The Feasibility of Make My Day—A Randomized Controlled Pilot Trial of a Stroke Prevention Program in Primary Healthcare
Abstract
:1. Introduction
The Make My Day Intervention
- (1)
- the success of recruitment and retention procedures;
- (2)
- the acceptability and suitability of the instruments and response rates;
- (3)
- adherence to the MMD pilot trial and prevention program;
- (4)
- sensitivity to change in the outcome measures.
2. Materials and Methods
2.1. Study Design
2.2. Recruitment of Persons at Risk for Stroke
2.3. Randomization
2.4. Intervention Group: Make My Day
2.5. Control Group
2.6. Data Collection
2.7. Outcome Measurements
2.7.1. Overall Stroke Risk
2.7.2. Individual Risk Factors for Stroke
2.7.3. Physical Performance
2.7.4. Activity Performance
2.7.5. Healthy Activity Patterns
2.7.6. Participation in Health-Promoting Activities
2.7.7. Activity Balance
2.7.8. Stroke Risk Literacy
2.7.9. Quality of Life
2.8. Data Analysis
2.9. Ethical Considerations
3. Results
3.1. Participant Recruitment and Baseline Characteristics
3.2. Acceptability and Suitability of Instruments and Response Rates
3.3. Adherence
3.4. Outcome Measurements
3.4.1. Overall Stroke Risk
3.4.2. Individual Cardiometabolic and Lifestyle Risk Factors
3.4.3. Stroke Risk Literacy
3.4.4. Activity Performance
3.4.5. Time Use and Experience of Health in Everyday Activities
3.4.6. Participation in Health-Promoting Activities
3.4.7. Activity Balance
3.4.8. Quality of Life
3.4.9. Physical Performance
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Outcome | Instrument | Purpose | Measure |
---|---|---|---|
Stroke risk | Stroke Risk Score Card (SRSC) [33] | Overall stroke risk combining modifiable and non-modifiable risk factors | 8 domains with three categories each. Total score, summing up each category: ≥3 = High Stroke Risk, 4–6 = Caution, 6–8 = Low Stroke Risk |
Anthropometric measures | Body Mass Index (BMI) | Indicator for body fat and weight status | <18.5 = Underweight, 18.5–24.9 = Normal, 25.0–29.9 = Overweight, >30.0 = Obesity |
Blood pressure (BP) [40,41] | Measurement of systolic and diastolic blood pressure | High blood pressure: >140/90, Elevated blood pressure: 120–139/80–89, Normal blood pressure: <120/80. A decrease of 10 mm Hg in systolic blood pressure and 5 mm Hg in diastolic blood pressure was considered a clinically meaningful change. | |
Lifestyle habits | Lifestyle habit survey [42]. | Estimation of lifestyle habits in everyday life: tobacco use, alcohol consumption, physical activity, and eating habits. | Four habits with 11 questions in total, subdivided into 4–5 levels of performance during a week or the last months. For example, “how often do you eat fruit or berries?” 1 = Two times each day or more 2 = One’s a day 3 = A couple of times during a week 4 = One time, or less, during a week. |
Physical performance | 6 min walk test (6MWT) [34] | Physical performance while walking 6 min. | Measurements before and after 6 min walk between a marking of 30 m: distance in meters, saturation (SpO2), pulse (beat/minute), blood pressure (mm Hg systolic and diastolic), and estimating shortness of breath and leg fatigue with Borg Scale (1–10). |
Activity performance and satisfaction | Canadian Occupational Performance Measure (COPM) [24]. | Perceived performance and satisfaction with activities in everyday life. | Scale ranging from 1 to 10 in two aspects: (i) current performance, 1 = not able to perform the activity at all to 10 = able to do it extremely well, and (ii) satisfaction with doing, 1 = not satisfied to 10 = extremely satisfied. |
Activity patterns | The Daily Experiences of Pleasure, Productivity and Restoration Profile (PPRP) [35]. | Perceived pleasure, productivity, and restoration during three days (two week days and one weekend day). | Time as measured in hours. Scale of 1–7 in four dimensions (pleasure, productivity, restoration and health) related to the time use. For example: 1 = Extreme displeasure 2 = Moderate displeasure 3 = A little displeasure 4 = Neither pleasure nor displeasure 5 = Moderate pleasure 6 = Extreme pleasure. |
Participation in health-promoting activities | PHPA questionnaire | Perceived participation in activities in everyday life that can increase or decrease health. | 10 statements with 5 levels of agreement: 1 = No, do not participate, 2: Sometimes (less than once a week), 3 = Often (up to twice a week), 4 = regularly (three or more times a week), 5 = Daily. |
Perception of balance in everyday life | Occupational Balance Questionnaire (OBQ) [36] | Perception of balance within or between different occupations in everyday life. | 13 statements with 4 level of agreements: 0 = Do not agree at all 1 = Agree partially 2 = Agree a lot 3 = Totally agree, with a sum ranging from 0–39. |
