Related Articles |
A Guerilla Guide to Common Problems in 'Neurostatistics': Essential Statistical Topics in Neuroscience.
J Undergrad Neurosci Educ. 2017;16(1):R1-R12
Authors: Smith PF
Abstract
Effective inferential statistical analysis is essential for high quality studies in neuroscience. However, recently, neuroscience has been criticised for the poor use of experimental design and statistical analysis. Many of the statistical issues confronting neuroscience are similar to other areas of biology; however, there are some that occur more regularly in neuroscience studies. This review attempts to provide a succinct overview of some of the major issues that arise commonly in the analyses of neuroscience data. These include: the non-normal distribution of the data; inequality of variance between groups; extensive correlation in data for repeated measurements across time or space; excessive multiple testing; inadequate statistical power due to small sample sizes; pseudo-replication; and an over-emphasis on binary conclusions about statistical significance as opposed to effect sizes. Statistical analysis should be viewed as just another neuroscience tool, which is critical to the final outcome of the study. Therefore, it needs to be done well and it is a good idea to be proactive and seek help early, preferably before the study even begins.
PMID: 29371855 [PubMed]
http://ift.tt/2BwYH2l
Δεν υπάρχουν σχόλια:
Δημοσίευση σχολίου