Non-mixture cure model estimation in bladder cancer patients: a novel approach with exponentiated Weibull exponential distribution

Objective: Cure models are frequently used in survival analysis to account for a cured fraction in the data. When there is a cure rate present, researchers often prefer cure models over parametric models to analyse the survival data. These models enable the ability to define the probability distribu...

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Main Authors: Omer, Mohamed Elamin, Mustafa, Mohd, Ali, Norhaslinda, Abd Rahman, Nur Haizum
Format: Article
Published: Asian Pacific Organization for Cancer Prevention 2023
Online Access:http://psasir.upm.edu.my/id/eprint/108976/
https://journal.waocp.org/article_90927.html
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spelling my.upm.eprints.1089762024-05-16T14:13:42Z http://psasir.upm.edu.my/id/eprint/108976/ Non-mixture cure model estimation in bladder cancer patients: a novel approach with exponentiated Weibull exponential distribution Omer, Mohamed Elamin Mustafa, Mohd Ali, Norhaslinda Abd Rahman, Nur Haizum Objective: Cure models are frequently used in survival analysis to account for a cured fraction in the data. When there is a cure rate present, researchers often prefer cure models over parametric models to analyse the survival data. These models enable the ability to define the probability distribution of survival durations for patients who are at risk. Various distributions can be considered for the survival times, such as Exponentiated Weibull Exponential (EWE), Exponential Exponential (EE), Weibull and lognormal distribution. The objective of this research is to choose the most appropriate distribution that accurately represents the survival times of patients who have not been cured. This will be accomplished by comparing various non-mixture cure models that are based on the EWE distribution with its sub-distributions, and distributions distinct from those belonging to the EWE distribution family. Material and Methods: A sample of 85 patients diagnosed with superficial bladder tumours was selected to be used in fitting the non-mixture cure model. In order to estimate the parameters of the suggested model, which takes into account the presence of a cure rate, censored data, and covariates, we utilized the maximum likelihood estimation technique using R software version 3.5.7. Result: Upon conducting a comparison of various parametric models fitted to the data, both with and without considering the cure fraction and without incorporating any predictors, the EE distribution yields the lowest AIC, BIC, and HQIC values among all the distributions considered in this study, (1191.921/1198.502, 1201.692/1203.387, 1195.851/1200.467). Furthermore, when considering a non-mixture cure model utilizing the EE distribution along with covariates, an estimated ratio was obtained between the probabilities of being cured for placebo and thiotepa groups (and its 95% confidence intervals) were 0.76130 (0.13914, 6.81863). Conclusion: The findings of this study indicate that EE distribution is the optimal selection for determining the duration of survival in individuals diagnosed with bladder cancer. Asian Pacific Organization for Cancer Prevention 2023 Article PeerReviewed Omer, Mohamed Elamin and Mustafa, Mohd and Ali, Norhaslinda and Abd Rahman, Nur Haizum (2023) Non-mixture cure model estimation in bladder cancer patients: a novel approach with exponentiated Weibull exponential distribution. Asian Pacific Journal of Cancer Prevention, 24 (12). pp. 4167-4177. ISSN 1513-7368; ESSN: 2476-762X https://journal.waocp.org/article_90927.html 10.31557/apjcp.2023.24.12.4167
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
description Objective: Cure models are frequently used in survival analysis to account for a cured fraction in the data. When there is a cure rate present, researchers often prefer cure models over parametric models to analyse the survival data. These models enable the ability to define the probability distribution of survival durations for patients who are at risk. Various distributions can be considered for the survival times, such as Exponentiated Weibull Exponential (EWE), Exponential Exponential (EE), Weibull and lognormal distribution. The objective of this research is to choose the most appropriate distribution that accurately represents the survival times of patients who have not been cured. This will be accomplished by comparing various non-mixture cure models that are based on the EWE distribution with its sub-distributions, and distributions distinct from those belonging to the EWE distribution family. Material and Methods: A sample of 85 patients diagnosed with superficial bladder tumours was selected to be used in fitting the non-mixture cure model. In order to estimate the parameters of the suggested model, which takes into account the presence of a cure rate, censored data, and covariates, we utilized the maximum likelihood estimation technique using R software version 3.5.7. Result: Upon conducting a comparison of various parametric models fitted to the data, both with and without considering the cure fraction and without incorporating any predictors, the EE distribution yields the lowest AIC, BIC, and HQIC values among all the distributions considered in this study, (1191.921/1198.502, 1201.692/1203.387, 1195.851/1200.467). Furthermore, when considering a non-mixture cure model utilizing the EE distribution along with covariates, an estimated ratio was obtained between the probabilities of being cured for placebo and thiotepa groups (and its 95% confidence intervals) were 0.76130 (0.13914, 6.81863). Conclusion: The findings of this study indicate that EE distribution is the optimal selection for determining the duration of survival in individuals diagnosed with bladder cancer.
format Article
author Omer, Mohamed Elamin
Mustafa, Mohd
Ali, Norhaslinda
Abd Rahman, Nur Haizum
spellingShingle Omer, Mohamed Elamin
Mustafa, Mohd
Ali, Norhaslinda
Abd Rahman, Nur Haizum
Non-mixture cure model estimation in bladder cancer patients: a novel approach with exponentiated Weibull exponential distribution
author_facet Omer, Mohamed Elamin
Mustafa, Mohd
Ali, Norhaslinda
Abd Rahman, Nur Haizum
author_sort Omer, Mohamed Elamin
title Non-mixture cure model estimation in bladder cancer patients: a novel approach with exponentiated Weibull exponential distribution
title_short Non-mixture cure model estimation in bladder cancer patients: a novel approach with exponentiated Weibull exponential distribution
title_full Non-mixture cure model estimation in bladder cancer patients: a novel approach with exponentiated Weibull exponential distribution
title_fullStr Non-mixture cure model estimation in bladder cancer patients: a novel approach with exponentiated Weibull exponential distribution
title_full_unstemmed Non-mixture cure model estimation in bladder cancer patients: a novel approach with exponentiated Weibull exponential distribution
title_sort non-mixture cure model estimation in bladder cancer patients: a novel approach with exponentiated weibull exponential distribution
publisher Asian Pacific Organization for Cancer Prevention
publishDate 2023
url http://psasir.upm.edu.my/id/eprint/108976/
https://journal.waocp.org/article_90927.html
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