Stroke risk literacy | Items from a stroke risk knowledge and awareness of stroke risk questionnaire [37] | Three questions indicating literacy of stroke risks, stroke risks that can be impacted by modifiable means, and scoring of one’s one stroke risk. | Counting of stroke risk factors were counted from 1–7, and the scoring of own risk by 1–10. |
Quality of life | EQ-5D-3L Questionnaire [38] | General life quality. Perceived state of health in five aspects: mobility, hygiene, main activities, pain, and anxiety. | Index scale from 0 to 1, based on scores from 1 to 3, subdivided into three levels of severity: 1 = no problem, 2 = some/moderate problems, 3 = extreme problems. |
EQ-Visual Analogue [38] Scale (EQ-VAS) | Perceived state of health. | Scale 0–100: 0 = worst possible health, 100 = best possible health. | |
Life Satisfaction | Life Satisfaction Scale11 (LiSat-11) [39] | Perceived satisfaction with life | Scale 1–6: 1 = not satisfied to 6 = very satisfied |
Variables | Intervention Group n = 14 | Control Group n = 15 |
---|---|---|
Age, Mean (SD) | 61.9 (8.5) | 59.7 (7.5) |
Education, Mean (SD) | 13.5 (1.8) | 13.7 (1.9) |
Sex, Female | 8 (57) | 12 (80) |
Country of birth country, Sweden | 9 (64) | 11 (73) |
Living situation Alone | 8 (57) | 7 (47) |
Together | 6 (43) | 8 (53) |
Area of housing/living a Good socioeconomic conditions | 11 (79) | 13 (87) |
Socioeconomic challenges | 3 (21) | 2 (13) |
Work status Working | 6 (43) | 8 (53) |
Not working b | 8 (57) | 7 (47) |
Yearly income, in euro >58,000 | 3 (21) | 1 (7) |
<58,000 >19,300 | 10 (72) | 11 (73) |
<19,300 | 1 (7) | 3 (20) |
mHealth technology use Interest | 13 (93) | 15 (100) |
Skills c | 9 (64) | 15 (100) |
Overall stroke risk d High risk | 9 (64) | 6 (40) |
Caution | 5 (36) | 9 (60) |
Modifiable risk factors Atrial fibrillation e | 1 (7) | 1 (7) |
Diabetes type 2 or borderline | 5 (36) | 6 (40) |
High or elevated blood pressure | 11 (79) | 9 (60) |
Smoking | 4 (29) | 0 (0) |
Overweight f | 7 (50) | 9 (60) |
Insufficient physical exercise g | 10 (71) | 14 (93) |
Insufficient physical activity h | 7 (50) | 9 (60) |
Insufficient vegetable consumption i | 5 (36) | 8 (53) |
Insufficient fruit and berry consumption i | 4 (29) | 8 (53) |
Limited weekly snack consumption j | 0 (0) | 3 (20) |
Recurring stress in everyday life k | 10 (71) | 12 (80) |
Stroke Risk | Intervention Group n = 14 | Control Group n = 15 | |
---|---|---|---|
Baseline | High risk | 9 | 6 |
Caution | 5 | 9 | |
Follow up | High risk | 5 b | 5 a |
Caution | 4 a | 8 a | |
Low risk | 2 | 1 | |
12 months | High risk | 5 a | 9 |
Caution | 7 a | 4 a | |
Low risk | 0 | 1 |
Measures | Baseline | 1st Follow up | 12-Month Follow-up | Mean Difference from 1st Follow-up | Mean Difference from 2nd Follow-up | Clinical Cut off Score |
---|---|---|---|---|---|---|
Intervention group | ||||||
SBP ↓ | 141 | 130 | 131 | −11 * | −10 * | 10 |
DBP ↓ | 93 | 85 | 85 | 8 | 8 | 5 |
COPM (1–10) ↑ | 4.1 | 6.6 | 5.8 | 2.6 * | 1.7 | >2 |
EQ-VAS (1–100) ↑ | 65 | 75 | 74 | 10 * | 9 | >10 |
Control group | ||||||
SBP ↓ | 131 | 129 | 127 | −2 | −3 | 10 |
DBP ↓ | 85 | 87 | 83 | +2 | −2 | 5 |
COPM (1–10) ↑ | 3.8 | 5.4 | 5.8 | 1.6 | 1.9 | >2 |
EQ-VAS (1–100) ↑ | 63 | 65 | 72 | 2 | 9 | >10 |
Measures | Intervention Group | Control Group | ||||||
---|---|---|---|---|---|---|---|---|
Baseline to Follow-up | Baseline to 12 Months | Baseline to Follow-up | Baseline to 12 Months | |||||
n = 14 | p-Value | n = 14 | p-Value | n = 15 | p-Value | n = 15 | p-Value | |
COPM (1–10) Median (IQR) | 2.5 (2.7) b | 0.050 * | 1.8 (2.3) a | 0.008 * | 1.0 (2.5) b | 0.002 * | 1.6 (3.8) a | 0.004 * |
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Mälstam, E.; Asaba, E.; Åkesson, E.; Guidetti, S.; Patomella, A.-H. The Feasibility of Make My Day—A Randomized Controlled Pilot Trial of a Stroke Prevention Program in Primary Healthcare. Int. J. Environ. Res. Public Health 2023, 20, 6828. https://doi.org/10.3390/ijerph20196828
Mälstam E, Asaba E, Åkesson E, Guidetti S, Patomella A-H. The Feasibility of Make My Day—A Randomized Controlled Pilot Trial of a Stroke Prevention Program in Primary Healthcare. International Journal of Environmental Research and Public Health. 2023; 20(19):6828. https://doi.org/10.3390/ijerph20196828
Chicago/Turabian StyleMälstam, Emelie, Eric Asaba, Elisabet Åkesson, Susanne Guidetti, and Ann-Helen Patomella. 2023. "The Feasibility of Make My Day—A Randomized Controlled Pilot Trial of a Stroke Prevention Program in Primary Healthcare" International Journal of Environmental Research and Public Health 20, no. 19: 6828. https://doi.org/10.3390/ijerph20196828