Abstract

Acute lymphocytic leukemia (ALL) is a deadly cancer that not only affects adults but also accounts for about 25% of childhood cancers. Timely and accurate diagnosis of the cancer is an important premise for effective treatment to improve survival rate. Since the image of leukemic B-lymphoblast cells (cancer cells) under the microscope is very similar in morphology to that of normal B-lymphoid precursors (normal cells), it is difficult to distinguish between cancer cells and normal cells. Therefore, we propose the ViT-CNN ensemble model to classify cancer cells images and normal cells images to assist in the diagnosis of acute lymphoblastic leukemia. The ViT-CNN ensemble model is an ensemble model that combines the vision transformer model and convolutional neural network (CNN) model. The vision transformer model is an image classification model based entirely on the transformer structure, which has completely different feature extraction method from the CNN model. The ViT-CNN ensemble model can extract the features of cells images in two completely different ways to achieve better classification results. In addition, the data set used in this article is an unbalanced data set and has a certain amount of noise, and we propose a difference enhancement-random sampling (DERS) data enhancement method, create a new balanced data set, and use the symmetric cross-entropy loss function to reduce the impact of noise in the data set. The classification accuracy of the ViT-CNN ensemble model on the test set has reached 99.03%, and it is proved through experimental comparison that the effect is better than other models. The proposed method can accurately distinguish between cancer cells and normal cells and can be used as an effective method for computer-aided diagnosis of acute lymphoblastic leukemia.

Highlights

  • Leukemia is cancer with an extremely high fatality rate

  • When there are a large number of B-lymphoblast cells in the bone marrow, it can be diagnosed as acute lymphoblastic leukemia [3]

  • We propose the ViT-convolutional neural network (CNN) ensemble model to assist in the diagnosis of acute lymphoblastic leukemia. e main contributions are as follows: (1) We propose the ViT-CNN ensemble model to distinguish cancer cells and normal cells. is is a model that uses two different methods to extract and combine features from cell images. is is the first time the vision transformer model and the CNN model have been combined to diagnose acute lymphocytic leukemia

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Summary

Introduction

Leukemia is cancer with an extremely high fatality rate. It is a hematological malevolent tumor caused by the malicious cloning of immature white blood cells in the bone marrow. Chronic leukemia normally has a long onset period. Without special treatment, the average survival period for acute leukemia is only three months. Erefore, it is important to diagnose acute lymphoblastic leukemia in the early stage of its onset. When there are a large number of B-lymphoblast cells (cancer cells) in the bone marrow, it can be diagnosed as acute lymphoblastic leukemia [3]. Distinguishing B-lymphoid precursors (normal cells) from cancer cells is the key to the diagnosis of acute lymphoblastic leukemia. Under a microscope, cancer cells are very similar to normal cells that it is hard to classify them

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