Author
Listed:
- Philip Pearce
(Massachusetts Institute of Technology)
- Francis G. Woodhouse
(University of Oxford)
- Aden Forrow
(Massachusetts Institute of Technology
University of Oxford)
- Ashley Kelly
(Durham University)
- Halim Kusumaatmaja
(Durham University)
- Jörn Dunkel
(Massachusetts Institute of Technology)
Abstract
Many complex processes, from protein folding to neuronal network dynamics, can be described as stochastic exploration of a high-dimensional energy landscape. Although efficient algorithms for cluster detection in high-dimensional spaces have been developed over the last two decades, considerably less is known about the reliable inference of state transition dynamics in such settings. Here we introduce a flexible and robust numerical framework to infer Markovian transition networks directly from time-independent data sampled from stationary equilibrium distributions. We demonstrate the practical potential of the inference scheme by reconstructing the network dynamics for several protein-folding transitions, gene-regulatory network motifs, and HIV evolution pathways. The predicted network topologies and relative transition time scales agree well with direct estimates from time-dependent molecular dynamics data, stochastic simulations, and phylogenetic trees, respectively. Owing to its generic structure, the framework introduced here will be applicable to high-throughput RNA and protein-sequencing datasets, and future cryo-electron microscopy (cryo-EM) data.
Suggested Citation
Philip Pearce & Francis G. Woodhouse & Aden Forrow & Ashley Kelly & Halim Kusumaatmaja & Jörn Dunkel, 2019.
"Learning dynamical information from static protein and sequencing data,"
Nature Communications, Nature, vol. 10(1), pages 1-8, December.
Handle:
RePEc:nat:natcom:v:10:y:2019:i:1:d:10.1038_s41467-019-13307-x
DOI: 10.1038/s41467-019-13307-x
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