A Flexible and Robust Approach to Analyze Survival Systems in the Presence of Extreme Observations

Survival systems are difficult to analyze in the presence of extreme observations and multicollinearity. Finding appropriate models that provide a robust description of such survival systems and that address the smooth hazards in the context of covariates can be challenging given the sheer number of...

Full description

Bibliographic Details
Main Authors: Maryam Sadiq, Tahir Mehmood
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2021/9927377
id doaj-dffad0511b0f43dbbfb4f8bfeaa78a00
record_format Article
spelling doaj-dffad0511b0f43dbbfb4f8bfeaa78a002021-05-31T00:33:14ZengHindawi LimitedMathematical Problems in Engineering1563-51472021-01-01202110.1155/2021/9927377A Flexible and Robust Approach to Analyze Survival Systems in the Presence of Extreme ObservationsMaryam Sadiq0Tahir Mehmood1Department of StatisticsSchool of Natural Sciences (SNS)Survival systems are difficult to analyze in the presence of extreme observations and multicollinearity. Finding appropriate models that provide a robust description of such survival systems and that address the smooth hazards in the context of covariates can be challenging given the sheer number of possibilities. Survival time algorithms that evaluate the efficiency of models in the presence of extreme observations over different datasets provide an effective tool to identify robust systems. However, the existing algorithms addressing the analysis of survival systems are limited in long-term evaluations. Therefore, an algorithm that can analyze survival time response on high-dimensional complex survival systems having extreme observations is developed which explores large margins dynamically. This algorithm is developed as a conjugate of flexible parametric models and partial least squares to estimate smooth, flexible, and robust functions to extrapolate the survival model in long-term evaluations in the presence of extreme observations. The algorithm is tested and validated using four distributions based on a simulated dataset generated from the Weibull distribution and compared with partial least squares-Cox regression. The comparison shows its flexibility and efficiency in handling different survival systems in the presence of extreme values. The algorithm is also used to analyze four real datasets of breast cancer survival time, each containing seven gene signatures. The coefficients of significant genes for each dataset are estimated. The flexibility in handling various distributions as parametric survival models supports the application of the algorithm to a large variety of different survival problems and represents a robust statistical framework for survival analysis in the presence of extreme observations.http://dx.doi.org/10.1155/2021/9927377
collection DOAJ
language English
format Article
sources DOAJ
author Maryam Sadiq
Tahir Mehmood
spellingShingle Maryam Sadiq
Tahir Mehmood
A Flexible and Robust Approach to Analyze Survival Systems in the Presence of Extreme Observations
Mathematical Problems in Engineering
author_facet Maryam Sadiq
Tahir Mehmood
author_sort Maryam Sadiq
title A Flexible and Robust Approach to Analyze Survival Systems in the Presence of Extreme Observations
title_short A Flexible and Robust Approach to Analyze Survival Systems in the Presence of Extreme Observations
title_full A Flexible and Robust Approach to Analyze Survival Systems in the Presence of Extreme Observations
title_fullStr A Flexible and Robust Approach to Analyze Survival Systems in the Presence of Extreme Observations
title_full_unstemmed A Flexible and Robust Approach to Analyze Survival Systems in the Presence of Extreme Observations
title_sort flexible and robust approach to analyze survival systems in the presence of extreme observations
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1563-5147
publishDate 2021-01-01
description Survival systems are difficult to analyze in the presence of extreme observations and multicollinearity. Finding appropriate models that provide a robust description of such survival systems and that address the smooth hazards in the context of covariates can be challenging given the sheer number of possibilities. Survival time algorithms that evaluate the efficiency of models in the presence of extreme observations over different datasets provide an effective tool to identify robust systems. However, the existing algorithms addressing the analysis of survival systems are limited in long-term evaluations. Therefore, an algorithm that can analyze survival time response on high-dimensional complex survival systems having extreme observations is developed which explores large margins dynamically. This algorithm is developed as a conjugate of flexible parametric models and partial least squares to estimate smooth, flexible, and robust functions to extrapolate the survival model in long-term evaluations in the presence of extreme observations. The algorithm is tested and validated using four distributions based on a simulated dataset generated from the Weibull distribution and compared with partial least squares-Cox regression. The comparison shows its flexibility and efficiency in handling different survival systems in the presence of extreme values. The algorithm is also used to analyze four real datasets of breast cancer survival time, each containing seven gene signatures. The coefficients of significant genes for each dataset are estimated. The flexibility in handling various distributions as parametric survival models supports the application of the algorithm to a large variety of different survival problems and represents a robust statistical framework for survival analysis in the presence of extreme observations.
url http://dx.doi.org/10.1155/2021/9927377
work_keys_str_mv AT maryamsadiq aflexibleandrobustapproachtoanalyzesurvivalsystemsinthepresenceofextremeobservations
AT tahirmehmood aflexibleandrobustapproachtoanalyzesurvivalsystemsinthepresenceofextremeobservations
AT maryamsadiq flexibleandrobustapproachtoanalyzesurvivalsystemsinthepresenceofextremeobservations
AT tahirmehmood flexibleandrobustapproachtoanalyzesurvivalsystemsinthepresenceofextremeobservations
_version_ 1721419757863829504