The promises and pitfalls of applying computational models to neurological and psychiatric disorders
Author(s) -
Christoph Teufel,
Paul C. Fletcher
Publication year - 2016
Publication title -
brain
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 5.142
H-Index - 336
eISSN - 1460-2156
pISSN - 0006-8950
DOI - 10.1093/brain/aww209
Subject(s) - analogy , computational model , cognitive science , function (biology) , simple (philosophy) , computer science , neuroscience , brain function , management science , field (mathematics) , computational neuroscience , data science , psychology , artificial intelligence , epistemology , biology , philosophy , mathematics , evolutionary biology , pure mathematics , economics
Computational models have become an integral part of basic neuroscience and have facilitated some of the major advances in the field. More recently, such models have also been applied to the understanding of disruptions in brain function. In this review, using examples and a simple analogy, we discuss the potential for computational models to inform our understanding of brain function and dysfunction. We argue that they may provide, in unprecedented detail, an understanding of the neurobiological and mental basis of brain disorders and that such insights will be key to progress in diagnosis and treatment. However, there are also potential problems attending this approach. We highlight these and identify simple principles that should always govern the use of computational models in clinical neuroscience, noting especially the importance of a clear specification of a model's purpose and of the mapping between mathematical concepts and reality.
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