4.8 Article

Towards machine learning discovery of dual antibacterial drug-nanoparticle systems

Journal

NANOSCALE
Volume 13, Issue 42, Pages 17854-17870

Publisher

ROYAL SOC CHEMISTRY
DOI: 10.1039/d1nr04178a

Keywords

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Funding

  1. Minister of Science and Innovation [PID2019-104148GB-I00]
  2. Basque Government [IT1045-16]

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The study utilizes Artificial Intelligence and Machine Learning algorithms to accelerate the design of systems composed of antibacterial drugs and nanoparticles, analyzing a large dataset. Training alternative models with different algorithms, as well as studying simulated behavior of DADNPs in biological assays.
Artificial Intelligence/Machine Learning (AI/ML) algorithms may speed up the design of DADNP systems formed by Antibacterial Drugs (AD) and Nanoparticles (NP). In this work, we used IFPTML = Information Fusion (IF) + Perturbation-Theory (PT) + Machine Learning (ML) algorithm for the first time to study of a large dataset of putative DADNP systems composed by >165 000 ChEMBL AD assays and 300 NP assays vs. multiple bacteria species. We trained alternative models with Linear Discriminant Analysis (LDA), Artificial Neural Networks (ANN), Bayesian Networks (BNN), K-Nearest Neighbour (KNN) and other algorithms. IFPTML-LDA model was simpler with values of Sp approximate to 90% and Sn approximate to 74% in both training (>124 K cases) and validation (>41 K cases) series. IFPTML-ANN and KNN models are notably more complicated even when they are more balanced Sn approximate to Sp approximate to 88.5%-99.0% and AUROC approximate to 0.94-0.99 in both series. We also carried out a simulation (>1900 calculations) of the expected behavior for putative DADNPs in 72 different biological assays. The putative DADNPs studied are formed by 27 different drugs with multiple classes of NP and types of coats. In addition, we tested the validity of our additive model with 80 DADNP complexes experimentally synthetized and biologically tested (reported in >45 papers). All these DADNPs show values of MIC < 50 mu g mL(-1) (cutoff used) better that MIC of AD and NP alone (synergistic or additive effect). The assays involve DADNP complexes with 10 types of NP, 6 coating materials, NP size range 5-100 nm vs. 15 different antibiotics, and 12 bacteria species. The IFPTML-LDA model classified correctly 100% (80 out of 80) DADNP complexes as biologically active. IFPMTL additive strategy may become a useful tool to assist the design of DADNP systems for antibacterial therapy taking into consideration only information about AD and NP components by separate.

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