Prediction of Inhibitory Activity Against the MATE1 Transporter via Combined Fingerprint- and Physics-Based Machine Learning Models
Koichi Handa,
Shunta Sasaki,
Satoshi Asano
et al.
Abstract:Renal secretion plays an important role in drug excretion from the kidney. Two major transporters known to be highly involved in renal secretion are MATE1/2-K and OCT2, the former of which is highly related to drug-drug interactions. Among published in silico models for MATE inhibitors, a previous model obtained a ROC-AUC value of 0.78 using high throughput percentage inhibition data [J Med Chem. 2013;56(3): 781–795] which we aimed to improve upon here using a combined fingerprint and physics-based approach. T… Show more
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