Javascript must be enabled to continue!
Computational Models in Neurosciences Between Mechanistic and Phenomenological Characterizations
View through CrossRef
Computational neuroscience combines mathematics, computer science models, and neurosciences for theorizing, investigating, and simulating neural systems involved in the development, structure, physiology, and cognitive abilities of the brain. Computational models constitute a major stake in translational neuroscience: the analytical understanding of these models seems fundamental to consider a translation towards clinical applications. Method: We propose a minimal typology of computational models, which allows distinguishing between more realistic models (e.g., mechanistic models) and pragmatic models (e.g., phenomenological models). Result: Understanding the translational aspects of computational models goes far beyond the intrinsic characteristics of models. First, we assume that a computational model is rarely uniquely mechanistic or phenomenological. Idealization seems necessary because of i) the researcher’s perspectives on the phenomena and the purposes of the study (i.e., by the relativity of the model); ii) The complexity of reality across different levels and therefore the nature and number of dimensions required to consider a phenomenon. Especially, the use of models goes far beyond their function, and requires considering external characteristics rooted in path dependence, interdisciplinarity, and pluralism in neurosciences. Conclusion: The unreasonable use of computational models, which are highly complex and subject to a shift in their initial function, could be limited by bringing to light such factors.
Title: Computational Models in Neurosciences Between Mechanistic and Phenomenological Characterizations
Description:
Computational neuroscience combines mathematics, computer science models, and neurosciences for theorizing, investigating, and simulating neural systems involved in the development, structure, physiology, and cognitive abilities of the brain.
Computational models constitute a major stake in translational neuroscience: the analytical understanding of these models seems fundamental to consider a translation towards clinical applications.
Method: We propose a minimal typology of computational models, which allows distinguishing between more realistic models (e.
g.
, mechanistic models) and pragmatic models (e.
g.
, phenomenological models).
Result: Understanding the translational aspects of computational models goes far beyond the intrinsic characteristics of models.
First, we assume that a computational model is rarely uniquely mechanistic or phenomenological.
Idealization seems necessary because of i) the researcher’s perspectives on the phenomena and the purposes of the study (i.
e.
, by the relativity of the model); ii) The complexity of reality across different levels and therefore the nature and number of dimensions required to consider a phenomenon.
Especially, the use of models goes far beyond their function, and requires considering external characteristics rooted in path dependence, interdisciplinarity, and pluralism in neurosciences.
Conclusion: The unreasonable use of computational models, which are highly complex and subject to a shift in their initial function, could be limited by bringing to light such factors.
Related Results
The Mechanistic Structure Shift and Strategic Reorientation in Declining Firms Attempting Turnarounds
The Mechanistic Structure Shift and Strategic Reorientation in Declining Firms Attempting Turnarounds
Past researchers have observed that declining organizations often experience mechanistic structural changes that centralize authority, increase reliance on formalized procedures, a...
Experiences of emergent change from an applied neurosciences perspective
Experiences of emergent change from an applied neurosciences perspective
Orientation: Traditional models of planned change are no longer sufficient, amidst constantly changing contexts. Applied neurosciences provides a unique, integrated perspective on ...
Exploring the topical structure of short text through probability models : from tasks to fundamentals
Exploring the topical structure of short text through probability models : from tasks to fundamentals
Recent technological advances have radically changed the way we communicate. Today’s
communication has become ubiquitous and it has fostered the need for information that is easie...
Mechanistic models of Rift Valley fever virus transmission dynamics: A systematic review
Mechanistic models of Rift Valley fever virus transmission dynamics: A systematic review
AbstractRift Valley fever (RVF) is a zoonotic arbovirosis which has been reported across Africa including the northernmost edge, South West Indian Ocean islands, and the Arabian Pe...
A Phenomenological Investigation Into the Development of Medical Leaders Through Mindful Compassion in a COVID-19/ VUCA World
A Phenomenological Investigation Into the Development of Medical Leaders Through Mindful Compassion in a COVID-19/ VUCA World
Rationale: Medical leadership requires enhanced skills to navigate the challenges of the contemporary, complex world. This research is a 'snapshot' during the time horizon of the e...
Examiner l’éthique des neurosciences dans la neuroéthique contemporaine
Examiner l’éthique des neurosciences dans la neuroéthique contemporaine
Ce chapitre présente une analyse historique et conceptuelle de la neuroéthique comprise comme l'éthique des neurosciences. Après avoir souligné les différents objectifs, critiques ...
Generación de modelos de procesos y decisiones a partir de documentos de texto
Generación de modelos de procesos y decisiones a partir de documentos de texto
(English) This thesis addresses the importance of formal models for the efficient management of business processes (BPM) and business decision management (BDM) in a constantly evol...
Computational models of plant development and form
Computational models of plant development and form
SummaryThe use of computational techniques increasingly permeates developmental biology, from the acquisition, processing and analysis of experimental data to the construction of m...

