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Published in: BMC Cancer 1/2018

Open Access 01-12-2018 | Research article

Predicting multi-level drug response with gene expression profile in multiple myeloma using hierarchical ordinal regression

Authors: Xinyan Zhang, Bingzong Li, Huiying Han, Sha Song, Hongxia Xu, Yating Hong, Nengjun Yi, Wenzhuo Zhuang

Published in: BMC Cancer | Issue 1/2018

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Abstract

Background

Multiple myeloma (MM), like other cancers, is caused by the accumulation of genetic abnormalities. Heterogeneity exists in the patients’ response to treatments, for example, bortezomib. This urges efforts to identify biomarkers from numerous molecular features and build predictive models for identifying patients that can benefit from a certain treatment scheme. However, previous studies treated the multi-level ordinal drug response as a binary response where only responsive and non-responsive groups are considered.

Methods

It is desirable to directly analyze the multi-level drug response, rather than combining the response to two groups. In this study, we present a novel method to identify significantly associated biomarkers and then develop ordinal genomic classifier using the hierarchical ordinal logistic model. The proposed hierarchical ordinal logistic model employs the heavy-tailed Cauchy prior on the coefficients and is fitted by an efficient quasi-Newton algorithm.

Results

We apply our hierarchical ordinal regression approach to analyze two publicly available datasets for MM with five-level drug response and numerous gene expression measures. Our results show that our method is able to identify genes associated with the multi-level drug response and to generate powerful predictive models for predicting the multi-level response.

Conclusions

The proposed method allows us to jointly fit numerous correlated predictors and thus build efficient models for predicting the multi-level drug response. The predictive model for the multi-level drug response can be more informative than the previous approaches. Thus, the proposed approach provides a powerful tool for predicting multi-level drug response and has important impact on cancer studies.
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Metadata
Title
Predicting multi-level drug response with gene expression profile in multiple myeloma using hierarchical ordinal regression
Authors
Xinyan Zhang
Bingzong Li
Huiying Han
Sha Song
Hongxia Xu
Yating Hong
Nengjun Yi
Wenzhuo Zhuang
Publication date
01-12-2018
Publisher
BioMed Central
Published in
BMC Cancer / Issue 1/2018
Electronic ISSN: 1471-2407
DOI
https://doi.org/10.1186/s12885-018-4483-6

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