Litcius/Paper detail

Domain adaptation in small-scale and heterogeneous biological datasets

Seyedmehdi Orouji, Martin C. Liu, Tal Korem, Megan A. K. Peters

2024Science Advances44 citationsDOIOpen Access PDF

Abstract

Machine-learning models are key to modern biology, yet models trained on one dataset are often not generalizable to other datasets from different cohorts or laboratories due to both technical and biological differences. Domain adaptation, a type of transfer learning, alleviates this problem by aligning different datasets so that models can be applied across them. However, most state-of-the-art domain adaptation methods were designed for large-scale data such as images, whereas biological datasets are smaller and have more features, and these are also complex and heterogeneous. This Review discusses domain adaptation methods in the context of such biological data to inform biologists and guide future domain adaptation research. We describe the benefits and challenges of domain adaptation in biological research and critically explore some of its objectives, strengths, and weaknesses. We argue for the incorporation of domain adaptation techniques to the computational biologist's toolkit, with further development of customized approaches.

Topics & Concepts

Adaptation (eye)Computer scienceDomain (mathematical analysis)Domain adaptationContext (archaeology)Scale (ratio)Data scienceStrengths and weaknessesKey (lock)Transfer of learningArtificial intelligenceMachine learningBiologyCartographyGeographyClassifier (UML)NeurosciencePhilosophyMathematical analysisComputer securityPaleontologyMathematicsEpistemologyDomain Adaptation and Few-Shot LearningMolecular Biology Techniques and ApplicationsGenomics and Phylogenetic Studies