%0 Journal Article %T SIRT2i_Predictor: A Machine Learning-Driven Approach for Accelerating the Discovery of Selective SIRT2 Inhibitors in Age-Related Disease Therapeutics %A Yasmin Rahman %A Farid Ahmed %A Shafiq Islam %J Pharmaceutical Sciences and Drug Design %@ 3062-4428 %D 2025 %V 5 %N 1 %R 10.51847/5ZwEspcuFd %P 315-334 %X Recent preclinical findings have identified selective inhibitors of sirtuin 2 (SIRT2) as potential therapeutic agents for treating age-related diseases, but none have advanced to clinical trials. The growing adoption of machine learning (ML) techniques in drug discovery has demonstrated their transformative potential, yet there remains a lack of large-scale, robust ML models for identifying novel SIRT2 inhibitors. To fill this gap, we developed SIRT2i_Predictor, a machine-learning-based tool designed to assist in virtual screening (VS), lead optimization, and the selection of SIRT2 inhibitors for experimental validation. The tool integrates a series of high-performance ML models, both for regression and classification, to predict the potency of inhibitors and their selectivity across SIRT1-3 isoforms. These models were trained on an extensive dataset comprising 1797 compounds using state-of-the-art ML algorithms. A comparison with traditional structure-based VS protocols revealed that the tool not only covers a comparable chemical space but also offers significant improvements in processing speed. The tool was successfully applied to screen an in-house compound database, confirming its utility in prioritizing candidates for costly in vitro testing. With a user-friendly web interface, SIRT2i_Predictor is accessible to the broader research community, and its source code is freely available online. %U https://galaxypub.co/article/sirt2i-predictor-a-machine-learning-driven-approach-for-accelerating-the-discovery-of-selective-sir-ya3xa8nkmgzmosr