Predicting coated-nanoparticle drug release systems with perturbation-theory machine learning (PTML) models

被引:29
|
作者
Santana, Ricardo [1 ,2 ]
Zuluaga, Robin [3 ]
Ganan, Piedad [2 ]
Arrasate, Sonia [4 ]
Onieva, Enrique [1 ]
Gonzalez-Diaz, Humbert [4 ,5 ,6 ]
机构
[1] Univ Deusto, Avda Univ 24, Bilbao 48007, Spain
[2] Univ Pontificia Bolivariana, Fac Ingn Quim, Grp Invest Sabre Nuevos Mat, Circular 1 70-01, Medellin, Colombia
[3] Univ Pontificia Bolivariana, Fac Ingn Agroind, Circular 1 70-01, Medellin, Colombia
[4] Univ Basque Country UPV EHU, Dept Organ Chem 2, Leioa 48940, Spain
[5] Basque Fdn Sci, Ikerbasque, Bilbao 48011, Spain
[6] Univ Basque Country, Biofis Inst, CSIC, UPV EHU, Leioa 48940, Spain
关键词
METAL-OXIDE NANOPARTICLES; CYTOTOXICITY; DELIVERY; SHELL; CLASSIFICATION; REGRESSION; DOCKING;
D O I
10.1039/d0nr01849j
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Nanoparticles (NPs) decorated with coating agents (polymers, gels, proteins,etc.) form Nanoparticle Drug Delivery Systems (DDNS), which are of high interest in nanotechnology and biomaterials science. There have been increasing reports of experimental data sets of biological activity, toxicity, and delivery properties of DDNS. However, these data sets are still dispersed and not as large as the datasets of DDNS components (NP and drugs). This has prompted researchers to train Machine Learning (ML) algorithms that are able to design new DDNS based on the properties of their components. However, most ML models reported up to date predictions of the specific activities of NP or drugs over a determined target or cell line. In this paper, we combine Perturbation Theory and Machine Learning (PTML algorithm) to train a model that is able to predict the best components (NP, coating agent, and drug) for DDNS design. In so doing, we downloaded a dataset of >30 000 preclinical assays of drugs from ChEMBL. We also downloaded an NP data set formed by preclinical assays of coated Metal Oxide Nanoparticles (MONPs) from public sources. Both the drugs and NP datasets of preclinical assays cover multiple conditions of assays that can be listed as two arrays, namely,c(jdrug)andc(jNP). Thec(jdrug)array includes >504 biological activity parameters (c(0drug)), >340 target proteins (c(1drug)), >650 types of cells (c(2drug)), >120 assay organisms (c(3drug)), and >60 assay strains (c(4drug)). On the other hand, thec(jNP)array includes 3 biological activity parameters (c(0NP)), 40 types of proteins (c(1NP)), 10 shapes of nanoparticles (c(2NP)), 6 assay media (c(3NP)), and 12 coating agents (c(4NP)). After downloading, we pre-processed both the data sets by separate calculation PT operators that are able to account for changes (perturbations) in the drug, coating agents, and NP chemical structure and/or physicochemical properties as well as for the assay conditions. Next, we carry out an information fusion process to form a final dataset of above 500 000 DDNS (drug + MONP pairs). We also trained other linear and non-linear PTML models using R studio scripts for comparative purposes. To the best of our knowledge, this is the first multi-label PTML model that is useful for the selection of drugs, coating agents, and metal or metal-oxide nanoparticles to be assembled in order to design new DDNS with optimal activity/toxicity profiles.
引用
下载
收藏
页码:13471 / 13483
页数:13
相关论文
共 41 条
  • [1] Predicting Metabolic Reaction Networks with Perturbation-Theory Machine Learning (PTML) Models
    Dieguez-Santana, Karel
    Casanola-Martin, Gerardo M.
    Green, James R.
    Rasulev, Bakhtiyor
    Gonzalez-Diaz, Humberto
    CURRENT TOPICS IN MEDICINAL CHEMISTRY, 2021, 21 (09) : 819 - 827
  • [2] Designing nanoparticle release systems for drug-vitamin cancer co-therapy with multiplicative perturbation-theory machine learning (PTML) models
    Santana, Ricardo
    Zuluaga, Robin
    Ganan, Piedad
    Arrasate, Sonia
    Onieva, Enrique
    Gonzalez-Diaz, Humbert
    NANOSCALE, 2019, 11 (45) : 21811 - 21823
  • [3] Multioutput Perturbation-Theory Machine Learning (PTML) Model of ChEMBL Data for Antiretroviral Compounds
    Vasquez-Dominguez, Emilia
    Armijos-Jaramillo, Vinicio Danilo
    Tejera, Eduardo
    Gonzalez-Diaz, Humbert
    MOLECULAR PHARMACEUTICS, 2019, 16 (10) : 4200 - 4212
  • [4] Perturbation-Theory Machine Learning (PTML) Multilabel Model of the ChEMBL Dataset of Preclinical Assays for Antisarcoma Compounds
    Cabrera-Andrade, Alejandro
    Lopez-Cortes, Andres
    Munteanu, Cristian R.
    Pazos, Alejandro
    Perez-Castillo, Yunierkis
    Tejera, Eduardo
    Arrasate, Sonia
    Gonzalez-Diaz, Humbert
    ACS OMEGA, 2020, 5 (42): : 27211 - 27220
  • [5] Machine Learning and Perturbation Theory Machine Learning (PTML) in Medicinal Chemistry, Biotechnology, and Nanotechnology
    Herrera-Ibata, Diana M.
    CURRENT TOPICS IN MEDICINAL CHEMISTRY, 2021, 21 (07) : 649 - 660
  • [6] Perturbation-Theory and Machine Learning (PTML) Model for High-Throughput Screening of Parham Reactions: Experimental and Theoretical Studies
    Simon-Vidal, Lorena
    Garcia-Calvo, Oihane
    Oteo, Uxue
    Arrasate, Sonia
    Lete, Esther
    Sotomayor, Nuria
    Gonzalez-Diaz, Humberto
    JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2018, 58 (07) : 1384 - 1396
  • [7] PERTURBATION-THEORY AND IONIC MODELS FOR ALKALI-HALIDE SYSTEMS .1. DIATOMICS
    BRUMER, P
    KARPLUS, M
    JOURNAL OF CHEMICAL PHYSICS, 1973, 58 (09): : 3903 - 3918
  • [8] PERTURBATION-THEORY AND IONIC MODELS FOR ALKALI-HALIDE SYSTEMS .2. DIMERS
    BRUMER, P
    KARPLUS, M
    JOURNAL OF CHEMICAL PHYSICS, 1976, 64 (12): : 5165 - 5178
  • [9] PTML Model for Selection of Nanoparticles, Anticancer Drugs, and Vitamins in the Design of Drug-Vitamin Nanoparticle Release Systems for Cancer Cotherapy
    Santana, Ricardo
    Zuluaga, Robin
    Ganan, Piedad
    Arrasate, Sonia
    Onieva, Enrique
    Montemore, Matthew M.
    Gonzalez-Diaz, Humbert
    MOLECULAR PHARMACEUTICS, 2020, 17 (07) : 2612 - 2627
  • [10] Current in silico methods for multi-target drug discovery in early anticancer research: the rise of the perturbation-theory machine learning approach
    Kleandrova, Valeria V.
    Cordeiro, Maria Natalia D. S.
    Speck-Planche, Alejandro
    FUTURE MEDICINAL CHEMISTRY, 2023, 15 (18) : 1647 - 1650