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      Improving Disease Prediction by Incorporating Family Disease History in Risk Prediction Models with Large-Scale Genetic Data

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          Abstract

          Despite the many successes of genome-wide association studies (GWAS), the known susceptibility variants identified by GWAS have modest effect sizes, leading to notable skepticism about the effectiveness of building a risk prediction model from large-scale genetic data. However, in contrast to genetic variants, the family history of diseases has been largely accepted as an important risk factor in clinical diagnosis and risk prediction. Nevertheless, the complicated structures of the family history of diseases have limited their application in clinical practice. Here, we developed a new method that enables incorporation of the general family history of diseases with a liability threshold model, and propose a new analysis strategy for risk prediction with penalized regression analysis that incorporates both large numbers of genetic variants and clinical risk factors. Application of our model to type 2 diabetes in the Korean population (1846 cases and 1846 controls) demonstrated that single-nucleotide polymorphisms accounted for 32.5% of the variation explained by the predicted risk scores in the test data set, and incorporation of family history led to an additional 6.3% improvement in prediction. Our results illustrate that family medical history provides valuable information on the variation of complex diseases and improves prediction performance.

          Most cited references22

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          Variable Selection via Nonconcave Penalized Likelihood and its Oracle Properties

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            Genomics, type 2 diabetes, and obesity.

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              Genome-wide association analysis by lasso penalized logistic regression.

              In ordinary regression, imposition of a lasso penalty makes continuous model selection straightforward. Lasso penalized regression is particularly advantageous when the number of predictors far exceeds the number of observations. The present article evaluates the performance of lasso penalized logistic regression in case-control disease gene mapping with a large number of SNPs (single nucleotide polymorphisms) predictors. The strength of the lasso penalty can be tuned to select a predetermined number of the most relevant SNPs and other predictors. For a given value of the tuning constant, the penalized likelihood is quickly maximized by cyclic coordinate ascent. Once the most potent marginal predictors are identified, their two-way and higher order interactions can also be examined by lasso penalized logistic regression. This strategy is tested on both simulated and real data. Our findings on coeliac disease replicate the previous SNP results and shed light on possible interactions among the SNPs. The software discussed is available in Mendel 9.0 at the UCLA Human Genetics web site. Supplementary data are available at Bioinformatics online.
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                Author and article information

                Journal
                Genetics
                Genetics
                genetics
                genetics
                genetics
                Genetics
                Genetics Society of America
                0016-6731
                1943-2631
                November 2017
                12 September 2017
                : 207
                : 3
                : 1147-1155
                Affiliations
                [* ]Institute of Health and Environment, Seoul National University, 08826, Republic of Korea
                []Interdisciplinary Program of Bioinformatics, Seoul National University, 08826, Republic of Korea
                []Department of Internal Medicine, College of Medicine, Seoul National University 03080, Republic of Korea
                [§ ]Department of Applied Information Statistics, Kyonggi University, Suwon, Republic of Korea 16227
                [** ]Department of Statistics, University of Seoul, Republic of Korea 02504
                [†† ]Department of Applied Statistics, Konkuk University, Seoul, Republic of Korea, 05029
                [‡‡ ]Department of Statistics, Seoul National University, 08826, Republic of Korea 05029
                [§§ ]Graduate School of Public Health, Seoul National University, 08826, Republic of Korea
                Author notes
                [1 ]Corresponding author: Department of Statistics, Seoul National University, Seoul 08826, Republic of Korea. E-mail: tspark@ 123456stats.snu.ac.kr . Graduate School of Public Health, Seoul National University, Seoul 08826, Republic of Korea. E-mail: won1@ 123456snu.ac.kr
                Article
                PMC5676245 PMC5676245 5676245 300283
                10.1534/genetics.117.300283
                5676245
                28899997
                7926c56c-b7aa-4195-b54d-47d8ac27d94a
                Copyright © 2017 by the Genetics Society of America
                History
                : 08 February 2017
                : 31 August 2017
                Page count
                Figures: 4, Tables: 1, Equations: 6, References: 35, Pages: 9
                Categories
                Investigations
                Genetics of Complex Traits

                penalized prediction model,family history,Genetic variability in complex binary traits,Liability threshold model,risk prediction in complex disease

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