stats:metaanalysis
Meta-analysis studies
see also Medical statistical analysis
Meta-analysis Reviews:
- A discipline which provides methods of finding, appraising & combining data from a range of studies;
- Although bias can intrude in a traditional narrative review, it is more important in meta-analysis because a wealth of apparently disparate data can be reduced to a few simple statistics which are likely to influence treatment or public policy, thus need to assess quality by asking:
- Did authors work to written protocol?
- guidelines in advance decrease bias due to decisions made after study group developed a “feel” for the data;
- Have authors defined research questions clearly?
- OK to address issues not the primary objectives of individual studies;
- must be formulated prior to doing the analysis & should be biologically plausible & of clinical importance;
- Have authors described there search strategy & how studies were chosen for inclusion/exclusion?
- Medline single search → only 2/3rds relevant citations;
- ⇒ cross-check bibliographies of those papers;
- OK to excl. non-English but may add bias thus should at least read abstracts to see if “+ve” or “-ve”;
- How have authors assessed quality of individual studies?
- ideally by at least 2 persons with an assessment of their inter-rater reliability;
- should be made without knowledge of author's final conclusions, their identity or institution;
- there exist guidelines for assessing quality;
- ? rank studies by quality;
- How have authors abstracted the information from individual studies?
- data should be extracted without knowledge of result;
- Have authors provided adequate details of the subjects included in the studies being analysed?
- if marked dissimilarity in subjects then caution!
- Have authors plotted their results?
- eg. plot of log odds ratio with confidence intervals;
- How have authors inspected the data for heterogeneity of outcome?
- are the differences in indiv. trial outcomes greater than one could reasonably expect by chances alone, if so, then should the data be pooled at all?
- assess with either O2 or L'AbbJ plots;
- How have authors calculated a summary estimate of the effect of intervention?
- pooling must maintain integrity of individual studies;
- contribution of each study is determined mainly by its study weight - usually 1/variance;
- Have authors inspected data for evidence of publication bias?
- “positive” studies are more likely to be submitted and accepted than “negative” studies → “anticonservative influence” & may depend in part on vested interests;
- may be the most important bias affecting meta-analysis!
- assess with “funnel plot” symmetry & base region;
stats/metaanalysis.txt · Last modified: 2008/11/03 06:58 by 127.0.0.1