Machine learning approaches enable the discovery of therapeutics across domains.

Journal: Molecular therapy : the journal of the American Society of Gene Therapy
Published Date:

Abstract

Multi-modal datasets have grown exponentially in the last decade. This has created an enormous demand for machine learning models that can predict complex outcomes by leveraging cellular, molecular, and humoral profiles. Corresponding inference of mechanisms can help to uncover new therapeutic targets. Here, we discuss how biological principles guide the design of predictive models and how interpretable machine learning can lead to novel mechanistic insights. We provide descriptions of multiple learning techniques and how suited they are to domain adaptations. Finally, we talk about broad learning capabilities of foundation models on large datasets and whether they can be used to provide meaningful inference about biological datasets.

Authors

  • Prabal Chhibbar
    Centre for Systems Immunology, Department of Immunology, School of Medicine, University of Pittsburgh, Pittsburgh, PA 15213, USA; Integrative Systems Biology PhD Program, School of Medicine, University of Pittsburgh, Pittsburgh, PA 15213, USA. Electronic address: prc44@pitt.edu.
  • Jishnu Das
    Center for Systems Immunology, Departments of Immunology and Computational & Systems Biology, University of Pittsburgh, Pittsburgh, PA, USA. jishnu@pitt.edu.