posted on 2021-02-09, 01:41authored byDavid WinklerDavid Winkler, Tim Würger, D Mei, B Vaghefinazari, Sviatlana Lamaka, M Zheludkevich, R Meißner, Christian Feiler
Abstract: Small organic molecules that modulate the degradation behavior of Mg constitute benign and useful materials to modify the
service environment of light metal materials for specific applications. The vast chemical space of potentially effective compounds
can be explored by machine learning-based quantitative structure-property relationship models, accelerating the discovery of
potent dissolution modulators. Here, we demonstrate how unsupervised clustering of a large number of potential Mg dissolution
modulators by structural similarities and sketch-maps can predict their experimental performance using a kernel ridge regression
model. We compare the prediction accuracy of this approach to that of a prior artificial neural networks study. We confirm the
robustness of our data-driven model by blind prediction of the dissolution modulating performance of 10 untested compounds.
Finally, a workflow is presented that facilitates the automated discovery of chemicals with desired dissolution modulating
properties from a commercial database. We subsequently prove this concept by blind validation of five chemicals.
History
Publication Date
2021-01-08
Journal
npj Materials Degradation
Volume
5
Article Number
2
Publisher
Springer Nature
Rights Statement
The Author reserves all moral rights over the deposited text and must be credited if any re-use occurs. Documents deposited in OPAL are the Open Access versions of outputs published elsewhere. Changes resulting from the publishing process may therefore not be reflected in this document. The final published version may be obtained via the publisher’s DOI. Please note that additional copyright and access restrictions may apply to the published version.