Knowledge Enhanced Representation Learning for Drug Discovery
Thanh Lam Hoang, Marco Luca Sbodio, et al.
AAAI 2024
Mathematical methods combined with measurements of single-cell dynamics provide a means to reconstruct intracellular processes that are only partly or indirectly accessible experimentally. To obtain reliable reconstructions, the pooling of measurements from several cells of a clonal population is mandatory. However, cell-to-cell variability originating from diverse sources poses computational challenges for such process reconstruction. We introduce a scalable Bayesian inference framework that properly accounts for population heterogeneity. The method allows inference of inaccessible molecular states and kinetic parameters; computation of Bayes factors for model selection; and dissection of intrinsic, extrinsic and technical noise. We show how additional single-cell readouts such as morphological features can be included in the analysis. We use the method to reconstruct the expression dynamics of a gene under an inducible promoter in yeast from time-lapse microscopy data. © 2014 Nature America, Inc. All rights reserved.
Thanh Lam Hoang, Marco Luca Sbodio, et al.
AAAI 2024
Peter N. Ayittey, John S. Walker, et al.
Pflugers Archiv European Journal of Physiology
Alice Driessen, Susane Unger, et al.
ISMB 2023
M. Sprik, U. RÖTHLISBERGER, et al.
Molecular Physics