Deep learning algorithms applied to computational chemistry

被引:1
|
作者
Guzman-Pando, Abimael [1 ]
Ramirez-Alonso, Graciela [2 ]
Arzate-Quintana, Carlos [1 ]
Camarillo-Cisneros, Javier [1 ]
机构
[1] Univ Autonoma Chihuahua, Fac Med & Ciencias Biomed, Computat Chem Phys Lab, Campus 2, Chihuahua 31125, Mexico
[2] Univ Autonoma Chihuahua, Fac Engn, Campus 2, Chihuahua 31125, Mexico
关键词
Molecular Design; Artificial Intelligent; Deep learning; Graph representation; SMALL MOLECULES; DATABASE; ACCURATE; DESCRIPTORS; DISCOVERY; NETWORKS; LANGUAGE; SMILES; MODEL;
D O I
10.1007/s11030-023-10771-y
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
Recently, there has been a significant increase in the use of deep learning techniques in the molecular sciences, which have shown high performance on datasets and the ability to generalize across data. However, no model has achieved perfect performance in solving all problems, and the pros and cons of each approach remain unclear to those new to the field. Therefore, this paper aims to review deep learning algorithms that have been applied to solve molecular challenges in computational chemistry. We proposed a comprehensive categorization that encompasses two primary approaches; conventional deep learning and geometric deep learning models. This classification takes into account the distinct techniques employed by the algorithms within each approach. We present an up-to-date analysis of these algorithms, emphasizing their key features and open issues. This includes details of input descriptors, datasets used, open-source code availability, task solutions, and actual research applications, focusing on general applications rather than specific ones such as drug discovery. Furthermore, our report discusses trends and future directions in molecular algorithm design, including the input descriptors used for each deep learning model, GPU usage, training and forward processing time, model parameters, the most commonly used datasets, libraries, and optimization schemes. This information aids in identifying the most suitable algorithms for a given task. It also serves as a reference for the datasets and input data frequently used for each algorithm technique. In addition, it provides insights into the benefits and open issues of each technique, and supports the development of novel computational chemistry systems.
引用
下载
收藏
页码:2375 / 2410
页数:36
相关论文
共 50 条
  • [41] Fluorescence imaging and Raman spectroscopy applied for the accurate diagnosis of breast cancer with deep learning algorithms
    Shang, Lin-Wei
    Ma, Dan-Ying
    Fu, Juan-Juan
    Lu, Yan-Fei
    Zhao, Yuan
    Xu, Xin-Yu
    Yin, Jian-Hua
    BIOMEDICAL OPTICS EXPRESS, 2020, 11 (07) : 3673 - 3683
  • [42] Machine learning and deep learning applied in ultrasound
    Pehrson, Lea Marie
    Lauridsen, Carsten
    Nielsen, Michael Bachmann
    ULTRASCHALL IN DER MEDIZIN, 2018, 39 (04): : 379 - 381
  • [43] Deep learning techniques applied to super-resolution chemistry transport modeling for operational uses
    Bessagnet, B.
    Beauchamp, M.
    Menut, L.
    Fablet, R.
    Pisoni, E.
    Thunis, P.
    ENVIRONMENTAL RESEARCH COMMUNICATIONS, 2021, 3 (08):
  • [44] Impact Analysis of Stacked Machine Learning Algorithms Based Feature Selections for Deep Learning Algorithm Applied to Regression Analysis
    Kulkarni, Shrirang Ambaji
    Gurupur, Varadraj P.
    King, Christian
    SOUTHEASTCON 2022, 2022, : 269 - 275
  • [45] Interdisciplinary learning with computational chemistry: A collaboration between chemistry and geology
    Lipkowitz, KB
    Jalaie, M
    Robertson, D
    Barth, A
    JOURNAL OF CHEMICAL EDUCATION, 1999, 76 (05) : 684 - 688
  • [46] Computational chemistry and active learning in introductory organic chemistry.
    Barrows, SE
    Eberlein, TH
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2000, 220 : U181 - U181
  • [47] A Computational Evaluation of Distributed Machine Learning Algorithms
    Magdum, Junaid
    Ghorse, Ritesh
    Chaku, Chetan
    Barhate, Rahul
    Deshmukh, Shyam
    2019 IEEE 5TH INTERNATIONAL CONFERENCE FOR CONVERGENCE IN TECHNOLOGY (I2CT), 2019,
  • [48] A Comparison Among Fast Visibility Algorithms Applied to Computational Electromagnetics
    Meana, J. G.
    Las-Heras, F.
    Martinez-Lorenzo, J. A.
    APPLIED COMPUTATIONAL ELECTROMAGNETICS SOCIETY JOURNAL, 2009, 24 (03): : 268 - 280
  • [50] Fairness in Deep Learning: A Computational Perspective
    Du, Mengnan
    Yang, Fan
    Zou, Na
    Hu, Xia
    IEEE INTELLIGENT SYSTEMS, 2021, 36 (04) : 25 - 34