| Literature DB >> 20719740 |
Sacha Bhinder1, Noori Chowdhury, John Granton, Murray Krahn, D Elizabeth Tullis, Thomas K Waddell, Lianne G Singer.
Abstract
BACKGROUND: Patient registries are commonly used to track survival and medical outcomes in large cohorts. However, large-scale collection of health-related quality of life (HRQOL) data is more challenging because such data must be collected directly from patients. Internet-based HRQOL questionnaires are a potential solution, allowing home data collection with immediate storage in a central database.Entities:
Mesh:
Year: 2010 PMID: 20719740 PMCID: PMC2956333 DOI: 10.2196/jmir.1214
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Patient flow through our study
Sociodemographic characteristics of our patient cohort
| PreTransplant (n = 364) | Post | |||||||
| Whole Cohort | COPD | ILD | Pulmonary | CF | Other | |||
| n (% ) | n (% ) | n (% ) | n (% ) | n (% ) | n (% ) | n (% ) | ||
| n = 644 | n = 76 | n = 66 | n = 90 | n = 109 | n = 23 | n = 280 | ||
| 18-34 | 121 (18.8) | 2 (2.6) | 0 (0) | 6 (6.7) | 65 (59.6) | 3 (13.0) | 45 (16.1) | |
| 35-54 | 246 (38.2) | 20 (26.3) | 20 (30.3) | 50 (55.6) | 41 (37.6) | 12 (52.2) | 103 (36.8) | |
| 55-64 | 179 (27.8) | 35 (46.1) | 29 (43.9) | 22 (24.4) | 3 (2.8) | 6 (26.1) | 83 (29.6) | |
| 65 and over | 98 (15.2) | 19 (25.0) | 17 (25.8) | 12 (13.3) | 0 (0) | 2 (8.7) | 49 (17.5) | |
| Male | 312 (48.4) | 37 (48.7) | 37 (56.1) | 26 (28.9) | 62 (56.9) | 10 (43.5) | 140 (50.0) | |
| Female | 332 (51.6) | 39 (51.3) | 29 (43.9) | 64 (71.1) | 47 (43.1) | 13 (56.5) | 140 (50.0) | |
| Urban | 524 (81.4) | 55 (72.4) | 51 (77.3) | 76 (84.4) | 94 (86.2) | 19 (82.6) | 229 (81.8) | |
| Rural | 120 (18.6) | 21 (27.6) | 15 (22.7) | 14 (15.6) | 15 (13.8) | 4 (17.4) | 51 (18.2) | |
| Full-time | 146 (22.7) | 11 (14.7) | 13 (19.7) | 24 (26.9) | 53 (48.6) | 1 (4.3) | 42 (15.0) | |
| Part-time | 56 (8.7) | 7 (9.3) | 2 (3.0) | 3 (3.4) | 10 (9.2) | 2 (8.7) | 32 (11.5) | |
| Unemployed | 442 (68.6) | 57 (76.0) | 51 (77.3) | 62 (69.7) | 46 (42.2) | 20 (87.0) | 205 (73.5) | |
| Married/common-Law | 420 (65.2) | 48 (63.2) | 51 (77.3) | 56 (62.2) | 52 (47.7) | 14 (61.0) | 197 (70.9) | |
| Divorced/separated | 74 (11.5) | 17 (22.4) | 7 (10.6) | 15 (16.7) | 6 (5.5) | 1 (4.3) | 25 (9.0) | |
| Single | 134 (20.8) | 8 (10.5) | 5 (7.6) | 16 (17.8) | 50 (45.9) | 3 (13.0) | 50 (18.0) | |
| Widowed | 16 (2.5) | 3 (3.9) | 3 (4.5) | 3 (3.3) | 1 (0.9) | 5 (21.7) | 6 (2.1) | |
| Ontario | 577 (89.6) | 68 (89.5) | 56 (84.9) | 85 (94.4) | 105 (96.3) | 18 (78.3) | 245 (87.5) | |
| Atlantic Canada | 62 (9.6) | 7 (9.2) | 10 (15.1) | 4 (4.4) | 4 (3.7) | 4 (17.4) | 33 (11.8) | |
| Other | 5 (0.8) | 1 (1.3) | 0 (0) | 1 (1.1) | 0 (0) | 1 (4.3) | 2 (0.7) | |
| Lowest quartile | 9 (1.4) | 0 (0) | 0 (0) | 0 (0) | 6 (5.5) | 0 (0) | 3 (1.1) | |
| Second quartile | 425 (65.9) | 57 (75.0) | 41 (62.1) | 55 (61.1) | 69 (63.3) | 16 (69.6) | 186 (66.4) | |
