Literature DB >> 25592604

Melancholic depression prediction by identifying representative features in metabolic and microarray profiles with missing values.

Zhi Nie1, Tao Yang, Yashu Liu, Qingyang Li, Vaibhav A Narayan, Gayle Wittenberg, Jieping Ye.   

Abstract

Recent studies have revealed that melancholic depression, one major subtype of depression, is closely associated with the concentration of some metabolites and biological functions of certain genes and pathways. Meanwhile, recent advances in biotechnologies have allowed us to collect a large amount of genomic data, e.g., metabolites and microarray gene expression. With such a huge amount of information available, one approach that can give us new insights into the understanding of the fundamental biology underlying melancholic depression is to build disease status prediction models using classification or regression methods. However, the existence of strong empirical correlations, e.g., those exhibited by genes sharing the same biological pathway in microarray profiles, tremendously limits the performance of these methods. Furthermore, the occurrence of missing values which are ubiquitous in biomedical applications further complicates the problem. In this paper, we hypothesize that the problem of missing values might in some way benefit from the correlation between the variables and propose a method to learn a compressed set of representative features through an adapted version of sparse coding which is capable of identifying correlated variables and addressing the issue of missing values simultaneously. An efficient algorithm is also developed to solve the proposed formulation. We apply the proposed method on metabolic and microarray profiles collected from a group of subjects consisting of both patients with melancholic depression and healthy controls. Results show that the proposed method can not only produce meaningful clusters of variables but also generate a set of representative features that achieve superior classification performance over those generated by traditional clustering and data imputation techniques. In particular, on both datasets, we found that in comparison with the competing algorithms, the representative features learned by the proposed method give rise to significantly improved sensitivity scores, suggesting that the learned features allow prediction with high accuracy of disease status in those who are diagnosed with melancholic depression. To our best knowledge, this is the first work that applies sparse coding to deal with high feature correlations and missing values, which are common challenges in many biomedical applications. The proposed method can be readily adapted to other biomedical applications involving incomplete and high-dimensional data.

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Mesh:

Year:  2015        PMID: 25592604      PMCID: PMC4299923     

Source DB:  PubMed          Journal:  Pac Symp Biocomput        ISSN: 2335-6928


  8 in total

1.  Regression approaches for microarray data analysis.

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4.  Plasma catecholamine metabolites in subtypes of major depression.

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Journal:  Biol Psychiatry       Date:  1987-12       Impact factor: 13.382

5.  The possible role of the kynurenine pathway in adolescent depression with melancholic features.

Authors:  Vilma Gabbay; Rachel G Klein; Yisrael Katz; Sandra Mendoza; Leah E Guttman; Carmen M Alonso; James S Babb; Glenn S Hirsch; Leonard Liebes
Journal:  J Child Psychol Psychiatry       Date:  2010-04-12       Impact factor: 8.982

6.  Response to a selective serotonin reuptake inhibitor (citalopram) in major depressive disorder with melancholic features: a STAR*D report.

Authors:  Patrick J McGrath; Ahsan Y Khan; Madhukar H Trivedi; Jonathan W Stewart; David W Morris; Stephen R Wisniewski; Sachiko Miyahara; Andrew A Nierenberg; Maurizio Fava; A John Rush
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7.  HMDB 3.0--The Human Metabolome Database in 2013.

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  8 in total
  1 in total

1.  Predictive modeling of treatment resistant depression using data from STAR*D and an independent clinical study.

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  1 in total

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