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WBC image classification and generative models based on convolutional neural network

  • 주제(키워드) White blood cell , Classification , Medical image , CNN , Deep learning
  • 주제(기타) Radiology, Nuclear Medicine & Medical Imaging
  • 설명문(일반) [Jung, Changhun; Nyang, DaeHun] Ewha Womans Univ, Dept Cyber Secur, 52 Ewhayeodae Gil, Seoul 03760, South Korea; [Abuhamad, Mohammed] Loyola Univ Chicago, Dept Comp Sci, 1032 W Sheridan Rd, Chicago, IL 60660 USA; [Mohaisen, David] Univ Cent Florida, Dept Comp Sci, 4000 Cent Florida Blvd, Orlando, FL 32816 USA; [Han, Kyungja] Catholic Univ Korea, Seoul St Marys Hosp, Dept Lab Med, 222 Banpo Daero, Seoul 06591, South Korea; [Han, Kyungja] Catholic Univ Korea, Seoul St Marys Hosp, Coll Med, 222 Banpo Daero, Seoul 06591, South Korea
  • 관리정보기술 faculty
  • 등재 SCIE, SCOPUS
  • OA유형 Green Published, gold
  • 발행기관 BMC
  • 발행년도 2022
  • 세부유형 Article
  • URI http://www.dcollection.net/handler/ewha/000000190297
  • 본문언어 영어
  • Published As https://doi.org/10.1186/s12880-022-00818-1
  • PubMed https://pubmed.ncbi.nlm.nih.gov/35596153

초록/요약

Background Computer-aided methods for analyzing white blood cells (WBC) are popular due to the complexity of the manual alternatives. Recent works have shown highly accurate segmentation and detection of white blood cells from microscopic blood images. However, the classification of the observed cells is still a challenge, in part due to the distribution of the five types that affect the condition of the immune system. Methods (i) This work proposes W-Net, a CNN-based method for WBC classification. We evaluate W-Net on a real-world large-scale dataset that includes 6562 real images of the five WBC types. (ii) For further benefits, we generate synthetic WBC images using Generative Adversarial Network to be used for education and research purposes through sharing. Results (i) W-Net achieves an average accuracy of 97%. In comparison to state-of-the-art methods in the field of WBC classification, we show that W-Net outperforms other CNN- and RNN-based model architectures. Moreover, we show the benefits of using pre-trained W-Net in a transfer learning context when fine-tuned to specific task or accommodating another dataset. (ii) The synthetic WBC images are confirmed by experiments and a domain expert to have a high degree of similarity to the original images. The pre-trained W-Net and the generated WBC dataset are available for the community to facilitate reproducibility and follow up research work. Conclusion This work proposed W-Net, a CNN-based architecture with a small number of layers, to accurately classify the five WBC types. We evaluated W-Net on a real-world large-scale dataset and addressed several challenges such as the transfer learning property and the class imbalance. W-Net achieved an average classification accuracy of 97%. We synthesized a dataset of new WBC image samples using DCGAN, which we released to the public for education and research purposes.

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