Yaëlle Fischer; Ruel Cedeno; Dhoha Triki; Bertrand Vivet; Philippe Schambel ACS Med. Chem. Lett., 2025, XXXX, XXX, XXX-XXX https://doi.org/10.1021/acsmedchemlett.4c00505
Abstract
DELs enable efficient experimental screening of vast combinatorial libraries, offering a powerful platform for drug discovery. Apart from ensuring the druglike physicochemical properties, other key parameters to maximize the success rate of DEL designs include the scaffold diversity and target addressability. While several tools exist to assess chemical diversity, a dedicated computational approach combining both parameters is currently lacking. Here, we present a cheminformatics tool leveraging scaffold analysis and machine learning to evaluate both scaffold diversity and target-orientedness. Using two in-house libraries as a case study, we demonstrate the workflow’s ability to distinguish between generalist and focused libraries. This capability can guide medicinal chemists in selecting libraries tailored for specific objectives, such as hit-finding or hit-optimization.