| Literature DB >> 30526516 |
Hans Järnbert-Pettersson1, Linda Vixner2.
Abstract
BACKGROUND: Modelling and analysing repeated measures data, such as women's experiences of pain during labour, is a complex topic. Traditional end-point analyses such as t-tests, ANOVA, or repeated measures [rANOVA] have known disadvantages. Modern and more sophisticated statistical methods such as mixed effect models provide flexibility and are more likely to draw correct conclusions from data. The aim of this study is to study how labour pain is analysed in repeated measures design studies, and to increase awareness of when and why modern statistical methods are suitable with the aim of encouraging their use in preference of traditional methods.Entities:
Keywords: CONSORT; Labour pain; Longitudinal study; Mixed effect models; Mixed models; Repeated measure ANOVA; Repeated-measures data; STROBE; Statistical analysis
Mesh:
Year: 2018 PMID: 30526516 PMCID: PMC6286546 DOI: 10.1186/s12884-018-2089-2
Source DB: PubMed Journal: BMC Pregnancy Childbirth ISSN: 1471-2393 Impact factor: 3.007
Comparison of traditional and mixed-effect approaches and questions to answer when choosing a statistical method for the analysis of labour pain in repeated measures data
| Questions to ask when you choose statistical method | Statistical property | Statistical method | ||
|---|---|---|---|---|
| End-point Analysis | rANOVA | Mixed effect models | ||
| 1. What do you want to compare? | Research question | Compares mean labour pain between groups at one time-point | Compares mean labour pain between groups at several time-points | a. Compares mean labour pain between groups at several time-points |
| 2. Do you have measurements of labour pain at all time-points for all women? | Missing data | Excludes woman with missing measurements | Excludes woman with missing measurements | Use all available measurements under the assumption of missing at random (MAR) |
| Possible effect of omitting women with missing values? | Sample bias | Sample bias | Not applicable | |
| Possible effect of imputation of missing data? | Estimation bias | Estimation bias | Not applicable | |
| 3. Can you assume that correlation of pain is equal between all time-points? | Assumption on the between woman pain correlation | Independent | Independent | Independent |
| Are the labour pain assessments made with unequal distances, e.g. at baseline, and after 2 and 6 h? | Assumption on the individual woman pain correlation or covariance matrix | Independent | Compound symmetry | Allow a variety of covariance structures, e.g. Independence, Compound symmetry, AR [ |
| 4. Can you assume that the variance of labour pain is equal at all time-points? | Assumption on the variance of pain at different time-points | Constrained to be equal at all time-points | Constrained to be equal at all time-points | Allowed to vary |
| 5. Are measurements of labour pain normally distributed? | Assumption of normal distribution | Normality assumption | Normality assumption | Normality assumption |
| 6. What requirements do you have on your statistical model to model the pain over time? | Description of time effect | Simple | Flexible | Flexible |
| 7. Would you like to consider labour pain traits for individual women over time? | Estimation of individual trends | No | No | Yes |
| 8. Do you need to adjust labour pain for factors that vary during labour, e.g. cervical dilatation and use of other pain relief? | Time dependent covariates | No | Yes | Yes |
| 9. Do you have knowledge of applied statistics? | Ease of implementation | Very easy | Easy | Complex |
| 10. Do you have access to a good computer? | Computational complexity | Low | Low | High |
Fig. 1Flow chart for inclusion of studies
Repeated measures designs in 133 labour pain studies
| Number | Percent (%) | ||
|---|---|---|---|
| Study Design | Experiment - randomised | 116 | 87.2 |
| Experiment - not randomised | 13 | 9.8 | |
| Observational - Cohort | 3 | 2.3 | |
| Not clear | 1 | 0.8 | |
| Number of groups compared | 2 | 96 | 72.2 |
| 3 | 24 | 18.0 | |
| > 4 | 13 | 9.8 | |
| Total number of women included in analysis | 20–30 | 10 | 7.5 |
| 31–50 | 32 | 24.1 | |
| 51–100 | 55 | 41.4 | |
| 101–500 | 32 | 24.1 | |
| Pain - number of time points measured | 2 | 14 | 10.5 |
| 3–5 | 48 | 36.1 | |
| 6–10 | 56 | 42.1 | |
| > 10 | 15 | 11.3 | |
| Equally spaced time intervals | No | 92 | 69.2 |
| Yes | 40 | 30.1 | |
| Not clear | 1 | 0.8 | |
| Pain - outcome measure | Primary outcome | 11 | 8.3 |
| Secondary outcome | 4 | 3.0 | |
| Not explicit | 118 | 88.7 | |
| Pain - measurement Instrumenta | VAS (Visual analogue scale) | 110 | 82.7 |
| NRS (numeric rating scale) | 6 | 4.5 | |
| MPQ, short version | 1 | 0.8 | |
| Verbal rating scale | 14 | 10.5 | |
| Other | 2 | 1.5 | |
aAnchor labels for the instruments were specified in 65% (67/133)
Illustrative binomial exact 95% confidence intervals for percentages when sample size is 133: 1% (0 to 4%); 5% (2 to 10%); 10%(5 to 16%); 25%(18 to 33%); 50%(40 to 58%); 90(84 to 95%)
Statistical methods and presentation of results in 133 labour pain studies with repeated measures design
| Number | Percent (%) | ||
|---|---|---|---|
| Most advanced statistical method to analyse labour pain | End-point analysisa | 97 | 72.9 |
| rANOVA | 26 | 19.5 | |
| Mixed effect models | 9 | 6.8 | |
| Not clear | 1 | 0.8 | |
| Clear how between-groups comparisons are conducted? | No | 34 | 25.6 |
| Yes | 99 | 74.4 | |
| Are comparison conducted within groups (between time points)? | No | 87 | 65.4 |
| Yes | 46 | 34.6 | |
| Clear how within group comparisons are conducted? | No | 19 | 41.3 |
| Yes | 27 | 58.7 | |
| Are numbers of valid observations used in analysis for each group and time-point stated? | No - only number of individuals at one time-point, e.g. baseline is stated | 112 | 84.2 |
| Yes - number of individuals/valid measurements at each time-point is stated | 21 | 15.8 | |
| Is normality assumption tested/mentioned? | No | 120 | 90.2 |
| Yes | 13 | 9.8 | |
| Clear agreement between statistical methods and results presented? | No | 77 | 57.9 |
| Yes | 56 | 42.1 | |
aSeveral end-point analyses could be used in each of these 97 studies: t-tests were used in 59 (44%) studies, ANOVA in 41 studies (31%), Mann-Whitney in 20 studies (15%), Wilcoxon in 6 studies (5%), and ANCOVA in 1 study (1%)
Illustrative binomial exact 95% confidence intervals for percentages when sample size is 133: 1% (0 to 4%); 5% (2 to 10%); 10%(5 to 16%); 25%(18 to 33%); 50%(40 to 58%); 90(84 to 95%)