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Sean Hubbard – Health Education & Behavior, 2024
The high cost of health care in the United States creates complex decisions where suboptimal choices may negatively affect an individual's physical and financial health. The challenge for patients is that the complex nature of health-related financial decisions requires specialized knowledge to avoid these suboptimal choices. While the benefits of…
Descriptors: Money Management, Decision Making, Health Services, Debt (Financial)
Chae, Jiyoung – Health Education & Behavior, 2018
This study investigated sociodemographic, health-related, technological, and motivational factors associated with having health-related apps. Focusing on motivational factors, this study chose five general healthy intentions (about fruit, vegetable, and soda intake, weight control, and amount of exercise) and examined whether those with intention…
Descriptors: Profiles, Computer Oriented Programs, Individual Characteristics, Intention
Yepes, Maryam; Maurer, Jürgen; Stringhini, Silvia; Viswanathan, Barathi; Gedeon, Jude; Bovet, Pascal – Health Education & Behavior, 2016
Background: While obesity continues to rise globally, the associations between body size, gender, and socioeconomic status (SES) seem to vary in different populations, and little is known on the contribution of perceived ideal body size in the social disparity of obesity in African countries. Purpose: We examined the gender and socioeconomic…
Descriptors: Foreign Countries, Body Composition, Socioeconomic Status, Gender Differences
Ferrar, Katia; Golley, Rebecca – Health Education & Behavior, 2015
Risk factors for adolescent overweight and obesity include low levels of physical activity, high levels of sedentary behavior, low fruit and vegetable intake, and low socioeconomic position (SEP). To date, the vast majority of research investigating associations between lifestyle behaviors and weight status analyze dietary and time use factors…
Descriptors: Adolescents, Dietetics, Obesity, Socioeconomic Status
Tucker-Seeley, Reginald D.; Mitchell, Jamie A.; Shires, Deirdre A.; Modlin, Charles S., Jr. – Health Education & Behavior, 2015
Background: Health self-efficacy (the confidence to take care of one's health) is a key component in ensuring that individuals are active partners in their health and health care. The purpose of this study was to determine the association between financial hardship and health self-efficacy among African American men and to determine if unmet…
Descriptors: Self Efficacy, Health Needs, African Americans, Males
Wyatt, Laura C.; Trinh-Shevrin, Chau; Islam, Nadia S.; Kwon, Simona C. – Health Education & Behavior, 2014
Although the New York City Chinese population aged =65 years increased by 50% between 2000 and 2010, the health needs of this population are poorly understood. Approximately 3,001 Chinese individuals from high-density Asian American New York City areas were included in the REACH U.S. Risk Factor Survey; 805 (26.8%) were aged =65 years and…
Descriptors: Health Behavior, Quality of Life, Gender Differences, Risk
Ellis, Rebecca; Kosma, Maria; Symons Downs, Danielle – Health Education & Behavior, 2013
This study tested moderators of the theory of planned behavior (TPB) based on geographical region, gender, race, and income among adolescents in an exercise context using multigroup path analyses. Participants were eighth- and ninth-grade students from Louisiana (LA; N = 448, M[subscript age] = 14.37 years) and Pennsylvania (PA; N = 681,…
Descriptors: Exercise, Intention, Race, Income
Nelson-Peterman, Jerusha L.; Toof, Robin; Liang, Sidney L.; Grigg-Saito, Dorcas C. – Health Education & Behavior, 2015
Refugees in the United States have high rates of chronic disease. Both long-term effects of the refugee experience and adjustment to the U.S. health environment may contribute. While there is significant research on health outcomes of newly resettled refugees and long-term mental health experiences of established refugees, there is currently…
Descriptors: Foreign Countries, Refugees, Immigrants, Females
Predicting Health Care Utilization among Latinos: Health Locus of Control Beliefs or Access Factors?
De Jesus, Maria; Xiao, Chenyang – Health Education & Behavior, 2014
There are two competing research explanations to account for Latinos' underutilization of health services relative to non-Latino Whites in the United States. One hypothesis examines the impact of health locus of control (HLOC) beliefs, while the other focuses on the role of access factors on health care use. To date, the relative strength of…
Descriptors: Hispanic Americans, Access to Health Care, Locus of Control, Beliefs
Ritieni, Assunta; Moskowitz, Joel; Tholandi, Maya – Health Education & Behavior, 2008
Misconceptions about HIV/AIDS among Latino adults (N=454) in California were examined using data from a population-based telephone survey conducted in 2000. Common misconceptions concerning modes of HIV transmission included transmission via mosquito or animal bite (64.1%), public facilities (48.3%), or kissing someone on the cheek (24.8%). A…
Descriptors: Income, Sexually Transmitted Diseases, Telephone Surveys, Multiple Regression Analysis