Artificial Neural Network-Based Analysis of High-Throughput Screening Data for Improved Prediction of Active Compounds

被引:6
|
作者
Chakrabarti, Swapan [1 ]
Svojanovsky, Stan R. [2 ]
Slavik, Romana [3 ]
Georg, Gunda I. [4 ]
Wilson, George S. [5 ]
Smith, Peter G. [2 ,6 ,7 ]
机构
[1] Univ Kansas, Dept Elect Engn & Comp Sci, Lawrence, KS 66045 USA
[2] Univ Kansas, Med Ctr, Kansas City, KS 66103 USA
[3] Adv Response Management Inc, Kansas City, KS USA
[4] Univ Minnesota, Coll Pharm, Dept Med Chem, Minneapolis, MN 55455 USA
[5] Univ Kansas, Assoc Vice Provost Res & Grad Studies, Lawrence, KS 66045 USA
[6] Univ Kansas, Med Ctr, Dept Mol & Integrat Physiol, Kansas City, KS 66103 USA
[7] Univ Kansas, Med Ctr, RL Smith Intellectual & Dev Disabil Res Ctr, Kansas City, KS 66103 USA
关键词
pattern classification; neural networks; generalization property;
D O I
10.1177/1087057109351312
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Artificial neural networks (ANNs) are trained using high-throughput screening (HTS) data to recover active compounds from a large data set. Improved classification performance was obtained on combining predictions made by multiple ANNs. The HTS data, acquired from a methionine aminopeptidases inhibition study, consisted of a library of 43,347 compounds, and the ratio of active to nonactive compounds, R-A/N, was 0.0321. Back-propagation ANNs were trained and validated using principal components derived from the physicochemical features of the compounds. On selecting the training parameters carefully, an ANN recovers one-third of all active compounds from the validation set with a 3-fold gain in R-A/N value. Further gains in R-A/N values were obtained upon combining the predictions made by a number of ANNs. The generalization property of the back-propagation ANNs was used to train those ANNs with the same training samples, after being initialized with different sets of random weights. As a result, only 10% of all available compounds were needed for training and validation, and the rest of the data set was screened with more than a 10-fold gain of the original R-A/N value. Thus, ANNs trained with limited HTS data might become useful in recovering active compounds from large data sets. (Journal of Biomolecular Screening 2009:1236-1244)
引用
收藏
页码:1236 / 1244
页数:9
相关论文
共 50 条
  • [21] Testing Precision Limits of Neural Network-Based Quality Control Metrics in High-Throughput Digital Microscopy
    Calderon, Christopher P.
    Ripple, Dean C.
    Srinivasan, Charudharshini
    Ma, Youlong
    Carrier, Michael J.
    Randolph, Theodore W.
    O'Connor, Thomas F.
    PHARMACEUTICAL RESEARCH, 2022, 39 (02) : 263 - 279
  • [22] Testing Precision Limits of Neural Network-Based Quality Control Metrics in High-Throughput Digital Microscopy
    Christopher P. Calderon
    Dean C. Ripple
    Charudharshini Srinivasan
    Youlong Ma
    Michael J. Carrier
    Theodore W. Randolph
    Thomas F. O’Connor
    Pharmaceutical Research, 2022, 39 : 263 - 279
  • [23] Artificial Neural Network-Based Framework for Improved Classification of Tensor-Recovered EEG Data
    Akmal, Muhammad
    Zubair, Syed
    IEEE SENSORS JOURNAL, 2022, 22 (01) : 651 - 658
  • [24] Artificial neural network for high-throughput spectral data processing in LIBS imaging: application to archaeological mortar
    Herreyre, N.
    Cormier, A.
    Hermelin, S.
    Oberlin, C.
    Schmitt, A.
    Thirion-Merle, V.
    Borlenghi, A.
    Prigent, D.
    Coquide, C.
    Valois, A.
    Dujardin, C.
    Dugourd, P.
    Duponchel, L.
    Comby-Zerbino, C.
    Motto-Ros, V.
    JOURNAL OF ANALYTICAL ATOMIC SPECTROMETRY, 2023, 38 (03) : 730 - 741
  • [25] Artificial neural network-based prediction of multiple sclerosis using blood-based metabolomics data
    Ata, Nasar
    Zahoor, Insha
    Hoda, Nasrul
    Adnan, Syed Mohammed
    Vijayakumar, Senthilkumar
    Louis, Filious
    Poisson, Laila
    Rattan, Ramandeep
    Kumar, Nitesh
    Cerghet, Mirela
    Giri, Shailendra
    MULTIPLE SCLEROSIS AND RELATED DISORDERS, 2024, 92
  • [26] High-throughput screening of active compounds against human respiratory syncytial virus
    Fu, Yuan-Hui
    Xu, Zhu-Xin
    Jiang, Nan
    Zheng, Yan-Peng
    Rameix-Welti, Marie-Anne
    Jiao, Yue-Ying
    Peng, Xiang-Lei
    Wang, Ye
    Eleouet, Jean-Francois
    Cen, Shan
    He, Jin-Sheng
    VIROLOGY, 2019, 535 : 171 - 178
  • [27] Optimal artificial neural network-based data mining technique for stress prediction in working employees
    Anitha, S.
    Vanitha, M.
    SOFT COMPUTING, 2021, 25 (17) : 11523 - 11534
  • [28] Optimal artificial neural network-based data mining technique for stress prediction in working employees
    S. Anitha
    M. Vanitha
    Soft Computing, 2021, 25 : 11523 - 11534
  • [29] Artificial neural network-based method of screening heart murmurs in children
    DeGroff, CG
    Bhatikar, S
    Hertzberg, J
    Shandas, R
    Valdes-Cruz, L
    Mahajan, RL
    CIRCULATION, 2001, 103 (22) : 2711 - 2716
  • [30] ARTIFICIAL NEURAL NETWORK-BASED PREDICTION OF STROKE MIMICS IN PREHOSPITAL TRIAGE
    Zhang, S.
    Zhang, Z.
    INTERNATIONAL JOURNAL OF STROKE, 2022, 17 (3_SUPPL) : 165 - 166