Transfer learning for medication adherence prediction from social forums self-reported data

Indiana University-Purdue University Indianapolis (IUPUI) === Medication non-adherence and non-compliance left unaddressed can compound into severe medical problems for patients. Identifying patients that are likely to become non-adherent can help reduce these problems. Despite these benefits, monit...

Full description

Bibliographic Details
Main Author: Haas, Kyle D.
Other Authors: Ben-Miled, Zina
Language:en
Published: 2018
Subjects:
Online Access:http://hdl.handle.net/1805/17917
id ndltd-IUPUI-oai-scholarworks.iupui.edu-1805-17917
record_format oai_dc
spelling ndltd-IUPUI-oai-scholarworks.iupui.edu-1805-179172019-05-10T15:21:57Z Transfer learning for medication adherence prediction from social forums self-reported data Haas, Kyle D. Ben-Miled, Zina King, Brian El-Sharkawy, Mohamed MEPS Medication adherence Social forum Random forest Transfer learning Indiana University-Purdue University Indianapolis (IUPUI) Medication non-adherence and non-compliance left unaddressed can compound into severe medical problems for patients. Identifying patients that are likely to become non-adherent can help reduce these problems. Despite these benefits, monitoring adherence at scale is cost-prohibitive. Social forums offer an easily accessible, affordable, and timely alternative to the traditional methods based on claims data. This study investigates the potential of medication adherence prediction based on social forum data for diabetes and fibromyalgia therapies by using transfer learning from the Medical Expenditure Panel Survey (MEPS). Predictive adherence models are developed by using both survey and social forums data and different random forest (RF) techniques. The first of these implementations uses binned inputs from k-means clustering. The second technique is based on ternary trees instead of the widely used binary decision trees. These techniques are able to handle missing data, a prevalent characteristic of social forums data. The results of this study show that transfer learning between survey models and social forum models is possible. Using MEPS survey data and the techniques listed above to derive RF models, less than 5% difference in accuracy was observed between the MEPS test dataset and the social forum test dataset. Along with these RF techniques, another RF implementation with imputed means for the missing values was developed and shown to predict adherence for social forum patients with an accuracy >70%. This thesis shows that a model trained with verified survey data can be used to complement traditional medical adherence models by predicting adherence from unverified, self-reported data in a dynamic and timely manner. Furthermore, this model provides a method for discovering objective insights from subjective social reports. Additional investigation is needed to improve the prediction accuracy of the proposed model and to assess biases that may be inherent to self-reported adherence measures in social health networks. 2018-12-05T21:20:51Z 2018-12-05T21:20:51Z 2018-12 Thesis http://hdl.handle.net/1805/17917 en
collection NDLTD
language en
sources NDLTD
topic MEPS
Medication adherence
Social forum
Random forest
Transfer learning
spellingShingle MEPS
Medication adherence
Social forum
Random forest
Transfer learning
Haas, Kyle D.
Transfer learning for medication adherence prediction from social forums self-reported data
description Indiana University-Purdue University Indianapolis (IUPUI) === Medication non-adherence and non-compliance left unaddressed can compound into severe medical problems for patients. Identifying patients that are likely to become non-adherent can help reduce these problems. Despite these benefits, monitoring adherence at scale is cost-prohibitive. Social forums offer an easily accessible, affordable, and timely alternative to the traditional methods based on claims data. This study investigates the potential of medication adherence prediction based on social forum data for diabetes and fibromyalgia therapies by using transfer learning from the Medical Expenditure Panel Survey (MEPS). Predictive adherence models are developed by using both survey and social forums data and different random forest (RF) techniques. The first of these implementations uses binned inputs from k-means clustering. The second technique is based on ternary trees instead of the widely used binary decision trees. These techniques are able to handle missing data, a prevalent characteristic of social forums data. The results of this study show that transfer learning between survey models and social forum models is possible. Using MEPS survey data and the techniques listed above to derive RF models, less than 5% difference in accuracy was observed between the MEPS test dataset and the social forum test dataset. Along with these RF techniques, another RF implementation with imputed means for the missing values was developed and shown to predict adherence for social forum patients with an accuracy >70%. This thesis shows that a model trained with verified survey data can be used to complement traditional medical adherence models by predicting adherence from unverified, self-reported data in a dynamic and timely manner. Furthermore, this model provides a method for discovering objective insights from subjective social reports. Additional investigation is needed to improve the prediction accuracy of the proposed model and to assess biases that may be inherent to self-reported adherence measures in social health networks.
author2 Ben-Miled, Zina
author_facet Ben-Miled, Zina
Haas, Kyle D.
author Haas, Kyle D.
author_sort Haas, Kyle D.
title Transfer learning for medication adherence prediction from social forums self-reported data
title_short Transfer learning for medication adherence prediction from social forums self-reported data
title_full Transfer learning for medication adherence prediction from social forums self-reported data
title_fullStr Transfer learning for medication adherence prediction from social forums self-reported data
title_full_unstemmed Transfer learning for medication adherence prediction from social forums self-reported data
title_sort transfer learning for medication adherence prediction from social forums self-reported data
publishDate 2018
url http://hdl.handle.net/1805/17917
work_keys_str_mv AT haaskyled transferlearningformedicationadherencepredictionfromsocialforumsselfreporteddata
_version_ 1719080192967704576