9 results on '"Gill, Simrat K"'
Search Results
2. Impact of Renal Impairment on Beta-Blocker Efficacy in Patients With Heart Failure
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Kotecha, Dipak, Gill, Simrat K., Flather, Marcus D., Holmes, Jane, Packer, Milton, Rosano, Giuseppe, Böhm, Michael, McMurray, John J.V., Wikstrand, John, Anker, Stefan D., van Veldhuisen, Dirk J., Manzano, Luis, von Lueder, Thomas G., Rigby, Alan S., Andersson, Bert, Kjekshus, John, Wedel, Hans, Ruschitzka, Frank, Cleland, John G.F., Damman, Kevin, Redon, Josep, and Coats, Andrew J.S.
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- 2019
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3. Consumer wearable devices for evaluation of heart rate control using digoxin versus beta-blockers: the RATE-AF randomized trial
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Gill, Simrat K., Barsky, Andrey, Guan, Xin, Bunting, Karina V., Karwath, Andreas, Tica, Otilia, Stanbury, Mary, Haynes, Sandra, Folarin, Amos, Dobson, Richard, Kurps, Julia, Asselbergs, Folkert W., Grobbee, Diederick E., Camm, A. John, Eijkemans, Marinus J. C., Gkoutos, Georgios V., and Kotecha, Dipak
- Abstract
Consumer-grade wearable technology has the potential to support clinical research and patient management. Here, we report results from the RATE-AF trial wearables study, which was designed to compare heart rate in older, multimorbid patients with permanent atrial fibrillation and heart failure who were randomized to treatment with either digoxin or beta-blockers. Heart rate (n= 143,379,796) and physical activity (n= 23,704,307) intervals were obtained from 53 participants (mean age 75.6 years (s.d. 8.4), 40% women) using a wrist-worn wearable linked to a smartphone for 20 weeks. Heart rates in participants treated with digoxin versus beta-blockers were not significantly different (regression coefficient 1.22 (95% confidence interval (CI) −2.82 to 5.27; P= 0.55); adjusted 0.66 (95% CI −3.45 to 4.77; P= 0.75)). No difference in heart rate was observed between the two groups of patients after accounting for physical activity (P= 0.74) or patients with high activity levels (≥30,000 steps per week; P= 0.97). Using a convolutional neural network designed to account for missing data, we found that wearable device data could predict New York Heart Association functional class 5 months after baseline assessment similarly to standard clinical measures of electrocardiographic heart rate and 6-minute walk test (F1 score 0.56 (95% CI 0.41 to 0.70) versus 0.55 (95% CI 0.41 to 0.68); P= 0.88 for comparison). The results of this study indicate that digoxin and beta-blockers have equivalent effects on heart rate in atrial fibrillation at rest and on exertion, and suggest that dynamic monitoring of individuals with arrhythmia using wearable technology could be an alternative to in-person assessment. ClinicalTrials.gov identifier: NCT02391337.
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- 2024
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4. Artificial intelligence to enhance clinical value across the spectrum of cardiovascular healthcare.
