Second, studies were required to have reported effect sizes and related confidence intervals or enough information to calculate these data – for example, by reporting comparisons between bullied children and a control group (defined as children from the same population of victims who were classified as not bullied). Both cross-sectional and longitudinal studies KU-60019 cost were included. We excluded the following types of studies: studies that did not include a
control group; studies that measured headache with items included in a larger scale, as this problem could not be clearly distinguished from other symptoms; studies with duplicated data; studies that did not report analyses on the variables of interest; and studies with adults or psychiatric patients. Two authors (GG, TP) independently assessed whether articles met the inclusion criteria. In the case of disagreement, a consensus was reached through discussion. Studies were coded on design (cross-sectional vs longitudinal), length of follow up for longitudinal studies, type of bullying and of symptoms measure (self-report
questionnaire vs peer/adult reports vs interview), confounding variables (eg, age, gender), type of sampling procedure, sample composition and characteristics, and geographical location of study. Two authors (GG, TP) independently PI3K inhibitor coded the studies. Quantitative data were extracted from text and tables; for the sake of comparability with the results of the former meta-analyses,[22, 23] the data adjusted for confounders were preferred. Analyses were done using Comprehensive Meta-Analysis.[28] We extracted odds ratio (OR) and their
95% confidence interval (CI) from each study. With very few exceptions, studies did not report results for boys and girls separately; therefore, we were not able to compare effect sizes by gender group. Because most of the studies reported the proportion of girls in the sample, we used this information MCE to test for possible moderation by gender composition of the sample. Data from individual studies were pooled using a random-effects model. Each study was weighted by the inverse of its variance, which, under the random-effects model, includes the within-study variance plus the between-studies variance tau-squared (Τ2). The Z statistic was calculated, and a 2-tailed P value of less than .05 was considered to indicate statistical significance. Statistical heterogeneity was assessed using the Q statistic to evaluate whether the pooled studies represent a homogeneous distribution of effect sizes. Also reported is the I2 statistic, indicating the proportion of observed variance that reflects real differences in effect size.