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Dive into the research topics where Thomas E. Callis is active.

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Featured researches published by Thomas E. Callis.


JAMA | 2016

Association of Arrhythmia-Related Genetic Variants With Phenotypes Documented in Electronic Medical Records.

Sara L. Van Driest; Quinn S. Wells; Sarah Stallings; William S. Bush; Adam S. Gordon; Deborah A. Nickerson; Jerry H. Kim; David R. Crosslin; Gail P. Jarvik; David Carrell; James D. Ralston; Eric B. Larson; Suzette J. Bielinski; Janet E. Olson; Zi Ye; Iftikhar J. Kullo; Noura S. Abul-Husn; Stuart A. Scott; Erwin P. Bottinger; Berta Almoguera; John J. Connolly; Rosetta M. Chiavacci; Hakon Hakonarson; Laura J. Rasmussen-Torvik; Vivian Pan; Stephen D. Persell; Maureen E. Smith; Rex L. Chisholm; Terrie Kitchner; Max M. He

IMPORTANCE Large-scale DNA sequencing identifies incidental rare variants in established Mendelian disease genes, but the frequency of related clinical phenotypes in unselected patient populations is not well established. Phenotype data from electronic medical records (EMRs) may provide a resource to assess the clinical relevance of rare variants. OBJECTIVE To determine the clinical phenotypes from EMRs for individuals with variants designated as pathogenic by expert review in arrhythmia susceptibility genes. DESIGN, SETTING, AND PARTICIPANTS This prospective cohort study included 2022 individuals recruited for nonantiarrhythmic drug exposure phenotypes from October 5, 2012, to September 30, 2013, for the Electronic Medical Records and Genomics Network Pharmacogenomics project from 7 US academic medical centers. Variants in SCN5A and KCNH2, disease genes for long QT and Brugada syndromes, were assessed for potential pathogenicity by 3 laboratories with ion channel expertise and by comparison with the ClinVar database. Relevant phenotypes were determined from EMRs, with data available from 2002 (or earlier for some sites) through September 10, 2014. EXPOSURES One or more variants designated as pathogenic in SCN5A or KCNH2. MAIN OUTCOMES AND MEASURES Arrhythmia or electrocardiographic (ECG) phenotypes defined by International Classification of Diseases, Ninth Revision (ICD-9) codes, ECG data, and manual EMR review. RESULTS Among 2022 study participants (median age, 61 years [interquartile range, 56-65 years]; 1118 [55%] female; 1491 [74%] white), a total of 122 rare (minor allele frequency <0.5%) nonsynonymous and splice-site variants in 2 arrhythmia susceptibility genes were identified in 223 individuals (11% of the study cohort). Forty-two variants in 63 participants were designated potentially pathogenic by at least 1 laboratory or ClinVar, with low concordance across laboratories (Cohen κ = 0.26). An ICD-9 code for arrhythmia was found in 11 of 63 (17%) variant carriers vs 264 of 1959 (13%) of those without variants (difference, +4%; 95% CI, -5% to +13%; P = .35). In the 1270 (63%) with ECGs, corrected QT intervals were not different in variant carriers vs those without (median, 429 vs 439 milliseconds; difference, -10 milliseconds; 95% CI, -16 to +3 milliseconds; P = .17). After manual review, 22 of 63 participants (35%) with designated variants had any ECG or arrhythmia phenotype, and only 2 had corrected QT interval longer than 500 milliseconds. CONCLUSIONS AND RELEVANCE Among laboratories experienced in genetic testing for cardiac arrhythmia disorders, there was low concordance in designating SCN5A and KCNH2 variants as pathogenic. In an unselected population, the putatively pathogenic genetic variants were not associated with an abnormal phenotype. These findings raise questions about the implications of notifying patients of incidental genetic findings.


Circulation-cardiovascular Genetics | 2015

Enhanced Classification of Brugada Syndrome–Associated and Long-QT Syndrome–Associated Genetic Variants in the SCN5A-Encoded Nav1.5 Cardiac Sodium Channel

Jamie D. Kapplinger; John R. Giudicessi; Dan Ye; David J. Tester; Thomas E. Callis; Carmen R. Valdivia; Jonathan C. Makielski; Arthur A.M. Wilde; Michael J. Ackerman

Background—A 2% to 5% background rate of rare SCN5A nonsynonymous single nucleotide variants (nsSNVs) among healthy individuals confounds clinical genetic testing. Therefore, the purpose of this study was to enhance interpretation of SCN5A nsSNVs for clinical genetic testing using estimated predictive values derived from protein-topology and 7 in silico tools. Methods and Results—Seven in silico tools were used to assign pathogenic/benign status to nsSNVs from 2888 long-QT syndrome cases, 2111 Brugada syndrome cases, and 8975 controls. Estimated predictive values were determined for each tool across the entire SCN5A-encoded Nav1.5 channel as well as for specific topographical regions. In addition, the in silico tools were assessed for their ability to correlate with cellular electrophysiology studies. In long-QT syndrome, transmembrane segments S3–S5+S6 and the DIII/DIV linker region were associated with high probability of pathogenicity. For Brugada syndrome, only the transmembrane spanning domains had a high probability of pathogenicity. Although individual tools distinguished case- and control-derived SCN5A nsSNVs, the composite use of multiple tools resulted in the greatest enhancement of interpretation. The use of the composite score allowed for enhanced interpretation for nsSNVs outside of the topological regions that intrinsically had a high probability of pathogenicity, as well as within the transmembrane spanning domains for Brugada syndrome nsSNVs. Conclusions—We have used a large case/control study to identify regions of Nav1.5 associated with a high probability of pathogenicity. Although topology alone would leave the variants outside these identified regions in genetic purgatory, the synergistic use of multiple in silico tools may help promote or demote a variant’s pathogenic status.


