Deep learning approach for segmentation and classification of blood cells using enhanced CNN

被引:0
作者
Hemalatha B. [1 ]
Karthik B. [1 ]
Krishna Reddy C.V. [2 ]
Latha A. [3 ]
机构
[1] Department of ECE, Bharath Institute of Higher Education and Research, Chennai
[2] Nalla Narasimha Reddy Education Society's Group of Institutions, Hyderabad
[3] Department of ECE, Takshashila University, Ongur
来源
Measurement: Sensors | 2022年 / 24卷
关键词
Blood cells; Classification; Convolutional neural network; Deep learning; Segmentation;
D O I
10.1016/j.measen.2022.100582
中图分类号
学科分类号
摘要
The main aim of our proposed work is to segment and classify blood cells using K means algorithm, and also with the help of image processing techniques. A complete blood cell count is very important in the medical analysis for evaluating the total health condition of the body. In the olden days, the blood cells are counted manually with the help of a hem cytometer with other lab equipment and certain chemicals. This technique both time-consuming and challenging. Deep Learning (DL) is an artificial intelligence subset of machine learning that can examine unsupervised information. RBC, or red blood cells, are red cells that are numerous in the blood and are noted for their dark red colour. White blood cells, commonly known as leukocytes, protect the body from infection. Processing tools like MATLAB is used to find the variations in area, perimeter and statistical parameters like mean and standard deviation that separates white blood cells from other blood components. Because of its high accuracy, Enhanced CNN can be used in this study for the categorization and recognition of normal and abnormal blood cell images. Average accuracy of 95% and average precision 0f 0.93 which is higher than existing CNN. © 2022 The Authors
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  • [1] Delgado-Ortet M., Molina A., Santiago A., Rodellar J., Merino A., A deep learning approach for segmentation of red blood cell images and malaria detection, MDPI Entropy, 22, 65, pp. 1-16, (2022)
  • [2] Tiwari P., Jia Q., Li Q., Wang B., Gupta D., Khanna A., Joel J., Rodrigues P.C., Hugo V., Detection of Subtype Blood Cells Using Deep Learning”, 52, pp. 1036-1044, (2018)
  • [3] Leena Nesamani S., Nirmala Sugirtha Rajini S., Josphine M.S., Jacinth Salome J., Deep Learning-Based Mammogram Classification for Breast Cancer Diagnosis Using Multi-Level Support Vector Machine”, 700, pp. 371-383, (2021)
  • [4] Sahlol A.T., Kollmannsberger P., Ewees A.A., Efficient classification of white blood cell leukemia with improved Swarm optimization of deep features, Nature Scientific Reports, 10, 2536, (2020)
  • [5] Acharya V., Kumar P., Identification and red blood cell automated counting from blood smear images using computer-aided system, Pub Med ", Med Biol Eng Comput., 56, 3, pp. 483-489, (2018)
  • [6] Imran Razzak M., Naz S., Microscopic blood smear segmentation and classification using deep contour aware CNN and extreme machine learning, IEEE Conference on Computer Vision and Pattern Recognition Workshops (CVPRW), pp. 801-807, (2017)
  • [7] Alzubaidi L., Fadhel M.A., Al-Shamma O., Zhang J., Duan Y., Deep learning models for classification of red blood cells in microscopy images to Aid in sickle cell anemia diagnosis, Electronics, 9, 3, (2020)
  • [8] Su M.-C., Cheng C.-Y., Wang P.-C., A Neural-Network-Based Approach to White Blood Cell Classification, 2014, pp. 1-9, (2014)
  • [9] Almezhghwi K., Serte S., Improved classification of white blood cells with the generative Adversarial network and deep convolutional neural network, Hindawi.Comput. Intell. Neurosci., 2022, (2022)
  • [10] Reena M., RoyAmeerP M., Localization and recognition of leukocytes in peripheral blood: a deep learning approach, Comput. Biol. Med., 126, (2020)