World Journal of Emergency Medicine ›› 2020, Vol. 11 ›› Issue (1): 5-11.doi: 10.5847/wjem.j.1920-8642.2020.01.001
• Original Articles • Next Articles
Open Access
Zhenghong Liu1(
), Mingwei Ng1, Dinesh V. Gunasekeran2, Huihua Li3, Kishanti Ponampalam4, R Ponampalam5
Received:2019-05-15
Accepted:2019-08-20
Online:2020-01-01
Published:2020-01-01
Contact:
Zhenghong Liu
E-mail:liuzhenghong@hotmail.com
Zhenghong Liu, Mingwei Ng, Dinesh V. Gunasekeran, Huihua Li, Kishanti Ponampalam, R Ponampalam. Mobile technology: Usage and perspective of patients and caregivers presenting to a tertiary care emergency department[J]. World Journal of Emergency Medicine, 2020, 11(1): 5-11.
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URL: http://wjem.com.cn/EN/10.5847/wjem.j.1920-8642.2020.01.001
Table 1
Characteristics and language usage of survey participants, n (%)
| Variables | Overall (n=498) | Age (years) | Role | |||
|---|---|---|---|---|---|---|
| 21-40 (n=203) | 40-60 (n=149) | >60 (n=146) | Patient (n=299) | Caregiver (n=199) | ||
| Mean age (years) | 48.7 (SD 18.04; min 21 to max 90) | 30.3 (SD 5.99) | 51.4 (SD 5.72) | 71.3 (SD 6.32) | 50.8 (SD 15.41) | 45.6 (SD 19.34) |
| Male | 256 (51.5) | 111 (54.7) | 76 (51.0) | 69 (47.6) | 166 (55.5) | 90 (45.5) |
| Role | ||||||
| Caregiver | 199 (40.0) | 88 (43.3) | 75 (50.3) | 36 (24.7) | - | - |
| Patient | 299 (60.0) | 115 (56.7) | 74 (49.7) | 110 (75.3) | - | - |
| Race | ||||||
| Chinese | 317 (63.9) | 105(52.2) | 96 (64.4) | 116 (79.5) | 187 (62.5) | 130 (66.0) |
| Malay | 72 (14.5) | 43 (21.4) | 16 (10.7) | 13 (8.9) | 42 (14.0) | 30 (15.2) |
| Indian | 79 (15.9) | 41 (20.4) | 25 (16.8) | 13 (8.9) | 51 (17.1) | 28 (14.2) |
| Others | 28 (5.6) | 12 (6.0) | 12 (8.1) | 4 (2.7) | 19 (6.4) | 9 (4.6) |
| Education | ||||||
| Primary | 88 (18.9) | 18 (9.1) | 22 (!5.3) | 48 (38.7) | 73 (26.4) | 15 (7.9) |
| Secondary | 132 (28.3) | 39 (19.7) | 49 (34.0) | 44 (35.5) | 84 (30.4) | 48 (25.3) |
| Tertiary | 246 (52.8) | 141 (71.2) | 73 (50.7) | 32 (25.8) | 119 (43.1) | 127 (66.8) |
| Employment | ||||||
| Unemployed/student | 74 (15.2) | 21 (10.5) | 37 (25.2) | 16 (11.2) | 42 (14.3) | 32 (16.5) |
| Employed | 313 (62.9) | 177 (88.9) | 102 (69.4) | 34 (23.8) | 177 (60.2) | 136 (69.7) |
| Retired | 102 (20.5) | 1 (0.5) | 8 (5.4) | 93 (65.0) | 75 (25.5) | 27 (13.8) |
| Read/write | ||||||
| English | 333 (66.9) | 174 (85.7) | 109 (73.2) | 50 (34.2) | 171 (57.2) | 162 (81.4) |
| Mandarin | 267 (53.6) | 98 (48.3) | 81 (54.4) | 88 (60.3) | 155 (51.8) | 112 (56.3) |
| Malay | 111 (22.3) | 57 (28.1) | 35 (23.5) | 19 (13.0) | 67 (22.4) | 44 (22.1) |
| Tamil | 54 (10.8) | 33 (16.3) | 12 (8.1) | 9 (6.2) | 37 (12.4) | 17 (8.5) |
| Others | 17 (3.4) | 9 (4.4) | 5 (3.4) | 3 (2.1) | 10 (3.3) | 7 (3.5) |
| Speak | ||||||
| English | 359 (72.1) | 186 (91.6) | 118 (79.2) | 55 (37.7) | 196 (65.6) | 163 (81.9) |
| Mandarin | 291 (58.4) | 101 (49.8) | 87 (58.4) | 103 (70.5) | 174 (58.2) | 117 (58.8) |
| Malay | 135 (27.1) | 64 (31.5) | 41 (27.5) | 30 (20.5) | 82 (27.4) | 53 (26.6) |
| Tamil | 64 (12.9) | 35 (17.2) | 17 (11.4) | 12 (8.2) | 42 (14.0) | 22 (11.1) |
| Others | 38 (7.6) | 9 (4.4) | 17 (11.4) | 12 (8.2) | 22 (7.4) | 16 (8.0) |
Table 2
Baseline technology use and comfort level in technology use, n (%)
| Variables | Overall (n=498) | Age (years) | Role | |||
|---|---|---|---|---|---|---|
| 21-40 (n=203) | 40-60 (n=149) | >60 (n=146) | Patient (n=299) | Caregiver (n=199) | ||
| Baseline technology usage | ||||||
| Mobile phone owner | 470 (94.4) | 202 (99.5) | 143 (96.0) | 125 (85.6) | 276 (92.3) | 194 (97.5) |
| Smartphone owner | 378 (76.1) | 196 (96.6) | 119 (79.9) | 63 (43.4) | 199 (66.8) | 179 (89.9) |
