Diomedi, Stefano
  
(2021)
Neural states in parietal areas during arm reaching, [Dissertation thesis], Alma Mater Studiorum Università di Bologna. 
 Dottorato di ricerca in 
Scienze biomediche e neuromotorie, 34 Ciclo. DOI 10.48676/unibo/amsdottorato/9991.
  
 
  
  
        
        
        
  
  
  
  
  
  
  
    
  
    
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      Abstract
      Since the first subdivisions of the brain into macro regions, it has always been thought a priori that,
given the heterogeneity of neurons, different areas host specific functions and process unique
information in order to generate a behaviour. Moreover, the various sensory inputs coming from
different sources (eye, skin, proprioception) flow from one macro area to another, being constantly
computed and updated. Therefore, especially for non-contiguous cortical areas, it is not expected to
find the same information. From this point of view, it would be inconceivable that the motor and the
parietal cortices, diversified by the information encoded and by the anatomical position in the brain,
could show very similar neural dynamics. With the present thesis, by analyzing the population activity
of parietal areas V6A and PEc with machine learning methods, we argue that a simplified view of the
brain organization do not reflect the actual neural processes.
We reliably detected a number of neural states that were tightly linked to distinct periods of the task
sequence, i.e. the planning and execution of movement and the holding of target as already observed
in motor cortices. The states before and after the movement could be further segmented into two states
related to different stages of movement planning and arm posture processing. Rather unexpectedly,
we found that activity during the movement could be parsed into two states of equal duration
temporally linked to the acceleration and deceleration phases of the arm. Our findings suggest that,
at least during arm reaching in 3D space, the posterior parietal cortex (PPC) shows low-level
population neural dynamics remarkably similar to those found in the motor cortices. In addition, the
present findings suggest that computational processes in PPC could be better understood if studied
using a dynamical system approach rather than studying a mosaic of single units.
     
    
      Abstract
      Since the first subdivisions of the brain into macro regions, it has always been thought a priori that,
given the heterogeneity of neurons, different areas host specific functions and process unique
information in order to generate a behaviour. Moreover, the various sensory inputs coming from
different sources (eye, skin, proprioception) flow from one macro area to another, being constantly
computed and updated. Therefore, especially for non-contiguous cortical areas, it is not expected to
find the same information. From this point of view, it would be inconceivable that the motor and the
parietal cortices, diversified by the information encoded and by the anatomical position in the brain,
could show very similar neural dynamics. With the present thesis, by analyzing the population activity
of parietal areas V6A and PEc with machine learning methods, we argue that a simplified view of the
brain organization do not reflect the actual neural processes.
We reliably detected a number of neural states that were tightly linked to distinct periods of the task
sequence, i.e. the planning and execution of movement and the holding of target as already observed
in motor cortices. The states before and after the movement could be further segmented into two states
related to different stages of movement planning and arm posture processing. Rather unexpectedly,
we found that activity during the movement could be parsed into two states of equal duration
temporally linked to the acceleration and deceleration phases of the arm. Our findings suggest that,
at least during arm reaching in 3D space, the posterior parietal cortex (PPC) shows low-level
population neural dynamics remarkably similar to those found in the motor cortices. In addition, the
present findings suggest that computational processes in PPC could be better understood if studied
using a dynamical system approach rather than studying a mosaic of single units.
     
  
  
    
    
      Tipologia del documento
      Tesi di dottorato
      
      
      
      
        
      
        
          Autore
          Diomedi, Stefano
          
        
      
        
          Supervisore
          
          
        
      
        
      
        
          Dottorato di ricerca
          
          
        
      
        
      
        
          Ciclo
          34
          
        
      
        
          Coordinatore
          
          
        
      
        
          Settore disciplinare
          
          
        
      
        
          Settore concorsuale
          
          
        
      
        
          Parole chiave
          Hidden Markov Models, Parietal Cortex, Neural States, 
V6A, PEc, Neural Dynamics
          
        
      
        
          URN:NBN
          
          
        
      
        
          DOI
          10.48676/unibo/amsdottorato/9991
          
        
      
        
          Data di discussione
          25 Novembre 2021
          
        
      
      URI
      
      
     
   
  
    Altri metadati
    
      Tipologia del documento
      Tesi di dottorato
      
      
      
      
        
      
        
          Autore
          Diomedi, Stefano
          
        
      
        
          Supervisore
          
          
        
      
        
      
        
          Dottorato di ricerca
          
          
        
      
        
      
        
          Ciclo
          34
          
        
      
        
          Coordinatore
          
          
        
      
        
          Settore disciplinare
          
          
        
      
        
          Settore concorsuale
          
          
        
      
        
          Parole chiave
          Hidden Markov Models, Parietal Cortex, Neural States, 
V6A, PEc, Neural Dynamics
          
        
      
        
          URN:NBN
          
          
        
      
        
          DOI
          10.48676/unibo/amsdottorato/9991
          
        
      
        
          Data di discussione
          25 Novembre 2021
          
        
      
      URI
      
      
     
   
  
  
  
  
  
    
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