2022 Swanson School Summary of Faculty Research

Page 9

BIOENGINEERING

Dr. Aaron Batista’s research group examines the neural control of visually-guided action. We seek to understand basic principles that underlie the function of the cerebral cortex, ur research is those the discoveries Critical Stability Task (CST), wherein subjects must and to use to improve the function of clinical brain-computer interface vision (BCI) and/or tactile) in order to make corrective actions to maintain a systems as a treatment for paralysis. Here we describe two of the research puter display several seconds. Corrective actions to move the cursor endeavorsfor taking place within the laboratory.

Aaron Batista, PhD Professor

RESEARCH LETTER a

Neural activity BCI mapping

Units

302 Benedum Hall | 3700 sensory-driven O’Hara Street | Pittsburgh, PA 15261 at requires continuous motor interaction with a simplified he taskP:can be scaled in the future to embody more complex interactions. 412-383-5394 redictions about neural responses in sensory and motor areas of the aaron.batista@pitt.edu rt to integrate sensory information for the control of ongoing movements. https://smile.pitt.edu e combine multielectrode neurophysiology with quantitative analysis of organized to inform a computational model of sensory-motor interaction Sensory-Motor Integration Laboratory and Engineering

N

Time

I

d movements, or via BCI control. The CST was originally formulated [31] Neural constraints on learning ynamics governed by the differential equation,

b

Unit 1 Unit 2 Unit 3

Intrinsic manifold

Unit 1 FR

we learn(with new skills? are examiningthe the neural underpinnings of learning using a !novel ! f the cursor x>0 We representing cursor to the right of center), paradigm, brain-computer interface control, which allows us to study the neural basis of generated by the subject, and t=0 indicates the start of the trial. The learning more directly than is possible with arm movements. can directly request of of the parameter, !. Because ! is positive, the cursorWeposition will diverge animals (control that they generate specific patterns of neural across a population sating our actions commands) are issued byactivity the subject [89]. Asof ! 100 or so neurons. We can then observe whether the animals are capable of generating r, and the CST is more challenging. The maximum ! (which has units of the patterns we requested. Mathematical tools drawn from machine learning enable us ntrol the cursor is related to the bandwidth of the stabilized closed-loop to predict which new neural activity patterns (and, corresponding skills) are relatively easy tability value” (CIV) since, beyond that value, the closed-loop system learn effective (a day or so),isand will be more difficult (a week or two), just by examining V, the to more thewhich subject’s sensorimotor control. the pre-existing patterns of neural activity prior to learning. e investigation of motor control that requires sensory feedback, consider This work pursuedfrom along with colleagues Stevesuch Chasethat of Carnegie Mellon d to keep the iscursor drifting, i.e., Byron whatYuisand!(!) the cursor University. It is0) currently supported by an NIHthat R01 grant the National of a into Eq. (1) shows the from subject must Institute generate ion (!"(!) !" = Child Health and Human Development. ual and opposite to the current cursor position: ! ! = −!(!). Thus, st know the state of the cursor. A subject who could issue this perfect 00% accurate) would be able to keep the cursor completely still. and is Multisensory not possibleIntegration becauseinofAction sensorimotor noise and nervous system will continuously and control – keeping it thing fromwith rapidly Our actions aremove, shaped by our maintaining perceptual we see, hear, and feel the which going experience. sensory-guided motor action (Fig. 1). With adequate sensory Consider the fine adjustments we are interacting, and our movements ommand signalmakes that tokeeps cursor about an equilibrium a violinist play thethe correct pitch. centered are adjusted on-the-fly to achieve ourpoint subject’s CIV. A subject’s CIV captures important aspects ofhow their Sensory experience is often multimodal: objectives. We seek to understand peed and accuracy with which he or she can react to sensory input. The ective e CIV s an ure of everal pe of our ensory ), the nts or Fig. 1. Two CST trials. 1st row: d the (schematic of) visual [left] and (spectrogram of) vibrotactile [right] d less nd feedback. 2 row: cursor and hand motor position traces. Bottom left: raster of faster DEPARTMENT OF BIOENGINEERING multichannel neural activity from M1. ity or stablish the CIV for each animal under each of the configurations of

