Natural Language Processing in Large-Scale Neural Models for Medical Screenings

Many medical screenings used for the diagnosis of neurological, psychological or language and speech disorders access the language and speech processing system. Specifically, patients are asked to fulfill a task (perception) and then requested to give answers verbally or by writing (production). To...

Full description

Bibliographic Details
Main Authors: Catharina Marie Stille, Trevor Bekolay, Peter Blouw, Bernd J. Kröger
Format: Article
Language:English
Published: Frontiers Media S.A. 2019-08-01
Series:Frontiers in Robotics and AI
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/frobt.2019.00062/full
id doaj-195d503f7d044cceb346dfa72521125c
record_format Article
spelling doaj-195d503f7d044cceb346dfa72521125c2020-11-24T21:54:08ZengFrontiers Media S.A.Frontiers in Robotics and AI2296-91442019-08-01610.3389/frobt.2019.00062441911Natural Language Processing in Large-Scale Neural Models for Medical ScreeningsCatharina Marie Stille0Trevor Bekolay1Trevor Bekolay2Peter Blouw3Peter Blouw4Bernd J. Kröger5Department for Phoniatrics, Pedaudiology, and Communication Disorders, Medical Faculty RWTH Aachen University, Aachen, GermanyApplied Brain Research, Waterloo, ON, CanadaCentre for Theoretical Neuroscience, University of Waterloo, Waterloo, ON, CanadaApplied Brain Research, Waterloo, ON, CanadaCentre for Theoretical Neuroscience, University of Waterloo, Waterloo, ON, CanadaDepartment for Phoniatrics, Pedaudiology, and Communication Disorders, Medical Faculty RWTH Aachen University, Aachen, GermanyMany medical screenings used for the diagnosis of neurological, psychological or language and speech disorders access the language and speech processing system. Specifically, patients are asked to fulfill a task (perception) and then requested to give answers verbally or by writing (production). To analyze cognitive or higher-level linguistic impairments or disorders it is thus expected that specific parts of the language and speech processing system of patients are working correctly or that verbal instructions are replaced by pictures (avoiding auditory perception) or oral answers by pointing (avoiding speech articulation). The first goal of this paper is to propose a large-scale neural model which comprises cognitive and lexical levels of the human neural system, and which is able to simulate the human behavior occurring in medical screenings. The second goal of this paper is to relate (microscopic) neural deficits introduced into the model to corresponding (macroscopic) behavioral deficits resulting from the model simulations. The Neural Engineering Framework and the Semantic Pointer Architecture are used to develop the large-scale neural model. Parts of two medical screenings are simulated: (1) a screening of word naming for the detection of developmental problems in lexical storage and lexical retrieval; and (2) a screening of cognitive abilities for the detection of mild cognitive impairment and early dementia. Both screenings include cognitive, language, and speech processing, and for both screenings the same model is simulated with and without neural deficits (physiological case vs. pathological case). While the simulation of both screenings results in the expected normal behavior in the physiological case, the simulations clearly show a deviation of behavior, e.g., an increase in errors in the pathological case. Moreover, specific types of neural dysfunctions resulting from different types of neural defects lead to differences in the type and strength of the observed behavioral deficits.https://www.frontiersin.org/article/10.3389/frobt.2019.00062/fullneurocomputational modelspiking neural networksdetailed computer simulations of natural language processesbehavioral testingbrain-behavior connectionmedical screenings
collection DOAJ
language English
format Article
sources DOAJ
author Catharina Marie Stille
Trevor Bekolay
Trevor Bekolay
Peter Blouw
Peter Blouw
Bernd J. Kröger
spellingShingle Catharina Marie Stille
Trevor Bekolay
Trevor Bekolay
Peter Blouw
Peter Blouw
Bernd J. Kröger
Natural Language Processing in Large-Scale Neural Models for Medical Screenings
Frontiers in Robotics and AI
neurocomputational model
spiking neural networks
detailed computer simulations of natural language processes
behavioral testing
brain-behavior connection
medical screenings
author_facet Catharina Marie Stille
Trevor Bekolay
Trevor Bekolay
Peter Blouw
Peter Blouw
Bernd J. Kröger
author_sort Catharina Marie Stille
title Natural Language Processing in Large-Scale Neural Models for Medical Screenings
title_short Natural Language Processing in Large-Scale Neural Models for Medical Screenings
title_full Natural Language Processing in Large-Scale Neural Models for Medical Screenings
title_fullStr Natural Language Processing in Large-Scale Neural Models for Medical Screenings
title_full_unstemmed Natural Language Processing in Large-Scale Neural Models for Medical Screenings
title_sort natural language processing in large-scale neural models for medical screenings
publisher Frontiers Media S.A.
series Frontiers in Robotics and AI
issn 2296-9144
publishDate 2019-08-01
description Many medical screenings used for the diagnosis of neurological, psychological or language and speech disorders access the language and speech processing system. Specifically, patients are asked to fulfill a task (perception) and then requested to give answers verbally or by writing (production). To analyze cognitive or higher-level linguistic impairments or disorders it is thus expected that specific parts of the language and speech processing system of patients are working correctly or that verbal instructions are replaced by pictures (avoiding auditory perception) or oral answers by pointing (avoiding speech articulation). The first goal of this paper is to propose a large-scale neural model which comprises cognitive and lexical levels of the human neural system, and which is able to simulate the human behavior occurring in medical screenings. The second goal of this paper is to relate (microscopic) neural deficits introduced into the model to corresponding (macroscopic) behavioral deficits resulting from the model simulations. The Neural Engineering Framework and the Semantic Pointer Architecture are used to develop the large-scale neural model. Parts of two medical screenings are simulated: (1) a screening of word naming for the detection of developmental problems in lexical storage and lexical retrieval; and (2) a screening of cognitive abilities for the detection of mild cognitive impairment and early dementia. Both screenings include cognitive, language, and speech processing, and for both screenings the same model is simulated with and without neural deficits (physiological case vs. pathological case). While the simulation of both screenings results in the expected normal behavior in the physiological case, the simulations clearly show a deviation of behavior, e.g., an increase in errors in the pathological case. Moreover, specific types of neural dysfunctions resulting from different types of neural defects lead to differences in the type and strength of the observed behavioral deficits.
topic neurocomputational model
spiking neural networks
detailed computer simulations of natural language processes
behavioral testing
brain-behavior connection
medical screenings
url https://www.frontiersin.org/article/10.3389/frobt.2019.00062/full
work_keys_str_mv AT catharinamariestille naturallanguageprocessinginlargescaleneuralmodelsformedicalscreenings
AT trevorbekolay naturallanguageprocessinginlargescaleneuralmodelsformedicalscreenings
AT trevorbekolay naturallanguageprocessinginlargescaleneuralmodelsformedicalscreenings
AT peterblouw naturallanguageprocessinginlargescaleneuralmodelsformedicalscreenings
AT peterblouw naturallanguageprocessinginlargescaleneuralmodelsformedicalscreenings
AT berndjkroger naturallanguageprocessinginlargescaleneuralmodelsformedicalscreenings
_version_ 1725868734430576640