1. A feature-based integrated scoring scheme for cell cycle-regulated genes prioritization
- Author
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Farina, Lorenzo, Paola, Paci, and Paci, Paola
- Subjects
Genetics and Molecular Biology (all) ,0301 basic medicine ,Statistics and Probability ,Immunology and Microbiology (all) ,ved/biology.organism_classification_rank.species ,Datasets as Topic ,Mitosis ,Computational biology ,Biochemistry ,General Biochemistry, Genetics and Molecular Biology ,Domain (software engineering) ,03 medical and health sciences ,Mitotic cell cycle ,Synchronization (computer science) ,Budding yeast ,Cell cycle ,Gene expression ,Time-series ,Modeling and Simulation ,Biochemistry, Genetics and Molecular Biology (all) ,Agricultural and Biological Sciences (all) ,Applied Mathematics ,Model organism ,General Immunology and Microbiology ,ved/biology ,Gene Expression Profiling ,Cell Cycle ,COMPUTATIONAL AND SYSTEMS BIOLOGY ,General Medicine ,Expression (mathematics) ,Benchmarking ,Range (mathematics) ,030104 developmental biology ,Ranking ,Saccharomycetales ,General Agricultural and Biological Sciences ,Algorithms - Abstract
Prioritization of cell cycle-regulated genes from expression time-profiles is still an open problem. The point at issue is the surprisingly poor overlap among ranked lists obtained from different experimental protocols. Instead of developing a general-purpose computational methodology for detecting periodic signals, we focus on the budding yeast mitotic cell cycle. The reason being that the current availability of a total of 12 datasets, produced by 6 independent groups using 4 different synchronization methods, permits a re-analysis and re-consideration of this problem in a more reliable and extensive data domain. Notably, budding yeast is a model organism for studying cancer and testing new drugs. Here we propose a novel multi-feature score (called PERLA, PERiodicity, Regulation and Lag-Autocorrelation) that integrates different features of cell cycle-regulated gene expression time-profiles. We obtained increased performances on a wide range of benchmarks and, most importantly, a substantially increased overlap of the top ranking genes among different datasets, thus proving the effectiveness of the proposed prioritization algorithm. Examples on how to use PERLA to gain new insight into the biology of the cell cycle, are provided in a final dedicated section.
- Published
- 2018