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PerturBench: Benchmarking Machine Learning Models for Cellular Perturbation Analysis

Authors :
Wu, Yan
Wershof, Esther
Schmon, Sebastian M
Nassar, Marcel
Osiński, Błażej
Eksi, Ridvan
Zhang, Kun
Graepel, Thore
Publication Year :
2024

Abstract

We present a comprehensive framework for predicting the effects of perturbations in single cells, designed to standardize benchmarking in this rapidly evolving field. Our framework, PerturBench, includes a user-friendly platform, diverse datasets, metrics for fair model comparison, and detailed performance analysis. Extensive evaluations of published and baseline models reveal limitations like mode or posterior collapse, and underscore the importance of rank metrics that assess the ordering of perturbations alongside traditional measures like RMSE. Our findings show that simple models can outperform more complex approaches. This benchmarking exercise sets new standards for model evaluation, supports robust model development, and advances the potential of these models to use high-throughput and high-content genetic and chemical screens for disease target discovery.<br />Comment: 9 pages plus 19 pages supplementary material. Code is available at https://github.com/altoslabs/perturbench

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.10609
Document Type :
Working Paper