2 3 1

Excitatory

c

Un

it 2

Dimensi Neural a Intrinsic Kinemat

Inhibitory

Outside-manifold perturbation control space

FR

d

Cursor veloc

the brain uses sensory information to guide action, we train animals Intuitiveto perform control space challenging balancing tasks in a virtual environment. We record from motor and Within-manifold perturbation control space sensory areas, in the hope of discovering Un Un it 2 areas communicate to send it 2 how the FR FR FR 3 t i n U detailed sensory information to sculpt the activity of motor neurons. Figure 1 | Using a brain–computer interface to study Unit 1 FR

!"

Why are some new skills learned relatively quickly, while others take far longer? What

=changes ! ! ! in+ ! ,!!!!!! > 0,!!!! the!brain when we learn, ≥ so 0 that pre-existing abilities are retained even as(1)

Unit 1 FR

!" !

moved the BCI cursor (blue circle) to acquire targets (g This work is pursued along with my Pitt modulating their neural activity. The BCI mapping cons Bioengineering colleague PattoLoughlin. the population neural activity the intrinsic manifold from the intrinsic manifold to cursor Itthen is supported by an NIH R01 grant from kinematics u ThisNational two-stepInstitute procedureofallowed us to perform the Child Health and outside-m (blue arrows) and within-manifold perturbations (red ar Human Development. b, A simplified, conceptual illustration using three electr

(FR) observed on each electrode in a brief epoch define in the neural space. The intrinsic manifold (yellow plan prominent patterns of co-modulation. Neural activity m space (black line) to specify cursor velocity. c, Control s mapping (black arrow), within-manifold perturbation (re manifold perturbation (blue arrow). d, Neural 9 activity ( different cursor velocities (open circles and inset) under Arrow colours as in c.


