A deep neural network approach for sentiment analysis of medically related texts: an analysis of tweets related to concussions in sports

Abstract Annually, over three million people in North America suffer concussions. Every age group is susceptible to concussion, but youth involved in sporting activities are particularly vulnerable, with about 6% of all youth suffering a concussion annually. Youth who suffer concussion have also bee...

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Main Authors: Kayvan Tirdad, Alex Dela Cruz, Alireza Sadeghian, Michael Cusimano
Format: Article
Language:English
Published: SpringerOpen 2021-07-01
Series:Brain Informatics
Subjects:
Online Access:https://doi.org/10.1186/s40708-021-00134-4
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spelling doaj-80a64db4c8894ed0aad3730ba9639b3c2021-07-04T11:10:32ZengSpringerOpenBrain Informatics2198-40182198-40262021-07-018111710.1186/s40708-021-00134-4A deep neural network approach for sentiment analysis of medically related texts: an analysis of tweets related to concussions in sportsKayvan Tirdad0Alex Dela Cruz1Alireza Sadeghian2Michael Cusimano3Department of Computer Science, Ryerson UniversityDepartment of Computer Science, Ryerson UniversityDepartment of Computer Science, Ryerson UniversityLi Ka Shing Knowledge Institute, St. Michael’s HospitalAbstract Annually, over three million people in North America suffer concussions. Every age group is susceptible to concussion, but youth involved in sporting activities are particularly vulnerable, with about 6% of all youth suffering a concussion annually. Youth who suffer concussion have also been shown to have higher rates of suicidal ideation, substance and alcohol use, and violent behaviors. A significant body of research over the last decade has led to changes in policies and laws intended to reduce the incidence and burden of concussions. However, it is also clear that youth engaging in high-risk activities like sport often underreport concussion, while others may embellish reports for specific purposes. For such policies and laws to work, they must operate effectively within a facilitative social context so understanding the culture around concussion becomes essential to reducing concussion and its consequences. We present an automated deep neural network approach to analyze tweets with sport-related concussion context to identify the general public’s sentiment towards concerns in sport-related concussion. A single-layer and multi-layer convolutional neural networks, Long Short-Term Memory (LSTM) networks, and Bidirectional LSTM were trained to classify the sentiments of the tweets. Afterwards, we train an ensemble model to aggregate the predictions of our networks to provide a final decision of the tweet’s sentiment. The system achieves an evaluation F1 score of 62.71% based on Precision and Recall. The trained system is then used to analyze the tweets in the FIFA World Cup 2018 to measure audience reaction to events involving concussion. The neural network system provides an understanding of the culture around concussion through sentiment analysis.https://doi.org/10.1186/s40708-021-00134-4Artificial intelligenceMachine learningDeep learningSentiment analysisTraumatic brain injuriesConcussion
collection DOAJ
language English
format Article
sources DOAJ
author Kayvan Tirdad
Alex Dela Cruz
Alireza Sadeghian
Michael Cusimano
spellingShingle Kayvan Tirdad
Alex Dela Cruz
Alireza Sadeghian
Michael Cusimano
A deep neural network approach for sentiment analysis of medically related texts: an analysis of tweets related to concussions in sports
Brain Informatics
Artificial intelligence
Machine learning
Deep learning
Sentiment analysis
Traumatic brain injuries
Concussion
author_facet Kayvan Tirdad
Alex Dela Cruz
Alireza Sadeghian
Michael Cusimano
author_sort Kayvan Tirdad
title A deep neural network approach for sentiment analysis of medically related texts: an analysis of tweets related to concussions in sports
title_short A deep neural network approach for sentiment analysis of medically related texts: an analysis of tweets related to concussions in sports
title_full A deep neural network approach for sentiment analysis of medically related texts: an analysis of tweets related to concussions in sports
title_fullStr A deep neural network approach for sentiment analysis of medically related texts: an analysis of tweets related to concussions in sports
title_full_unstemmed A deep neural network approach for sentiment analysis of medically related texts: an analysis of tweets related to concussions in sports
title_sort deep neural network approach for sentiment analysis of medically related texts: an analysis of tweets related to concussions in sports
publisher SpringerOpen
series Brain Informatics
issn 2198-4018
2198-4026
publishDate 2021-07-01
description Abstract Annually, over three million people in North America suffer concussions. Every age group is susceptible to concussion, but youth involved in sporting activities are particularly vulnerable, with about 6% of all youth suffering a concussion annually. Youth who suffer concussion have also been shown to have higher rates of suicidal ideation, substance and alcohol use, and violent behaviors. A significant body of research over the last decade has led to changes in policies and laws intended to reduce the incidence and burden of concussions. However, it is also clear that youth engaging in high-risk activities like sport often underreport concussion, while others may embellish reports for specific purposes. For such policies and laws to work, they must operate effectively within a facilitative social context so understanding the culture around concussion becomes essential to reducing concussion and its consequences. We present an automated deep neural network approach to analyze tweets with sport-related concussion context to identify the general public’s sentiment towards concerns in sport-related concussion. A single-layer and multi-layer convolutional neural networks, Long Short-Term Memory (LSTM) networks, and Bidirectional LSTM were trained to classify the sentiments of the tweets. Afterwards, we train an ensemble model to aggregate the predictions of our networks to provide a final decision of the tweet’s sentiment. The system achieves an evaluation F1 score of 62.71% based on Precision and Recall. The trained system is then used to analyze the tweets in the FIFA World Cup 2018 to measure audience reaction to events involving concussion. The neural network system provides an understanding of the culture around concussion through sentiment analysis.
topic Artificial intelligence
Machine learning
Deep learning
Sentiment analysis
Traumatic brain injuries
Concussion
url https://doi.org/10.1186/s40708-021-00134-4
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