| Literature DB >> 27580524 |
Jordan Carpenter1, Patrick Crutchley, Ran D Zilca, H Andrew Schwartz, Laura K Smith, Angela M Cobb, Acacia C Parks.
Abstract
BACKGROUND: Assessing the efficacy of Internet interventions that are already in the market introduces both challenges and opportunities. While vast, often unprecedented amounts of data may be available (hundreds of thousands, and sometimes millions of participants with high dimensions of assessed variables), the data are observational in nature, are partly unstructured (eg, free text, images, sensor data), do not include a natural control group to be used for comparison, and typically exhibit high attrition rates. New approaches are therefore needed to use these existing data and derive new insights that can augment traditional smaller-group randomized controlled trials.Entities:
Keywords: big data; linguistic analysis; multilevel modeling; qualitative analysis; well-being intervention; word cloud
Mesh:
Year: 2016 PMID: 27580524 PMCID: PMC5023946 DOI: 10.2196/jmir.5725
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Baseline differences on positive emotion measure between the study 1 Happify user sample (completed ≥2 assessments) and users who did not complete ≥2 assessments.
| Number of | No. | Mean scorea | SD | ||||
| 1 | 568,205 | 38.75 | 19.80 | 3.39 | 720950 | .99 | .00 |
| ≥2 | 152,747 | 38.56 | 19.38 |
aScored on a scale of 1–100 in the Happify Scale.
Differences in demographic variables between the study sample (≥2 assessments, n=1,925,376) and those not included in the analysis for study 1 (1 assessment only, n=152,747).
| Characteristics | 1 Assessment, | ≥2 Assessments, | χ2 | Cramer | |||
| 1371.56 | .05 | 2 | <.001 | ||||
| Male | 13% (19,857.11) | 10% (192,537.60) | |||||
| Female | 87% (132,889.89) | 90% (1,732,838.40) | |||||
| 4075.98 | .07 | 5 | <.001 | ||||
| 18–24 | 20% (30,549.40) | 13.9% (267,627.26) | |||||
| 25–34 | 30% (45,824.10) | 30% (577,612.80) | |||||
| 35–44 | 24% (36,659.28) | 28% (539,105.28) | |||||
| 45–54 | 17% (25,966.99) | 19% (365,821.44) | |||||
| 55–64 | 8% (12,219.76) | 8% (154,030.08) | |||||
| ≥65 | 1.5% (2291.21) | 1.5% (28,880.64) | |||||
| 1804.80 | .12 | 5 | <.001 | ||||
| Retired | 3% (4,582.41) | 3% (57,761.28) | |||||
| Self-employed | 12% (18,329.64) | 12% (23,1045.12) | |||||
| Unemployed | 6% (9,164.82) | 6% (115,522.56) | |||||
| Student | 14% (21,384.58) | 11% (21,1791.36) | |||||
| Employed | 57% (87,065.79) | 62% (1,193,733.12) | |||||
| Homemaker | 7% (10,692.29) | 7% (134,776.32) | |||||
| 1714.74 | .05 | 5 | <.001 | ||||
| Children ≥19 years | 7% (10,692.29) | 5.4% (103,970.30) | |||||
| Children 13–18 years | 2% (3,054.94) | 2% (38,507.52) | |||||
| Children 0–12 years | 5% (7,637.35) | 5% (96,268.80) | |||||
| Children of different ages | 5% (7,637.35) | 4% (77,015.04) | |||||
| No children | 15% (22,912.05) | 18% (346,567.68) | |||||
Positive emotiona and usage among a sample of Happify users over the course of 8 weeks.
| Time point | No. | Mean | SD | |
| Baseline | 152,747 | 38.56 | 19.38 | |
| 2 weeks | 148,740 | 42.46 | 19.68 | |
| 4 weeks | 52,177 | 45.29 | 19.80 | |
| 6 weeks | 25,435 | 47.46 | 19.73 | |
| 8 weeks | 15,140 | 49.03 | 19.63 | |
| Baseline | 152,747 | 5.19 | 5.11 | |
| 2 weeks | 152,747 | 4.39 | 11.40 | |
| 4 weeks | 152,747 | 2.06 | 8.26 | |
| 6 weeks | 152,747 | 1.25 | 6.45 | |
| 8 weeks | 152,747 | 0.85 | 5.15 | |
aScored on a scale of 1–100 in the Happify Scale.
Figure 1Spaghetti plot illustrating the impact of usage (number of visits since last assessment, grand mean centered) on positive emotion for Happify users with low baseline well-being (left) and high baseline well-being (right). Positive emotion is represented with best linear unbiased prediction (BLUP) scores. Illustrated using a randomly selected subsample of n=1505.
Differences in demographic variables between the sample (<500 words, n=2,073,333) and those not included in the analysis for study 2 (≥500 words, n=4790).
| Characteristics | <500 words, | ≥500 words | χ2 | Cramer | |||
| 169.19 | .02 | 2 | <.001 | ||||
| Male | 12% (248799.96) | 9% (431.10) | |||||
| Female | 87% (1803799.71) | 90% (4311.00) | |||||
| 381.55 | .04 | 6 | <.001 | ||||
| 18–24 | 19% (393933.27) | 19% (910.10) | |||||
| 25–34 | 30% (621,999.90) | 37% (1,772.30) | |||||
| 35–44 | 24% (497,599.92) | 24% (1,149.60) | |||||
| 45–54 | 17% (352,466.61) | 14% (670.60) | |||||
| 55–64 | 8% (165,866.64) | 6% (287.40) | |||||
| ≥65 | 2% (41,466.66) | 1% (47.90) | |||||
| 155.44 | .03 | 5 | <.001 | ||||
| Retired | 3% (62,199.99) | 2% (95.80) | |||||
| Self-employed | 12% (248,799.96) | 12% (574.80) | |||||
| Unemployed | 6% (124,399.98) | 8% (383.20) | |||||
| Student | 14% (290,266.62) | 16% (766.40) | |||||
| Employed | 58% (1,202,533.14) | 52% (2,490.80) | |||||
| Homemaker | 7% (145,133.31) | 7% (335.30) | |||||
| 8951.68 | .03 | 5 | <.001 | ||||
| Children ≥19 years | 7% (145,133.31) | 7% (335.30) | |||||
| Children 13–18 years | 2% (41,466.66) | 3% (143.70) | |||||
| Children 0–12 years | 5% (103,666.65) | 10% (479.00) | |||||
| Children of different ages | 5% (103,666.65) | 5% (239.50) | |||||
| No children | 15% (310,999.95) | 45% (2,155.50) | |||||
Baseline characteristics for the study 2 sample on both dependent variables, and analysis of the difference between users in the study sample (who wrote ≥500 words) and users who wrote <500 words.
| Dependent variables | No. | Mean scorea | SD | |||||
| <500 words | 710,348 | 39.43 | 19.97 | –47.41 | 721,164 | <.001 | .46 | |
| ≥500 words | 10,818 | 48.63 | 20.11 | |||||
| <500 words | 710,348 | 52.31 | 23.36 | –44.39 | 721,164 | <.001 | .42 | |
| ≥500 words | 10,818 | 62.39 | 24.26 | |||||
aScored on a scale of 1–100 in the Happify Scale.
Figure 2Example topics predicting increased well-being.
Figure 3The 5 highest-loading topics within the 3 factors predicting improved well-being. The top left factor contains topics about negative thoughts (restructuring negative thoughts). The top right factor contains topics about dealing with anxiety (controlling anxiety). The bottom factor contains topics about past experiences, and conflicts and interactions with other people (coming to terms with interpersonal strife).