Representation of molecular structures with persistent homology for machine learning applications in chemistry
Autor
Townsend, Jacob
Putman Micucci, Cassie
Hymel, John H.
Maroulas, Vasileios
Institución
Resumen
Machine learning and high-throughput computational screening have been valuable tools in
accelerated first-principles screening for the discovery of the next generation of functionalized molecules and materials. The application of machine learning for chemical applications
requires the conversion of molecular structures to a machine-readable format known as a
molecular representation. The choice of such representations impacts the performance and
outcomes of chemical machine learning methods. Herein, we present a new concise molecular representation derived from persistent homology, an applied branch of mathematics.
We have demonstrated its applicability in a high-throughput computational screening of a
large molecular database (GDB-9) with more than 133,000 organic molecules. Our target is
to identify novel molecules that selectively interact with CO2. The methodology and performance of the novel molecular fingerprinting method is presented and the new chemicallydriven persistence image representation is used to screen the GDB-9 database to suggest
molecules and/or functional groups with enhanced properties.