Title
Meta-computational techniques' for managing spare data: An application in off-pump heart surgery
Abstract
AbstractHighlights •Treatment effects effect•random effect•continuity correction•sparse data AbstractBackground and ObjectivesThis research looked at the key considerations to remember when selecting a model for working with sparse data. In the presence of sparse evidence, it proposes ideal conditions for conducting meta-analysis.MethodsMonte Carlo simulations were used to produce study results, and three forms of continuity correction were used in the research. Besides, meta-analytical approaches were used to measure the cumulative effect of treatment and estimate each method's efficiency. A clinical trial in off-pump surgery met the main objectives of this research. Meta-analysis methods were used to determine the outcome of postoperative risk results. After that, with a total population of 3030, Monte Carlo simulations were used to produce research data to run fixed and random-effect models with three continuity correction forms. The type of consistency adjustment used, group imbalances, statistical analysis used, and variance values between studies all affect meta-analytical methods' results.ResultsMSE values for balanced groups are normally zero. While the Arc-sine variation approach does a decent job of coping with inconsistent results on the effect of treatment, it has concerns with boundary estimates of variance between tests. Furthermore, using continuity correction methods introduces bias and imprecise medication outcome calculations. The spectrum of statistical analysis, such as fixed effects and random effects, can be inferred as completely based on data in samples. The sensitivity analysis of correction decisions could increase the reliability of meta-analysis approaches by enabling researchers to analyze various effect estimation findings.ConclusionThis research study can be expanded upon by identifying alternative approaches to continuity correction methods and resolving boundary estimate problems. The range of statistical analysis, such as fixed effects and random effects, can be entirely dependent on the samples' type of data. The sensitivity analysis of correction decisions could improve the efficiency of meta-analysis methods by allowing researchers to investigate a wide range of effect estimation results.
Year
DOI
Venue
2021
10.1016/j.cmpb.2021.106267
Periodicals
Keywords
DocType
Volume
Treatment effect, Set effect, Random effect, Continuity correction, Sparse data
Journal
208
Issue
ISSN
Citations 
C
0169-2607
0
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Han Lai100.34
Yousaf Ali Khan200.34
Syed Zaheer Abbas300.34
Wathek Chammam443.09