Comparing convolutional neural networks and preprocessing techniques for HEp-2 cell classification in immunofluorescence images

被引:29
作者
Rodrigues, Larissa Ferreira [1 ,2 ]
Naldi, Murilo Coelho [1 ,3 ]
Mari, Joao Fernando [2 ]
机构
[1] Univ Fed Vicosa, Dept Informat, Vicosa, MG, Brazil
[2] UFV, Inst Ciencias Exatas & Tecnol, Rio Paranaiba, MG, Brazil
[3] Univ Fed Sao Carlos UFSCar, Dept Comp, Sao Carlos, SP, Brazil
关键词
Convolutional neural networks; HEp-2; cells; Staining pattern classification; Preprocessing; Data augmentation; Hyperparameters; Fine-tuning; PATTERN-RECOGNITION; AUTOIMMUNE; BAG;
D O I
10.1016/j.compbiomed.2019.103542
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Autoimmune diseases are the third highest cause of mortality in the world, and the identification of an antinuclear antibody via an immunofluorescence test for HEp-2 cells is a standard procedure to support diagnosis. In this work, we assess the performance of six preprocessing strategies and five state-of-the-art convolutional neural network architectures for the classification of HEp-2 cells. We also evaluate enhancement methods such as hyperparameter optimization, data augmentation, and fine-tuning training strategies. All experiments were validated using a five-fold cross-validation procedure over the training and test sets. In terms of accuracy, the best result was achieved by training the Inception-V3 model from scratch, without preprocessing and using data augmentation (98.28%). The results suggest the conclusions that most CNNs perform better on non-preprocessed images when trained from scratch on the analyzed dataset, and that data augmentation can improve the results from all models. Although fine-tuning training did not improve the accuracy compared to training the CNNs from scratch, it successfully reduced the training time.
引用
收藏
页数:14
相关论文
共 72 条
  • [31] The Antinuclear Antibody Test: Last or Lasting Gasp?
    Fritzler, Marvin J.
    [J]. ARTHRITIS AND RHEUMATISM, 2011, 63 (01): : 19 - 22
  • [32] HEp-2 Cell Image Classification With Deep Convolutional Neural Networks
    Gao, Zhimin
    Wang, Lei
    Zhou, Luping
    Zhang, Jianjia
    [J]. IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2017, 21 (02) : 416 - 428
  • [33] Goodfellow I., 2016, Deep Learning
  • [34] Cell image classification by a scale and rotation invariant dense local descriptor
    Gragnaniello, Diego
    Sansone, Carlo
    Verdoliva, Luisa
    [J]. PATTERN RECOGNITION LETTERS, 2016, 82 : 72 - 78
  • [35] Recent advances in convolutional neural networks
    Gu, Jiuxiang
    Wang, Zhenhua
    Kuen, Jason
    Ma, Lianyang
    Shahroudy, Amir
    Shuai, Bing
    Liu, Ting
    Wang, Xingxing
    Wang, Gang
    Cai, Jianfei
    Chen, Tsuhan
    [J]. PATTERN RECOGNITION, 2018, 77 : 354 - 377
  • [36] Deep learning for visual understanding: A review
    Guo, Yanming
    Liu, Yu
    Oerlemans, Ard
    Lao, Songyang
    Wu, Song
    Lew, Michael S.
    [J]. NEUROCOMPUTING, 2016, 187 : 27 - 48
  • [37] Detecting mitotic cells in HEp-2 images as anomalies via one class classifier
    Gupta, Krati
    Bhaysar, Arnav
    Sao, Anil K.
    [J]. COMPUTERS IN BIOLOGY AND MEDICINE, 2019, 111
  • [38] Hutter Frank, 2011, Learning and Intelligent Optimization. 5th International Conference, LION 5. Selected Papers, P507, DOI 10.1007/978-3-642-25566-3_40
  • [39] A taxonomy of global optimization methods based on response surfaces
    Jones, DR
    [J]. JOURNAL OF GLOBAL OPTIMIZATION, 2001, 21 (04) : 345 - 383
  • [40] HEp-2 cell classification with Vector of Hierarchically Aggregated Residuals
    Kastaniotis, Dimitris
    Fotopoulou, Foteini
    Theodorakopoulos, Ilias
    Economou, George
    Fotopoulos, Spiros
    [J]. PATTERN RECOGNITION, 2017, 65 : 47 - 57