8 results on '"Benoit, Barbara"'
Search Results
2. Development and validation of a trans-ancestry polygenic risk score for type 2 diabetes in diverse populations.
- Author
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Ge, Tian, Irvin, Marguerite R., Patki, Amit, Srinivasasainagendra, Vinodh, Lin, Yen-Feng, Tiwari, Hemant K., Armstrong, Nicole D., Benoit, Barbara, Chen, Chia-Yen, Choi, Karmel W., Cimino, James J., Davis, Brittney H., Dikilitas, Ozan, Etheridge, Bethany, Feng, Yen-Chen Anne, Gainer, Vivian, Huang, Hailiang, Jarvik, Gail P., Kachulis, Christopher, and Kenny, Eimear E.
- Subjects
MONOGENIC & polygenic inheritance (Genetics) ,DISEASE risk factors ,TYPE 2 diabetes ,EAST Asians ,GENOME-wide association studies - Abstract
Background: Type 2 diabetes (T2D) is a worldwide scourge caused by both genetic and environmental risk factors that disproportionately afflicts communities of color. Leveraging existing large-scale genome-wide association studies (GWAS), polygenic risk scores (PRS) have shown promise to complement established clinical risk factors and intervention paradigms, and improve early diagnosis and prevention of T2D. However, to date, T2D PRS have been most widely developed and validated in individuals of European descent. Comprehensive assessment of T2D PRS in non-European populations is critical for equitable deployment of PRS to clinical practice that benefits global populations. Methods: We integrated T2D GWAS in European, African, and East Asian populations to construct a trans-ancestry T2D PRS using a newly developed Bayesian polygenic modeling method, and assessed the prediction accuracy of the PRS in the multi-ethnic Electronic Medical Records and Genomics (eMERGE) study (11,945 cases; 57,694 controls), four Black cohorts (5137 cases; 9657 controls), and the Taiwan Biobank (4570 cases; 84,996 controls). We additionally evaluated a post hoc ancestry adjustment method that can express the polygenic risk on the same scale across ancestrally diverse individuals and facilitate the clinical implementation of the PRS in prospective cohorts. Results: The trans-ancestry PRS was significantly associated with T2D status across the ancestral groups examined. The top 2% of the PRS distribution can identify individuals with an approximately 2.5–4.5-fold of increase in T2D risk, which corresponds to the increased risk of T2D for first-degree relatives. The post hoc ancestry adjustment method eliminated major distributional differences in the PRS across ancestries without compromising its predictive performance. Conclusions: By integrating T2D GWAS from multiple populations, we developed and validated a trans-ancestry PRS, and demonstrated its potential as a meaningful index of risk among diverse patients in clinical settings. Our efforts represent the first step towards the implementation of the T2D PRS into routine healthcare. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
3. Development and validation of a trans-ancestry polygenic risk score for type 2 diabetes in diverse populations.
- Author
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Ge, Tian, Irvin, Marguerite R., Patki, Amit, Srinivasasainagendra, Vinodh, Lin, Yen-Feng, Tiwari, Hemant K., Armstrong, Nicole D., Benoit, Barbara, Chen, Chia-Yen, Choi, Karmel W., Cimino, James J., Davis, Brittney H., Dikilitas, Ozan, Etheridge, Bethany, Feng, Yen-Chen Anne, Gainer, Vivian, Huang, Hailiang, Jarvik, Gail P., Kachulis, Christopher, and Kenny, Eimear E.
