| Literature DB >> 35916687 |
Christina Kranzinger1, Verena Venek1, Harald Rieser1, Sonja Jungreitmayr2, Susanne Ring-Dimitriou2.
Abstract
BACKGROUND: Physical inactivity remains a leading risk factor for mortality worldwide. Owing to increasing sedentary behavior (activities in a reclining, seated, or lying position with low-energy expenditures), vehicle-based transport, and insufficient physical workload, the prevalence of physical activity decreases significantly with age. To promote sufficient levels of participation in physical activities, the research prototype Fit-mit-ILSE was developed with the goal of making adults aged ≥55 years physically fit and fit for the use of assistive technologies. The system combines active and assisted living technologies and smart services in the ILSE app.Entities:
Keywords: Jenks natural breaks algorithm; Partitioning Around Medoids algorithm; active and assisted living; app usage; cluster analysis; physical activity promotion; usage groups
Year: 2022 PMID: 35916687 PMCID: PMC9347765 DOI: 10.2196/30149
Source DB: PubMed Journal: JMIR Form Res ISSN: 2561-326X
Figure 1The ILSE app and its modules provided on the tablet version and the 3D camera system version. e-Learning: electronic learning.
Overview of the demographic- and sports-related variables included in the analysis (N=165).
| Characteristics | Observations, n (%) | ||
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| Region | 165 (100) | |
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| Age (years) | 165 (100) | |
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| Gender | 165 (100) | |
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| Household size | 165 (100) | |
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| Education level | 165 (100) | |
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| Fitness level | 129 (78.2) | |
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| Sports duration | 138 (83.6) | |
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| Number of days with fitness exercises performed | 163 (98.8) | |
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| Hours in sitting position | 163 (98.8) | |
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| Number of days on which they ride a bicycle | 78 (47.3) | |
Figure 2Overview of the 2 user-type clustering approaches.
Demographics of the cluster groups of ILSE app users applying Jenks natural breaks in the semi–data-driven approach. Apart from the birth year, the age reached in 2019 is given in parenthesis (N=165).
| Demographics | Low use | Light use | Moderate use | High use | |||||
| Users, n (%) | 46 (27.9) | 63 (38.2) | 49 (29.7) | 7 (4.2) | |||||
| App visit frequency range (per week) | ≤1 | 1.1-3.6 | 3.65-7.42 | 7.49-14.56 | |||||
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| Male | 18 (47.4) | 10 (26.3) | 8 (21.1) | 2 (5.2) | ||||
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| Female | 28 (22) | 53 (41.7) | 41 (32.3) | 5 (3.9) | ||||
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| 1946-1949 (70-73) | 15 (65.2) | 7 (30.4) | 0 (0) | 1 (4.3) | ||||
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| 1950-1953 (66-69) | 18 (25.4) | 29 (40.8) | 22 (31) | 2 (2.8) | ||||
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| 1953-1957 (62-65) | 13 (18.3) | 27 (38) | 27 (38) | 4 (5.6) | ||||
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| Vienna | 30 (38) | 32 (40.5) | 14 (17.7) | 3 (3.8) | ||||
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| Salzburg | 16 (18.6) | 31 (36) | 35 (40.7) | 4 (4.6) | ||||
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| ISCEDa 2 | 1 (16.7) | 3 (50) | 2 (33.3) | 0 (0) | ||||
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| ISCED 3 | 14 (21.5) | 22 (33.8) | 27 (41.5) | 2 (3.1) | ||||
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| ISCED 4 | 0 (0) | 4 (100) | 0 (0) | 0 (0) | ||||
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| ISCED 5 | 17 (39.5) | 13 (30.2) | 10 (23.3) | 3 (7) | ||||
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| ISCED 6-8 | 13 (31.7) | 18 (43.9) | 8 (19.5) | 2 (4.9) | ||||
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| Single | 11 (26.8) | 14 (34.1) | 14 (34.1) | 2 (4.9) | ||||
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| 2 persons | 29 (26.4) | 44 (40) | 32 (29.1) | 5 (4.5) | ||||
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| 3-4 person | 6 (42.9) | 5 (35.7) | 3 (21.4) | 0 (0) | ||||
aISCED: International Standard Classification of Education.
Initial training experience grouped to categories and fitness level of the cluster groups of ILSE app users before interventions applying Jenks natural breaks in the semi–data-driven approach (N=165).
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| Low use, n (%) | Light use, n (%) | Moderate use, n (%) | High use, n (%) | |
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| 2 | 10 (40) | 9 (36) | 6 (24) | 0 (0) |
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| 3 | 18 (26.9) | 25 (37.3) | 20 (29.9) | 4 (6) |
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| 4 | 7 (18.9) | 16 (43.2) | 11 (29.7) | 3 (8.1) |
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| 0 | 13 (38.2) | 10 (29.4) | 9 (26.5) | 2 (5.9) |
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| 1-2 | 19 (26) | 29 (39.7) | 23 (31.5) | 2 (2.7) |
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| 3-5 | 12 (26.1) | 19 (41.3) | 12 (26.1) | 3 (6.5) |
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| 6-7 | 2 (20) | 4 (40) | 4 (40) | 0 (0) |
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| <30 | 5 (71.4) | 2 (28.6) | 0 (0) | 0 (0) |
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| 30-60 | 6 (15.8) | 16 (42.1) | 14 (36.8) | 2 (5.3) |
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| 60-120 | 12 (17.6) | 32 (47.1) | 21 (30.9) | 3 (4.4) |
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| >120 | 8 (32) | 9 (36) | 7 (28) | 1 (4) |
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| <6 | 17 (26.6) | 26 (40.6) | 19 (29.7) | 2 (3.1) |
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| 6-8 | 20 (27) | 25 (33.7) | 26 (35.1) | 3 (4.1) |
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| >8 | 9 (36) | 11 (44) | 3 (12) | 2 (8) |
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| 0 | 2 (11.7) | 5 (29.4) | 9 (52.9) | 1 (5.9) |
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| 1-3 | 13 (29.5) | 14 (31.8) | 16 (36.4) | 1 (2.2) |
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| >3 | 4 (23.5) | 8 (47.1) | 5 (29.4) | 0 (0) |
Figure 3Elbow plot of the multidimensional clustering approach. PAM: Partitioning Around Medoids.