| Third quartile | 193 (30.1) | 16 (21.1) | 17 (25.8) | 23 (25.6) | 25 (22.9) | 6 (26.1) | 60 (21.4) | |
| Highest quartile | 17 (2.6) | 3 (3.9) | 8 (12.1) | 12 (13.3) | 9 (8.3) | 1 (4.3) | 31 (11.1) | |
Computer use questionnaire and responses in 644 subjects
| n (%) | ||
| Yes | 558 (86.6) | |
| No | 86 (13.4) | |
| Yes | 544 (84.5) | |
| No | 100 (15.5) | |
| Yes | 513 (94.3) | |
| No | 31 (5.7) | |
| High-speed | 187 (80.6) | |
| Dial-up | 45 (19.4) | |
| Never/in the past | 137 (22.0) | |
| Monthly | 35 (5.6) | |
| Weekly | 108 (17.3) | |
| Daily | 344 (55.1) | |
| Never/in the past | 189 (30.3) | |
| Monthly | 20 (3.2) | |
| Weekly | 107 (17.2) | |
| Daily | 307 (49.3) | |
| Never/in the past | 187 (30.0) | |
| Monthly | 44 (7.1) | |
| Weekly | 144 (23.0) | |
| Daily | 249 (39.9) | |
| Yes | 368 (57.1) | |
| No | 276 (42.9) | |
Comparison of Internet use habits among our tertiary care patient cohort and the general Canadian population
| Computer Use Parameter: | Prevalence of Computer Access and Use | ||
| Study Population n (%) | General (Canadian) | ||
| Internet access among urban residents | 423/443 (95.5) | 76.0 | < .001 |
| Internet access among rural residents | 90/101 (89.1) | 65.0 | < .001 |
| High-speed Internet access | 187/232 (80.6) | 88.0 | < .001 |
| Regular Internet use | 437/624 (70.0) | 73.0 | .09 |
| Daily Internet use | 249/624 (39.9) | 68.0 | < .001 |
aStatistics Canada. The Daily, Canadian Internet Use Survey. 2008.
Binary logistic regression analysis of factors associated with computer and Internet use
| Internet Access for Computer at | Email Use (n = 623) | Willing to Complete | Actual Completion of One or | |||||||||
| Odds | 95% CI | Odds | 95% CI | Odds | 95% CI | Odds | 95% CI | |||||
| Age < 51 | 1.99 | 1.17–3.38 | .01 | 2.02 | 1.39–2.93 | .001 | 1.56 | 1.11–2.19 | < .01 | 1.01 | 0.99–1.03 | .61 |
| Male gender | 1.07 | 0.66–1.75 | .77 | 0.99 | 0.69–1.42 | .95 | 1.09 | 0.79–1.50 | .61 | 0.95 | 0.48–1.86 | .95 |
| Urban | 1.00 | 0.55–1.85 | .98 | 1.04 | 0.66–1.64 | .86 | 1.37 | 0.91–2.06 | .13 | 0.69 | 0.28–1.70 | .42 |
| Employed or | 3.24 | 1.60–6.56 | .001 | 3.71 | 2.35–5.88 | < .001 | 1.48 | 1.02–2.13 | .04 | 1.38 | 0.64–3.01 | .31 |
| Married/ | 1.38 | 0.82–2.32 | .23 | 0.70 | 0.47–1.04 | .08 | 0.87 | 0.62–1.24 | .45 | 0.80 | 0.39–1.69 | .35 |
| Ontario | 1.50 | 0.75–3.03 | .25 | 0.92 | 0.52–1.64 | .79 | 1.00 | 0.59–1.69 | .99 | 1.28 | 0.46–3.55 | .60 |
Reasons for noncompletion of home HRQOL questionnaires over the Internet (n = 46)
| Reasons for Noncompletion | n (%) |
| Did not find time | 17 (37) |
| Incompatible hardware/software | 6 (13) |
| Computer was non-functional or under repair | 5 (11) |
| Infrequently checked email | 5 (11) |
| Changed email address | 3 (7) |
| Email directed to “junk” folder | 2 (4) |
| Patient withdrew from study | 1 (2) |
| Patient did not provide a reason | 7 (15) |