A Joint Modelling Approach to Analyze Risky Decisions by Means of Diffusion Tensor Imaging and Behavioural Data

Understanding dependencies between brain functioning and cognition is a challenging task which might require more than applying standard statistical models to neural and behavioural measures to be accomplished. Recent developments in computational modelling have demonstrated the advantage to formall...

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Main Authors: Marco D’Alessandro, Giuseppe Gallitto, Antonino Greco, Luigi Lombardi
Format: Article
Language:English
Published: MDPI AG 2020-03-01
Series:Brain Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3425/10/3/138
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spelling doaj-ff4f1e26e03b4ae6b2551c309dee35cd2020-11-25T00:29:06ZengMDPI AGBrain Sciences2076-34252020-03-0110313810.3390/brainsci10030138brainsci10030138A Joint Modelling Approach to Analyze Risky Decisions by Means of Diffusion Tensor Imaging and Behavioural DataMarco D’Alessandro0Giuseppe Gallitto1Antonino Greco2Luigi Lombardi3University of Trento, TN I-38068 Rovereto, ItalyUniversity of Trento, TN I-38068 Rovereto, ItalyUniversity of Trento, TN I-38068 Rovereto, ItalyUniversity of Trento, TN I-38068 Rovereto, ItalyUnderstanding dependencies between brain functioning and cognition is a challenging task which might require more than applying standard statistical models to neural and behavioural measures to be accomplished. Recent developments in computational modelling have demonstrated the advantage to formally account for reciprocal relations between mathematical models of cognition and brain functional, or structural, characteristics to relate neural and cognitive parameters on a model-based perspective. This would allow to account for both neural and behavioural data simultaneously by providing a joint probabilistic model for the two sources of information. In the present work we proposed an architecture for jointly modelling the reciprocal relation between behavioural and neural information in the context of risky decision-making. More precisely, we offered a way to relate Diffusion Tensor Imaging data to cognitive parameters of a computational model accounting for behavioural outcomes in the popular Balloon Analogue Risk Task (BART). Results show that the proposed architecture has the potential to account for individual differences in task performances and brain structural features by letting individual-level parameters to be modelled by a joint distribution connecting both sources of information. Such a joint modelling framework can offer interesting insights in the development of computational models able to investigate correspondence between decision-making and brain structural connectivity.https://www.mdpi.com/2076-3425/10/3/138risk takingdiffusion tensor imaginghierarchical bayesian modelling
collection DOAJ
language English
format Article
sources DOAJ
author Marco D’Alessandro
Giuseppe Gallitto
Antonino Greco
Luigi Lombardi
spellingShingle Marco D’Alessandro
Giuseppe Gallitto
Antonino Greco
Luigi Lombardi
A Joint Modelling Approach to Analyze Risky Decisions by Means of Diffusion Tensor Imaging and Behavioural Data
Brain Sciences
risk taking
diffusion tensor imaging
hierarchical bayesian modelling
author_facet Marco D’Alessandro
Giuseppe Gallitto
Antonino Greco
Luigi Lombardi
author_sort Marco D’Alessandro
title A Joint Modelling Approach to Analyze Risky Decisions by Means of Diffusion Tensor Imaging and Behavioural Data
title_short A Joint Modelling Approach to Analyze Risky Decisions by Means of Diffusion Tensor Imaging and Behavioural Data
title_full A Joint Modelling Approach to Analyze Risky Decisions by Means of Diffusion Tensor Imaging and Behavioural Data
title_fullStr A Joint Modelling Approach to Analyze Risky Decisions by Means of Diffusion Tensor Imaging and Behavioural Data
title_full_unstemmed A Joint Modelling Approach to Analyze Risky Decisions by Means of Diffusion Tensor Imaging and Behavioural Data
title_sort joint modelling approach to analyze risky decisions by means of diffusion tensor imaging and behavioural data
publisher MDPI AG
series Brain Sciences
issn 2076-3425
publishDate 2020-03-01
description Understanding dependencies between brain functioning and cognition is a challenging task which might require more than applying standard statistical models to neural and behavioural measures to be accomplished. Recent developments in computational modelling have demonstrated the advantage to formally account for reciprocal relations between mathematical models of cognition and brain functional, or structural, characteristics to relate neural and cognitive parameters on a model-based perspective. This would allow to account for both neural and behavioural data simultaneously by providing a joint probabilistic model for the two sources of information. In the present work we proposed an architecture for jointly modelling the reciprocal relation between behavioural and neural information in the context of risky decision-making. More precisely, we offered a way to relate Diffusion Tensor Imaging data to cognitive parameters of a computational model accounting for behavioural outcomes in the popular Balloon Analogue Risk Task (BART). Results show that the proposed architecture has the potential to account for individual differences in task performances and brain structural features by letting individual-level parameters to be modelled by a joint distribution connecting both sources of information. Such a joint modelling framework can offer interesting insights in the development of computational models able to investigate correspondence between decision-making and brain structural connectivity.
topic risk taking
diffusion tensor imaging
hierarchical bayesian modelling
url https://www.mdpi.com/2076-3425/10/3/138
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