Literature DB >> 15249660

Tree-structured supervised learning and the genetics of hypertension.

Jing Huang1, Alfred Lin, Balasubramanian Narasimhan, Thomas Quertermous, C Agnes Hsiung, Low-Tone Ho, John S Grove, Michael Olivier, Koustubh Ranade, Neil J Risch, Richard A Olshen.   

Abstract

This paper is about an algorithm, FlexTree, for general supervised learning. It extends the binary tree-structured approach (Classification and Regression Trees, CART) although it differs greatly in its selection and combination of predictors. It is particularly applicable to assessing interactions: gene by gene and gene by environment as they bear on complex disease. One model for predisposition to complex disease involves many genes. Of them, most are pure noise; each of the values that is not the prevalent genotype for the minority of genes that contribute to the signal carries a "score." Scores add. Individuals with scores above an unknown threshold are predisposed to the disease. For the additive score problem and simulated data, FlexTree has cross-validated risk better than many cutting-edge technologies to which it was compared when small fractions of candidate genes carry the signal. For the model where only a precise list of aberrant genotypes is predisposing, there is not a systematic pattern of absolute superiority; however, overall, FlexTree seems better than the other technologies. We tried the algorithm on data from 563 Chinese women, 206 hypotensive, 357 hypertensive, with information on ethnicity, menopausal status, insulin-resistant status, and 21 loci. FlexTree and Logic Regression appear better than the others in terms of Bayes risk. However, the differences are not significant in the usual statistical sense.

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Year:  2004        PMID: 15249660      PMCID: PMC489971          DOI: 10.1073/pnas.0403794101

Source DB:  PubMed          Journal:  Proc Natl Acad Sci U S A        ISSN: 0027-8424            Impact factor:   11.205


  14 in total

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2.  'Gene shaving' as a method for identifying distinct sets of genes with similar expression patterns.

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3.  Use of classification trees for association studies.

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Review 4.  The insulin resistance syndrome.

Authors:  Gerald M Reaven
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5.  Sibling-based association study of the PPARgamma2 Pro12Ala polymorphism and metabolic variables in Chinese and Japanese hypertension families: a SAPPHIRe study. Stanford Asian-Pacific Program in Hypertension and Insulin Resistance.

Authors:  L M Chuang; C A Hsiung; Y D Chen; L T Ho; W H Sheu; D Pei; C H Nakatsuka; D Cox; R E Pratt; H H Lei; T Y Tai
Journal:  J Mol Med (Berl)       Date:  2001-11       Impact factor: 4.599

6.  Genetic variation in the human urea transporter-2 is associated with variation in blood pressure.

Authors:  K Ranade; K D Wu; C M Hwu; C T Ting; D Pei; R Pesich; J Hebert; Y D Chen; R Pratt; R Olshen; K Masaki; N Risch; D R Cox; D Botstein
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  16 in total

1.  Power of data mining methods to detect genetic associations and interactions.

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2.  Structures and Assumptions: Strategies to Harness Gene × Gene and Gene × Environment Interactions in GWAS.

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6.  Two genetic variants in telomerase-associated protein 1 are associated with stomach cancer risk.

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7.  Bayesian analysis of genetic interactions in case-control studies, with application to adiponectin genes and colorectal cancer risk.

Authors:  Nengjun Yi; Virginia G Kaklamani; Boris Pasche
Journal:  Ann Hum Genet       Date:  2010-09-15       Impact factor: 1.670

8.  Clique-finding for heterogeneity and multidimensionality in biomarker epidemiology research: the CHAMBER algorithm.

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9.  Network Based Prediction Model for Genomics Data Analysis.

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10.  Power of multifactor dimensionality reduction and penalized logistic regression for detecting gene-gene interaction in a case-control study.

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Journal:  BMC Med Genet       Date:  2009-12-04       Impact factor: 2.103

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