- Subjects
MONOGENIC & polygenic inheritance (Genetics) ,DISEASE risk factors ,TYPE 2 diabetes ,EAST Asians ,GENOME-wide association studies - Abstract
Background: Type 2 diabetes (T2D) is a worldwide scourge caused by both genetic and environmental risk factors that disproportionately afflicts communities of color. Leveraging existing large-scale genome-wide association studies (GWAS), polygenic risk scores (PRS) have shown promise to complement established clinical risk factors and intervention paradigms, and improve early diagnosis and prevention of T2D. However, to date, T2D PRS have been most widely developed and validated in individuals of European descent. Comprehensive assessment of T2D PRS in non-European populations is critical for equitable deployment of PRS to clinical practice that benefits global populations. Methods: We integrated T2D GWAS in European, African, and East Asian populations to construct a trans-ancestry T2D PRS using a newly developed Bayesian polygenic modeling method, and assessed the prediction accuracy of the PRS in the multi-ethnic Electronic Medical Records and Genomics (eMERGE) study (11,945 cases; 57,694 controls), four Black cohorts (5137 cases; 9657 controls), and the Taiwan Biobank (4570 cases; 84,996 controls). We additionally evaluated a post hoc ancestry adjustment method that can express the polygenic risk on the same scale across ancestrally diverse individuals and facilitate the clinical implementation of the PRS in prospective cohorts. Results: The trans-ancestry PRS was significantly associated with T2D status across the ancestral groups examined. The top 2% of the PRS distribution can identify individuals with an approximately 2.5–4.5-fold of increase in T2D risk, which corresponds to the increased risk of T2D for first-degree relatives. The post hoc ancestry adjustment method eliminated major distributional differences in the PRS across ancestries without compromising its predictive performance. Conclusions: By integrating T2D GWAS from multiple populations, we developed and validated a trans-ancestry PRS, and demonstrated its potential as a meaningful index of risk among diverse patients in clinical settings. Our efforts represent the first step towards the implementation of the T2D PRS into routine healthcare. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
4. The Mass General Brigham Biobank Portal: an i2b2-based data repository linking disparate and high-dimensional patient data to support multimodal analytics.
- Author
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Castro, Victor M, Gainer, Vivian, Wattanasin, Nich, Benoit, Barbara, Cagan, Andrew, Ghosh, Bhaswati, Goryachev, Sergey, Metta, Reeta, Park, Heekyong, Wang, David, Mendis, Michael, Rees, Martin, Herrick, Christopher, and Murphy, Shawn N
- Abstract
Objective: Integrating and harmonizing disparate patient data sources into one consolidated data portal enables researchers to conduct analysis efficiently and effectively.Materials and Methods: We describe an implementation of Informatics for Integrating Biology and the Bedside (i2b2) to create the Mass General Brigham (MGB) Biobank Portal data repository. The repository integrates data from primary and curated data sources and is updated weekly. The data are made readily available to investigators in a data portal where they can easily construct and export customized datasets for analysis.Results: As of July 2021, there are 125 645 consented patients enrolled in the MGB Biobank. 88 527 (70.5%) have a biospecimen, 55 121 (43.9%) have completed the health information survey, 43 552 (34.7%) have genomic data and 124 760 (99.3%) have EHR data. Twenty machine learning computed phenotypes are calculated on a weekly basis. There are currently 1220 active investigators who have run 58 793 patient queries and exported 10 257 analysis files.Discussion: The Biobank Portal allows noninformatics researchers to conduct study feasibility by querying across many data sources and then extract data that are most useful to them for clinical studies. While institutions require substantial informatics resources to establish and maintain integrated data repositories, they yield significant research value to a wide range of investigators.Conclusion: The Biobank Portal and other patient data portals that integrate complex and simple datasets enable diverse research use cases. i2b2 tools to implement these registries and make the data interoperable are open source and freely available. [ABSTRACT FROM AUTHOR]- Published
- 2022
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5. Under-specification as the source of ambiguity and vagueness in narrative phenotype algorithm definitions.
