The role of Machine Learning in Predicting CABG Surgery Duration

Context. Operating room (OR) is one of the most expensive resources of a hospital. Its mismanagement is associated with high costs and revenues. There are various factors which may cause OR mismanagement, one of them is wrong estimation of surgery duration. The surgeons underestimate or overestimate...

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Main Authors: Ali, Zahoor, Arfeen, Muhammad Qummer ul
Format: Others
Language:English
Published: Blekinge Tekniska Högskola, Sektionen för datavetenskap och kommunikation 2011
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:bth-6074
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spelling ndltd-UPSALLA1-oai-DiVA.org-bth-60742018-01-12T05:13:52ZThe role of Machine Learning in Predicting CABG Surgery DurationengAli, ZahoorArfeen, Muhammad Qummer ulBlekinge Tekniska Högskola, Sektionen för datavetenskap och kommunikationBlekinge Tekniska Högskola, Sektionen för datavetenskap och kommunikation2011Machine learningsurgery duration predictionoperating room planningdata miningComputer SciencesDatavetenskap (datalogi)Context. Operating room (OR) is one of the most expensive resources of a hospital. Its mismanagement is associated with high costs and revenues. There are various factors which may cause OR mismanagement, one of them is wrong estimation of surgery duration. The surgeons underestimate or overestimate surgery duration which causes underutilization or overutilization of OR and medical staff. Resolving the issue of wrong estimate can result improvement of the overall OR planning. Objectives. In this study we investigate two different techniques of feature selection, compare different regression based modeling techniques for surgery duration prediction. One of these techniques (with lowest mean absolute) is used for building a model. We further propose a framework for implementation of this model in the real world setup. Results. In our case the selected technique (correlation based feature selection with best first search in backward direction) for feature selection could not produce better results than the expert’s opinion based approach for feature selection. Linear regression outperformed on both the data sets. Comparatively the mean absolute error of linear regression on experts’ opinion based data set was the lowest. Conclusions. We have concluded that patterns exist for the relationship of the resultant prediction (surgery duration) and other important features related to patient characteristics. Thus, machine learning tools can be used for predicting surgery duration. We have also concluded that the proposed framework may be used as a decision support tool for facilitation in surgery duration prediction which can improve the planning of ORs and their resources. Zahoor Ali 00923339474002 Muhammad Qummer ul Arfeen 0046760652203Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:bth-6074Local oai:bth.se:arkivex0A61803AA6E79117C125792E003527A6application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Others
sources NDLTD
topic Machine learning
surgery duration prediction
operating room planning
data mining
Computer Sciences
Datavetenskap (datalogi)
spellingShingle Machine learning
surgery duration prediction
operating room planning
data mining
Computer Sciences
Datavetenskap (datalogi)
Ali, Zahoor
Arfeen, Muhammad Qummer ul
The role of Machine Learning in Predicting CABG Surgery Duration
description Context. Operating room (OR) is one of the most expensive resources of a hospital. Its mismanagement is associated with high costs and revenues. There are various factors which may cause OR mismanagement, one of them is wrong estimation of surgery duration. The surgeons underestimate or overestimate surgery duration which causes underutilization or overutilization of OR and medical staff. Resolving the issue of wrong estimate can result improvement of the overall OR planning. Objectives. In this study we investigate two different techniques of feature selection, compare different regression based modeling techniques for surgery duration prediction. One of these techniques (with lowest mean absolute) is used for building a model. We further propose a framework for implementation of this model in the real world setup. Results. In our case the selected technique (correlation based feature selection with best first search in backward direction) for feature selection could not produce better results than the expert’s opinion based approach for feature selection. Linear regression outperformed on both the data sets. Comparatively the mean absolute error of linear regression on experts’ opinion based data set was the lowest. Conclusions. We have concluded that patterns exist for the relationship of the resultant prediction (surgery duration) and other important features related to patient characteristics. Thus, machine learning tools can be used for predicting surgery duration. We have also concluded that the proposed framework may be used as a decision support tool for facilitation in surgery duration prediction which can improve the planning of ORs and their resources. === Zahoor Ali 00923339474002 Muhammad Qummer ul Arfeen 0046760652203
author Ali, Zahoor
Arfeen, Muhammad Qummer ul
author_facet Ali, Zahoor
Arfeen, Muhammad Qummer ul
author_sort Ali, Zahoor
title The role of Machine Learning in Predicting CABG Surgery Duration
title_short The role of Machine Learning in Predicting CABG Surgery Duration
title_full The role of Machine Learning in Predicting CABG Surgery Duration
title_fullStr The role of Machine Learning in Predicting CABG Surgery Duration
title_full_unstemmed The role of Machine Learning in Predicting CABG Surgery Duration
title_sort role of machine learning in predicting cabg surgery duration
publisher Blekinge Tekniska Högskola, Sektionen för datavetenskap och kommunikation
publishDate 2011
url http://urn.kb.se/resolve?urn=urn:nbn:se:bth-6074
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