Panthea Heydari; Bokkyu Kim; Lisa Aziz-Zadeh; Steven C. Cramer; Jingchun Liu; Surjo R. Soekadar; Jan-Egil Nordvik; Lars T. Westlye; Junping Wang; Carolee J. Winstein; Chunshui Yu; Lei Ai; Bonhwang Koo; R. Cameron Craddock; Michael Miham

Stroke is the leading cause of adult disability worldwide, with up to two-thirds of individuals experiencing long-term disabilities. Large-scale neuroimaging studies have shown promise in identifying robust biomarkers (e.g., measures of brain structure) of long-term stroke recovery following rehabilitation. However, analyzing large rehabilitation-related datasets is problematic due to barriers in accurate stroke lesion segmentation. Manually-traced lesions are currently the gold standard for lesion segmentation on T1-weighted MRIs, but are labor intensive and require anatomical expertise. While algorithms have been developed to automate this process, the results often lack accuracy. Newer algorithms that employ machine-learning techniques are promising, yet these require large training datasets to optimize performance. Here we present ATLAS (Anatomical Tracings of Lesions After Stroke), an open-source dataset of 304 T1-weighted MRIs with manually segmented lesions and metadata. This large, diverse dataset can be used to train and test lesion segmentation algorithms and provides a standardized dataset for comparing the performance of different segmentation methods. We hope ATLAS release 1.1 will be a useful resource to assess and improve the accuracy of current lesion segmentation methods.Stroke is the leading cause of adult disability worldwide, with up to two-thirds of individuals experiencing long-term disabilities. Large-scale neuroimaging studies have shown promise in identifying robust biomarkers (e.g., measures of brain structure) of stroke recovery. However, analyzing large datasets is problematic due to barriers in accurate stroke lesion segmentation. Manually-traced lesions are currently the gold standard for lesion segmentation, but are labor intensive and require anatomical expertise. While algorithms have been developed to automate this process, the results often lack accuracy. Newer algorithms that employ machine-learning techniques are promising, yet these require large training datasets to optimize performance. Here we present ATLAS (Anatomical Tracings of Lesions After Stroke), an open-source dataset of 304 T1-weighted MRIs with manually segmented lesions and metadata. This large, diverse dataset can be used to train and test lesion segmentation algorithms and provides a standardized dataset for comparing the performance of different segmentation methods. We hope ATLAS R1.1 will be a useful resource to assess and improve the accuracy of current lesion segmentation methods.


Journal of Neurophysiology | 2006

Temporal patterns of field potentials in vibrissa/barrel cortex reveal stimulus orientation and shape.

Alexander M. Benison; Tyler Ard; Allison M. Crosby; Daniel S. Barth


Journal of Neurophysiology | 2005

Intracortical Pathways Mediate Nonlinear Fast Oscillation (>200 Hz) Interactions Within Rat Barrel Cortex

Richard J. Staba; Tyler Ard; Alexander M. Benison; Daniel S. Barth


Brain | 2015

Detecting Functional Connectivity During Audiovisual Integration with MEG: A Comparison of Connectivity Metrics

Tyler Ard; Frederick W. Carver; Tom Holroyd; Barry Horwitz; Richard Coppola

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Arthur W. Toga

University of Southern California

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Dominique Duncan

University of Southern California

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Alexander M. Benison

University of Colorado Boulder

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Allie Schmiesing

University of Southern California

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Bokkyu Kim

University of Southern California

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Carolee J. Winstein

University of Southern California

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Cathy Tran

University of Southern California

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Connie Jung

University of Southern California

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