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1.
J Comput Chem ; 45(13): 953-968, 2024 May 15.
Artículo en Inglés | MEDLINE | ID: mdl-38174739

RESUMEN

In the pursuit of novel antiretroviral therapies for human immunodeficiency virus type-1 (HIV-1) proteases (PRs), recent improvements in drug discovery have embraced machine learning (ML) techniques to guide the design process. This study employs ensemble learning models to identify crucial substructures as significant features for drug development. Using molecular docking techniques, a collection of 160 darunavir (DRV) analogs was designed based on these key substructures and subsequently screened using molecular docking techniques. Chemical structures with high fitness scores were selected, combined, and one-dimensional (1D) screening based on beyond Lipinski's rule of five (bRo5) and ADME (absorption, distribution, metabolism, and excretion) prediction implemented in the Combined Analog generator Tool (CAT) program. A total of 473 screened analogs were subjected to docking analysis through convolutional neural networks scoring function against both the wild-type (WT) and 12 major mutated PRs. DRV analogs with negative changes in binding free energy ( ΔΔ G bind ) compared to DRV could be categorized into four attractive groups based on their interactions with the majority of vital PRs. The analysis of interaction profiles revealed that potent designed analogs, targeting both WT and mutant PRs, exhibited interactions with common key amino acid residues. This observation further confirms that the ML model-guided approach effectively identified the substructures that play a crucial role in potent analogs. It is expected to function as a powerful computational tool, offering valuable guidance in the identification of chemical substructures for synthesis and subsequent experimental testing.


Asunto(s)
Infecciones por VIH , Inhibidores de la Proteasa del VIH , VIH-1 , Humanos , Darunavir/farmacología , Inhibidores de la Proteasa del VIH/farmacología , Inhibidores de la Proteasa del VIH/química , Péptido Hidrolasas/farmacología , Simulación del Acoplamiento Molecular , Proteasa del VIH/química , Descubrimiento de Drogas
2.
Molecules ; 27(4)2022 Feb 11.
Artículo en Inglés | MEDLINE | ID: mdl-35209011

RESUMEN

A multitargeted therapeutic approach with hybrid drugs is a promising strategy to enhance anticancer efficiency and overcome drug resistance in nonsmall cell lung cancer (NSCLC) treatment. Estimating affinities of small molecules against targets of interest typically proceeds as a preliminary action for recent drug discovery in the pharmaceutical industry. In this investigation, we employed machine learning models to provide a computationally affordable means for computer-aided screening to accelerate the discovery of potential drug compounds. In particular, we introduced a quantitative structure-activity-relationship (QSAR)-based multitask learning model to facilitate an in silico screening system of multitargeted drug development. Our method combines a recently developed graph-based neural network architecture, principal neighborhood aggregation (PNA), with a descriptor-based deep neural network supporting synergistic utilization of molecular graph and fingerprint features. The model was generated by more than ten-thousands affinity-reported ligands of seven crucial receptor tyrosine kinases in NSCLC from two public data sources. As a result, our multitask model demonstrated better performance than all other benchmark models, as well as achieving satisfying predictive ability regarding applicable QSAR criteria for most tasks within the model's applicability. Since our model could potentially be a screening tool for practical use, we have provided a model implementation platform with a tutorial that is freely accessible hence, advising the first move in a long journey of cancer drug development.


Asunto(s)
Descubrimiento de Drogas/métodos , Ligandos , Inhibidores de Proteínas Quinasas/química , Proteínas Tirosina Quinasas Receptoras/química , Algoritmos , Carcinoma de Pulmón de Células no Pequeñas , Bases de Datos Farmacéuticas , Humanos , Neoplasias Pulmonares , Aprendizaje Automático , Inhibidores de Proteínas Quinasas/farmacología , Relación Estructura-Actividad Cuantitativa , Proteínas Tirosina Quinasas Receptoras/antagonistas & inhibidores , Reproducibilidad de los Resultados , Bibliotecas de Moléculas Pequeñas , Flujo de Trabajo
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