Deep Learning Model for the Automatic Classification of White Blood Cells

Author:

Sharma Sarang1ORCID,Gupta Sheifali1ORCID,Gupta Deepali1ORCID,Juneja Sapna2ORCID,Gupta Punit3ORCID,Dhiman Gaurav4ORCID,Kautish Sandeep5ORCID

Affiliation:

1. Chitkara University Institute of Engineering and Technology, Chitkara University, Chandigarh, Punjab, India

2. KIET Group of Institutions, Delhi NCR, Ghaziabad, India

3. Department of Computer and Communication Engineering, Manipal University, Jaipur, India

4. Government Bikram College of Commerce, Patiala, Punjab, India

5. LBEF Campus, Kathmandu, Nepal

Abstract

Blood cell count is highly useful in identifying the occurrence of a particular disease or ailment. To successfully measure the blood cell count, sophisticated equipment that makes use of invasive methods to acquire the blood cell slides or images is utilized. These blood cell images are subjected to various data analyzing techniques that count and classify the different types of blood cells. Nowadays, deep learning-based methods are in practice to analyze the data. These methods are less time-consuming and require less sophisticated equipment. This paper implements a deep learning (D.L) model that uses the DenseNet121 model to classify the different types of white blood cells (WBC). The DenseNet121 model is optimized with the preprocessing techniques of normalization and data augmentation. This model yielded an accuracy of 98.84%, a precision of 99.33%, a sensitivity of 98.85%, and a specificity of 99.61%. The proposed model is simulated with four batch sizes (BS) along with the Adam optimizer and 10 epochs. It is concluded from the results that the DenseNet121 model has outperformed with batch size 8 as compared to other batch sizes. The dataset has been taken from the Kaggle having 12,444 images with the images of 3120 eosinophils, 3103 lymphocytes, 3098 monocytes, and 3123 neutrophils. With such results, these models could be utilized for developing clinically useful solutions that are able to detect WBC in blood cell images.

Publisher

Hindawi Limited

Subject

General Mathematics,General Medicine,General Neuroscience,General Computer Science

Reference32 articles.

1. A deep learning model (ALNet) for the diagnosis of acute leukaemia lineage using peripheral blood cell images;L. Boldú;Computer Methods and Programs in Biomedicine,2021

2. Leukocyte classification based on transfer learning of VGG16 features by K-nearest neighbor classifier;D. Baby

3. Classification of white blood cells using weighted optimized deformable convolutional neural networks

4. Deep Learning based diagnosis of sickle cell anemia in human RBC;B. Sen

5. Lightweight deep network-enabled real-time low-visibility enhancement for promoting vessel detection in maritime video surveillance

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