Synthetic Activators of Cell Migration Designed by Constructive Machine Learning
Dr. Dominique Bruns,
Dr. Daniel Merk,
Dr. Karthiga Santhana Kumar,
PD Dr. Martin Baumgartner,
Prof. Dr. Gisbert Schneider
Affiliations
Dr. Dominique Bruns
ETH Zurich, Department of Chemistry and Applied Biosciences Vladimir-Prelog-Weg 4 CH-8093 Zurich Switzerland
Dr. Daniel Merk
ETH Zurich, Department of Chemistry and Applied Biosciences Vladimir-Prelog-Weg 4 CH-8093 Zurich Switzerland
Dr. Karthiga Santhana Kumar
Pediatric Neuro-Oncology Research Group, Department of Oncology, Children's Research Center, University Children's Hospital Zurich Lengghalde 5 CH-8008 Zurich Switzerland
PD Dr. Martin Baumgartner
Pediatric Neuro-Oncology Research Group, Department of Oncology, Children's Research Center, University Children's Hospital Zurich Lengghalde 5 CH-8008 Zurich Switzerland
Prof. Dr. Gisbert Schneider
ETH Zurich, Department of Chemistry and Applied Biosciences Vladimir-Prelog-Weg 4 CH-8093 Zurich Switzerland
Abstract Constructive machine learning aims to create examples from its learned domain which are likely to exhibit similar properties. Here, a recurrent neural network was trained with the chemical structures of known cell‐migration modulators. This machine learning model was used to generate new molecules that mimic the training compounds. Two top‐scoring designs were synthesized, and tested for functional activity in a phenotypic spheroid cell migration assay. These computationally generated small molecules significantly increased the migration of medulloblastoma cells. The results further corroborate the applicability of constructive machine learning to the de novo design of druglike molecules with desired properties.