- Author
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Yu, Jingzhi, Pacheco, Jennifer A., Ghosh, Anika S., Luo, Yuan, Weng, Chunhua, Shang, Ning, Benoit, Barbara, Carrell, David S., Carroll, Robert J., Dikilitas, Ozan, Freimuth, Robert R., Gainer, Vivian S., Hakonarson, Hakon, Hripcsak, George, Kullo, Iftikhar J., Mentch, Frank, Murphy, Shawn N., Peissig, Peggy L., Ramirez, Andrea H., and Walton, Nephi
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AMBIGUITY ,ELECTRONIC health records ,DESCRIPTION logics ,MEDICAL genomics ,PHENOTYPES ,ALGORITHMS ,FUZZY sets - Abstract
Introduction: Currently, one of the commonly used methods for disseminating electronic health record (EHR)-based phenotype algorithms is providing a narrative description of the algorithm logic, often accompanied by flowcharts. A challenge with this mode of dissemination is the potential for under-specification in the algorithm definition, which leads to ambiguity and vagueness.Methods: This study examines incidents of under-specification that occurred during the implementation of 34 narrative phenotyping algorithms in the electronic Medical Record and Genomics (eMERGE) network. We reviewed the online communication history between algorithm developers and implementers within the Phenotype Knowledge Base (PheKB) platform, where questions could be raised and answered regarding the intended implementation of a phenotype algorithm.Results: We developed a taxonomy of under-specification categories via an iterative review process between two groups of annotators. Under-specifications that lead to ambiguity and vagueness were consistently found across narrative phenotype algorithms developed by all involved eMERGE sites.Discussion and Conclusion: Our findings highlight that under-specification is an impediment to the accuracy and efficiency of the implementation of current narrative phenotyping algorithms, and we propose approaches for mitigating these issues and improved methods for disseminating EHR phenotyping algorithms. [ABSTRACT FROM AUTHOR]- Published
- 2022
- Full Text
- View/download PDF
6. Medical records-based chronic kidney disease phenotype for clinical care and "big data" observational and genetic studies.
- Author
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Shang, Ning, Khan, Atlas, Polubriaginof, Fernanda, Zanoni, Francesca, Mehl, Karla, Fasel, David, Drawz, Paul E., Carrol, Robert J., Denny, Joshua C., Hathcock, Matthew A., Arruda-Olson, Adelaide M., Peissig, Peggy L., Dart, Richard A., Brilliant, Murray H., Larson, Eric B., Carrell, David S., Pendergrass, Sarah, Verma, Shefali Setia, Ritchie, Marylyn D., and Benoit, Barbara
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CHRONIC kidney failure ,MACHINE learning ,GLOMERULAR filtration rate ,COMORBIDITY ,BIOBANKS - Abstract
Chronic Kidney Disease (CKD) represents a slowly progressive disorder that is typically silent until late stages, but early intervention can significantly delay its progression. We designed a portable and scalable electronic CKD phenotype to facilitate early disease recognition and empower large-scale observational and genetic studies of kidney traits. The algorithm uses a combination of rule-based and machine-learning methods to automatically place patients on the staging grid of albuminuria by glomerular filtration rate ("A-by-G" grid). We manually validated the algorithm by 451 chart reviews across three medical systems, demonstrating overall positive predictive value of 95% for CKD cases and 97% for healthy controls. Independent case-control validation using 2350 patient records demonstrated diagnostic specificity of 97% and sensitivity of 87%. Application of the phenotype to 1.3 million patients demonstrated that over 80% of CKD cases are undetected using ICD codes alone. We also demonstrated several large-scale applications of the phenotype, including identifying stage-specific kidney disease comorbidities, in silico estimation of kidney trait heritability in thousands of pedigrees reconstructed from medical records, and biobank-based multicenter genome-wide and phenome-wide association studies. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
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7. A case study evaluating the portability of an executable computable phenotype algorithm across multiple institutions and electronic health record environments.
