Machine Learning Classification of Facial Affect Recognition Deficits after Traumatic Brain Injury for Informing Rehabilitation Needs and Progress

Indiana University-Purdue University Indianapolis (IUPUI) === A common impairment after a traumatic brain injury (TBI) is a deficit in emotional recognition, such as inferences of others’ intentions. Some researchers have found these impairments in 39\% of the TBI population. Our research informatio...

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Bibliographic Details
Main Author: Iffat Naz, Syeda
Other Authors: Christopher, Lauren
Language:en_US
Published: 2021
Subjects:
ToM
TBI
SVM
RF
Online Access:http://hdl.handle.net/1805/24774
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spelling ndltd-IUPUI-oai-scholarworks.iupui.edu-1805-247742021-01-28T05:08:16Z Machine Learning Classification of Facial Affect Recognition Deficits after Traumatic Brain Injury for Informing Rehabilitation Needs and Progress Iffat Naz, Syeda Christopher, Lauren King, Brian Neumann, Dawn TASIT Eye tracking ToM Time series TBI SVM RF F1 Score Indiana University-Purdue University Indianapolis (IUPUI) A common impairment after a traumatic brain injury (TBI) is a deficit in emotional recognition, such as inferences of others’ intentions. Some researchers have found these impairments in 39\% of the TBI population. Our research information needed to make inferences about emotions and mental states comes from visually presented, nonverbal cues (e.g., facial expressions or gestures). Theory of mind (ToM) deficits after TBI are partially explained by impaired visual attention and the processing of these important cues. This research found that patients with deficits in visual processing differ from healthy controls (HCs). Furthermore, we found visual processing problems can be determined by looking at the eye tracking data developed from industry standard eye tracking hardware and software. We predicted that the eye tracking data of the overall population is correlated to the TASIT test. The visual processing of impaired (who got at least one answer wrong from TASIT questions) and unimpaired (who got all answer correctly from TASIT questions) differs significantly. We have divided the eye-tracking data into 3 second time blocks of time series data to detect the most salient individual blocks to the TASIT score. Our preliminary results suggest that we can predict the whole population's impairment using eye-tracking data with an improved f1 score from 0.54 to 0.73. For this, we developed optimized support vector machine (SVM) and random forest (RF) classifier. 2021-01-05T19:41:05Z 2021-01-05T19:41:05Z 2020-12 Thesis http://hdl.handle.net/1805/24774 en_US
collection NDLTD
language en_US
sources NDLTD
topic TASIT
Eye tracking
ToM
Time series
TBI
SVM
RF
F1 Score
spellingShingle TASIT
Eye tracking
ToM
Time series
TBI
SVM
RF
F1 Score
Iffat Naz, Syeda
Machine Learning Classification of Facial Affect Recognition Deficits after Traumatic Brain Injury for Informing Rehabilitation Needs and Progress
description Indiana University-Purdue University Indianapolis (IUPUI) === A common impairment after a traumatic brain injury (TBI) is a deficit in emotional recognition, such as inferences of others’ intentions. Some researchers have found these impairments in 39\% of the TBI population. Our research information needed to make inferences about emotions and mental states comes from visually presented, nonverbal cues (e.g., facial expressions or gestures). Theory of mind (ToM) deficits after TBI are partially explained by impaired visual attention and the processing of these important cues. This research found that patients with deficits in visual processing differ from healthy controls (HCs). Furthermore, we found visual processing problems can be determined by looking at the eye tracking data developed from industry standard eye tracking hardware and software. We predicted that the eye tracking data of the overall population is correlated to the TASIT test. The visual processing of impaired (who got at least one answer wrong from TASIT questions) and unimpaired (who got all answer correctly from TASIT questions) differs significantly. We have divided the eye-tracking data into 3 second time blocks of time series data to detect the most salient individual blocks to the TASIT score. Our preliminary results suggest that we can predict the whole population's impairment using eye-tracking data with an improved f1 score from 0.54 to 0.73. For this, we developed optimized support vector machine (SVM) and random forest (RF) classifier.
author2 Christopher, Lauren
author_facet Christopher, Lauren
Iffat Naz, Syeda
author Iffat Naz, Syeda
author_sort Iffat Naz, Syeda
title Machine Learning Classification of Facial Affect Recognition Deficits after Traumatic Brain Injury for Informing Rehabilitation Needs and Progress
title_short Machine Learning Classification of Facial Affect Recognition Deficits after Traumatic Brain Injury for Informing Rehabilitation Needs and Progress
title_full Machine Learning Classification of Facial Affect Recognition Deficits after Traumatic Brain Injury for Informing Rehabilitation Needs and Progress
title_fullStr Machine Learning Classification of Facial Affect Recognition Deficits after Traumatic Brain Injury for Informing Rehabilitation Needs and Progress
title_full_unstemmed Machine Learning Classification of Facial Affect Recognition Deficits after Traumatic Brain Injury for Informing Rehabilitation Needs and Progress
title_sort machine learning classification of facial affect recognition deficits after traumatic brain injury for informing rehabilitation needs and progress
publishDate 2021
url http://hdl.handle.net/1805/24774
work_keys_str_mv AT iffatnazsyeda machinelearningclassificationoffacialaffectrecognitiondeficitsaftertraumaticbraininjuryforinformingrehabilitationneedsandprogress
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