Margaret McCarthy
FAHA FNP-BC PhD RN
Assistant Professor
mmccarthy@nyu.edu
1 212 992 5796
433 First Ave
New York, NY 10010
United States
Margaret McCarthy's additional information
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Margaret McCarthy, PhD, RN, FNP-BC, FAHA, is an assistant professor at NYU Rory Meyers College of Nursing. She is a family nurse practitioner and an exercise physiologist. Her research focuses on promoting exercise in populations at risk for cardiovascular disease. She has conducted research in adults with both type 1 and type 2 diabetes. Her future research goal is to develop interventions to promote exercise in these populations, focusing on the use of technology in clinical settings.
McCarthy received her PhD from New York University, MS in family nursing from Pace University, MA in exercise physiology from Adelphi University, and BSN from Binghamton University. She completed post-doctoral training in nursing at Yale University.
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Post-doctoral training, Nursing - YalePhD - New York UniversityMS, Family Nursing Practitioner - Pace UniversityMA, Exercise Physiology - Adelphi UniversityBSN - Binghamton University
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Non-communicable diseaseDiabetesCardiologyAdult health
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American Association of Nurse PractitionersAmerican Heart AssociationEastern Nursing Research SocietySociety of Behavioral Medicine
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Faculty Honors Awards
Fellow, New York Academy of Medicine (2018)Fellow, American Heart Association (2017)Overall Distinguished Student, NYU College of Nursing (2013) -
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Publications
Arthritis-related limitations predict insufficient physical activity in adults with prediabetes identified in the NHANES 2011-2014
AbstractStrauss, S. M., & McCarthy, M. (2017). Diabetes Educator, 43(2), 163-170. 10.1177/0145721717691849AbstractPurpose The purpose of the study was to determine the extent to which arthritis-related limitations are salient in predicting less than the recommended amount of time for adults with prediabetes to spend on moderate or vigorous physical activity. Methods Data from the 2011-2014 National Health and Nutrition Examination Survey (NHANES) in the United States were used to identify the predictors of insufficient physical activity in a large sample of adults with prediabetes 20 years of age and older (n = 2536). Results When extrapolated to more than 45 million adults in the United States at least 20 years of age with prediabetes, 42.7% had insufficient physical activity. Having arthritis- related functional limitations was a significant predictor of insufficient physical activity, even after accounting for the statistically significant contributions of female sex, older age, lower education level, higher body mass index, and depression. Conclusion When educating and counseling adults with prediabetes, diabetes educators should assess for arthritis-related functional limitations when examining factors that may affect prediabetes progression. Recommendations for physical activity for those with mobility and other limitations need to be individualized within a tailored exercise program to accommodate their specific limitations.Physical inactivity and cardiac events: An analysis of the Detection of Ischemia in Asymptomatic Diabetics (DIAD) study
AbstractMcCarthy, M. M., Wackers, F. J., Davey, J., & Chyun, D. A. (2017). Journal of Clinical and Translational Endocrinology, 9, 8-14. 10.1016/j.jcte.2017.05.005AbstractAims Diabetes affects 29 million adults, and the majority have type 2 diabetes (T2D). Coronary artery disease (CAD) is the leading cause of death, and physical inactivity is an important risk factor. The aims of this study were to examine the contribution of physical inactivity to CAD events, and to identify the independent predictors of CAD events in a sample of older adults with T2D. Method A secondary data analysis of the prospective randomized screening trial “Detection of Ischemia in Asymptomatic Diabetics (DIAD)” study. Cox proportional hazard modeling was used to examine the outcome of CAD events. Results During the five years of follow-up, the CAD event rate for all subjects (n = 1119) was 8.4% (n = 94). In unadjusted analysis, physical inactivity was significantly associated with development of a CAD event. In the final model, nine baseline variables were significant predictors (p < 0.05) of a CAD: physical inactivity, race, diabetes duration, hemoglobin A1c (HbA1c), peripheral numbness, insulin use, increasing waist-to-hip ratio, family history of premature CAD, and a higher pulse pressure. In men only, there were five predictors (p < 0.05) of a CAD event: diabetes duration, peripheral numbness, HbA1c, increasing waist-to-hip ratio, and higher pulse pressure. The final model in women included three independent predictors (p < 0.05) of a CAD event: diabetes duration, a family history of premature CAD, and higher pulse pressure. Conclusion Several variables predicted CAD events in this sample of older adults with T2D. Understanding baseline characteristics that heighten risk may assist providers in intervening early to prevent its occurrence.Self-management of physical activity in adults with type 1 diabetes
McCarthy, M. M., Whittemore, R., Gholson, G., & Grey, M. (2017). Applied Nursing Research, 35, 18-23. 10.1016/j.apnr.2017.02.010Cardiovascular health in adults with type 1 diabetes