Figure 4Number of total days of app use in the 4 cluster groups.
Demographics of the 4 cluster groups derived by the Partitioning Around Medoids algorithm (N=165).
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| Cluster A (n=60) | Cluster B (n=30) | Cluster C (n=42) | Cluster D (n=33) | |
| Days of use, mean (SD) | 29.0 (16.1) | 50.5 (13.6) | 15.9 (12.5) | 8.2 (5.9) | |
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| Male | 12 (20) | 3 (10) | 10 (23.8) | 13 (39.4) |
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| Female | 48 (80) | 27 (90) | 32 (76.2) | 20 (60.6) |
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| 1946-1949 (70-73) | 27 (45.5) | 10 (33.3) | 19 (45.2) | 15 (45.5) |
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| 1950-1953 (66-69) | 27 (45.5) | 10 (33.3) | 19 (45.2) | 15 (45.5) |
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| 1953-1957 (62-65) | 28 (24.2) | 20 (66.7) | 15 (35.7) | 8 (24.2) |
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| Vienna | 27 (45) | 10 (33.3) | 21 (50) | 21 (63.6) |
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| Salzburg | 33 (55) | 20 (66.7) | 21 (50) | 12 (36.4) |
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| ISCEDa 2 | 2 (3.5) | 1 (3.4) | 3 (7.3) | 0 (0) |
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| ISCED 3 | 24 (42.1) | 17 (58.6) | 14 (34.1) | 20 (31.3) |
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| ISCED 4 | 2 (3.5) | 0 (0) | 1 (2.4) | 1 (3.1) |
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| ISCED 5 | 13 (22.8) | 6 (20.7) | 9 (22) | 15 (46.9) |
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| ISCED 6-8 | 16 (28.1) | 5 (17.2) | 14 (34.1) | 6 (18.8) |
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| Single | 17 (28.3) | 9 (30) | 8 (19) | 7 (21.2) |
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| 2 persons | 36 (60) | 20 (66.7) | 32 (76.2) | 22 (66.7) |
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| 3-4 person | 7 (26.7) | 1 (3.3) | 2 (23.8) | 4 (3) |
aISCED: International Standard Classification of Education.
Initial training experience grouped to categories and fitness level of the cluster groups of ILSE app users before interventions applying the Partitioning Around Medoids algorithm (N=165).
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| Cluster A (n=60), n (%) | Cluster B (n=30), n (%) | Cluster C (n=42), n (%) | Cluster D (n=33), n (%) | |||||
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| 2 | 7 (14.3) | 2 (8.7) | 11 (32.4) | 5 (21.7) | ||||
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| 3 | 25 (51) | 15 (65.2) | 17 (50) | 10 (43.5) | ||||
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| 4 | 17 (34.7) | 6 (26.1) | 6 (17.6) | 8 (34.8) | ||||
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| 0 | 10 (16.7) | 4 (13.3) | 9 (4.8) | 11 (33.3) | ||||
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| 1-2 | 26 (43.3) | 16 (53.3) | 18 (28.6) | 13 (39.4) | ||||
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| 3-5 | 16 (26.7) | 9 (30) | 12 (42.9) | 9 (27.3) | ||||
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| 6-7 | 7 (11.7) | 1 (3.3) | 2 (21.4) | 0 (0) | ||||
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| <30 | 1 (2) | 0 (0) | 3 (8.6) | 3 (12.5) | ||||
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| 30-60 | 16 (31.4) | 2 (32.1) | 9 (25.7) | 4 (16.7) | ||||
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| 60-120 | 26 (51) | 17 (60.7) | 14 (40) | 11 (45.8) | ||||
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| >120 | 8 (15.7) | 2 (7.1) | 9 (25.7) | 6 (25) | ||||
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| <6 | 19 (32.2) | 13 (43.3) | 16 (39) | 16 (48.5) | ||||
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| 6-8 | 33 (55.9) | 11 (36.7) | 18 (43.9) | 12 (36.4) | ||||
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| >8 | 7 (11.9) | 6 (20) | 7 (17.1) | 5 (15.2) | ||||
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| 0 | 8 (27.6) | 2 (11.8) | 7 (41.2) | 0 (0) | ||||
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| 1-3 | 14 (48.3) | 12 (70.6) | 8 (47.1) | 10 (66.7) | ||||
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| >3 | 7 (24.1) | 3 (17.6) | 2 (11.8) | 5 (33.3) | ||||