Literature DB >> 34216326

Machine learning approach to discovery of small molecules with potential inhibitory action against vasoactive metalloproteases.

Yudith Cañizares-Carmenate1, Karel Mena-Ulecia2,3, Desmond MacLeod Carey4, Yunier Perera-Sardiña5, Erix W Hernández-Rodríguez5, Yovani Marrero-Ponce6, Francisco Torrens7, Juan A Castillo-Garit8.   

Abstract

With the advancement of combinatorial chemistry and big data, drug repositioning has boomed. In this sense, machine learning and artificial intelligence techniques offer a priori information to identify the most promising candidates. In this study, we combine QSAR and docking methodologies to identify compounds with potential inhibitory activity of vasoactive metalloproteases for the treatment of cardiovascular diseases. To develop this study, we used a database of 191 thermolysin inhibitor compounds, which is the largest as far as we know. First, we use Dragon's molecular descriptors (0-3D) to develop classification models using Bayesian networks (Naive Bayes) and artificial neural networks (Multilayer Perceptron). The obtained models are used for virtual screening of small molecules in the international DrugBank database. Second, docking experiments are carried out for all three enzymes using the Autodock Vina program, to identify possible interactions with the active site of human metalloproteases. As a result, high-performance artificial intelligence QSAR models are obtained for training and prediction sets. These allowed the identification of 18 compounds with potential inhibitory activity and an adequate oral bioavailability profile, which were evaluated using docking. Four of them showed high binding energies for the three enzymes, and we propose them as potential dual ACE/NEP inhibitors for the control of blood pressure. In summary, the in silico strategies used here constitute an important tool for the early identification of new antihypertensive drug candidates, with substantial savings in time and money.
© 2021. The Author(s), under exclusive licence to Springer Nature Switzerland AG.

Entities:  

Keywords:  Angiotensin-converting enzyme; Artificial intelligence; Docking; Machine learning; Neutral endopeptidase; Thermolysin; Virtual screening

Mesh:

Substances:

Year:  2021        PMID: 34216326     DOI: 10.1007/s11030-021-10260-0

Source DB:  PubMed          Journal:  Mol Divers        ISSN: 1381-1991            Impact factor:   2.943


  6 in total

Review 1.  Insights into peptide and protein function: a convergent approach.

Authors:  B P Roques
Journal:  J Pept Sci       Date:  2001-02       Impact factor: 1.905

2.  AutoDock Vina: improving the speed and accuracy of docking with a new scoring function, efficient optimization, and multithreading.

Authors:  Oleg Trott; Arthur J Olson
Journal:  J Comput Chem       Date:  2010-01-30       Impact factor: 3.376

3.  Structural analysis of silanediols as transition-state-analogue inhibitors of the benchmark metalloprotease thermolysin.

Authors:  Douglas H Juers; Jaeseung Kim; Brian W Matthews; Scott McN Sieburth
Journal:  Biochemistry       Date:  2005-12-20       Impact factor: 3.162

Review 4.  Protein promiscuity in drug discovery, drug-repurposing and antibiotic resistance.

Authors:  Munishwar N Gupta; Anwar Alam; Seyed E Hasnain
Journal:  Biochimie       Date:  2020-05-13       Impact factor: 4.079

5.  Estimated Research and Development Investment Needed to Bring a New Medicine to Market, 2009-2018.

Authors:  Olivier J Wouters; Martin McKee; Jeroen Luyten
Journal:  JAMA       Date:  2020-03-03       Impact factor: 157.335

Review 6.  Global Burden of Cardiovascular Diseases and Risk Factors, 1990-2019: Update From the GBD 2019 Study.

Authors:  Gregory A Roth; George A Mensah; Catherine O Johnson; Giovanni Addolorato; Enrico Ammirati; Larry M Baddour; Noël C Barengo; Andrea Z Beaton; Emelia J Benjamin; Catherine P Benziger; Aimé Bonny; Michael Brauer; Marianne Brodmann; Thomas J Cahill; Jonathan Carapetis; Alberico L Catapano; Sumeet S Chugh; Leslie T Cooper; Josef Coresh; Michael Criqui; Nicole DeCleene; Kim A Eagle; Sophia Emmons-Bell; Valery L Feigin; Joaquim Fernández-Solà; Gerry Fowkes; Emmanuela Gakidou; Scott M Grundy; Feng J He; George Howard; Frank Hu; Lesley Inker; Ganesan Karthikeyan; Nicholas Kassebaum; Walter Koroshetz; Carl Lavie; Donald Lloyd-Jones; Hong S Lu; Antonio Mirijello; Awoke Misganaw Temesgen; Ali Mokdad; Andrew E Moran; Paul Muntner; Jagat Narula; Bruce Neal; Mpiko Ntsekhe; Glaucia Moraes de Oliveira; Catherine Otto; Mayowa Owolabi; Michael Pratt; Sanjay Rajagopalan; Marissa Reitsma; Antonio Luiz P Ribeiro; Nancy Rigotti; Anthony Rodgers; Craig Sable; Saate Shakil; Karen Sliwa-Hahnle; Benjamin Stark; Johan Sundström; Patrick Timpel; Imad M Tleyjeh; Marco Valgimigli; Theo Vos; Paul K Whelton; Magdi Yacoub; Liesl Zuhlke; Christopher Murray; Valentin Fuster
Journal:  J Am Coll Cardiol       Date:  2020-12-22       Impact factor: 24.094

  6 in total
  1 in total

Review 1.  Machine Learning Approaches for Metalloproteins.

Authors:  Yue Yu; Ruobing Wang; Ruijie D Teo
Journal:  Molecules       Date:  2022-02-14       Impact factor: 4.411

  1 in total

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