| Literature DB >> 30126832 |
Michael Jae Song1, John Ward1,2, Fiona Choi1,2, Mohammadali Nikoo1,2, Anastasia Frank1,2, Farhud Shams1, Katarina Tabi1,3, Daniel Vigo4, Michael Krausz1,2,5.
Abstract
BACKGROUND: Despite the increasing amount of research on Web-based mental health interventions with proven efficacy, high attrition rates decrease their effectiveness. Continued process evaluations should be performed to maximize the target population's engagement. Google Analytics has been used to evaluate various health-related Web-based programs and may also be useful for Web-based mental health programs.Entities:
Keywords: Google Analytics; evaluation; mental health; website
Year: 2018 PMID: 30126832 PMCID: PMC6121139 DOI: 10.2196/mental.8594
Source DB: PubMed Journal: JMIR Ment Health ISSN: 2368-7959
Figure 1Google Analytics can be used as a tool for process evaluation by receiving information on user traffic and subsequently informing website improvement. This process can also continue as a cycle for continual improvement of the website.
Figure 2WalkAlong home page.
Figure 3WalkAlong overview presented in Google Analytics.
Proportion of total sessions and number of visits.
| Visits | Sessions (N=5318), n (%) |
| 1 | 3066 (57.65) |
| 2 | 550 (10.3) |
| 3 | 241 (4.5) |
| 4 | 139 (2.6) |
| 5 | 100 (1.9) |
| 6 | 67 (1.3) |
| 7 | 50 (0.9) |
| 8 | 46 (0.9) |
| 9-14 | 180 (3.4) |
| 15-25 | 205 (3.9) |
| 26-50 | 311 (5.8) |
| 51-100 | 250 (4.7) |
| 101-200 | 112 (2.1) |
| 201+ | 1 (0.0) |
Duration of session.
| Session duration (in minutes) | Sessions (N=5318), n (%) |
| ≤1 | 3477 (65.4%) |
| 1-3 | 527 (9.9%) |
| 3-10 | 581 (10.9%) |
| >10 | 733 (13.8%) |
Entrance and exit rates for the most viewed pages.
| Page | Entrances n (%)a | Exits (%)b | Bounce rate (%) |
| Home page | 3487 (65.6) | 29.2 | 37.6 |
| Depression in Canada | 115 (2.2) | 73.4 | 86.1 |
| Self-Help Exercises | 70 (1.3) | 14 | 47.9 |
| Mindsteps | 62 (1.2) | 5.4 | 24.2 |
| Screener | 55 (1.0) | 32.0 | 50.9 |
aThe numbers do not add up to 100% because only several of the most viewed pages are included in the table.
bThe exit rate is calculated by the number of exits/number of times that page was viewed. Thus, the added percentages are higher than 100% where each row has different number of exits and the number of pages viewed.
Devices used to access WalkAlong.
| Device | Sessions (N=5318), n (%) | Bounce rate (%) | Pages per session, n | Mean session duration | Conversion rate (%) |
| Desktop | 4378 (82.32) | 39.6 | 6.17 | 5 min 43 s | 22.7 |
| Mobile phone | 677 (12.7) | 61.6 | 2.15 | 1 min 53 s | 7.2 |
| Tablet | 263 (5.0) | 48.7 | 3.08 | 3 min 15 s | 11.8 |
Proportion of total sessions for each type of channel.
| Channels | Sessions (N=5318), n (%) | Bounce rate (%) | Pages per session, n | Mean session duration | Conversion rate (%) |
| Direct Traffic | 2,420 (45.51) | 36.6 | 7.4 | 6 min 38 s | 24.4 |
| Organic Search | 1,256 (23.62) | 50.4 | 3.5 | 3 min 42 s | 11.3 |
| Referrals | 849 (16.0) | 46.9 | 3.5 | 3 min 46 s | 22.6 |
| Social Media | 717 (13.5) | 48.8 | 4.6 | 3 min 44 s | 18.0 |
| 76 (1) | 17.1 | 10.5 | 7 min 39 s | 25.0 |
Figure 4Map overlay about locations of users from Google Analytics.