Bayesian Modeling for Genetic Anticipation in Presence of Mutational Heterogeneity: A Case Study in Lynch Syndrome

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Bayesian Modeling for Genetic Anticipation in Presence of Mutational Heterogeneity: A Case Study in Lynch Syndrome. / Boonstra, Philip S; Mukherjee, Bhramar; Taylor, Jeremy M G; Nilbert, Mef; Moreno, Victor; Gruber, Stephen B.

In: Biometrics, Vol. 67, No. 4, 12.2011, p. 1627-1637.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Boonstra, PS, Mukherjee, B, Taylor, JMG, Nilbert, M, Moreno, V & Gruber, SB 2011, 'Bayesian Modeling for Genetic Anticipation in Presence of Mutational Heterogeneity: A Case Study in Lynch Syndrome', Biometrics, vol. 67, no. 4, pp. 1627-1637. https://doi.org/10.1111/j.1541-0420.2011.01607.x

APA

Boonstra, P. S., Mukherjee, B., Taylor, J. M. G., Nilbert, M., Moreno, V., & Gruber, S. B. (2011). Bayesian Modeling for Genetic Anticipation in Presence of Mutational Heterogeneity: A Case Study in Lynch Syndrome. Biometrics, 67(4), 1627-1637. https://doi.org/10.1111/j.1541-0420.2011.01607.x

Vancouver

Boonstra PS, Mukherjee B, Taylor JMG, Nilbert M, Moreno V, Gruber SB. Bayesian Modeling for Genetic Anticipation in Presence of Mutational Heterogeneity: A Case Study in Lynch Syndrome. Biometrics. 2011 Dec;67(4):1627-1637. https://doi.org/10.1111/j.1541-0420.2011.01607.x

Author

Boonstra, Philip S ; Mukherjee, Bhramar ; Taylor, Jeremy M G ; Nilbert, Mef ; Moreno, Victor ; Gruber, Stephen B. / Bayesian Modeling for Genetic Anticipation in Presence of Mutational Heterogeneity: A Case Study in Lynch Syndrome. In: Biometrics. 2011 ; Vol. 67, No. 4. pp. 1627-1637.

Bibtex

@article{326032a30e5043cc950a496443705bce,
title = "Bayesian Modeling for Genetic Anticipation in Presence of Mutational Heterogeneity: A Case Study in Lynch Syndrome",
abstract = "Summary Genetic anticipation, described by earlier age of onset (AOO) and more aggressive symptoms in successive generations, is a phenomenon noted in certain hereditary diseases. Its extent may vary between families and/or between mutation subtypes known to be associated with the disease phenotype. In this article, we posit a Bayesian approach to infer genetic anticipation under flexible random effects models for censored data that capture the effect of successive generations on AOO. Primary interest lies in the random effects. Misspecifying the distribution of random effects may result in incorrect inferential conclusions. We compare the fit of four-candidate random effects distributions via Bayesian model fit diagnostics. A related statistical issue here is isolating the confounding effect of changes in secular trends, screening, and medical practices that may affect time to disease detection across birth cohorts. Using historic cancer registry data, we borrow from relative survival analysis methods to adjust for changes in age-specific incidence across birth cohorts. Our motivating case study comes from a Danish cancer register of 124 families with mutations in mismatch repair (MMR) genes known to cause hereditary nonpolyposis colorectal cancer, also called Lynch syndrome (LS). We find evidence for a decrease in AOO between generations in this article. Our model predicts family-level anticipation effects that are potentially useful in genetic counseling clinics for high-risk families.",
author = "Boonstra, {Philip S} and Bhramar Mukherjee and Taylor, {Jeremy M G} and Mef Nilbert and Victor Moreno and Gruber, {Stephen B}",
note = "{\textcopyright} 2011, The International Biometric Society.",
year = "2011",
month = dec,
doi = "http://dx.doi.org/10.1111/j.1541-0420.2011.01607.x",
language = "English",
volume = "67",
pages = "1627--1637",
journal = "Biometrics",
issn = "0006-341X",
publisher = "Wiley-Blackwell",
number = "4",

}

RIS

TY - JOUR

T1 - Bayesian Modeling for Genetic Anticipation in Presence of Mutational Heterogeneity: A Case Study in Lynch Syndrome

AU - Boonstra, Philip S

AU - Mukherjee, Bhramar

AU - Taylor, Jeremy M G

AU - Nilbert, Mef

AU - Moreno, Victor

AU - Gruber, Stephen B

N1 - © 2011, The International Biometric Society.

PY - 2011/12

Y1 - 2011/12

N2 - Summary Genetic anticipation, described by earlier age of onset (AOO) and more aggressive symptoms in successive generations, is a phenomenon noted in certain hereditary diseases. Its extent may vary between families and/or between mutation subtypes known to be associated with the disease phenotype. In this article, we posit a Bayesian approach to infer genetic anticipation under flexible random effects models for censored data that capture the effect of successive generations on AOO. Primary interest lies in the random effects. Misspecifying the distribution of random effects may result in incorrect inferential conclusions. We compare the fit of four-candidate random effects distributions via Bayesian model fit diagnostics. A related statistical issue here is isolating the confounding effect of changes in secular trends, screening, and medical practices that may affect time to disease detection across birth cohorts. Using historic cancer registry data, we borrow from relative survival analysis methods to adjust for changes in age-specific incidence across birth cohorts. Our motivating case study comes from a Danish cancer register of 124 families with mutations in mismatch repair (MMR) genes known to cause hereditary nonpolyposis colorectal cancer, also called Lynch syndrome (LS). We find evidence for a decrease in AOO between generations in this article. Our model predicts family-level anticipation effects that are potentially useful in genetic counseling clinics for high-risk families.

AB - Summary Genetic anticipation, described by earlier age of onset (AOO) and more aggressive symptoms in successive generations, is a phenomenon noted in certain hereditary diseases. Its extent may vary between families and/or between mutation subtypes known to be associated with the disease phenotype. In this article, we posit a Bayesian approach to infer genetic anticipation under flexible random effects models for censored data that capture the effect of successive generations on AOO. Primary interest lies in the random effects. Misspecifying the distribution of random effects may result in incorrect inferential conclusions. We compare the fit of four-candidate random effects distributions via Bayesian model fit diagnostics. A related statistical issue here is isolating the confounding effect of changes in secular trends, screening, and medical practices that may affect time to disease detection across birth cohorts. Using historic cancer registry data, we borrow from relative survival analysis methods to adjust for changes in age-specific incidence across birth cohorts. Our motivating case study comes from a Danish cancer register of 124 families with mutations in mismatch repair (MMR) genes known to cause hereditary nonpolyposis colorectal cancer, also called Lynch syndrome (LS). We find evidence for a decrease in AOO between generations in this article. Our model predicts family-level anticipation effects that are potentially useful in genetic counseling clinics for high-risk families.

U2 - http://dx.doi.org/10.1111/j.1541-0420.2011.01607.x

DO - http://dx.doi.org/10.1111/j.1541-0420.2011.01607.x

M3 - Journal article

VL - 67

SP - 1627

EP - 1637

JO - Biometrics

JF - Biometrics

SN - 0006-341X

IS - 4

ER -

ID: 40182883