A generic nomogram for multinomial prediction models: theory and guidance for construction
Abstract Background The use of multinomial logistic regression models is advocated for modeling the associations of covariates with three or more mutually exclusive outcome categories. As compared to a binary logistic regression analysis, the simultaneous modeling of multiple outcome categories usin...
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doaj-4cff87d95c7e46fe8a159f52b1fd09a22020-11-25T01:02:16ZengBMCDiagnostic and Prognostic Research2397-75232017-04-01111710.1186/s41512-017-0010-5A generic nomogram for multinomial prediction models: theory and guidance for constructionMaarten van Smeden0Joris AH de Groot1Stavros Nikolakopoulos2Loes CM Bertens3Karel GM Moons4Johannes B. Reitsma5Julius Center for Health Sciences and Primary Care, University Medical Center Utrecht, HeidelberglaanJulius Center for Health Sciences and Primary Care, University Medical Center Utrecht, HeidelberglaanJulius Center for Health Sciences and Primary Care, University Medical Center Utrecht, HeidelberglaanDepartment of Obstetrics and Gynaecology, Erasmus MCJulius Center for Health Sciences and Primary Care, University Medical Center Utrecht, HeidelberglaanJulius Center for Health Sciences and Primary Care, University Medical Center Utrecht, HeidelberglaanAbstract Background The use of multinomial logistic regression models is advocated for modeling the associations of covariates with three or more mutually exclusive outcome categories. As compared to a binary logistic regression analysis, the simultaneous modeling of multiple outcome categories using a multinomial model often better resembles the clinical setting, where a physician typically must distinguish between more than two possible diagnoses or outcome events for an individual patient (e.g., the differential diagnosis). A disadvantage of the multinomial logistic model is that the interpretation of its results is often complex. In particular, the calculation of predicted probabilities for the various outcomes requires a series of careful calculations. Nomograms are widely used in studies reporting binary logistic regression models to facilitate the interpretation of the results and allow the calculation of the predicted probability for individuals. Methods and results In this paper we outline an approach for deriving a generic nomogram for multinomial logistic regression models and an accompanying scoring chart that can further simplify the calculation of predicted multinomial probabilities. We illustrate the use of the nomogram and scoring chart and their interpretation using a clinical example. Conclusions The generic multinomial nomogram and scoring chart can be used irrespective of the number of outcome categories that are present.http://link.springer.com/article/10.1186/s41512-017-0010-5PredictionNomogramGraphical presentationMultinomial outcomesLogistic modelScoring chart |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Maarten van Smeden Joris AH de Groot Stavros Nikolakopoulos Loes CM Bertens Karel GM Moons Johannes B. Reitsma |
spellingShingle |
Maarten van Smeden Joris AH de Groot Stavros Nikolakopoulos Loes CM Bertens Karel GM Moons Johannes B. Reitsma A generic nomogram for multinomial prediction models: theory and guidance for construction Diagnostic and Prognostic Research Prediction Nomogram Graphical presentation Multinomial outcomes Logistic model Scoring chart |
author_facet |
Maarten van Smeden Joris AH de Groot Stavros Nikolakopoulos Loes CM Bertens Karel GM Moons Johannes B. Reitsma |
author_sort |
Maarten van Smeden |
title |
A generic nomogram for multinomial prediction models: theory and guidance for construction |
title_short |
A generic nomogram for multinomial prediction models: theory and guidance for construction |
title_full |
A generic nomogram for multinomial prediction models: theory and guidance for construction |
title_fullStr |
A generic nomogram for multinomial prediction models: theory and guidance for construction |
title_full_unstemmed |
A generic nomogram for multinomial prediction models: theory and guidance for construction |
title_sort |
generic nomogram for multinomial prediction models: theory and guidance for construction |
publisher |
BMC |
series |
Diagnostic and Prognostic Research |
issn |
2397-7523 |
publishDate |
2017-04-01 |
description |
Abstract Background The use of multinomial logistic regression models is advocated for modeling the associations of covariates with three or more mutually exclusive outcome categories. As compared to a binary logistic regression analysis, the simultaneous modeling of multiple outcome categories using a multinomial model often better resembles the clinical setting, where a physician typically must distinguish between more than two possible diagnoses or outcome events for an individual patient (e.g., the differential diagnosis). A disadvantage of the multinomial logistic model is that the interpretation of its results is often complex. In particular, the calculation of predicted probabilities for the various outcomes requires a series of careful calculations. Nomograms are widely used in studies reporting binary logistic regression models to facilitate the interpretation of the results and allow the calculation of the predicted probability for individuals. Methods and results In this paper we outline an approach for deriving a generic nomogram for multinomial logistic regression models and an accompanying scoring chart that can further simplify the calculation of predicted multinomial probabilities. We illustrate the use of the nomogram and scoring chart and their interpretation using a clinical example. Conclusions The generic multinomial nomogram and scoring chart can be used irrespective of the number of outcome categories that are present. |
topic |
Prediction Nomogram Graphical presentation Multinomial outcomes Logistic model Scoring chart |
url |
http://link.springer.com/article/10.1186/s41512-017-0010-5 |
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