Circulation: Genomic and Precision Medicine | 2018

Yield of the RYR2 Genetic Test in Suspected Catecholaminergic Polymorphic Ventricular Tachycardia and Implications for Test Interpretation

Jamie D. Kapplinger; Krishna Pundi; Nicholas B. Larson; Thomas E. Callis; David J. Tester; Hennie Bikker; Arthur A.M. Wilde; Michael J. Ackerman

Background: Pathogenic RYR2 variants account for ≈60% of clinically definite cases of catecholaminergic polymorphic ventricular tachycardia. However, the rate of rare benign RYR2 variants identified in the general population remains a challenge for genetic test interpretation. Therefore, we examined the results of the RYR2 genetic test among patients referred for commercial genetic testing and examined factors impacting variant interpretability. Methods: Frequency and location comparisons were made for RYR2 variants identified among 1355 total patients of varying clinical certainty and 60 706 Exome Aggregation Consortium controls. The impact of the clinical phenotype on the yield of RYR2 variants was examined. Six in silico tools were assessed using patient- and control-derived variants. Results: A total of 18.2% (218/1200) of patients referred for commercial testing hosted rare RYR2 variants, statistically less than the 59% (46/78) yield among clinically definite cases, resulting in a much higher potential genetic false discovery rate among referrals considering the 3.2% background rate of rare, benign RYR2 variants. Exclusion of clearly putative pathogenic variants further complicates the interpretation of the next novel RYR2 variant. Exonic/topologic analyses revealed overrepresentation of patient variants in exons covering only one third of the protein. In silico tools largely failed to show evidence toward enhancement of variant interpretation. Conclusions: Current expert recommendations have resulted in increased use of RYR2 genetic testing in patients with questionable clinical phenotypes. Using the largest to date catecholaminergic polymorphic ventricular tachycardia patient versus control comparison, this study highlights important variables in the interpretation of variants to overcome the 3.2% background rate that confounds RYR2 variant interpretation.


Journal of the American College of Cardiology | 2012

SPECTRUM AND PREVALENCE OF CARDIAC RYANODINE RECEPTOR (RYR2) AND KIR2.1 (KCNJ2) MUTATIONS IN PATIENTS REFERRED FOR FAMILION® CATECHOLAMINERGIC POLYMORPHIC VENTRICULAR TACHYCARDIA (CPVT) GENETIC TESTING

Thomas E. Callis; Janet L Carr; Lisa Susswein; Guido D. Pollevick; Michael J. Ackerman; Benjamin S. Salisbury

Cardiac ryanodine receptor (RYR2) and Kir2.1 (KCNJ2) mutations are a cause of catecholaminergic polymorphic ventricular tachycardia (CPVT), a lethal cardiac channelopathy. Here, we describe mutations in RYR2 and KCNJ2 in patients referred for FAMILION CPVT genetic testing. Sequence analysis of 38


Journal of the American College of Cardiology | 2011

Distinguishing Arrhythmogenic Right Ventricular Cardiomyopathy/Dysplasia-Associated Mutations From Background Genetic Noise

Jamie D. Kapplinger; Andrew P. Landstrom; Benjamin A. Salisbury; Thomas E. Callis; Guido D. Pollevick; David J. Tester; Moniek G.P.J. Cox; Zahir A. Bhuiyan; Hennie Bikker; Ans C.P. Wiesfeld; Richard N.W. Hauer; J. Peter van Tintelen; Jan D. H. Jongbloed; Hugh Calkins; Daniel P. Judge; Arthur A.M. Wilde; Michael J. Ackerman


Journal of Cardiovascular Translational Research | 2014

Distinguishing Hypertrophic Cardiomyopathy-Associated Mutations from Background Genetic Noise

Jamie D. Kapplinger; Andrew P. Landstrom; J. Martijn Bos; Benjamin A. Salisbury; Thomas E. Callis; Michael J. Ackerman


Journal of Cardiovascular Translational Research | 2015

Enhancing the Predictive Power of Mutations in the C-Terminus of the KCNQ1-Encoded Kv7.1 Voltage-Gated Potassium Channel

Jamie D. Kapplinger; Andrew Tseng; Benjamin A. Salisbury; David J. Tester; Thomas E. Callis; Marielle Alders; Arthur A.M. Wilde; Michael J. Ackerman


Circulation | 2011

Abstract 16035: Epidemiological Evidence Suggests CAV3 T78M Should be Considered a Benign Polymorphism and not an Independent, Multi-Disease-Susceptibility Mutation

Thomas E. Callis; Janet L Carr; Lisa Susswein; Guido D. Pollevick; Benjamin A. Salisbury


Circulation | 2011

Abstract 16937: Age at Genetic Testing is Negatively Correlated with the Number of Mutations Found in Five Cardiac Channelopathies and Cardiomyopathies

Benjamin A. Salisbury; Thomas E. Callis; Janet L Carr; Lisa Susswein; Guido D. Pollevick


Circulation | 2010

Abstract 20290: Spectrum and Contribution of Mutations in Minor Long QT Syndrome (LQTS)-Susceptibility Genes in Patients Referred for FAMILION(R) LQTS Genetic Testing

Thomas E. Callis; Benjamin A. Salisbury; Carole Harris-Kerr; Magda Smielewska-Antov; Argelia Medeiros-Domingo; David J. Tester; Michael J. Ackerman

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Adam S. Gordon

University of Washington

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