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Xiayun (Sharon) Zhao, PhD

37min
pages 133-154

Jörg M.K. Wiezorek, PhD

2min
page 131

Wei Xiong, PhD, D.Eng

1min
page 132

Guofeng Wang, PhD

2min
page 130

Jeffrey Vipperman, PhD

2min
page 129

Albert C. To, PhD

1min
page 128

Patrick Smolinski, PhD

1min
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Inanc Senocak, PhD

1min
page 126

David Schmidt, PhD

2min
page 125

Ian Nettleship, PhD

2min
page 124

Scott X. Mao, PhD

2min
page 123

Jung-Kun Lee, PhD

3min
page 122

Tevis D. B. Jacobs, PhD

1min
page 121

William W. Clark, PhD

2min
page 118

Daniel G. Cole, PhD, PE

2min
page 119

Katherine Hornbostel, PhD

1min
page 120

Minking K. Chyu, PhD

2min
page 117

Heng Ban, PhD, PE

2min
page 115

Hessam Babaee, PhD

2min
page 114

Michael D. Sherwin, PhD, P.E

2min
pages 111-113

Markus Chmielus, PhD

1min
page 116

M. Ravi Shankar, PhD

2min
page 110

Amin Rahimian, PhD

1min
page 108

Jayant Rajgopal, PhD, P.E

2min
page 109

Lisa M. Maillart, PhD

2min
page 107

Paul W. Leu, PhD

1min
page 106

Daniel R. Jiang, PhD

1min
page 105

Oliver Hinder, PhD

2min
page 104

Joel M. Haight, PhD, P.E., CIH, CSP

2min
page 103

Renee M. Clark, PhD

2min
page 102

Karen M. Bursic, PhD

1min
page 100

Youngjae Chun, PhD

3min
page 101

Mary Besterfield-Sacre, PhD

2min
page 99

Minhee Yun, PhD

2min
pages 96-97

Mostafa Bedewy, PhD

1min
page 98

Nathan Youngblood, PhD

2min
page 95

Jun Yang, PhD

3min
page 94

Gregory F. Reed, PhD

3min
page 91

Feng Xiong, PhD

2min
page 93

Inhee Lee, PhD

2min
page 88

Guangyong Li, PhD

2min
page 89

Alexis Kwasinski, PhD

2min
page 87

Hong Koo Kim, PhD

2min
page 86

Alex K. Jones, PhD

3min
page 85

Brandon M. Grainger, PhD

2min
page 83

Alan D. George, PhD, FIEEE

2min
page 82

Masoud Barati, PhD

2min
page 81

Mai Abdelhakim, PhD

1min
page 80

Meng Wang, PhD

1min
pages 78-79

Radisav Vidic, PhD

2min
page 77

Julie M. Vandenbossche, PhD, PE

2min
page 76

Aleksandar Stevanovic, PhD, P.E., FASCE

2min
page 75

Piervincenzo Rizzo, PhD

2min
page 74

Xu Liang, PhD

2min
page 71

Jeen-Shang Lin, PhD, P.E

2min
page 72

Carla Ng, PhD

2min
page 73

Sarah Haig, PhD

2min
page 69

Lei Fang, PhD

3min
page 66

Andrew P. Bunger, PhD

2min
page 65

Alessandro Fascetti, PhD

2min
page 67

Melissa Bilec, PhD

2min
page 64

Judith C. Yang, PhD

2min
pages 61-63

Götz Veser, PhD

2min
page 59

Christopher E. Wilmer, PhD

1min
page 60

Sachin S. Velankar, PhD

2min
page 58

Tagbo Niepa, PhD

2min
page 55

Jason E. Shoemaker, PhD

1min
page 57

Giannis Mpourmpakis, PhD

2min
page 54

Badie Morsi, PhD

3min
page 53

James R. McKone, PhD

1min
page 52

Lei Li, PhD

1min
page 50

Steve R. Little, PhD

2min
page 51

John A. Keith, PhD

2min
page 49

J. Karl Johnson, PhD

2min
page 48

Susan Fullerton, PhD

2min
page 47

Robert M. Enick, PhD

2min
page 46

Eric J. Beckman, PhD

2min
page 45

Ipsita Banerjee, PhD

2min
page 44

Ioannis Zervantonakis, PhD

2min
pages 41-43

Savio L-Y. Woo, PhD, D.Sc., D.Eng

2min
page 40

Justin S. Weinbaum, PhD

1min
page 39

Jonathan Vande Geest, PhD

1min
page 37

David A. Vorp, PhD

2min
page 38

Sanjeev G. Shroff, PhD

2min
page 34

Gelsy Torres-Oviedo, PhD

3min
page 36

George Stetten, MD, PhD

2min
page 35

Joseph Thomas Samosky, PhD

2min
page 33

Warren C. Ruder, PhD

1min
page 32

Partha Roy, PhD

2min
page 31

Prashant N. Kumta, PhD

2min
page 27

Spandan Maiti, PhD

2min
page 29

Mark Redfern, PhD

2min
page 30

Patrick J. Loughlin, PhD

2min
page 28

Mangesh Kulkarni, PhD

1min
page 26

Takashi “TK” Kozai, PhD

2min
page 25

Katrina M. Knight, PhD

2min
page 24

Bistra Iordanova, PhD

1min
page 23

Alan D. Hirschman, PhD

1min
page 21

Mark Gartner, PhD

1min
page 20

William Federspiel, PhD

2min
page 18

Neeraj J. Gandhi, PhD

2min
page 19

Tamer S. Ibrahim, PhD

5min
page 22

Richard E. Debski, PhD

1min
page 17

Lance A. Davidson, PhD

2min
page 16

Rakié Cham, PhD

2min
page 13

Steven Abramowitch, PhD

2min
page 8

Moni Kanchan Datta, PhD

2min
page 15

Bryan N. Brown, PhD

1min
page 12

Kurt E. Beschorner, PhD

2min
page 10

Harvey Borovetz, PhD

1min
page 11

Aaron Batista, PhD

4min
page 9

Tracy Cui, PhD

2min
page 14
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