| Literature DB >> 26062616 |
Erick J Argüello1, Ricardo J Silva2,3, Mónica K Huerta4,5,6, René S Avila7.
Abstract
This commentary is intended to find possible explanations for the low impact of computational modeling on pain research. We discuss the main strategies that have been used in building computational models for the study of pain. The analysis suggests that traditional models lack biological plausibility at some levels, they do not provide clinically relevant results, and they cannot capture the stochastic character of neural dynamics. On this basis, we provide some suggestions that may be useful in building computational models of pain with a wider range of applications.Entities:
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Year: 2015 PMID: 26062616 PMCID: PMC4464699 DOI: 10.1186/s12938-015-0049-x
Source DB: PubMed Journal: Biomed Eng Online ISSN: 1475-925X Impact factor: 2.819
Figure 1Experimental results yielded by different studies can be combined to build an alternative representation of the pain circuitry. Unidirectional synaptic connections among superficial dorsal horn neurons have been reported by Lu and coworkers (red bordered panels) [26–29]. Each study per se only provides a piece of information on neuron connectivity at that region, but these pieces can be put together, by identifying the elements they have in common, to build a network reflecting some of the interactions that actually contribute to noxious information processing (bottom panel). EC excitatory central cell, Gly glycinergic neuron, HTC high-threshold C-fiber, I islet cell, IC inhibitory central cell, LTC low-threshold C-fiber, P projection neuron, PKCγ neuron expressing the γ-isoform of protein kinase C, V vertical cell.