AbstractMcCarthy, M. M., Funk, M., & Grey, M. (2016). Preventive Medicine, 91, 138-143. 10.1016/j.ypmed.2016.08.019AbstractAdults with type 1 diabetes (T1D) are at risk for cardiovascular (CV) disease. Managing CV risk is an important prevention strategy. The American Heart Association has defined 7 factors for ideal CV health. The purpose of this 2016 secondary analysis was to assess the prevalence of 6 CV health factors in a sample of adults ≥ 18 (n = 7153) in the T1D Exchange Clinic registry. CV health factors include: hemoglobin A1c (HbA1c) < 7%, BMI < 25 kg/m2, blood pressure < 120/80 mm Hg, total cholesterol < 200 mg/dL, non-smoking, and physical activity ≥ 150 min/week. HbA1c < 7% was substituted for the AHA health factor of fasting blood glucose. Frequencies of each factor were tabulated for the total sample and for each gender. Logistic regression examined variables associated with achievement of each CV health factor. The mean age was 37.14 ± 17 years. Mean HbA1c was 7.9 ± 1.5%, and duration was 19.5 ± 13.5 years. The majority (54%) were working full or part-time. Achievement of CV health factors in the whole sample ranged from 27% (HbA1c < 7%) to 94% nonsmoking. Achievement of some factors varied by gender. Common variables associated with several CV health factors included gender, education, employment, and T1D duration. This young sample exhibited low levels of some CV health factors, especially HbA1c and physical activity. Providers need to routinely assess and advise on management of all CV risk factors to prevent this common diabetes complication.An exercise counseling intervention in minority adults with heart failure
AbstractMcCarthy, M. M., Dickson, V. V., Katz, S. D., & Chyun, D. A. (2016). Rehabilitation Nursing, 42(3), 146-156. 10.1002/rnj.265AbstractPurpose: The primary aimof this study was to assess the feasibility of an exercise counseling intervention for adults of diverse race/ ethnicity with heart failure (HF) and to assess its potential for improving overall physical activity, functional capacity, and HF self-care. Design: This study was a quasi-experimental, prospective, longitudinal cohort design. Methods: Twenty adults were enrolled and completed the 6-minute walk and standardized instruments, followed by exercise counseling using motivational interviewing. Each received an accelerometer, hand weights, and a diary to record self-care behaviors. Participants were followed via phone for 12 weeks to collect step-counts, review symptoms, and plan the following week's step goal. Findings: Results indicate that this interventionwas feasible formost participants and resulted in improvements in physical activity, functional capacity, and self-care behaviors. Conclusion/Clinical Relevance: Brief exercise counseling may be an appropriate option to improve outcomes for stable patients with HF and may be tailored to fit different settings.Physical Activity in Adults With Type 1 Diabetes
AbstractMcCarthy, M. M., Whittemore, R., & Grey, M. (2016). The Diabetes Educator, 42(1), 108-115. 10.1177/0145721715620021AbstractPurpose The purpose of this study was to examine sociodemographic, clinical, and psychological factors associated with engaging in regular physical activity (PA) in adults with type 1 diabetes. Secondary cross-sectional analysis based on data from the Type One Diabetes Exchange clinic registry was conducted. Adults ≥18 years old enrolled in the clinic registry who had completed PA self-report data (n = 7153) were included in this study. Mean age was 37.14 ± 17 years, and 54% (n = 3840) were men. Type 1 diabetes duration was 19.5 ± 13.5 years, and mean A1C level was 7.9% ± 1.5% (62 mmol/mol). Twelve percent (n = 848) of the sample reported no PA; 55% (n = 3928) reported PA 1 to 4 days per week; and 33% (n = 2377) reported PA ≥5 days per week. Factors that were associated with increased odds of no PA were older age, less-than-excellent general health, increased body mass index, longer duration of diabetes, and increased depressive symptoms. More blood glucose meter checks per day decreased odds of no PA. Factors associated with lower odds of ≥5 days of PA included minority race/ethnicity, education, less-than-excellent general health, presence of a foot ulcer, increased body mass index, and depressive symptoms. Male sex, less-than-full-time employment, and being single increased the odds of ≥5 days of PA. Several demographic, clinical, diabetes-related, and psychosocial factors were related to PA. Potential interventions may target those with depressive symptoms or self-reported poor general health, or they may be tailored to working adults who may find it harder to be physically active.Motion sensor use for physical activity data: Methodological considerations
AbstractMcCarthy, M., & Grey, M. (2015). Nursing Research, 64(4), 320-327. 10.1097/NNR.0000000000000098AbstractBackground: Physical inactivity continues to be amajor risk factor for cardiovascular disease, and only one half of adults in the United States meet physical activity (PA) goals. PA data are often collected for surveillance or for measuring change after an intervention. One of the challenges in PA research is quantifying exactly how much and what type of PA is taking place-especially because self-report instruments have inconsistent validity. Objective: The purpose is to review the elements to consider when collecting PA data via motion sensors, including the difference between PA and exercise, type of data to collect, choosing the device, length of time to monitor PA, instructions to the participants, and interpretation of the data. Methods: The current literature on motion sensor research was reviewed and synthesized to summarize relevant considerations when using a motion sensor