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Gill, Simrat K, Karwath, Andreas, Uh, Hae-Won, Cardoso, Victor Roth, Gu, Zhujie, Barsky, Andrey, Slater, Luke, Acharjee, Animesh, Duan, Jinming, Dall'Olio, Lorenzo, Bouhaddani, Said el, Chernbumroong, Saisakul, Stanbury, Mary, Haynes, Sandra, Asselbergs, Folkert W, Grobbee, Diederick E, Eijkemans, Marinus J C, Gkoutos, Georgios V, Kotecha, Dipak, and group, BigData@Heart Consortium and the cardAIc
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ARTIFICIAL intelligence ,MEDICAL personnel ,MACHINE learning ,DISEASE management ,MEDICAL care - Abstract
Artificial intelligence (AI) is increasingly being utilized in healthcare. This article provides clinicians and researchers with a step-wise foundation for high-value AI that can be applied to a variety of different data modalities. The aim is to improve the transparency and application of AI methods, with the potential to benefit patients in routine cardiovascular care. Following a clear research hypothesis, an AI-based workflow begins with data selection and pre-processing prior to analysis, with the type of data (structured, semi-structured, or unstructured) determining what type of pre-processing steps and machine-learning algorithms are required. Algorithmic and data validation should be performed to ensure the robustness of the chosen methodology, followed by an objective evaluation of performance. Seven case studies are provided to highlight the wide variety of data modalities and clinical questions that can benefit from modern AI techniques, with a focus on applying them to cardiovascular disease management. Despite the growing use of AI, further education for healthcare workers, researchers, and the public are needed to aid understanding of how AI works and to close the existing gap in knowledge. In addition, issues regarding data access, sharing, and security must be addressed to ensure full engagement by patients and the public. The application of AI within healthcare provides an opportunity for clinicians to deliver a more personalized approach to medical care by accounting for confounders, interactions, and the rising prevalence of multi-morbidity. [ABSTRACT FROM AUTHOR]
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- 2023
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5. Improving the diagnosis of heart failure in patients with atrial fibrillation
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Bunting, Karina V, Gill, Simrat K, Sitch, Alice, Mehta, Samir, O'Connor, Kieran, Lip, Gregory YH, Kirchhof, Paulus, Strauss, Victoria Y, Rahimi, Kazem, Camm, A John, Stanbury, Mary, Griffith, Michael, Townend, Jonathan N, Gkoutos, Georgios V, Karwath, Andreas, Steeds, Richard P, Kotecha, Dipak, Pe, RAte Control Therapy Evaluation, and group, RAte control Therapy Evaluation in permanent Atrial Fibrillation (RATE-AF) trial
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Male ,medicine.medical_specialty ,Systole ,Coefficient of variation ,Diastole ,heart failure ,Ventricular Function, Left ,Internal medicine ,Atrial Fibrillation ,Natriuretic Peptide, Brain ,medicine ,Humans ,echocardiography ,atrial fibrillation ,In patient ,Heart Failure and Cardiomyopathies ,Aged ,Aged, 80 and over ,Echocardiography, Doppler, Pulsed ,Heart Failure ,Reproducibility ,Ejection fraction ,business.industry ,Reproducibility of Results ,Stroke Volume ,Atrial fibrillation ,medicine.disease ,Peptide Fragments ,diastolic ,Heart failure ,cardiovascular system ,Cardiology ,Female ,systolic ,Median Heart Rate ,Cardiology and Cardiovascular Medicine ,business ,Biomarkers - Abstract
ObjectiveTo improve the echocardiographic assessment of heart failure in patients with atrial fibrillation (AF) by comparing conventional averaging of consecutive beats with an index-beat approach, whereby measurements are taken after two cycles with similar R-R interval.MethodsTransthoracic echocardiography was performed using a standardised and blinded protocol in patients enrolled in the RATE-AF (RAte control Therapy Evaluation in permanent Atrial Fibrillation) randomised trial. We compared reproducibility of the index-beat and conventional consecutive-beat methods to calculate left ventricular ejection fraction (LVEF), global longitudinal strain (GLS) and E/e’ (mitral E wave max/average diastolic tissue Doppler velocity), and assessed intraoperator/interoperator variability, time efficiency and validity against natriuretic peptides.Results160 patients were included, 46% of whom were women, with a median age of 75 years (IQR 69–82) and a median heart rate of 100 beats per minute (IQR 86–112). The index-beat had the lowest within-beat coefficient of variation for LVEF (32%, vs 51% for 5 consecutive beats and 53% for 10 consecutive beats), GLS (26%, vs 43% and 42%) and E/e’ (25%, vs 41% and 41%). Intraoperator (n=50) and interoperator (n=18) reproducibility were both superior for index-beats and this method was quicker to perform (pConclusionsCompared with averaging of multiple beats in patients with AF, the index-beat approach improves reproducibility and saves time without a negative impact on validity, potentially improving the diagnosis and classification of heart failure in patients with AF.
