Deep Learning for Classifying of White Blood Cancer

Asad Ullah, Tufail Muhammad
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引用次数: 4

Abstract

Automated classification of cells is an essential but challenging task for computer vision with significant biomedical advantages. Numerous studies have attempted to construct a cell classifier based on artificial intelligence using label-free cellular images obtained from an optical microscope in recent years. While these studies showed promising results, different cell types' biological complexity could not be represented by such classifiers. However, it is well-known that intracellular actin filaments are significantly modified in terms of the malignant cell. This is believed to be closely linked to tumor cells' distinctive growth characteristics, their tendency to invade tissues around them, and metastasize. It is also more beneficial to identify various cell types based on their biological activities using an automated technique. This paper shows the differentiation between normal White Blood Cells and cancer, which can provide new knowledge on malignant changes and be used as an additional diagnostic marker. Since human eyes can not observe the features, we proposed the application of a convolutional neural network (CNN) based on malignant and normal WBCs classification. The Inception- V3Cnn model was validated on various WBCs normal and malignant cell images on regular normal and blood cancer cell lines with differing aggression levels. The study showed that CNN performed better in accuracy and efficiency than a human expert in the cell classification system
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基于深度学习的白血癌分类
对于具有显著生物医学优势的计算机视觉来说,细胞的自动分类是一项必要但具有挑战性的任务。近年来,许多研究试图利用光学显微镜获得的无标记细胞图像构建基于人工智能的细胞分类器。虽然这些研究显示了有希望的结果,但不同细胞类型的生物复杂性不能用这些分类器来代表。然而,众所周知,细胞内肌动蛋白丝在恶性细胞中发生了显著的修饰。这被认为与肿瘤细胞独特的生长特征密切相关,它们倾向于侵入周围组织并转移。利用自动化技术根据细胞的生物活性来识别不同类型的细胞也更有益。本文显示了正常白细胞与癌细胞的区分,可以为恶性变化提供新的认识,并可作为额外的诊断标志。由于人眼无法观察到这些特征,我们提出了基于卷积神经网络(CNN)的恶性和正常白细胞分类的应用。Inception- V3Cnn模型在不同攻击水平的常规正常和血癌细胞系的各种白细胞正常和恶性细胞图像上进行验证。研究表明,在细胞分类系统中,CNN在准确性和效率上都比人类专家表现得更好
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