Quantitative Prediction of Inorganic Nanomaterial Cellular Toxicity via Machine Learning.

Journal: Small (Weinheim an der Bergstrasse, Germany)
PMID:

Abstract

Organic chemistry has seen colossal progress due to machine learning (ML). However, the translation of artificial intelligence (AI) into materials science is challenging, where biological behavior prediction becomes even more complicated. Nanotoxicity is a critical parameter that describes their interaction with the living organisms screened in every bio-related research. To prevent excessive experiments, such properties have to be pre-evaluated. Several existing ML models partially fulfill the gap by predicting whether a nanomaterial is toxic or not. Yet, this binary categorization neglects the concentration dependencies crucial for experimental scientists. Here, an ML-based approach is proposed to the quantitative prediction of inorganic nanomaterial cytotoxicity achieving the precision expressed by 10-fold cross-validation (CV) Q  = 0.86 with the root mean squared error (RMSE) of 12.2% obtained by the correlation-based feature selection and grid search-based model hyperparameters optimization. To provide further model flexibility, quantitative atom property-based nanomaterial descriptors are introduced allowing the model to extrapolate on unseen samples. Feature importance is calculated to find an interpretable model with optimal decision-making. These findings allow experimental scientists to perform primary in silico candidate screening and minimize the number of excessive, labor-intensive experiments enabling the rapid development of nanomaterials for medicinal purposes.

Authors

  • Nikolai Shirokii
    International Institute "Solution Chemistry of Advanced Materials and Technologies", ITMO University, 191002, Saint-Petersburg, Russian Federation.
  • Yevgeniya Din
    International Institute "Solution Chemistry of Advanced Materials and Technologies", ITMO University, 191002, Saint-Petersburg, Russian Federation.
  • Ilya Petrov
    International Institute "Solution Chemistry of Advanced Materials and Technologies", ITMO University, 191002, Saint-Petersburg, Russian Federation.
  • Yurii Seregin
    International Institute "Solution Chemistry of Advanced Materials and Technologies", ITMO University, 191002, Saint-Petersburg, Russian Federation.
  • Sofia Sirotenko
    International Institute "Solution Chemistry of Advanced Materials and Technologies", ITMO University, 191002, Saint-Petersburg, Russian Federation.
  • Julia Razlivina
    International Institute "Solution Chemistry of Advanced Materials and Technologies", ITMO University, 191002, Saint-Petersburg, Russian Federation.
  • Nikita Serov
    Advanced Engineering School, Almetyevsk State Oil Institute, Almetyevsk, Russia.
  • Vladimir Vinogradov
    International Institute "Solution Chemistry of Advanced Materials and Technologies", ITMO University, 191002, Saint-Petersburg, Russian Federation.