A Timeline Extraction Approach to Derive Drug Usage Patterns in Pregnant Women Using Social Media

abstract: Proliferation of social media websites and discussion forums in the last decade has resulted in social media mining emerging as an effective mechanism to extract consumer patterns. Most research on social media and pharmacovigilance have concentrated on Adverse Drug Reaction (ADR) identif...

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Other Authors: Chandrashekar, Pramod Bharadwaj Chandrashekar (Author)
Format: Dissertation
Language:English
Published: 2016
Subjects:
Online Access:http://hdl.handle.net/2286/R.I.38703
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spelling ndltd-asu.edu-item-387032018-06-22T03:07:23Z A Timeline Extraction Approach to Derive Drug Usage Patterns in Pregnant Women Using Social Media abstract: Proliferation of social media websites and discussion forums in the last decade has resulted in social media mining emerging as an effective mechanism to extract consumer patterns. Most research on social media and pharmacovigilance have concentrated on Adverse Drug Reaction (ADR) identification. Such methods employ a step of drug search followed by classification of the associated text as consisting an ADR or not. Although this method works efficiently for ADR classifications, if ADR evidence is present in users posts over time, drug mentions fail to capture such ADRs. It also fails to record additional user information which may provide an opportunity to perform an in-depth analysis for lifestyle habits and possible reasons for any medical problems. Pre-market clinical trials for drugs generally do not include pregnant women, and so their effects on pregnancy outcomes are not discovered early. This thesis presents a thorough, alternative strategy for assessing the safety profiles of drugs during pregnancy by utilizing user timelines from social media. I explore the use of a variety of state-of-the-art social media mining techniques, including rule-based and machine learning techniques, to identify pregnant women, monitor their drug usage patterns, categorize their birth outcomes, and attempt to discover associations between drugs and bad birth outcomes. The technique used models user timelines as longitudinal patient networks, which provide us with a variety of key information about pregnancy, drug usage, and post- birth reactions. I evaluate the distinct parts of the pipeline separately, validating the usefulness of each step. The approach to use user timelines in this fashion has produced very encouraging results, and can be employed for a range of other important tasks where users/patients are required to be followed over time to derive population-based measures. Dissertation/Thesis Chandrashekar, Pramod Bharadwaj Chandrashekar (Author) Davulcu, Hasan (Advisor) Gonzalez, Graciela (Advisor) Hsiao, Sharon (Committee member) Arizona State University (Publisher) Computer science Biostatistics Biomedical Informatics Classification Natural Language Processing Pharmacovigilance Pregnancy Social Media eng 52 pages Masters Thesis Computer Science 2016 Masters Thesis http://hdl.handle.net/2286/R.I.38703 http://rightsstatements.org/vocab/InC/1.0/ All Rights Reserved 2016
collection NDLTD
language English
format Dissertation
sources NDLTD
topic Computer science
Biostatistics
Biomedical Informatics
Classification
Natural Language Processing
Pharmacovigilance
Pregnancy
Social Media
spellingShingle Computer science
Biostatistics
Biomedical Informatics
Classification
Natural Language Processing
Pharmacovigilance
Pregnancy
Social Media
A Timeline Extraction Approach to Derive Drug Usage Patterns in Pregnant Women Using Social Media
description abstract: Proliferation of social media websites and discussion forums in the last decade has resulted in social media mining emerging as an effective mechanism to extract consumer patterns. Most research on social media and pharmacovigilance have concentrated on Adverse Drug Reaction (ADR) identification. Such methods employ a step of drug search followed by classification of the associated text as consisting an ADR or not. Although this method works efficiently for ADR classifications, if ADR evidence is present in users posts over time, drug mentions fail to capture such ADRs. It also fails to record additional user information which may provide an opportunity to perform an in-depth analysis for lifestyle habits and possible reasons for any medical problems. Pre-market clinical trials for drugs generally do not include pregnant women, and so their effects on pregnancy outcomes are not discovered early. This thesis presents a thorough, alternative strategy for assessing the safety profiles of drugs during pregnancy by utilizing user timelines from social media. I explore the use of a variety of state-of-the-art social media mining techniques, including rule-based and machine learning techniques, to identify pregnant women, monitor their drug usage patterns, categorize their birth outcomes, and attempt to discover associations between drugs and bad birth outcomes. The technique used models user timelines as longitudinal patient networks, which provide us with a variety of key information about pregnancy, drug usage, and post- birth reactions. I evaluate the distinct parts of the pipeline separately, validating the usefulness of each step. The approach to use user timelines in this fashion has produced very encouraging results, and can be employed for a range of other important tasks where users/patients are required to be followed over time to derive population-based measures. === Dissertation/Thesis === Masters Thesis Computer Science 2016
author2 Chandrashekar, Pramod Bharadwaj Chandrashekar (Author)
author_facet Chandrashekar, Pramod Bharadwaj Chandrashekar (Author)
title A Timeline Extraction Approach to Derive Drug Usage Patterns in Pregnant Women Using Social Media
title_short A Timeline Extraction Approach to Derive Drug Usage Patterns in Pregnant Women Using Social Media
title_full A Timeline Extraction Approach to Derive Drug Usage Patterns in Pregnant Women Using Social Media
title_fullStr A Timeline Extraction Approach to Derive Drug Usage Patterns in Pregnant Women Using Social Media
title_full_unstemmed A Timeline Extraction Approach to Derive Drug Usage Patterns in Pregnant Women Using Social Media
title_sort timeline extraction approach to derive drug usage patterns in pregnant women using social media
publishDate 2016
url http://hdl.handle.net/2286/R.I.38703
_version_ 1718701137013506048