A Hospital Recommendation System Based on Patient Satisfaction Survey

Surveys are used by hospitals to evaluate patient satisfaction and to improve general hospital operations. Collected satisfaction data is usually represented to the hospital administration by using statistical charts and graphs. Although such visualization is helpful, typically no deeper data analys...

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Main Authors: Mohammad Reza Khoie, Tannaz Sattari Tabrizi, Elham Sahebkar khorasani, Shahram Rahimi, Nina Marhamati
Format: Article
Language:English
Published: MDPI AG 2017-09-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/7/10/966
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spelling doaj-ba5a504978e04f738862a90eb4fb42f52020-11-25T00:47:01ZengMDPI AGApplied Sciences2076-34172017-09-0171096610.3390/app7100966app7100966A Hospital Recommendation System Based on Patient Satisfaction SurveyMohammad Reza Khoie0Tannaz Sattari Tabrizi1Elham Sahebkar khorasani2Shahram Rahimi3Nina Marhamati4Department of Computer Science, Southern Illinois University, Carbondale, IL 62901, USADepartment of Computer Science, Southern Illinois University, Carbondale, IL 62901, USADepartment of Computer Science, University of Illinois at Springfield, Springfield, IL 62703, USADepartment of Computer Science, Southern Illinois University, Carbondale, IL 62901, USADepartment of Computer Science, Southern Illinois University, Carbondale, IL 62901, USASurveys are used by hospitals to evaluate patient satisfaction and to improve general hospital operations. Collected satisfaction data is usually represented to the hospital administration by using statistical charts and graphs. Although such visualization is helpful, typically no deeper data analysis is performed to identify important factors which contribute to patient satisfaction. This work presents an unsupervised data-driven methodology for analyzing patient satisfaction survey data. The goal of the proposed exploratory data analysis is to identify patient communities with similar satisfaction levels and the major factors, which contribute to their satisfaction. This type of data analysis will help hospitals to pinpoint the prevalence of certain satisfaction factors in specific patient communities or clusters of individuals and to implement more proactive measures to improve patient experience and care. To this end, two layers of data analysis is performed. In the first layer, patients are clustered based on their responses to the survey questions. Each cluster is then labeled according to its salient features. In the second layer, the clusters of first layer are divided into sub-clusters based on patient demographic data. Associations are derived between the salient features of each cluster and its sub-clusters. Such associations are ranked and validated by using standard statistical tests. The associations derived by this methodology are turned into comments and recommendations for healthcare providers and patients. Having applied this method on patient and survey data of a hospital resulted in 19 recommendations where 10 of them were statistically significant with chi-square test’s p-value less than 0.5 and an odds ratio z-test’s p-value of more than 2 or less than −2. These associations not only are statistically significant but seems rational too.https://www.mdpi.com/2076-3417/7/10/966health data analyticssurvey analysisHCAHPShospital consumer assessment of healthcare providers and systemsunsupervised learning
collection DOAJ
language English
format Article
sources DOAJ
author Mohammad Reza Khoie
Tannaz Sattari Tabrizi
Elham Sahebkar khorasani
Shahram Rahimi
Nina Marhamati
spellingShingle Mohammad Reza Khoie
Tannaz Sattari Tabrizi
Elham Sahebkar khorasani
Shahram Rahimi
Nina Marhamati
A Hospital Recommendation System Based on Patient Satisfaction Survey
Applied Sciences
health data analytics
survey analysis
HCAHPS
hospital consumer assessment of healthcare providers and systems
unsupervised learning
author_facet Mohammad Reza Khoie
Tannaz Sattari Tabrizi
Elham Sahebkar khorasani
Shahram Rahimi
Nina Marhamati
author_sort Mohammad Reza Khoie
title A Hospital Recommendation System Based on Patient Satisfaction Survey
title_short A Hospital Recommendation System Based on Patient Satisfaction Survey
title_full A Hospital Recommendation System Based on Patient Satisfaction Survey
title_fullStr A Hospital Recommendation System Based on Patient Satisfaction Survey
title_full_unstemmed A Hospital Recommendation System Based on Patient Satisfaction Survey
title_sort hospital recommendation system based on patient satisfaction survey
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2017-09-01
description Surveys are used by hospitals to evaluate patient satisfaction and to improve general hospital operations. Collected satisfaction data is usually represented to the hospital administration by using statistical charts and graphs. Although such visualization is helpful, typically no deeper data analysis is performed to identify important factors which contribute to patient satisfaction. This work presents an unsupervised data-driven methodology for analyzing patient satisfaction survey data. The goal of the proposed exploratory data analysis is to identify patient communities with similar satisfaction levels and the major factors, which contribute to their satisfaction. This type of data analysis will help hospitals to pinpoint the prevalence of certain satisfaction factors in specific patient communities or clusters of individuals and to implement more proactive measures to improve patient experience and care. To this end, two layers of data analysis is performed. In the first layer, patients are clustered based on their responses to the survey questions. Each cluster is then labeled according to its salient features. In the second layer, the clusters of first layer are divided into sub-clusters based on patient demographic data. Associations are derived between the salient features of each cluster and its sub-clusters. Such associations are ranked and validated by using standard statistical tests. The associations derived by this methodology are turned into comments and recommendations for healthcare providers and patients. Having applied this method on patient and survey data of a hospital resulted in 19 recommendations where 10 of them were statistically significant with chi-square test’s p-value less than 0.5 and an odds ratio z-test’s p-value of more than 2 or less than −2. These associations not only are statistically significant but seems rational too.
topic health data analytics
survey analysis
HCAHPS
hospital consumer assessment of healthcare providers and systems
unsupervised learning
url https://www.mdpi.com/2076-3417/7/10/966
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