Efficient identification of novel anti-glioma lead compounds by machine learning models

Eur J Med Chem. 2020 Mar 1:189:111981. doi: 10.1016/j.ejmech.2019.111981. Epub 2019 Dec 19.

Abstract

Glioblastoma multiforme (GBM) is the most devastating and widespread primary central nervous system tumor. Pharmacological treatment of this malignance is limited by the selective permeability of the blood-brain barrier (BBB) and relies on a single drug, temozolomide (TMZ), thus making the discovery of new compounds challenging and urgent. Therefore, aiming to discover new anti-glioma drugs, we developed robust machine learning models for predicting anti-glioma activity and BBB penetration ability of new compounds. Using these models, we prioritized 41 compounds from our in-house library of compounds, for further in vitro testing against three glioma cell lines and astrocytes. Subsequently, the most potent and selective compounds were resynthesized and tested in vivo using an orthotopic glioma model. This approach revealed two lead candidates, 4m and 4n, which efficiently decreased malignant glioma development in mice, probably by inhibiting thioredoxin reductase activity, as shown by our enzymological assays. Moreover, these two compounds did not promote body weight reduction, death of animals, or altered hematological and toxicological markers, making then good candidates for lead optimization as anti-glioma drug candidates.

Keywords: Cancer; Glioblastoma; Machine learning; Orthotopic glioma model; Predictive modeling; Thioredoxin reductase.

MeSH terms

  • Animals
  • Antineoplastic Agents / chemistry*
  • Antineoplastic Agents / pharmacology*
  • Apoptosis
  • Cell Proliferation
  • Female
  • Glioma / drug therapy*
  • Glioma / pathology
  • Humans
  • Machine Learning*
  • Male
  • Mice
  • Mice, Inbred C57BL
  • Models, Statistical*
  • Nitrofurans / chemistry
  • Nitrofurans / pharmacology
  • Tumor Cells, Cultured
  • Xenograft Model Antitumor Assays

Substances

  • Antineoplastic Agents
  • Nitrofurans