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Featured researches published by Neda Gharani.


Personalized Medicine | 2010

Coriell Personalized Medicine Collaborative®: a prospective study of the utility of personalized medicine

Margaret A. Keller; Erynn S. Gordon; Catharine B Stack; Neda Gharani; Courtney J Sill; Tara J. Schmidlen; Mintzer Joseph; John Pallies; Norman P. Gerry; Michael F. Christman

There is a dearth of large prospective studies to determine if genetic risk factors are useful predictors of health outcomes and if reporting them to individuals or physicians changes health behavior. The Coriell Personalized Medicine Collaborative® (CPMC, NJ, USA) is a prospective observational study with three cohorts - community, cancer and chronic disease cohorts. Participants provide detailed medical history through a dynamic internet-based portal. DNA is tested and personalized risk reports are provided for potentially actionable health conditions. To date, the community cohort has enrolled 4372 participants. The internet-based portal supplies educational content, captures phenotypic data and delivers customized risk reports. The Informed Cohort Oversight Board has approved 16 health conditions to date, and risk reports with genetic and nongenetic risks for six conditions have been released. The majority (87%) of participants who completed requisite questionnaires viewed at least one report. The CPMC is a cohort study delivering customized risk reports for actionable conditions using a web interface and measuring outcomes longitudinally.


Genetics in Medicine | 2011

Genetic risk estimation in the Coriell Personalized Medicine Collaborative.

Catharine B Stack; Neda Gharani; Erynn S. Gordon; Tara J. Schmidlen; Michael F. Christman; Margaret A. Keller

Purpose: Recent genome wide-association studies have identified hundreds of single nucleotide polymorphisms associated with common complex diseases. With the momentum of these discoveries comes a need to communicate this information to individuals.Methods: The Coriell Personalized Medicine Collaborative is an observational research study designed to evaluate the utility of personalized genomic information in health care. Participants provide saliva samples for genotyping and complete extensive on-line medical history, family history, and lifestyle questionnaires. Only results for diseases deemed potentially actionable by an independent advisory board are reported.Results: We present our methodology for developing personalized reports containing risks for both genetic and nongenetic factors. Risk estimates are given as relative risk, derived or reported from representative peer-reviewed publications. Estimates of disease prevalence are also provided. Presenting risk as relative risk allows for consistent reporting across multiple diseases and across genetic and nongenetic factors. Using this approach eliminates the need for assumptions regarding population lifetime risk estimates. Publications used for risk reporting are selected based on the strength of the design and study quality.Conclusion: Coriell Personalized Medicine Collaborative risk reports demonstrate an approach to communicating risk of complex disease via the web that encompasses risks due to genetic variants along with risks caused by family history and lifestyle factors.


Genome Medicine | 2013

The Coriell personalized medicine collaborative pharmacogenomics appraisal, evidence scoring and interpretation system

Neda Gharani; Margaret A. Keller; Catharine B. Stack; Laura M Hodges; Tara J. Schmidlen; Daniel Lynch; Erynn S. Gordon; Michael F. Christman

Implementation of pharmacogenomics (PGx) in clinical care can lead to improved drug efficacy and reduced adverse drug reactions. However, there has been a lag in adoption of PGx tests in clinical practice. This is due in part to a paucity of rigorous systems for translating published clinical and scientific data into standardized diagnostic tests with clear therapeutic recommendations. Here we describe the Pharmacogenomics Appraisal, Evidence Scoring and Interpretation System (PhAESIS), developed as part of the Coriell Personalized Medicine Collaborative research study, and its application to seven commonly prescribed drugs.