to collect PA data. Results: Exercise is a division of PA that is structured, planned, and repetitive. Pedometer data include steps taken and calculated distance and energy expenditure. Accelerometer data include activity counts and intensity. The device chosen depends on desired data, cost, validity, and ease of use. Reactivity to the device may influence the duration of data collection. Instructions to participantsmay vary depending on the purpose of the study. Experts suggest pedometer data be reported as steps-because that is the direct output-and distance traveled and energy expenditure are estimated values. Accelerometer count data may be analyzed to provide information on time spent in moderate or vigorous activity. Discussion: Thoughtful decision making about PA data collection using motion sensor devices is needed to advance nursing science.Process evaluation of an exercise counseling intervention using motivational interviewing
AbstractMcCarthy, M. M., Dickson, V. V., Katz, S. D., Sciacca, K., & Chyun, D. A. (2015). Applied Nursing Research, 28(2), 156-162. 10.1016/j.apnr.2014.09.006AbstractAim: To describe the results of the process evaluation of an exercise counseling intervention using motivational interviewing (MI). Background: Exercise can safely be incorporated into heart failure self-care, but many lack access to cardiac rehabilitation. One alternative is to provide exercise counseling in the clinical setting. Methods: This process evaluation was conducted according to previously established guidelines for health promotion programs. This includes an assessment of recruitment and retention, implementation, and reach. Results: Desired number of subjects were recruited, but 25% dropped out during study. Good fidelity to the intervention was achieved; the use of MI was evaluated with improvement in adherence over time. Dose included initial session plus 12 weekly phone calls. Subjects varied in participation of daily diary usage. Setting was conducive to recruitment and data collection. Conclusions: Evaluating the process of an intervention provides valuable feedback on content, delivery and fidelity.“I Just Can’t Do It Anymore” Patterns of Physical Activity and Cardiac Rehabilitation in African Americans with Heart Failure: A Mixed Method Study
AbstractMcCarthy, M., Katz, S. D., Schipper, J., & Dickson, V. V. (2015). Healthcare (Switzerland), 3(4), 973-986. 10.3390/healthcare3040973AbstractPhysical activity and cardiac rehabilitation (CR) are components of heart failure (HF) self-care. The aims of this study were to describe patterns of physical activity in African Americans (n = 30) with HF and to explore experience in CR. This was a mixed method, concurrent nested, predominantly qualitative study. Qualitative data were collected via interviews exploring typical physical activity, and CR experience. It was augmented by quantitative data measuring HF severity, self-care, functional capacity and depressive symptoms. Mean age was 60 ± 15 years; 65% were New York Heart Association (NYHA) class III HF. Forty-three percent reported that they did less than 30 min of exercise in the past week; 23% were told “nothing” about exercise by their provider, and 53% were told to do “minimal exercise”. A measure of functional capacity indicated the ability to do moderate activity. Two related themes stemmed from the narratives describing current physical activity: “given up” and “still trying”. Six participants recalled referral to CR with one person participating. There was high concordance between qualitative and quantitative data, and evidence that depression may play a role in low levels of physical activity. Findings highlight the need for strategies to increase adherence to current physical activity guidelines in this older minority population with HF.Predictors of Physical Inactivity in Men and Women With Type 2 Diabetes From the Detection of Ischemia in Asymptomatic Diabetics (DIAD) Study
AbstractMcCarthy, M. M., Davey, J., Wackers, F. J., & Chyun, D. A. (2014). The Diabetes Educator, 40(5), 678-687. 10.1177/0145721714540055AbstractPurpose The purpose of this secondary analysis was to determine changes in physical inactivity from baseline to 5 years and to identify factors associated with and predictive of physical inactivity among individuals with type 2 diabetes enrolled in the Detection of Ischemia in Asymptomatic Diabetics (DIAD) study. DIAD was a prospective randomized screening trial that assessed the prevalence of silent ischemia in asymptomatic patients with type 2 diabetes. Subjects were recruited from diabetes and primary care practices at 14 centers throughout the United States and Canada. This is a secondary data analysis of the physical activity data (type and hours/week) collected. No intervention was conducted. In all subjects, physical inactivity rose from 24% at baseline to 33% at 5 years (S = 28.93; P <.0001). This change was significant in both men (S = 11.44; P <.0001), increasing from 23% to 31%, and women (S = 18.05; P <.0001), increasing from 25% to 36%. Gender differences were noted in several factors associated with baseline physical inactivity as well as in factors predictive of physical inactivity at 5 years. Important factors associated at both time points included lower level of education, current employment, presence of peripheral and autonomic neuropathy, and indicators of overweight/obesity. Baseline physical inactivity was strongly predictive of physical inactivity at 5 years (odds ratio, 3.27; 95% confidence interval, 2.36-4.54; P <.0001). Gender-related differences were noted in factors associated with and predictive of physical inactivity.