基于深度学习的卷积神经网络白细胞分类模型

Archana Saini, Kalpna Guleria, Shagun Sharma
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摘要

白细胞对免疫系统的最佳功能是不可或缺的。它们通过识别和对抗致病的有害细菌和病原体,在保护身体免受感染、疾病和其他外来入侵者的侵害方面发挥着关键作用。此外,它们有助于消除体内死亡和受损细胞,促进组织愈合和修复过程。白细胞的缺乏会使身体对感染和疾病失去抵抗力,使其暴露在各种有害病原体面前。这可能导致严重的健康问题,严重时甚至可能导致死亡。白细胞分类在医学诊断和治疗中是一项重要的任务,因为医疗保健专业人员通过识别白细胞的结构、特征和功能来诊断和治疗各种免疫系统相关的疾病和病症,包括自身免疫性疾病、感染和癌症。在这项工作中,卷积神经网络(CNN)模型被训练来对白细胞进行分类。该模型的准确率达到了88.78%,在文献综述中被认为是各作者实现的模型中最高的。这意味着所提出的模型在几乎9 / 10的病例中正确地分类了白细胞。模型的错误率仅为0.108967,表明模型的预测是非常可靠和一致的。此外,这项工作显示了使用深度学习技术进行白细胞分类的有希望的结果。此外,随着未来的改进和完善,有可能实现更高水平的准确性和精度,这可能对医疗诊断和治疗产生重大影响。
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A Deep Learning-based Convolutional Neural Networks Model for White Blood Cell Classification
White blood cells, or leukocytes, are indispensable for the optimal functioning of the immune system. They play a critical role in protecting the body against infections, diseases, and other foreign invaders by identifying and fighting harmful bacteria and pathogens that can cause illness. Additionally, they contribute to the elimination of dead and damaged cells from the body and facilitate tissue healing and repair processes. The absence of white blood cells would render the body defenceless against infections and diseases, exposing it to a variety of harmful pathogens. This could result in significant health issues and potentially even lead to death in severe instances. White blood cell classification is an important task in medical diagnosis and treatment because healthcare professionals diagnose and treat a variety of immune system-related diseases and conditions, including autoimmune disorders, infections, and cancers by identifying the structure, characteristics and functions of white blood cells. In this work, a convolutional neural network (CNN) model has been trained to classify white blood cells. The proposed model has achieved an accuracy of 88.78%, which has been identified as the highest among all the models implemented by various authors in the literature review. This implies that the proposed model has correctly classified white blood cells in almost 9 out of 10 cases. Moreover, the error rate of the model is only 0.108967 which indicates that the model is very reliable and consistent in its predictions. Additionally, this work shows the promising result for white blood cell classification using deep learning techniques. Furthermore, with improvements and refinements in the future, it can be possible to achieve higher levels of accuracy and precision, which could have a significant impact on medical diagnosis and treatment.
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