American Journal of Medical Genetics | 2015

Using the Coriell Personalized Medicine Collaborative Data to conduct a genome‐wide association study of sleep duration

Laura B. Scheinfeldt; Neda Gharani; Rachel Kasper; Tara J. Schmidlen; Erynn S. Gordon; Joseph P. Jarvis; Susan K. Delaney; Courtney Kronenthal; Norman P. Gerry; Michael F. Christman

Sleep is critical to health and functionality, and several studies have investigated the inherited component of insomnia and other sleep disorders using genome‐wide association studies (GWAS). However, genome‐wide studies focused on sleep duration are less common. Here, we used data from participants in the Coriell Personalized Medicine Collaborative (CPMC) (n = 4,401) to examine putative associations between self‐reported sleep duration, demographic and lifestyle variables, and genome‐wide single nucleotide polymorphism (SNP) data to better understand genetic contributions to variation in sleep duration. We employed stepwise ordered logistic regression to select our model and retained the following predictive variables: age, gender, weight, physical activity, physical activity at work, smoking status, alcohol consumption, ethnicity, and ancestry (as measured by principal components analysis) in our association testing. Several of our strongest candidate genes were previously identified in GWAS related to sleep duration (TSHZ2, ABCC9, FBXO15) and narcolepsy (NFATC2, SALL4). In addition, we have identified novel candidate genes for involvement in sleep duration including SORCS1 and ELOVL2. Our results demonstrate that the self‐reported data collected through the CPMC are robust, and our genome‐wide association analysis has identified novel candidate genes involved in sleep duration. More generally, this study contributes to a better understanding of the complexity of human sleep.


Journal of Personalized Medicine | 2015

Common Genetic Risk for Melanoma Encourages Preventive Behavior Change

Lori Diseati; Laura B. Scheinfeldt; Rachel Kasper; Ruixue Zhaoyang; Neda Gharani; Tara J. Schmidlen; Erynn S. Gordon; Cecili K. Sessions; Susan K. Delaney; Joseph P. Jarvis; Norman P. Gerry; Michael F. Christman

There is currently great interest in using genetic risk estimates for common disease in personalized healthcare. Here we assess melanoma risk-related preventive behavioral change in the context of the Coriell Personalized Medicine Collaborative (CPMC). As part of on-going reporting activities within the project, participants received a personalized risk assessment including information related to their own self-reported family history of melanoma and a genetic risk variant showing a moderate effect size (1.7, 3.0 respectively for heterozygous and homozygous individuals). Participants who opted to view their report were sent an optional outcome survey assessing risk perception and behavioral change in the months that followed. Participants that report family history risk, genetic risk, or both risk factors for melanoma were significantly more likely to increase skin cancer preventive behaviors when compared to participants with neither risk factor (ORs = 2.04, 2.79, 4.06 and p-values = 0.02, 2.86 × 10−5, 4.67 × 10−5, respectively), and we found the relationship between risk information and behavior to be partially mediated by anxiety. Genomic risk assessments appear to encourage positive behavioral change in a manner that is complementary to family history risk information and therefore may represent a useful addition to standard of care for melanoma prevention.


Thrombosis and Haemostasis | 2016

An expanded pharmacogenomics warfarin dosing table with utility in generalised dosing guidance

Payman Shahabi; Laura B. Scheinfeldt; Daniel Lynch; Tara J. Schmidlen; Sylvie Perreault; Margaret A. Keller; Rachel Kasper; Lisa Wawak; Joseph P. Jarvis; Norman P. Gerry; Erynn S. Gordon; Michael F. Christman; Marie-Pierre Dubé; Neda Gharani

