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Mitigating Molecular Aggregation in Drug Discovery with Predictive Insights from Explainable AI

Sturm, Hunter; Teufel, Jonas ORCID iD icon 1; Isfeld, Kaitlin A.; Friederich, Pascal ORCID iD icon 1; Davis, Rebecca L.
1 Institut für Theoretische Informatik (ITI), Karlsruher Institut für Technologie (KIT)

Abstract:

As the importance of high-throughput screening (HTS) continues to grow due to its value in early stage drug discovery and data generation for training machine learning models, there is a growing need for robust methods for pre-screening compounds to identify and prevent false-positive hits. Small, colloidally aggregating molecules are one of the primary sources of false-positive hits in high-throughput screens, making them an ideal candidate to target for removal from libraries using predictive pre-screening tools. However, a lack of understanding of the causes of molecular aggregation introduces difficulty in the development of predictive tools for detecting aggregating molecules. Herein, we present an examination of the molecular features differentiating datasets of aggregating and non-aggregating molecules, as well as a machine learning approach to predicting molecular aggregation. Our method uses explainable graph neural networks and counterfactuals to reliably predict and explain aggregation, giving additional insights and design rules for future screening. The integration of this method in HTS approaches will help combat false positives, providing better lead molecules more rapidly and thus accelerating drug discovery cycles.


Volltext §
DOI: 10.5445/IR/1000168829
Veröffentlicht am 27.02.2024
Cover der Publikation
Zugehörige Institution(en) am KIT Institut für Theoretische Informatik (ITI)
Publikationstyp Forschungsbericht/Preprint
Publikationsdatum 03.06.2023
Sprache Englisch
Identifikator KITopen-ID: 1000168829
HGF-Programm 43.31.01 (POF IV, LK 01) Multifunctionality Molecular Design & Material Architecture
Verlag arxiv
Schlagwörter Biomolecules (q-bio.BM), Soft Condensed Matter (cond-mat.soft), Machine Learning (cs.LG)
Nachgewiesen in Dimensions
arXiv
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