Toxicity prediction based on artificial intelligence: A multidisciplinary overview

被引:59
|
作者
Perez Santin, Efren [1 ]
Rodriguez Solana, Raquel [2 ]
Gonzalez Garcia, Mariano [1 ]
Garcia Suarez, Maria Del Mar [1 ]
Blanco Diaz, Gerardo David [1 ]
Cima Cabal, Maria Dolores [1 ]
Moreno Rojas, Jose Manuel [2 ]
Lopez Sanchez, Jose Ignacio [1 ]
机构
[1] Univ Int La Rioja UNIR, Escuela Super Ingn & Tecnol ESIT, Logrono, Spain
[2] Andalusian Inst Agr & Fisheries Res & Training IF, Dept Food Sci & Hlth, Alameda Obispo Avda, Cordoba, Andalucia, Spain
关键词
toxicity; artificial intelligence; in silico; multidisciplinar; prediction; MACHINE-LEARNING-MODELS; DRUG INTERACTION EXTRACTION; IN-SILICO PREDICTION; INDUCED LIVER-INJURY; EVIDENCE WOE BATTERY; NEURAL-NETWORK; RISK-ASSESSMENT; CARCINOGENICITY PREDICTION; PHYSICOCHEMICAL PROPERTIES; NONCONGENERIC CHEMICALS;
D O I
10.1002/wcms.1516
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
The use and production of chemical compounds are subjected to strong legislative pressure. Chemical toxicity and adverse effects derived from exposure to chemicals are key regulatory aspects for a multitude of industries, such as chemical, pharmaceutical, or food, due to direct harm to humans, animals, plants, or the environment. Simultaneously, there are growing demands on the authorities to replace traditional in vivo toxicity tests carried out on laboratory animals (e.g., European Union REACH/3R principles, Tox21 and ToxCast by the U.S. government, etc.) with in silica computational models. This is not only for ethical aspects, but also because of its greater economic and time efficiency, as well as more recently because of their superior reliability and robustness than in vivo tests, mainly since the entry into the scene of artificial intelligence (AI)-based models, promoting and setting the necessary requirements that these new in silico methodologies must meet. This review offers a multidisciplinary overview of the state of the art in the application of AI-based methodologies for the fulfillment of regulatory-related toxicological issues. This article is categorized under: Data Science > Chemoinformatics Data Science > Artificial Intelligence/Machine Learning
引用
收藏
页数:32
相关论文
共 50 条
  • [1] Artificial Intelligence and Data Mining for Toxicity Prediction
    Helma, Christoph
    Kazius, Jeroen
    [J]. CURRENT COMPUTER-AIDED DRUG DESIGN, 2006, 2 (02) : 123 - 133
  • [2] Prediction of naloxone dose in opioids toxicity based on machine learning techniques (artificial intelligence)
    Mohtarami, Seyed Ali
    Mostafazadeh, Babak
    Shadnia, Shahin
    Rahimi, Mitra
    Evini, Peyman Erfan Talab
    Ramezani, Maral
    Borhany, Hamed
    Fathy, Mobin
    Eskandari, Hamidreza
    [J]. DARU-JOURNAL OF PHARMACEUTICAL SCIENCES, 2024,
  • [3] ARTIFICIAL INTELLIGENCE - OVERVIEW
    GUPTA, GC
    [J]. INDIAN JOURNAL OF PSYCHOLOGY, 1973, 48 (SEP): : 1 - 9
  • [4] An overview of artificial intelligence in subway indoor air quality prediction and control
    Wang, Jinyong
    Yoo, ChangKyoo
    Liu, Hongbin
    [J]. PROCESS SAFETY AND ENVIRONMENTAL PROTECTION, 2023, 178 : 652 - 662
  • [5] Streamflow Prediction Based on Artificial Intelligence Techniques
    Sarita Gajbhiye Meshram
    Chandrashekhar Meshram
    Celso Augusto Guimarães Santos
    Brahim Benzougagh
    Khaled Mohamed Khedher
    [J]. Iranian Journal of Science and Technology, Transactions of Civil Engineering, 2022, 46 : 2393 - 2403
  • [6] Streamflow Prediction Based on Artificial Intelligence Techniques
    Meshram, Sarita Gajbhiye
    Meshram, Chandrashekhar
    Santos, Celso Augusto Guimaraes
    Benzougagh, Brahim
    Khedher, Khaled Mohamed
    [J]. IRANIAN JOURNAL OF SCIENCE AND TECHNOLOGY-TRANSACTIONS OF CIVIL ENGINEERING, 2022, 46 (03) : 2393 - 2403
  • [7] In Silico Prediction of Human Organ Toxicity via Artificial Intelligence Methods
    Hu, Yuxuan
    Ren, Qiuhan
    Liu, Xintong
    Gao, Liming
    Xiao, Lecheng
    Yu, Wenying
    [J]. CHEMICAL RESEARCH IN TOXICOLOGY, 2023, 36 (07) : 1044 - 1054
  • [8] Artificial neural networks for toxicity prediction in RT: a method to validate their "intelligence"
    Massari, E.
    Rancati, T.
    Giandini, T.
    Cicchetti, A.
    Vavassori, V.
    Fellin, G.
    Avuzzi, B.
    Cozzarini, C.
    Fiorino, C.
    Valdagni, R.
    Carrara, M.
    [J]. RADIOTHERAPY AND ONCOLOGY, 2017, 123 : S461 - S462
  • [9] Artificial intelligence in ophthalmology: A multidisciplinary approach
    Ahuja, Abhimanyu S.
    Wagner, Isabella, V
    Dorairaj, Syril
    Checo, Leticia
    Ten Hulzen, Richard
    [J]. INTEGRATIVE MEDICINE RESEARCH, 2022, 11 (04)
  • [10] Overview of artificial intelligence in medicine
    Amisha
    Malik, Paras
    Pathania, Monika
    Rathaur, Vyas Kumar
    [J]. JOURNAL OF FAMILY MEDICINE AND PRIMARY CARE, 2019, 8 (07) : 2328 - 2331