Pharmacogenomics (PGx) guided warfarin dosing, using a comprehensive dosing algorithm, is expected to improve dose optimisation and lower the risk of adverse drug reactions. As a complementary tool, a simple genotype-dosing table, such as in the US Food and Drug Administration (FDA) Coumadin drug label, may be utilised for general risk assessment of likely over- or under-anticoagulation on a standard dose of warfarin. This tool may be used as part of the clinical decision support for the interpretation of genetic data, serving as a first step in the anticoagulation therapy decision making process. Here we used a publicly available warfarin dosing calculator (www.warfarindosing.org) to create an expanded gene-based warfarin dosing table, the CPMC-WD table that includes nine genetic variants in CYP2C9, VKORC1, and CYP4F2. Using two datasets, a European American cohort (EUA, n=73) and the Quebec Warfarin Cohort (QWC, n=769), we show that the CPMC-WD table more accurately predicts therapeutic dose than the FDA table (51 % vs 33 %, respectively, in the EUA, McNemars two-sided p=0.02; 52 % vs 37 % in the QWC, p<1×10(-6)). It also outperforms both the standard of care 5 mg/day dosing (51 % vs 34 % in the EUA, p=0.04; 52 % vs 31 % in the QWC, p<1×10(-6)) as well as a clinical-only algorithm (51 % vs 38 % in the EUA, trend p=0.11; 52 % vs 45 % in the QWC, p=0.003). This table offers a valuable update to the PGx dosing guideline in the drug label.


Expert Review of Precision Medicine and Drug Development | 2016

Coronary artery disease genetic risk awareness motivates heart health behaviors in the Coriell Personalized Medicine Collaborative

Laura B. Scheinfeldt; Tara J. Schmidlen; Neda Gharani; Matthew MacKnight; Joseph P. Jarvis; Susan K. Delaney; Erynn S. Gordon; Courtney Kronenthal; Norman P. Gerry; Michael F. Christman

ABSTRACT Objective: The Coriell Personalized Medicine Collaborative (CPMC) research study is designed to evaluate the potential contributions of common genetic risk factors to complex disease prevention, screening, and management. Here we have focused on the impact of personalized risk reports including genetic and non-genetic risk factors for coronary artery disease (CAD) on heart health behaviors. Methods: We analyzed self-reported behavioral outcome data from 683 CPMC participants who received personalized CAD risk reports including: genetic risk, family history risk, and self-reported non-genetic risks based on smoking and diabetes status. Results: Participants with awareness of increased genetic risk for CAD were significantly more likely to report increases in heart health behaviors after viewing their personalized risk report (F-value=14.11, p-value=9.92 x 10−7). This result remained significant after controlling for BMI and gender (eta=0.58, p-value = 6.91 x 10−7). Conclusion: Our study indicates that individuals who are aware of their genetic risk for CAD may have higher motivation to increase heart health behaviors.


Journal of Genetic Counseling | 2016

Genetic Knowledge Among Participants in the Coriell Personalized Medicine Collaborative.

Tara J. Schmidlen; Laura B. Scheinfeldt; Ruixue Zhaoyang; Rachel Kasper; Kevin Sweet; Erynn S. Gordon; Margaret A. Keller; Cathy Stack; Neda Gharani; Mary B. Daly; Joseph P. Jarvis; Michael F. Christman


Archive | 2011

METHOD FOR TRANSLATING GENETIC INFORMATION FOR USE IN PHARMACOGENOMIC MOLECULAR DIAGNOSTICS AND PERSONALIZED MEDICINE RESEARCH

Michael F. Christman; Margaret A. Keller; Neda Gharani; Erynn Gordon-Fishman; Catharine B. Stack


Archive | 2014

Coriell Personalized Medicine Collaborative: Exploring the Utility of Personalized Medicine

Courtney Kronenthal; Susan K. Delaney; Erynn S. Gordon; Tara J. Schmidlen; Joseph P. Jarvis; Neda Gharani; Dorit S. Berlin; Rachel Kasper; Norman P. Gerry; Scott Megill; Michael F. Christman

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Michael F. Christman

Coriell Institute For Medical Research

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Erynn S. Gordon

Coriell Institute For Medical Research

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Tara J. Schmidlen

Coriell Institute For Medical Research

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Joseph P. Jarvis

Coriell Institute For Medical Research

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Norman P. Gerry

Coriell Institute For Medical Research

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Laura B. Scheinfeldt

Coriell Institute For Medical Research

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Rachel Kasper

Coriell Institute For Medical Research

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Susan K. Delaney

Coriell Institute For Medical Research

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Courtney Kronenthal

Coriell Institute For Medical Research

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