- Author
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Pacheco, Jennifer A, Rasmussen, Luke V, Kiefer, Richard C, Campion, Thomas R, Speltz, Peter, Carroll, Robert J, Stallings, Sarah C, Mo, Huan, Ahuja, Monika, Jiang, Guoqian, LaRose, Eric R, Peissig, Peggy L, Shang, Ning, Benoit, Barbara, Gainer, Vivian S, Borthwick, Kenneth, Jackson, Kathryn L, Sharma, Ambrish, Wu, Andy Yizhou, and Kho, Abel N
- Abstract
Electronic health record (EHR) algorithms for defining patient cohorts are commonly shared as free-text descriptions that require human intervention both to interpret and implement. We developed the Phenotype Execution and Modeling Architecture (PhEMA, http://projectphema.org) to author and execute standardized computable phenotype algorithms. With PhEMA, we converted an algorithm for benign prostatic hyperplasia, developed for the electronic Medical Records and Genomics network (eMERGE), into a standards-based computable format. Eight sites (7 within eMERGE) received the computable algorithm, and 6 successfully executed it against local data warehouses and/or i2b2 instances. Blinded random chart review of cases selected by the computable algorithm shows PPV ≥90%, and 3 out of 5 sites had >90% overlap of selected cases when comparing the computable algorithm to their original eMERGE implementation. This case study demonstrates potential use of PhEMA computable representations to automate phenotyping across different EHR systems, but also highlights some ongoing challenges. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
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8. GWAS and enrichment analyses of non-alcoholic fatty liver disease identify new trait-associated genes and pathways across eMERGE Network.
- Author
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Namjou, Bahram, Lingren, Todd, Huang, Yongbo, Parameswaran, Sreeja, Cobb, Beth L., Stanaway, Ian B., Connolly, John J., Mentch, Frank D., Benoit, Barbara, Niu, Xinnan, Wei, Wei-Qi, Carroll, Robert J., Pacheco, Jennifer A., Harley, Isaac T. W., Divanovic, Senad, Carrell, David S., Larson, Eric B., Carey, David J., Verma, Shefali, and Ritchie, Marylyn D.
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FATTY liver ,ELECTRONIC health records ,NATURAL language processing ,BODY mass index ,LIVER function tests ,MEDICAL care costs - Abstract
Background: Non-alcoholic fatty liver disease (NAFLD) is a common chronic liver illness with a genetically heterogeneous background that can be accompanied by considerable morbidity and attendant health care costs. The pathogenesis and progression of NAFLD is complex with many unanswered questions. We conducted genome-wide association studies (GWASs) using both adult and pediatric participants from the Electronic Medical Records and Genomics (eMERGE) Network to identify novel genetic contributors to this condition.Methods: First, a natural language processing (NLP) algorithm was developed, tested, and deployed at each site to identify 1106 NAFLD cases and 8571 controls and histological data from liver tissue in 235 available participants. These include 1242 pediatric participants (396 cases, 846 controls). The algorithm included billing codes, text queries, laboratory values, and medication records. Next, GWASs were performed on NAFLD cases and controls and case-only analyses using histologic scores and liver function tests adjusting for age, sex, site, ancestry, PC, and body mass index (BMI).Results: Consistent with previous results, a robust association was detected for the PNPLA3 gene cluster in participants with European ancestry. At the PNPLA3-SAMM50 region, three SNPs, rs738409, rs738408, and rs3747207, showed strongest association (best SNP rs738409 p = 1.70 × 10- 20). This effect was consistent in both pediatric (p = 9.92 × 10- 6) and adult (p = 9.73 × 10- 15) cohorts. Additionally, this variant was also associated with disease severity and NAFLD Activity Score (NAS) (p = 3.94 × 10- 8, beta = 0.85). PheWAS analysis link this locus to a spectrum of liver diseases beyond NAFLD with a novel negative correlation with gout (p = 1.09 × 10- 4). We also identified novel loci for NAFLD disease severity, including one novel locus for NAS score near IL17RA (rs5748926, p = 3.80 × 10- 8), and another near ZFP90-CDH1 for fibrosis (rs698718, p = 2.74 × 10- 11). Post-GWAS and gene-based analyses identified more than 300 genes that were used for functional and pathway enrichment analyses.Conclusions: In summary, this study demonstrates clear confirmation of a previously described NAFLD risk locus and several novel associations. Further collaborative studies including an ethnically diverse population with well-characterized liver histologic features of NAFLD are needed to further validate the novel findings. [ABSTRACT FROM AUTHOR]- Published
- 2019
- Full Text
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