ccSVM: Correcting Support Vector Machines for confounding factors in biological data classification


Date

2011

Publication Type

Journal Article

ETH Bibliography

no

Citations

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Data

Abstract

Motivation: Classifying biological data into different groups is a central task of bioinformatics: for instance, to predict the function of a gene or protein, the disease state of a patient or the phenotype of an individual based on its genotype. Support Vector Machines are a wide spread approach for classifying biological data, due to their high accuracy, their ability to deal with structured data such as strings, and the ease to integrate various types of data. However, it is unclear how to correct for confounding factors such as population structure, age or gender or experimental conditions in Support Vector Machine classification. Results: In this article, we present a Support Vector Machine classifier that can correct the prediction for observed confounding factors. This is achieved by minimizing the statistical dependence between the classifier and the confounding factors. We prove that this formulation can be transformed into a standard Support Vector Machine with rescaled input data. In our experiments, our confounder correcting SVM (ccSVM) improves tumor diagnosis based on samples from different labs, tuberculosis diagnosis in patients of varying age, ethnicity and gender, and phenotype prediction in the presence of population structure and outperforms state-of-the-art methods in terms of prediction accuracy.

Publication status

published

Editor

Book title

Volume

27 (13)

Pages / Article No.

1342

Publisher

Oxford University Press

Event

Edition / version

Methods

Software

Geographic location

Date collected

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Subject

Organisational unit

09486 - Borgwardt, Karsten M. (ehemalig) / Borgwardt, Karsten M. (former) check_circle

Notes

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