| Regular computer usage | 288 (57.9) | 167 (82.7) | 93 (62.4) | 28 (19.2) | 138 (46.3) | 150 (75.4) |
| Able to access internet at home | 376 (75.8) | 195 (96.1) | 120 (80.5) | 61 (42.4) | 197 (66.1) | 179 (90.4) |
| Able to access internet at work | 322 (66.0) | 182 (91.0) | 102 (70.3) | 38 (26.6) | 167 (56.6) | 155 (80.3) |
| Has mobile internet data | 361 (72.6) | 192 (94.6) | 118 (79.2) | 51 (35.2) | 186 (62.4) | 175 (87.9) |
| Has restrictions on internet use | 134 (28.1) | 77 (38.3) | 36 (25.0) | 21 (15.9) | 76 (26.5) | 58 (30.5) |
| IT usage patterns | ||||||
| Frequency of internet use | ||||||
| < Once a week | 139 (28.1) | 11 (5.4) | 37 (25.2) | 91 (63.2) | 115 (38.7) | 24 (12.2) |
| Once a week | 10 (2.0) | 3 (1.5) | 1 (0.7) | 6 (4.2) | 9 (3.0) | 1 (0.5) |
| 2-6 times a week | 51 (10.3) | 19 (9.4) | 16 (10.9) | 16 (11.1) | 34 (11.4) | 17 (8.6) |
| Daily | 32 (6.5) | 8 (3.9) | 15 (10.2) | 9 (6.3) | 16 (5.4) | 16 (8.1) |
| Many times a day | 262 (53.0) | 162 (79.8) | 78 (53.1) | 22 (15.3) | 123 (41.4) | 139 (70.6) |
| Frequency of email use | ||||||
| < Once a week | 159 (32.1) | 13 (6.4) | 43 (29.1) | 103 (71.5) | 126 (42.4) | 33 (16.7) |
| Once a week | 27 (5.5) | 14 (6.9) | 9 (6.1) | 4 (2.8) | 17 (5.7) | 10 (5.1) |
| 2-6 times a week | 68 (13.7) | 34 (16.7) | 24 (16.2) | 10 (6.9) | 38 (12.8) | 30 (15.2) |
| Daily | 62 (12.5) | 46 (17.7) | 14 (9.5) | 12 (8.3) | 33 (11.1) | 29 (14.6) |
| Many times a day | 179 (36.2) | 106 (52.2) | 58 (39.2) | 15 (10.4) | 83 (27.9) | 96 (48.5) |
| Frequency of social media use | ||||||
| < Once a week | 171 (34.6) | 15 (7.4) | 48 (32.4) | 108 (75.5) | 131 (44.3) | 40 (20.2) |
| Once a week | 21 (4.3) | 7 (3.4) | 9 (6.1) | 5 (3.5) | 16 (5.4) | 5 (2.5) |
| 2-6 times a week | 50 (10.1) | 22 (10.8) | 19 (12.8) | 9 (6.3) | 29 (9.8) | 21 (10.6) |
| Daily | 57 (11.5) | 31 (15.3) | 18 (12.2) | 8 (5.6) | 29 (9.8) | 28 (14.1) |
| Many times a day | 195 (39.5) | 128 (63.1) | 54 (36.5) | 13 (9.1) | 91 (30.7) | 104 (52.5) |
| Comfort level with MHT | ||||||
| Comfortable sending messages on mobile device (≥3) | 352 (71.1) | 192 (94.6) | 111 (75.1) | 49 (34.0) | 181 (60.9) | 177 (86.3) |
| Comfortable receiving messages on mobile device (≥3) | 354 (71.3) | 190 (93.5) | 110 (74.3) | 54 (37.2) | 184 (61.8) | 170 (85.9) |
| Comfortable using English on mobile device (≥3) | 317 (64.2) | 172 (84.7) | 103 (70.0) | 42 (29.1) | 154 (52.1) | 163 (82.3) |
Table 3
Comfort level in MT usage, based on demographic characteristics (n=498), n (%)
| Variables | Comfortable in using MT | ||
|---|---|---|---|
| Yes | No | P | |
| Age (n=494) | |||
| ≤60 | 275 (78.6) | 75 (21.4) | 0.001 |
| >61 | 42 (29.1) | 102 (70.8) | |
| Sex (n=493) | |||
| Male | 156 (61.4) | 98 (38.6) | 0.168 |
| Female | 161 (67.4) | 78 (32.6) | |
| Caregiver status (n=494) | |||
| Patient | 154 (52.0) | 142 (48.0) | 0.001 |
| Caregiver | 163 (82.3) | 35 (17.7) | |
| Education (n=462) | |||
| Secondary and below | 86 (39.4) | 132 (60.6) | 0.001 |
| Tertiary | 225 (92.2) | 19 (7.8) | |
| Employment (n=485) | |||
| Employed | 247 (79.4) | 64 (20.6) | 0.001 |
| Unemployed | 66 (37.9) | 108 (62.1) | |
| Reads/writes English (n=494) | |||
| Yes | 299 (90.9) | 30 (9.1) | 0.001 |
| No | 18 (10.9) | 147 (89.1) | |
| Owns a smartphone (n=493) | |||
| Yes | 297 (79.0) | 79 (21.0) | 0.001 |
| No | 19 (16.2) | 98 (83.8) | |
| Has mobile internet data (n=493) | |||
| Yes | 299 (83.3) | 60 (16.7) | 0.001 |
| No | 18 (13.4) | 116 (86.6) | |
| Frequent IT user (n=492) | |||
| Yes | 274 (94.5) | 16 (5.5) | 0.001 |
| No | 42 (20.8) | 160 (79.2) | |
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