An exploratory decision tree analysis to predict cardiovascular disease risk in African American women.

OBJECTIVE African American (AA) women are at greater risk for cardiovascular disease (CVD) compared to White women, which can be attributed to disparities in risk factors. The built environment may contribute to improving CVD risk factors by increasing physical activity (PA). This study used recursive partitioning, a multivariate decision tree risk classification approach, to determine which built environment characteristics contributed to the classification of AA women as having 4 or more CVD risk factors at optimal levels. METHOD Recursive partitioning has the ability to detect interactions and does not have sample size limitations to detect effects. The Classification and Regression Trees (CR&T) growing method was used to group participants as having 4 or more versus 3 or fewer risk factors at optimal levels. Risk factors were smoking, body mass index (BMI), PA, healthy diet, cholesterol, glucose, and blood pressure. Built environment predictors were presence and quality of neighborhood PA resources (PARs), walkability, traffic safety, and crime. RESULTS Participants (N = 30, mean age of 54.1 ± 7.5) all had at least 1 risk factor at the optimal level, none had all 7, and 66.7% had 4 or more risk factors at optimal levels. The CR&T identified participants with few, low-quality neighborhood PARs and who were older than 55 as least likely to have 4 or more CVD risk factors at optimal levels. CONCLUSION Being younger than 55 years old and having many, high-quality neighborhood PARs may predict lower risk for CVD in AA women. Results should be used in future studies with larger sample sizes to inform logistic regression models. (PsycINFO Database Record

[1]  Richard A. Williams Cardiovascular disease in African American women: a health care disparities issue. , 2009, Journal of the National Medical Association.

[2]  Jacob Cohen Statistical Power Analysis for the Behavioral Sciences , 1969, The SAGE Encyclopedia of Research Design.

[3]  Yuling Hong,et al.  Status of Cardiovascular Health Among Adult Americans in the 50 States and the District of Columbia, 2009 , 2012, Journal of the American Heart Association.

[4]  R. Sacco,et al.  Ideal Cardiovascular Health Predicts Lower Risks of Myocardial Infarction, Stroke, and Vascular Death Across Whites, Blacks, and Hispanics: The Northern Manhattan Study , 2012, Circulation.

[5]  D. Midthune,et al.  Fruit and vegetable assessment: performance of 2 new short instruments and a food frequency questionnaire. , 2002, Journal of the American Dietetic Association.

[6]  Rebecca E. Lee,et al.  Contribution of Neighborhood Income and Access to Quality Physical Activity Resources to Physical Activity in Ethnic Minority Women over Time , 2015, American journal of health promotion : AJHP.

[7]  J. Sallis,et al.  Role of Built Environments in Physical Activity, Obesity, and Cardiovascular Disease , 2012, Circulation.

[8]  Daniel A. Rodriguez,et al.  The development and testing of an audit for the pedestrian environment , 2007 .

[9]  H. Kraemer,et al.  Risk factors for binge-eating disorders: an exploratory study. , 2007, The International journal of eating disorders.

[10]  O. Franco,et al.  Population-level changes to promote cardiovascular health , 2012, European journal of preventive cardiology.

[11]  P. Lachenbruch Statistical Power Analysis for the Behavioral Sciences (2nd ed.) , 1989 .

[12]  Charles S. Layne,et al.  Multiple Measures of Physical Activity, Dietary Habits and Weight Status in African American and Hispanic or Latina Women , 2011, Journal of Community Health.

[13]  Mark D. Huffman,et al.  Heart disease and stroke statistics--2013 update: a report from the American Heart Association. , 2013, Circulation.

[14]  G. Heath,et al.  The role of the built environment in shaping the health behaviors of physical activity and healthy eating for cardiovascular health. , 2012, Future cardiology.

[15]  Rebecca E. Lee,et al.  Health is Power: an ecological, theory-based health intervention for women of color. , 2011, Contemporary clinical trials.

[16]  C. Lewis,et al.  Association of race and sex with risk of incident acute coronary heart disease events. , 2012, JAMA.

[17]  Wei-Yin Loh,et al.  Classification and regression trees , 2011, WIREs Data Mining Knowl. Discov..

[18]  J. Broderick,et al.  Heart disease and stroke. , 1993, Heart disease and stroke : a journal for primary care physicians.

[19]  B. Ainsworth,et al.  Guidelines for data processing analysis of the International Physical Activity Questionnaire (IPAQ) - Short and long forms , 2005 .

[20]  Howard S. Kim Association of Race and Sex with Risk of Incident Acute Coronary Heart Disease Events , 2013 .

[21]  Mph Richard Killingsworth The Role of the Built Environment , 2010 .

[22]  M. Leshno,et al.  Is an Exercise Tolerance Test Indicated Before Beginning Regular Exercise? A Decision Analysis , 2009, Journal of General Internal Medicine.

[23]  D. Midthune,et al.  Development and evaluation of a short instrument to estimate usual dietary intake of percentage energy from fat. , 2007, Journal of the American Dietetic Association.

[24]  Rebecca E Lee,et al.  The Physical Activity Resource Assessment (PARA) instrument: Evaluating features, amenities and incivilities of physical activity resources in urban neighborhoods , 2005, The international journal of behavioral nutrition and physical activity.

[25]  H. Kraemer,et al.  Can we identify who will adhere to long-term physical activity? Signal detection methodology as a potential aid to clinical decision making. , 1997, Health psychology : official journal of the Division of Health Psychology, American Psychological Association.

[26]  D. Mozaffarian,et al.  Defining and Setting National Goals for Cardiovascular Health Promotion and Disease Reduction: The American Heart Association's Strategic Impact Goal Through 2020 and Beyond , 2010, Circulation.

[27]  H. Kraemer,et al.  Characteristics of successful and unsuccessful dieters: An application of signal detection methodology , 1998, Annals of behavioral medicine : a publication of the Society of Behavioral Medicine.

[28]  H. Kraemer,et al.  Do logistic regression and signal detection identify different subgroups at risk? Implications for the design of tailored interventions. , 2001, Psychological methods.

[29]  H. Kraemer,et al.  A community-based heart disease intervention: predictors of change. , 1994, American Journal of Public Health.