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Modeling the Neural Control of Movement With a Virtual Rodent
Modeling the Neural Control of Movement With a Virtual Rodent
Modeling the Neural Control of Movement With a Virtual Rodent

상세정보

자료유형  
 학위논문 서양
최종처리일시  
20250211151443
ISBN  
9798382785479
DDC  
616
저자명  
Aldarondo, Diego.
서명/저자  
Modeling the Neural Control of Movement With a Virtual Rodent
발행사항  
[Sl] : Harvard University, 2024
발행사항  
Ann Arbor : ProQuest Dissertations & Theses, 2024
형태사항  
145 p
주기사항  
Source: Dissertations Abstracts International, Volume: 85-12, Section: B.
주기사항  
Includes supplementary digital materials.
주기사항  
Advisor: Olveczky, Bence.
학위논문주기  
Thesis (Ph.D.)--Harvard University, 2024.
초록/해제  
요약Brains control bodies to generate behavior. Nevertheless, there is a bias in motor neuroscience to overlook the body and focus on the relationship between neural activity and measurable features of behavior. While this approach has been invaluable in describing the neural representation of movement, it has largely failed to provide a comprehensive understanding of its neural control. Such an understanding requires models that causally generate animal behavior and explain the patterns of neural activity in behaving animals from principles of control theory. To probe this line of inquiry, we developed a 'virtual rodent', a biomechanical model of the rat actuated by artificial neural networks in a physics simulator, and evaluated its utility as a model of the neural control of movement. First, we studied the contextual organization of motor activity in artificial neural networks trained to perform several complex motor tasks with deep reinforcement learning. By analyzing the network population dynamics with respect to the virtual rodent's behavior, we found that the network's representation of movement qualitatively resembled observations from neural recordings in real animals and was organized into two classes encoding task-specific behavioral strategies and task-invariant motor dynamics. Second, we trained the virtual rodent to imitate the behavior of freely-moving rats, thus enabling the one-to-one comparison of neural activity recorded in real rats to the network activity of a virtual rodent performing the same behaviors. We found that the virtual rodent's network activity predicted the single-unit and population activity of the sensorimotor striatum and motor cortex better than any features of the real rat's movements, consistent with both regions implementing inverse dynamics. Moreover, we found the virtual rodent's latent variability was structured in a manner consistent with the minimal intervention principle of optimal feedback control and predicted the structure of neural variability across behaviors, suggesting that the brain may organize neural variability in accordance with this principle. Together, these results demonstrate the utility of integrating biomechanical modeling, physical simulation, and artificial control in studying the neural control of complex behavior.
일반주제명  
Neurosciences
일반주제명  
Biomedical engineering
일반주제명  
Biomechanics
키워드  
Biomechanics
키워드  
Motor control
키워드  
Motor cortex
키워드  
Simulation
키워드  
Striatum
기타저자  
Harvard University Medical Sciences
기본자료저록  
Dissertations Abstracts International. 85-12B.
전자적 위치 및 접속  
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MARC

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■1001  ▼aAldarondo,  Diego.▼0(orcid)0000-0001-8558-7557
■24510▼aModeling  the  Neural  Control  of  Movement  With  a  Virtual  Rodent
■260    ▼a[Sl]▼bHarvard  University▼c2024
■260  1▼aAnn  Arbor▼bProQuest  Dissertations  &  Theses▼c2024
■300    ▼a145  p
■500    ▼aSource:  Dissertations  Abstracts  International,  Volume:  85-12,  Section:  B.
■500    ▼aIncludes  supplementary  digital  materials.
■500    ▼aAdvisor:  Olveczky,  Bence.
■5021  ▼aThesis  (Ph.D.)--Harvard  University,  2024.
■520    ▼aBrains  control  bodies  to  generate  behavior.  Nevertheless,  there  is  a  bias  in  motor  neuroscience  to  overlook  the  body  and  focus  on  the  relationship  between  neural  activity  and  measurable  features  of  behavior.  While  this  approach  has  been  invaluable  in  describing  the  neural  representation  of  movement,  it  has  largely  failed  to  provide  a  comprehensive  understanding  of  its  neural  control.  Such  an  understanding  requires  models  that  causally  generate  animal  behavior  and  explain  the  patterns  of  neural  activity  in  behaving  animals  from  principles  of  control  theory.  To  probe  this  line  of  inquiry,  we  developed  a  'virtual  rodent',  a  biomechanical  model  of  the  rat  actuated  by  artificial  neural  networks  in  a  physics  simulator,  and  evaluated  its  utility  as  a  model  of  the  neural  control  of  movement.  First,  we  studied  the  contextual  organization  of  motor  activity  in  artificial  neural  networks  trained  to  perform  several  complex  motor  tasks  with  deep  reinforcement  learning.  By  analyzing  the  network  population  dynamics  with  respect  to  the  virtual  rodent's  behavior,  we  found  that  the  network's  representation  of  movement  qualitatively  resembled  observations  from  neural  recordings  in  real  animals  and  was  organized  into  two  classes  encoding  task-specific  behavioral  strategies  and  task-invariant  motor  dynamics.  Second,  we  trained  the  virtual  rodent  to  imitate  the  behavior  of  freely-moving  rats,  thus  enabling  the  one-to-one  comparison  of  neural  activity  recorded  in  real  rats  to  the  network  activity  of  a  virtual  rodent  performing  the  same  behaviors.  We  found  that  the  virtual  rodent's  network  activity  predicted  the  single-unit  and  population  activity  of  the  sensorimotor  striatum  and  motor  cortex  better  than  any  features  of  the  real  rat's  movements,  consistent  with  both  regions  implementing  inverse  dynamics.  Moreover,  we  found  the  virtual  rodent's  latent  variability  was  structured  in  a  manner  consistent  with  the  minimal  intervention  principle  of  optimal  feedback  control  and  predicted  the  structure  of  neural  variability  across  behaviors,  suggesting  that  the  brain  may  organize  neural  variability  in  accordance  with  this  principle.  Together,  these  results  demonstrate  the  utility  of  integrating  biomechanical  modeling,  physical  simulation,  and  artificial  control  in  studying  the  neural  control  of  complex  behavior.
■590    ▼aSchool  code:  0084.
■650  4▼aNeurosciences
■650  4▼aBiomedical  engineering
■650  4▼aBiomechanics
■653    ▼aBiomechanics
■653    ▼aMotor  control
■653    ▼aMotor  cortex
■653    ▼aSimulation
■653    ▼aStriatum
■690    ▼a0317
■690    ▼a0541
■690    ▼a0648
■71020▼aHarvard  University▼bMedical  Sciences.
■7730  ▼tDissertations  Abstracts  International▼g85-12B.
■790    ▼a0084
■791    ▼aPh.D.
■792    ▼a2024
■793    ▼aEnglish
■85640▼uhttp://www.riss.kr/pdu/ddodLink.do?id=T17161776▼nKERIS▼z이  자료의  원문은  한국교육학술정보원에서  제공합니다.

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