Machine Learning Toxicity Prediction: Latest Advances by Toxicity End Point

被引:60
|
作者
Cavasotto, Claudio N. [1 ,3 ,4 ]
Scardino, Valeria [1 ,2 ]
机构
[1] Univ Austral, Austral Inst Appl Artificial Intelligence, B1629AHJ, Pilar, Buenos Aires, Argentina
[2] Meton Inc, Wilmington, DE 19801 USA
[3] Univ Austral, Computat Drug Design & Biomed Informat Lab, Inst Invest Med Traslac IIMT, CONICET, B1629AHJ, Pilar, Buenos Aires, Argentina
[4] Univ Austral, Fac Ciencias Biomed, Fac Ingn, B1630FHB, Pilar, Buenos Aires, Argentina
来源
ACS OMEGA | 2022年 / 7卷 / 51期
关键词
IN-SILICO PREDICTION; DRUG DISCOVERY; CLASSIFICATION MODELS; ADMET EVALUATION; WEB SERVER; BLACK-BOX; HERG; DATABASE; TOXICOLOGY; INTERPRETABILITY;
D O I
10.1021/acsomega.2c05693
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Machine learning (ML) models to predict the toxicity of small molecules have garnered great attention and have become widely used in recent years. Computational toxicity prediction is particularly advantageous in the early stages of drug discovery in order to filter out molecules with high probability of failing in clinical trials. This has been helped by the increase in the number of large toxicology databases available. However, being an area of recent application, a greater understanding of the scope and applicability of ML methods is still necessary. There are various kinds of toxic end points that have been predicted in silico. Acute oral toxicity, hepatotoxicity, cardiotoxicity, mutagenicity, and the 12 Tox21 data end points are among the most commonly investigated. Machine learning methods exhibit different performances on different data sets due to dissimilar complexity, class distributions, or chemical space covered, which makes it hard to compare the performance of algorithms over different toxic end points. The general pipeline to predict toxicity using ML has already been analyzed in various reviews. In this contribution, we focus on the recent progress in the area and the outstanding challenges, making a detailed description of the state-of-the-art models implemented for each toxic end point. The type of molecular representation, the algorithm, and the evaluation metric used in each research work are explained and analyzed. A detailed description of end points that are usually predicted, their clinical relevance, the available databases, and the challenges they bring to the field are also highlighted.
引用
收藏
页码:47536 / 47546
页数:11
相关论文
共 50 条
  • [31] Advances in individual prediction of methotrexate toxicity: a review
    Schmiegelow, Kjeld
    BRITISH JOURNAL OF HAEMATOLOGY, 2009, 146 (05) : 489 - 503
  • [32] Predicting toxicity by quantum machine learning
    Suzuki, Teppei
    Katouda, Michio
    JOURNAL OF PHYSICS COMMUNICATIONS, 2020, 4 (12):
  • [33] Machine Learning to Predict Toxicity of Compounds
    Grenet, Ingrid
    Yin, Yonghua
    Comet, Jean-Paul
    Gelenbe, Erol
    ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING - ICANN 2018, PT I, 2018, 11139 : 335 - 345
  • [34] In silico prediction of chemical aquatic toxicity for marine crustaceans via machine learning
    Liu, Lin
    Yang, Hongbin
    Cai, Yingchun
    Cao, Qianqian
    Sun, Lixia
    Wang, Zhuang
    Li, Weihua
    Liu, Guixia
    Lee, Philip W.
    Tang, Yun
    TOXICOLOGY RESEARCH, 2019, 8 (03) : 341 - 352
  • [35] In Silico Prediction of Oral Acute Rodent Toxicity Using Consensus Machine Learning
    Schieferdecker, Sebastian
    Rottach, Florian
    Vock, Esther
    JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2024, 64 (08) : 3114 - 3122
  • [36] An integrative machine learning approach for prediction of toxicity-related drug safety
    Lysenko, Artem
    Sharma, Alok
    Boroevich, Keith A.
    Tsunoda, Tatsuhiko
    LIFE SCIENCE ALLIANCE, 2018, 1 (06)
  • [37] Prediction of bioavailability and toxicity of complex chemical mixtures through machine learning models
    Cipullo, S.
    Snapir, B.
    Prpich, G.
    Campo, P.
    Coulon, F.
    CHEMOSPHERE, 2019, 215 : 388 - 395
  • [38] Machine Learning Algorithms for Late Toxicity Prediction after Prostate Permanent Brachytherapy
    Shiraishi, Y.
    Tanaka, T.
    Toya, K.
    Yorozu, A.
    Shigematsu, N.
    INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2020, 108 (03): : E888 - E889
  • [39] Immunotherapy toxicity prediction in patients with melanoma using machine learning algorithms.
    Sharma, Lakshya
    Mohan, Esha
    Balaji, Vaishnavi
    Wong, Jonathan
    Joshi, Adwait
    Mporas, Iosif
    Shi, Jiaqi
    Zhao, Yi
    Stoll-D'Astice, Amy C.
    Tailor, Vipula
    Powell, Georgie
    Alrifai, Doraid
    Shah, Riyaz N. H.
    Waters, Justin S.
    Adeleke, Sola Michael
    JOURNAL OF CLINICAL ONCOLOGY, 2024, 42 (16)
  • [40] Prediction of heavy metal toxicity and ecological risk based on machine learning methods
    Li, Guo-Feng
    Yu, Jin-Qiu
    Wang, Hong
    Chi, Hai-Feng
    Lin, Shan-Na
    Cai, Chao
    Zhongguo Huanjing Kexue/China Environmental Science, 2024, 44 (12): : 7001 - 7010