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- 2021
6. Identification and Mapping Real-World Data Sources for Heart Failure, Acute Coronary Syndrome, and Atrial Fibrillation
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Studer, Rachel, primary, Sartini, Claudio, additional, Suzart-Woischnik, Kiliana, additional, Agrawal, Rumjhum, additional, Natani, Harshul, additional, Gill, Simrat K., additional, Wirta, Sara Bruce, additional, Asselbergs, Folkert W., additional, Dobson, Richard, additional, Denaxas, Spiros, additional, and Kotecha, Dipak, additional
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- 2021
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7. Improving the diagnosis of heart failure in patients with atrial fibrillation
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Bunting, Karina V, primary, Gill, Simrat K, additional, Sitch, Alice, additional, Mehta, Samir, additional, O'Connor, Kieran, additional, Lip, Gregory YH, additional, Kirchhof, Paulus, additional, Strauss, Victoria Y, additional, Rahimi, Kazem, additional, Camm, A John, additional, Stanbury, Mary, additional, Griffith, Michael, additional, Townend, Jonathan N, additional, Gkoutos, Georgios V, additional, Karwath, Andreas, additional, Steeds, Richard P, additional, and Kotecha, Dipak, additional
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- 2021
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8. Identification and Mapping Real-World Data Sources for Heart Failure, Acute Coronary Syndrome, and Atrial Fibrillation.
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Studer, Rachel, Sartini, Claudio, Suzart-Woischnik, Kiliana, Agrawal, Rumjhum, Natani, Harshul, Gill, Simrat K., Wirta, Sara Bruce, Asselbergs, Folkert W., Dobson, Richard, Denaxas, Spiros, and Kotecha, Dipak
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ACUTE coronary syndrome ,ATRIAL fibrillation ,HEART failure ,DATA mapping ,ELECTRONIC health records ,ACCESS to information - Abstract
Background: Transparent and robust real-world evidence sources are increasingly important for global health, including cardiovascular (CV) diseases. We aimed to identify global real-world data (RWD) sources for heart failure (HF), acute coronary syndrome (ACS), and atrial fibrillation (AF). Methods: We conducted a systematic review of publications with RWD pertaining to HF, ACS, and AF (2010–2018), generating a list of unique data sources. Metadata were extracted based on the source type (e.g., electronic health records, genomics, and clinical data), study design, population size, clinical characteristics, follow-up duration, outcomes, and assessment of data availability for future studies and linkage. Results: Overall, 11,889 publications were retrieved for HF, 10,729 for ACS, and 6,262 for AF. From these, 322 (HF), 287 (ACS), and 220 (AF) data sources were selected for detailed review. The majority of data sources had near complete data on demographic variables (HF: 94%, ACS: 99%, and AF: 100%) and considerable data on comorbidities (HF: 77%, ACS: 93%, and AF: 97%). The least reported data categories were drug codes (HF, ACS, and AF: 10%) and caregiver involvement (HF: 6%, ACS: 1%, and AF: 1%). Only a minority of data sources provided information on access to data for other researchers (11%) or whether data could be linked to other data sources to maximize clinical impact (20%). The list and metadata for the RWD sources are publicly available at www.escardio.org/bigdata. Conclusions: This review has created a comprehensive resource of CV data sources, providing new avenues to improve future real-world research and to achieve better patient outcomes. [ABSTRACT FROM AUTHOR]
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- 2022
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9. Effect of Digoxin vs Bisoprolol for Heart Rate Control in Atrial Fibrillation on Patient-Reported Quality of Life: The RATE-AF Randomized Clinical Trial.
