Table 6.
Number | Authors | Method | Description |
1 | Bragazzi et al, 2016 [43] | Mann-Kendall test | To show the statistical difference of peaks from the remaining period |
2 | Bragazzi et al, 2016 [63] | ARIMAa | To show increased web searches due to an event, and correct seasonality |
3 | Campen et al, 2014 [105] | Independent samples t test; Mann-Whitney U test with Bonferroni correction | For comparing searches with baseline period; for multiple weekly data comparisons |
4 | Crowson et al, 2016 [93] | ANOVAb (Post-hoc Tukey test) | To compare grouped geographical federal regions of the United States (Northeast, Midwest, South, West) |
5 | El-Sheikha, 2015 [113] | Wilcoxon rank test; Mann-Whitney | To study the change of interest at different time periods; to compare Web-based interest between the Northern and Southern hemispheres |
6 | Gahr et al, 2015 [75] | Coefficients of determination | To determine the amount of variability between annual prescription volumes and Google search terms |
7 | Harsha et al, 2014 [68] | ANOVA (Tukey-Kramer post hot test) | For the comparisons of US regions |
8 | Murray et al, 2016 [41] | ANOVA; t test | To explore differences in months’ means per year; for the statistical differences of peaks compared with the remaining hits |
9 | Noar et al, 2013 [64] | Augmented Dickey-Fuller tests | To test for nonstationarity of the time series |
10 | Phelan et al, 2014 [49] | ANOVA | To explore differences among countries |
11 | Rohart et al, 2016 [135] | Mean Square Error for Prediction | To assess prediction accuracy |
12 | Telfer and Woodburn, 2015 [140] | Mann-Kendall trend tests | To detect trends significantly larger than the variance in the data for search terms |
13 | Troelstra et al, 2016 [141] | ARIMA | Studied the effect of smoking cessation policies with ARIMA interrupted time series modeling (Multimedia Appendix 1) |
14 | Zhang et al, 2015 [71] | Augmented Dickey-Fuller test | To detect whether or not the extracted seasonal components of the studied trends were stationary |
15 | Zhang et al, 2016 [51] | ANOVA | To examine the search interest for dabbing between groups of legal status states in the United States |
aARIMA: autoregressive integrated moving average.
bANOVA: analysis of variance.