White blood cells identification system based on convolutional deep neural learning networks

被引:125
|
作者
Shahin, A. I. [1 ,2 ]
Guo, Yanhui [4 ]
Amin, K. M. [3 ]
Sharawi, Amr A. [1 ]
机构
[1] Cairo Univ, Dept Biomed Engn, Cairo, Egypt
[2] HTI, Dept Biomed Engn, Ramadan, Egypt
[3] Menoufia Univ, Dept Informat Technol, Menoufia, Egypt
[4] Univ Illinois, Dept Comp Sci, Springfield, IL 61820 USA
关键词
Blood smear image; Deep learning; Transfer deep learning; WBCs identification; Deep features visualization; CLASSIFICATION;
D O I
10.1016/j.cmpb.2017.11.015
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Background and objectives: White blood cells (WBCs) differential counting yields valued information about human health and disease. The current developed automated cell morphology equipments perform differential count which is based on blood smear image analysis. Previous identification systems for WBCs consist of successive dependent stages; pre-processing, segmentation, feature extraction, feature selection, and classification. There is a real need to employ deep learning methodologies so that the performance of previous WBCs identification systems can be increased. Classifying small limited datasets through deep learning systems is a major challenge and should be investigated. Methods: In this paper, we propose a novel identification system for WBCs based on deep convolutional neural networks. Two methodologies based on transfer learning are followed: transfer learning based on deep activation features and fine-tuning of existed deep networks. Deep acrivation featues are extracted from several pre-trained networks and employed in a traditional identification system. Moreover, a novel end-to-end convolutional deep architecture called "WBCsNet" is proposed and built from scratch. Finally, a limited balanced WBCs dataset classification is performed through the WBCsNet as a pre-trained network. Results: During our experiments, three different public WBCs datasets (2551 images) have been used which contain 5 healthy WBCs types. The overall system accuracy achieved by the proposed WBCsNet is (96.1%) which is more than different transfer learning approaches or even the previous traditional identification system. We also present features visualization for the WBCsNet activation which reflects higher response than the pre-trained activated one. Conclusion: a novel WBCs identification system based on deep learning theory is proposed and a high performance WBCsNet can be employed as a pre-trained network. (C) 2017 Elsevier B.V. All rights reserved.
引用
收藏
页码:69 / 80
页数:12
相关论文
共 50 条
  • [41] Deep learning for steganalysis via convolutional neural networks
    Qian, Yinlong
    Dong, Jing
    Wang, Wei
    Tan, Tieniu
    [J]. MEDIA WATERMARKING, SECURITY, AND FORENSICS 2015, 2015, 9409
  • [42] Convolutional deep-learning artificial neural networks
    Lutsiv, V. P.
    [J]. JOURNAL OF OPTICAL TECHNOLOGY, 2015, 82 (08) : 499 - 508
  • [43] A Transfer Learning-Based System of Pothole Detection in Roads through Deep Convolutional Neural Networks
    Manalo, Jhon Michael C.
    Alon, Alvin Sarraga
    Austria, Yolanda D.
    Merencilla, Nino E.
    Misola, Maribel A.
    Sandil, Ricky C.
    [J]. 2022 INTERNATIONAL CONFERENCE ON DECISION AID SCIENCES AND APPLICATIONS (DASA), 2022, : 1469 - 1473
  • [44] A primer on deep learning and convolutional neural networks for clinicians
    Iglesias, Lara Lloret
    Bellon, Pablo Sanz
    del Barrio, Amaia Perez
    Fernandez-Miranda, Pablo Menendez
    Gonzalez, David Rodriguez
    Vega, Jose A.
    Mandly, Andres A. Gonzalez
    Blanco, Jose A. Parra
    [J]. INSIGHTS INTO IMAGING, 2021, 12 (01)
  • [45] Hebbian Learning Meets Deep Convolutional Neural Networks
    Amato, Giuseppe
    Carrara, Fabio
    Falchi, Fabrizio
    Gennaro, Claudio
    Lagani, Gabriele
    [J]. IMAGE ANALYSIS AND PROCESSING - ICIAP 2019, PT I, 2019, 11751 : 324 - 334
  • [46] A primer on deep learning and convolutional neural networks for clinicians
    Lara Lloret Iglesias
    Pablo Sanz Bellón
    Amaia Pérez del Barrio
    Pablo Menéndez Fernández-Miranda
    David Rodríguez González
    José A. Vega
    Andrés A. González Mandly
    José A. Parra Blanco
    [J]. Insights into Imaging, 12
  • [47] Deep learning electromagnetic inversion with convolutional neural networks
    Puzyrev, Vladimir
    [J]. GEOPHYSICAL JOURNAL INTERNATIONAL, 2019, 218 (02) : 817 - 832
  • [48] Evaluation of deep learning approaches based on convolutional neural networks for corrosion detection
    Atha, Deegan J.
    Jahanshahi, Mohammad R.
    [J]. STRUCTURAL HEALTH MONITORING-AN INTERNATIONAL JOURNAL, 2018, 17 (05): : 1110 - 1128
  • [49] IMAGE RETRIEVAL BASED ON DEEP CONVOLUTIONAL NEURAL NETWORKS AND BINARY HASHING LEARNING
    Peng Tian-qiang
    Li Fang
    [J]. 2017 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2017, : 1742 - 1746
  • [50] Plant identification with convolutional neural networks and transfer learning
    Karahan, Tolgahan
    Nabiyev, Vasif
    [J]. PAMUKKALE UNIVERSITY JOURNAL OF ENGINEERING SCIENCES-PAMUKKALE UNIVERSITESI MUHENDISLIK BILIMLERI DERGISI, 2021, 27 (05): : 638 - 645