Statistical Analysis and Modeling Health Data: A Longitudinal Study

Lung cancer has been considered one of the leading causes of deaths while cancer re- mains the second most common cause of deaths in the USA. Understanding the behavior of a disease over time could yield important information to make decisions about the disease. Statistical models could provide cruc...

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Main Author: Tharu, Bhikhari Prasad
Format: Others
Published: Scholar Commons 2016
Subjects:
Online Access:http://scholarcommons.usf.edu/etd/6413
http://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=7609&context=etd
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spelling ndltd-USF-oai-scholarcommons.usf.edu-etd-76092017-08-22T05:13:14Z Statistical Analysis and Modeling Health Data: A Longitudinal Study Tharu, Bhikhari Prasad Lung cancer has been considered one of the leading causes of deaths while cancer re- mains the second most common cause of deaths in the USA. Understanding the behavior of a disease over time could yield important information to make decisions about the disease. Statistical models could provide crucial clues and help to make a decision about the dis- ease, budget allocation, evaluation, and implement prevention. Longitudinal trend analysis of the diseases helps to understand long term effects and nature. Cholesterol level is one of the most contributing risk factors for Coronary Heart Disease. Studying cholesterol statistically helps to know more about its nature and provides crucial information to mitigate its effectiveness in diagnosing its impact to public health. In our study, we have analyzed lung cancer mortality in the USA based on age at death, period at death, and birth cohort to investigate its nature in longitudinal effects. The attempt has been made to estimate mortality rate based on age for different age groups and to find the relative risk of mortality due to period effect and relative risk due to birth cohort for lung cancer in the United States. Our statistical analysis and modeling are based on the data obtained from Surveillance Epidemiology and End Results (SEER) program of the United States. We have also investigated the probabilistic behavior of average cholesterol level based on gender and ethnicity. The study reveals significant differences with respect to the distribution they follow and their basic inferences which could be beneficial to draw conclusions in various ways in addressing related issues. At the same time, the change of cholesterol level over time for an individual might be a good source to study the association of cholesterol level, coronary heart disease and their effects on age. The cholesterol data is obtained from inter-university Consortium for Political and Social Research and National Health and Nutrition Examination Survey (NHANS) of the United States. Understanding the average change in total serum cholesterol level over time as people get older could be vital to explore it. We have studied the longitudinal behavior of the association of sex and time with cholesterol level. It is observed that age, sex, and time have an individual effect and can impact differently upon collective considerations. Their adverse effect in increasing cholesterol level could promote to worsen the cholesterol re- lated issues and hence heart related diseases. We believe our study pivots knowing more about target population of cholesterol level and helps to have the useful inference about cholesterol levels for public health. Finally, we also analyzed the average cholesterol data using a functional data analysis approach to understand its nature and effect on age. Since functional data analysis approach presents more flexibility in modeling, it could provide more insight in studying cholesterol level. 2016-06-09T07:00:00Z text application/pdf http://scholarcommons.usf.edu/etd/6413 http://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=7609&context=etd default Graduate Theses and Dissertations Scholar Commons Histogram Smoothing Bayesian Statistics Lung Cancer Mortality Functional Data Analysis Total Serum Cholesterol Level Longitudinal Data Applied Mathematics Epidemiology Statistics and Probability
collection NDLTD
format Others
sources NDLTD
topic Histogram Smoothing
Bayesian Statistics
Lung Cancer Mortality
Functional Data Analysis
Total Serum Cholesterol Level
Longitudinal Data
Applied Mathematics
Epidemiology
Statistics and Probability
spellingShingle Histogram Smoothing
Bayesian Statistics
Lung Cancer Mortality
Functional Data Analysis
Total Serum Cholesterol Level
Longitudinal Data
Applied Mathematics
Epidemiology
Statistics and Probability
Tharu, Bhikhari Prasad
Statistical Analysis and Modeling Health Data: A Longitudinal Study
description Lung cancer has been considered one of the leading causes of deaths while cancer re- mains the second most common cause of deaths in the USA. Understanding the behavior of a disease over time could yield important information to make decisions about the disease. Statistical models could provide crucial clues and help to make a decision about the dis- ease, budget allocation, evaluation, and implement prevention. Longitudinal trend analysis of the diseases helps to understand long term effects and nature. Cholesterol level is one of the most contributing risk factors for Coronary Heart Disease. Studying cholesterol statistically helps to know more about its nature and provides crucial information to mitigate its effectiveness in diagnosing its impact to public health. In our study, we have analyzed lung cancer mortality in the USA based on age at death, period at death, and birth cohort to investigate its nature in longitudinal effects. The attempt has been made to estimate mortality rate based on age for different age groups and to find the relative risk of mortality due to period effect and relative risk due to birth cohort for lung cancer in the United States. Our statistical analysis and modeling are based on the data obtained from Surveillance Epidemiology and End Results (SEER) program of the United States. We have also investigated the probabilistic behavior of average cholesterol level based on gender and ethnicity. The study reveals significant differences with respect to the distribution they follow and their basic inferences which could be beneficial to draw conclusions in various ways in addressing related issues. At the same time, the change of cholesterol level over time for an individual might be a good source to study the association of cholesterol level, coronary heart disease and their effects on age. The cholesterol data is obtained from inter-university Consortium for Political and Social Research and National Health and Nutrition Examination Survey (NHANS) of the United States. Understanding the average change in total serum cholesterol level over time as people get older could be vital to explore it. We have studied the longitudinal behavior of the association of sex and time with cholesterol level. It is observed that age, sex, and time have an individual effect and can impact differently upon collective considerations. Their adverse effect in increasing cholesterol level could promote to worsen the cholesterol re- lated issues and hence heart related diseases. We believe our study pivots knowing more about target population of cholesterol level and helps to have the useful inference about cholesterol levels for public health. Finally, we also analyzed the average cholesterol data using a functional data analysis approach to understand its nature and effect on age. Since functional data analysis approach presents more flexibility in modeling, it could provide more insight in studying cholesterol level.
author Tharu, Bhikhari Prasad
author_facet Tharu, Bhikhari Prasad
author_sort Tharu, Bhikhari Prasad
title Statistical Analysis and Modeling Health Data: A Longitudinal Study
title_short Statistical Analysis and Modeling Health Data: A Longitudinal Study
title_full Statistical Analysis and Modeling Health Data: A Longitudinal Study
title_fullStr Statistical Analysis and Modeling Health Data: A Longitudinal Study
title_full_unstemmed Statistical Analysis and Modeling Health Data: A Longitudinal Study
title_sort statistical analysis and modeling health data: a longitudinal study
publisher Scholar Commons
publishDate 2016
url http://scholarcommons.usf.edu/etd/6413
http://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=7609&context=etd
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