Could deep learning in neural networks improve the QSAR models?

被引:22
|
作者
Gini, G. [1 ]
Zanoli, F. [1 ]
Gamba, A. [2 ]
Raitano, G. [2 ]
Benfenati, E. [2 ]
机构
[1] Politecn Milan, DEIB, Milan, Italy
[2] Ist Ric Farmacol Mario Negri IRCCS, Lab Environm Chem & Toxicol, Milan, Italy
关键词
Classification; feature generation; deep neural networks; Ames test; mutagenicity; SMILES;
D O I
10.1080/1062936X.2019.1650827
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Assessing chemical toxicity is a multidisciplinary process, traditionally involving in vivo, in vitro and in silico tests. Currently, toxicological goal is to reduce new tests on chemicals, exploiting all information yet available. Recent advancements in machine learning and deep neural networks allow computers to automatically mine patterns and learn from data. This technology, applied to (Q)SAR model development, leads to discover by learning the structural-chemical-biological relationships and the emergent properties. Starting from Toxception, a deep neural network predicting activity from the chemical graph image, we designed SmilesNet, a recurrent neural network taking SMILES as the only input. We then integrated the two networks into C-Tox network to make the final classification. Results of our networks, trained on a similar to 20K molecule dataset with Ames test experimental values, match or even outperform the current state of the art. We also extract knowledge from the networks and compare it with the available mutagenic structural alerts. The advantage over traditional QSAR modelling is that our models automatically extract the features without using descriptors. Nevertheless, the model is successful if large numbers of examples are provided and computation is more complex than in classical methods.
引用
收藏
页码:617 / 642
页数:26
相关论文
共 50 条
  • [21] Dementia in Convolutional Neural Networks: Using Deep Learning Models to Simulate Neurodegeneration of the Visual System
    Moore, Jasmine A.
    Tuladhar, Anup
    Ismail, Zahinoor
    Mouches, Pauline
    Wilms, Matthias
    Forkert, Nils D.
    NEUROINFORMATICS, 2023, 21 (01) : 45 - 55
  • [22] Dementia in Convolutional Neural Networks: Using Deep Learning Models to Simulate Neurodegeneration of the Visual System
    Jasmine A. Moore
    Anup Tuladhar
    Zahinoor Ismail
    Pauline Mouches
    Matthias Wilms
    Nils D. Forkert
    Neuroinformatics, 2023, 21 : 45 - 55
  • [23] Performance of Deep and Shallow Neural Networks, the Universal Approximation Theorem, Activity Cliffs, and QSAR
    Winkler, David A.
    Le, Tu C.
    MOLECULAR INFORMATICS, 2017, 36 (1-2)
  • [24] Speech Emotion Recognition based on Gaussian Mixture Models and Deep Neural Networks
    Tashev, Ivan J.
    Wang, Zhong-Qiu
    Godin, Keith
    2017 INFORMATION THEORY AND APPLICATIONS WORKSHOP (ITA), 2017,
  • [25] Tweaking Deep Neural Networks
    Kim, Jinwook
    Yoon, Heeyong
    Kim, Min-Soo
    IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2022, 44 (09) : 5715 - 5728
  • [26] Applications of neural networks and deep learning to biomedical engineering
    Luis Sarmiento-Ramos, Jose
    UIS INGENIERIAS, 2020, 19 (04): : 1 - 18
  • [27] Learning Graph Dynamics using Deep Neural Networks
    Narayan, Apurva
    Roe, Peter H. O'N
    IFAC PAPERSONLINE, 2018, 51 (02): : 433 - 438
  • [28] Deep Neural Networks: Selected Aspects of Learning and Application
    V. A. Golovko
    A. A. Kroshchanka
    E. V. Mikhno
    Pattern Recognition and Image Analysis, 2021, 31 : 132 - 143
  • [29] IMPROVING THE INTERPRETABILITY OF DEEP NEURAL NETWORKS WITH STIMULATED LEARNING
    Tan, Shawn
    Sim, Khe Chai
    Gales, Mark
    2015 IEEE WORKSHOP ON AUTOMATIC SPEECH RECOGNITION AND UNDERSTANDING (ASRU), 2015, : 617 - 623
  • [30] Anomalous diffusion dynamics of learning in deep neural networks
    Chen, Guozhang
    Qu, Cheng Kevin
    Gong, Pulin
    NEURAL NETWORKS, 2022, 149 : 18 - 28