Risk Factors and Predictive Modeling for Aortic Aneurysm

In 1963 – 1965, a large-scale health screening survey was undertaken in Sweden and this data set was linked to data from the national cause of death register. The data set involved more than 60,000 participants whose age at death less than 80 years. During the follow-up period until 2007, a total of...

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Main Author: Vanichbuncha, Tita
Format: Others
Language:English
Published: Linköpings universitet, Statistik 2012
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-80391
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spelling ndltd-UPSALLA1-oai-DiVA.org-liu-803912013-01-08T13:43:04ZRisk Factors and Predictive Modeling for Aortic AneurysmengVanichbuncha, TitaLinköpings universitet, StatistikLinköpings universitet, Tekniska högskolan2012cox regressionaortic aneurysmIn 1963 – 1965, a large-scale health screening survey was undertaken in Sweden and this data set was linked to data from the national cause of death register. The data set involved more than 60,000 participants whose age at death less than 80 years. During the follow-up period until 2007, a total of 437 (338 males and 99 females) participants died from aortic aneurysm. The survival analysis, continuation ratio model, and logistic regression were applied in order to identify significant risk factors. The Cox regression after stratification for AGE revealed that SEX, Blood Diastolic Pressure (BDP), and Beta-lipoprotein (BLP) were the most significant risk factors, followed by Cholesterol (KOL), Sialic Acid (SIA), height, Glutamic Oxalactic Transaminase, Urinary glucose (URIN_SOC), and Blood Systolic Pressure (BSP). Moreover, SEX and BDP were found as risk factors in almost every age group. Furthermore, BDP was strongly significant in both male and female subgroup.   The data set was divided into two sets: 70 percent for the training set and 30 percent for the test set in order to find the best technique for predicting aortic aneurysm. Five techniques were implemented: the Cox regression, the continuation ratio model, the logistic regression, the back-propagated artificial neural network, and the decision tree. The performance of each technique was evaluated by using area under the receiver operating characteristic curve. In our study, the continuation ratio and the logistic regression outperformed among the other techniques. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-80391application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Others
sources NDLTD
topic cox regression
aortic aneurysm
spellingShingle cox regression
aortic aneurysm
Vanichbuncha, Tita
Risk Factors and Predictive Modeling for Aortic Aneurysm
description In 1963 – 1965, a large-scale health screening survey was undertaken in Sweden and this data set was linked to data from the national cause of death register. The data set involved more than 60,000 participants whose age at death less than 80 years. During the follow-up period until 2007, a total of 437 (338 males and 99 females) participants died from aortic aneurysm. The survival analysis, continuation ratio model, and logistic regression were applied in order to identify significant risk factors. The Cox regression after stratification for AGE revealed that SEX, Blood Diastolic Pressure (BDP), and Beta-lipoprotein (BLP) were the most significant risk factors, followed by Cholesterol (KOL), Sialic Acid (SIA), height, Glutamic Oxalactic Transaminase, Urinary glucose (URIN_SOC), and Blood Systolic Pressure (BSP). Moreover, SEX and BDP were found as risk factors in almost every age group. Furthermore, BDP was strongly significant in both male and female subgroup.   The data set was divided into two sets: 70 percent for the training set and 30 percent for the test set in order to find the best technique for predicting aortic aneurysm. Five techniques were implemented: the Cox regression, the continuation ratio model, the logistic regression, the back-propagated artificial neural network, and the decision tree. The performance of each technique was evaluated by using area under the receiver operating characteristic curve. In our study, the continuation ratio and the logistic regression outperformed among the other techniques.
author Vanichbuncha, Tita
author_facet Vanichbuncha, Tita
author_sort Vanichbuncha, Tita
title Risk Factors and Predictive Modeling for Aortic Aneurysm
title_short Risk Factors and Predictive Modeling for Aortic Aneurysm
title_full Risk Factors and Predictive Modeling for Aortic Aneurysm
title_fullStr Risk Factors and Predictive Modeling for Aortic Aneurysm
title_full_unstemmed Risk Factors and Predictive Modeling for Aortic Aneurysm
title_sort risk factors and predictive modeling for aortic aneurysm
publisher Linköpings universitet, Statistik
publishDate 2012
url http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-80391
work_keys_str_mv AT vanichbunchatita riskfactorsandpredictivemodelingforaorticaneurysm
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