Determining Factors Influencing Length of Stay and Predicting Length of Stay Using Data Mining in the General Surgery Department

<strong>Background:</strong> Length of stay is one of the most important indicators in assessing hospital performance. A shorter stay can reduce the costs per discharge and shift care from inpatient to less expensive post-acute settings. It can lead to a greater readmission rate, better...

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Main Authors: Samaneh Aghajani, Mehrdad Kargari
Format: Article
Language:English
Published: Baqiyatallah University of Medical Sciences 2016-05-01
Series:Hospital Practices and Research
Subjects:
Online Access:http://www.jhpr.ir/article_31958_fccec40a31c019c9a011ad86649f4d1e.pdf
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spelling doaj-da3b577960994811a1846f90187104972020-11-24T23:58:14ZengBaqiyatallah University of Medical SciencesHospital Practices and Research2476-390X2476-39182016-05-0112535810.20286/hpr-01025131958Determining Factors Influencing Length of Stay and Predicting Length of Stay Using Data Mining in the General Surgery DepartmentSamaneh Aghajani0Mehrdad Kargari1Department of Industrial Engineering, Tarbiat Modares University, Tehran, IR IranDepartment of Industrial Engineering, Tarbiat Modares University, Tehran, IR Iran<strong>Background:</strong> Length of stay is one of the most important indicators in assessing hospital performance. A shorter stay can reduce the costs per discharge and shift care from inpatient to less expensive post-acute settings. It can lead to a greater readmission rate, better resource management, and more efficient services. <br/><strong>Objective:</strong> This study aimed to identify the factors influencing length of hospital stay and predict length of stay in the general surgery department. <br/><strong>Methods:</strong> In this study, patient information was collected from 327 records in the surgery department of Shariati Hospital using data mining techniques to determine factors influencing length of stay and to predict length of stay using three algorithms, namely decision tree, Naïve Bayes, and k-nearest neighbor algorithms. The data was split into a training data set and a test data set, and a model was built for the training data. A confusion matrix was obtained to calculate accuracy. <br/><strong>Results:</strong> Four factors presented: surgery type (hemorrhoid), average number of visits per day, number of trials, and number of days of hospitalization before surgery; the most important of these factors was length of stay. The overall accuracy of the decision tree was 88.9% for the training data set. <br/><strong>Conclusions:</strong> This study determined that all three algorithms can predict length of stay, but the decision tree performs the best.http://www.jhpr.ir/article_31958_fccec40a31c019c9a011ad86649f4d1e.pdfData MiningDecision TreeGeneral SurgeryLength of stay
collection DOAJ
language English
format Article
sources DOAJ
author Samaneh Aghajani
Mehrdad Kargari
spellingShingle Samaneh Aghajani
Mehrdad Kargari
Determining Factors Influencing Length of Stay and Predicting Length of Stay Using Data Mining in the General Surgery Department
Hospital Practices and Research
Data Mining
Decision Tree
General Surgery
Length of stay
author_facet Samaneh Aghajani
Mehrdad Kargari
author_sort Samaneh Aghajani
title Determining Factors Influencing Length of Stay and Predicting Length of Stay Using Data Mining in the General Surgery Department
title_short Determining Factors Influencing Length of Stay and Predicting Length of Stay Using Data Mining in the General Surgery Department
title_full Determining Factors Influencing Length of Stay and Predicting Length of Stay Using Data Mining in the General Surgery Department
title_fullStr Determining Factors Influencing Length of Stay and Predicting Length of Stay Using Data Mining in the General Surgery Department
title_full_unstemmed Determining Factors Influencing Length of Stay and Predicting Length of Stay Using Data Mining in the General Surgery Department
title_sort determining factors influencing length of stay and predicting length of stay using data mining in the general surgery department
publisher Baqiyatallah University of Medical Sciences
series Hospital Practices and Research
issn 2476-390X
2476-3918
publishDate 2016-05-01
description <strong>Background:</strong> Length of stay is one of the most important indicators in assessing hospital performance. A shorter stay can reduce the costs per discharge and shift care from inpatient to less expensive post-acute settings. It can lead to a greater readmission rate, better resource management, and more efficient services. <br/><strong>Objective:</strong> This study aimed to identify the factors influencing length of hospital stay and predict length of stay in the general surgery department. <br/><strong>Methods:</strong> In this study, patient information was collected from 327 records in the surgery department of Shariati Hospital using data mining techniques to determine factors influencing length of stay and to predict length of stay using three algorithms, namely decision tree, Naïve Bayes, and k-nearest neighbor algorithms. The data was split into a training data set and a test data set, and a model was built for the training data. A confusion matrix was obtained to calculate accuracy. <br/><strong>Results:</strong> Four factors presented: surgery type (hemorrhoid), average number of visits per day, number of trials, and number of days of hospitalization before surgery; the most important of these factors was length of stay. The overall accuracy of the decision tree was 88.9% for the training data set. <br/><strong>Conclusions:</strong> This study determined that all three algorithms can predict length of stay, but the decision tree performs the best.
topic Data Mining
Decision Tree
General Surgery
Length of stay
url http://www.jhpr.ir/article_31958_fccec40a31c019c9a011ad86649f4d1e.pdf
work_keys_str_mv AT samanehaghajani determiningfactorsinfluencinglengthofstayandpredictinglengthofstayusingdatamininginthegeneralsurgerydepartment
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