This article discusses the use of interpretable machine learning to analyze large omics data sets and identify patterns and associations among features. The authors developed a rule-based ML package, R.ROSETTA, and used it to analyze gene expression data in a case-control study of autism. They also applied this approach to merge multiple cohorts and identify potential interactions between genes. The results demonstrate the effectiveness of rule-based modeling in identifying complex relationships in genetic data.