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Kotecha, Dipak, Bunting, Karina V., Gill, Simrat K., Mehta, Samir, Stanbury, Mary, Jones, Jacqueline C., Haynes, Sandra, Calvert, Melanie J., Deeks, Jonathan J., Steeds, Richard P., Strauss, Victoria Y., Rahimi, Kazem, Camm, A. John, Griffith, Michael, Lip, Gregory Y. H., Townend, Jonathan N., Kirchhof, Paulus, and Rate Control Therapy Evaluation in Permanent Atrial Fibrillation (RATE-AF) Team
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DIGOXIN ,BISOPROLOL ,HEART beat ,ATRIAL fibrillation ,HEART failure patients ,TREATMENT effectiveness ,THERAPEUTICS research ,MYOCARDIAL depressants ,RESEARCH ,RESEARCH methodology ,EVALUATION research ,MEDICAL cooperation ,HEALTH surveys ,CARDIOVASCULAR agents ,ADRENERGIC beta blockers ,COMPARATIVE studies ,RANDOMIZED controlled trials ,QUALITY of life ,BLIND experiment ,RESEARCH funding ,STROKE volume (Cardiac output) ,STATISTICAL sampling ,HEART failure ,PHARMACODYNAMICS ,DISEASE complications - Abstract
Importance: There is little evidence to support selection of heart rate control therapy in patients with permanent atrial fibrillation, in particular those with coexisting heart failure.Objective: To compare low-dose digoxin with bisoprolol (a β-blocker).Design, Setting, and Participants: Randomized, open-label, blinded end-point clinical trial including 160 patients aged 60 years or older with permanent atrial fibrillation (defined as no plan to restore sinus rhythm) and dyspnea classified as New York Heart Association class II or higher. Patients were recruited from 3 hospitals and primary care practices in England from 2016 through 2018; last follow-up occurred in October 2019.Interventions: Digoxin (n = 80; dose range, 62.5-250 μg/d; mean dose, 161 μg/d) or bisoprolol (n = 80; dose range, 1.25-15 mg/d; mean dose, 3.2 mg/d).Main Outcomes and Measures: The primary end point was patient-reported quality of life using the 36-Item Short Form Health Survey physical component summary score (SF-36 PCS) at 6 months (higher scores are better; range, 0-100), with a minimal clinically important difference of 0.5 SD. There were 17 secondary end points (including resting heart rate, modified European Heart Rhythm Association [EHRA] symptom classification, and N-terminal pro-brain natriuretic peptide [NT-proBNP] level) at 6 months, 20 end points at 12 months, and adverse event (AE) reporting.Results: Among 160 patients (mean age, 76 [SD, 8] years; 74 [46%] women; mean baseline heart rate, 100/min [SD, 18/min]), 145 (91%) completed the trial and 150 (94%) were included in the analysis for the primary outcome. There was no significant difference in the primary outcome of normalized SF-36 PCS at 6 months (mean, 31.9 [SD, 11.7] for digoxin vs 29.7 [11.4] for bisoprolol; adjusted mean difference, 1.4 [95% CI, -1.1 to 3.8]; P = .28). Of the 17 secondary outcomes at 6 months, there were no significant between-group differences for 16 outcomes, including resting heart rate (a mean of 76.9/min [SD, 12.1/min] with digoxin vs a mean of 74.8/min [SD, 11.6/min] with bisoprolol; difference, 1.5/min [95% CI, -2.0 to 5.1/min]; P = .40). The modified EHRA class was significantly different between groups at 6 months; 53% of patients in the digoxin group reported a 2-class improvement vs 9% of patients in the bisoprolol group (adjusted odds ratio, 10.3 [95% CI, 4.0 to 26.6]; P < .001). At 12 months, 8 of 20 outcomes were significantly different (all favoring digoxin), with a median NT-proBNP level of 960 pg/mL (interquartile range, 626 to 1531 pg/mL) in the digoxin group vs 1250 pg/mL (interquartile range, 847 to 1890 pg/mL) in the bisoprolol group (ratio of geometric means, 0.77 [95% CI, 0.64 to 0.92]; P = .005). Adverse events were less common with digoxin; 20 patients (25%) in the digoxin group had at least 1 AE vs 51 patients (64%) in the bisoprolol group (P < .001). There were 29 treatment-related AEs and 16 serious AEs in the digoxin group vs 142 and 37, respectively, in the bisoprolol group.Conclusions and Relevance: Among patients with permanent atrial fibrillation and symptoms of heart failure treated with low-dose digoxin or bisoprolol, there was no statistically significant difference in quality of life at 6 months. These findings support potentially basing decisions about treatment on other end points.Trial Registration: ClinicalTrials.gov Identifier: NCT02391337 and clinicaltrialsregister.eu Identifier: 2015-005043-13. [ABSTRACT FROM AUTHOR]- Published
- 2020
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