Despite the rapid development of meta-analysis technology, there were currently no consolidation technology for longitudinal data. The meta-analysis model based on the generalized linear mixed-effects model can fully encapsulate the correlation between various time points and accurately estimate the final combined effect, which is an ideal model for longitudinal-data meta-analysis. Through example data, this paper used SAS software to realize longitudinal-data meta-analysis and provided programming codes.
Citation: CHEN Ying, HUANG Bifen, ZHENG Jianqing, XIAO Lihua, WU Min. Meta-analysis of repeated measurement data based on mixed effects model of SAS software. Chinese Journal of Evidence-Based Medicine, 2019, 19(8): 998-1006. doi: 10.7507/1672-2531.201902004 Copy
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