| Literature DB >> 33608593 |
Tyler Grear1, Chris Avery1,2, John Patterson2, Donald J Jacobs3,4.
Abstract
Identifying mechanisms that control molecular function is a significant challenge in pharmaceutical science and molecular engineering. Here, we present a novel projection pursuit recurrent neural network to identify functional mechanisms in the context of iterative supervised machine learning for discovery-based design optimization. Molecular function recognition is achieved by pairing experiments that categorize systems with digital twin molecular dynamics simulations to generate working hypotheses. Feature extraction decomposes emergent properties of a system into a complete set of basis vectors. Feature selection requires signal-to-noise, statistical significance, and clustering quality to concurrently surpass acceptance levels. Formulated as a multivariate description of differences and similarities between systems, the data-driven working hypothesis is refined by analyzing new systems prioritized by a discovery-likelihood. Utility and generality are demonstrated on several benchmarks, including the elucidation of antibiotic resistance in TEM-52 beta-lactamase. The software is freely available, enabling turnkey analysis of massive data streams found in computational biology and material science.Entities:
Year: 2021 PMID: 33608593 PMCID: PMC7895977 DOI: 10.1038/s41598-021-83269-y
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379