Artificial Intelligence and Machine Learning Models for Predicting Drug-Induced Kidney Injury in Small Molecules

被引:0
作者
Rao, Mohan [1 ]
Nassiri, Vahid [2 ]
Srivastava, Sanjay [1 ]
Yang, Amy [1 ]
Brar, Satjit [1 ]
Mcduffie, Eric [1 ]
Sachs, Clifford [1 ]
机构
[1] Neurocrine Biosci, Preclin & Clin Pharmacol & Chem, San Diego, CA 92130 USA
[2] Open Analyt NV, Jupiterstr 20, B-2600 Antwerp, Belgium
关键词
off-target interactions; machine learning; artificial intelligence; cheminformatics; drug induced kidney injury; computational toxicology; LIGAND-BASED APPROACH; PHARMACEUTICAL-INDUSTRY; IN-SILICO; BIOMARKERS; ZEBRAFISH;
D O I
10.3390/ph17111550
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
Background/Objectives: Drug-Induced Kidney Injury (DIKI) presents a significant challenge in drug development, often leading to clinical-stage failures. The early prediction of DIKI risk can improve drug safety and development efficiency. Existing models tend to focus on physicochemical properties alone, often overlooking drug-target interactions crucial for DIKI. This study introduces an AI/ML (artificial intelligence/machine learning) model that integrates both physicochemical properties and off-target interactions to enhance DIKI prediction. Methods: We compiled a dataset of 360 FDA-classified compounds (231 non-nephrotoxic and 129 nephrotoxic) and predicted 6064 off-target interactions, 59% of which were validated in vitro. We also calculated 55 physicochemical properties for these compounds. Machine learning (ML) models were developed using four algorithms: Ridge Logistic Regression (RLR), Support Vector Machine (SVM), Random Forest (RF), and Neural Network (NN). These models were then combined into an ensemble model for enhanced performance. Results: The ensemble model achieved an ROC-AUC of 0.86, with a sensitivity and specificity of 0.79 and 0.78, respectively. The key predictive features included 38 off-target interactions and physicochemical properties such as the number of metabolites, polar surface area (PSA), pKa, and fraction of Sp3-hybridized carbons (fsp3). These features effectively distinguished DIKI from non-DIKI compounds. Conclusions: The integrated model, which combines both physicochemical properties and off-target interaction data, significantly improved DIKI prediction accuracy compared to models that rely on either data type alone. This AI/ML model provides a promising early screening tool for identifying compounds with lower DIKI risk, facilitating safer drug development.
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页数:26
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