Enhancing SVM for survival data using local invariances and weighting

dc.contributor.author
Sanz Ródenas, Héctor
dc.contributor.author
Reverter Comes, Ferran
dc.contributor.author
Valim, Clarissa
dc.date.issued
2021-02-24T17:39:24Z
dc.date.issued
2021-02-24T17:39:24Z
dc.date.issued
2020-05-19
dc.date.issued
2021-02-24T17:39:24Z
dc.identifier
1471-2105
dc.identifier
https://hdl.handle.net/2445/174278
dc.identifier
701605
dc.identifier
32429884
dc.description.abstract
Abstract Background: The necessity to analyze medium-throughput data in epidemiological studies with small sample size, particularly when studying biomedical data may hinder the use of classical statistical methods. Support vector machines (SVM) models can be successfully applied in this setting because they are a powerful tool to analyze data with large number of predictors and limited sample size, especially when handling binary outcomes. However, biomedical research often involves analysis of time-to-event outcomes and has to account for censoring. Methods to handle censored data in the SVM framework can be divided into two classes: those based on support vector regression (SVR) and those based on binary classification. Methods based on SVR seem to be suboptimal to handle sparse data and yield results comparable to Cox proportional hazards model and kernel Cox regression. The limited work dedicated to assess methods based on of SVM for binary classification has been based on SVM learning using privileged information and SVM with uncertain classes. Results: This paper proposes alternative methods and extensions within the binary classification framework, specifically, a conditional survival approach for weighting censored observations and a semi-supervised SVM with local invariances. Using simulation studies and some real datasets, we evaluate those two methods and compare them with a weighted SVM model, SVM extensions found in the literature, kernel Cox regression and Cox model. Conclusions: Our proposed methods perform generally better under a wide variety of realistic scenarios about the structure of biomedical data. Specifically, the local invariances method using the conditional survival approach is the most robust method under different scenarios and is a good approach to consider as an alternative to other time-to-event methods. When analysing real data is a method to be considered and recommended since outperforms other methods in proportional and non-proportional scenarios and sparse data, which is something usual in biomedical data and biomarkers analysis.
dc.format
20 p.
dc.format
application/pdf
dc.format
application/pdf
dc.language
eng
dc.publisher
BioMed Central
dc.relation
Reproducció del document publicat a: https://doi.org/10.1186/s12859-020-3481-2
dc.relation
BMC Bioinformatics, 2020, vol. 21, num. 193
dc.relation
https://doi.org/10.1186/s12859-020-3481-2
dc.rights
cc-by (c) Sanz Ródenas, Héctor et al., 2020
dc.rights
http://creativecommons.org/licenses/by/3.0/es
dc.rights
info:eu-repo/semantics/openAccess
dc.source
Articles publicats en revistes (Genètica, Microbiologia i Estadística)
dc.subject
Biometria
dc.subject
Anàlisi vectorial
dc.subject
Biometry
dc.subject
Vector analysis
dc.title
Enhancing SVM for survival data using local invariances and weighting
dc.type
info:eu-repo/semantics/article
dc.type
info:eu-repo/semantics/publishedVersion


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