Machine learning algorithms for systematic review: reducing workload in a preclinical review of animal studies and reducing human screening error

ConclusionsThis work has confirmed the performance and application of ML algorithms for screening in systematic reviews of preclinical animal studies. It has highlighted the novel use of ML algorithms to identify human error. This needs to be confirmed in other reviews with different inclusion prevalence levels, but represents a promising approach to integrating human decisions and automation in systematic review methodology.
Source: Systematic Reviews - Category: International Medicine & Public Health Source Type: research