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Survival Regression Modeling Strategies in CVD Prediction

BACKGROUND: A fundamental part of prevention is prediction. Potential predictors are the sine qua non of prediction models. However, whether incorporating novel predictors to prediction models could be directly translated to added predictive value remains an area of dispute. The difference between t...

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Autores principales: Barkhordari, Mahnaz, Padyab, Mojgan, Sardarinia, Mahsa, Hadaegh, Farzad, Azizi, Fereidoun, Bozorgmanesh, Mohammadreza
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Kowsar 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5192998/
https://www.ncbi.nlm.nih.gov/pubmed/28058053
http://dx.doi.org/10.5812/ijem.32156
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author Barkhordari, Mahnaz
Padyab, Mojgan
Sardarinia, Mahsa
Hadaegh, Farzad
Azizi, Fereidoun
Bozorgmanesh, Mohammadreza
author_facet Barkhordari, Mahnaz
Padyab, Mojgan
Sardarinia, Mahsa
Hadaegh, Farzad
Azizi, Fereidoun
Bozorgmanesh, Mohammadreza
author_sort Barkhordari, Mahnaz
collection PubMed
description BACKGROUND: A fundamental part of prevention is prediction. Potential predictors are the sine qua non of prediction models. However, whether incorporating novel predictors to prediction models could be directly translated to added predictive value remains an area of dispute. The difference between the predictive power of a predictive model with (enhanced model) and without (baseline model) a certain predictor is generally regarded as an indicator of the predictive value added by that predictor. Indices such as discrimination and calibration have long been used in this regard. Recently, the use of added predictive value has been suggested while comparing the predictive performances of the predictive models with and without novel biomarkers. OBJECTIVES: User-friendly statistical software capable of implementing novel statistical procedures is conspicuously lacking. This shortcoming has restricted implementation of such novel model assessment methods. We aimed to construct Stata commands to help researchers obtain the aforementioned statistical indices. MATERIALS AND METHODS: We have written Stata commands that are intended to help researchers obtain the following. 1, Nam-D’Agostino X(2) goodness of fit test; 2, Cut point-free and cut point-based net reclassification improvement index (NRI), relative absolute integrated discriminatory improvement index (IDI), and survival-based regression analyses. We applied the commands to real data on women participating in the Tehran lipid and glucose study (TLGS) to examine if information relating to a family history of premature cardiovascular disease (CVD), waist circumference, and fasting plasma glucose can improve predictive performance of Framingham’s general CVD risk algorithm. RESULTS: The command is adpredsurv for survival models. CONCLUSIONS: Herein we have described the Stata package “adpredsurv” for calculation of the Nam-D’Agostino X(2) goodness of fit test as well as cut point-free and cut point-based NRI, relative and absolute IDI, and survival-based regression analyses. We hope this work encourages the use of novel methods in examining predictive capacity of the emerging plethora of novel biomarkers.
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spelling pubmed-51929982017-01-05 Survival Regression Modeling Strategies in CVD Prediction Barkhordari, Mahnaz Padyab, Mojgan Sardarinia, Mahsa Hadaegh, Farzad Azizi, Fereidoun Bozorgmanesh, Mohammadreza Int J Endocrinol Metab Research Article BACKGROUND: A fundamental part of prevention is prediction. Potential predictors are the sine qua non of prediction models. However, whether incorporating novel predictors to prediction models could be directly translated to added predictive value remains an area of dispute. The difference between the predictive power of a predictive model with (enhanced model) and without (baseline model) a certain predictor is generally regarded as an indicator of the predictive value added by that predictor. Indices such as discrimination and calibration have long been used in this regard. Recently, the use of added predictive value has been suggested while comparing the predictive performances of the predictive models with and without novel biomarkers. OBJECTIVES: User-friendly statistical software capable of implementing novel statistical procedures is conspicuously lacking. This shortcoming has restricted implementation of such novel model assessment methods. We aimed to construct Stata commands to help researchers obtain the aforementioned statistical indices. MATERIALS AND METHODS: We have written Stata commands that are intended to help researchers obtain the following. 1, Nam-D’Agostino X(2) goodness of fit test; 2, Cut point-free and cut point-based net reclassification improvement index (NRI), relative absolute integrated discriminatory improvement index (IDI), and survival-based regression analyses. We applied the commands to real data on women participating in the Tehran lipid and glucose study (TLGS) to examine if information relating to a family history of premature cardiovascular disease (CVD), waist circumference, and fasting plasma glucose can improve predictive performance of Framingham’s general CVD risk algorithm. RESULTS: The command is adpredsurv for survival models. CONCLUSIONS: Herein we have described the Stata package “adpredsurv” for calculation of the Nam-D’Agostino X(2) goodness of fit test as well as cut point-free and cut point-based NRI, relative and absolute IDI, and survival-based regression analyses. We hope this work encourages the use of novel methods in examining predictive capacity of the emerging plethora of novel biomarkers. Kowsar 2016-03-23 /pmc/articles/PMC5192998/ /pubmed/28058053 http://dx.doi.org/10.5812/ijem.32156 Text en Copyright © 2016, Research Institute For Endocrine Sciences and Iran Endocrine Society http://creativecommons.org/licenses/by-nc/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution-NonCommercial 4.0 International License (http://creativecommons.org/licenses/by-nc/4.0/) which permits copy and redistribute the material just in noncommercial usages, provided the original work is properly cited.
spellingShingle Research Article
Barkhordari, Mahnaz
Padyab, Mojgan
Sardarinia, Mahsa
Hadaegh, Farzad
Azizi, Fereidoun
Bozorgmanesh, Mohammadreza
Survival Regression Modeling Strategies in CVD Prediction
title Survival Regression Modeling Strategies in CVD Prediction
title_full Survival Regression Modeling Strategies in CVD Prediction
title_fullStr Survival Regression Modeling Strategies in CVD Prediction
title_full_unstemmed Survival Regression Modeling Strategies in CVD Prediction
title_short Survival Regression Modeling Strategies in CVD Prediction
title_sort survival regression modeling strategies in cvd prediction
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5192998/
https://www.ncbi.nlm.nih.gov/pubmed/28058053
http://dx.doi.org/10.5812/ijem.32156
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