Deep Learning for an Automated Image-Based Stem Cell Classification

IF 0.6 Q3 ENGINEERING, MULTIDISCIPLINARY
Nurul Syahira Mohamad Zamani, Ernest Yoon Choong Hoe, A. B. Huddin, W. M. D. Wan Zaki, Zariyantey Abd Hamid
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引用次数: 0

Abstract

Hematopoiesis is a process in which hematopoietic stem cells produce other mature blood cells in the bone marrow through cell proliferation and differentiation. The hematopoietic cells are cultured on a petri dish to form a different colony-forming unit (CFU). The idea is to identify the type of CFU produced by the stem cell. Several software has been developed to classify the CFU automatically. However, an automated identification or classification of CFU types has become the main challenge. Most of the current software has common drawbacks, such as the expensive operating cost and complex machines. The purpose of this study is to investigate several selected convolutional neural network (CNN) pre-trained models to overcome these constraints for automated CFU classification. Prior to CFU classification, the images are acquired from mouse stem cells and categorized into three types which are CFU-erythroid (E), CFU-granulocyte/macrophage (GM) and CFU-PreB. These images are then pre-processed before being fed into CNN pre-trained models. The models adopt a deep learning neural network approach to extract informative features from the CFU images Classification performance shows that the models integrated with the pre-processing module can classify the CFUs with high accuracies and shorter computational time with 96.33% on 61 minutes and 37 seconds, respectively. Hence, this work finding could be used as the baseline reference for further research.
基于图像的干细胞自动分类深度学习
造血是造血干细胞在骨髓中通过细胞增殖和分化产生其他成熟血细胞的过程。造血细胞在培养皿中培养,形成不同的集落形成单位(CFU)。其目的是识别干细胞产生的集落形成单位类型。目前已开发出几种软件来自动对CFU进行分类。然而,自动识别或分类 CFU 类型已成为主要挑战。目前大多数软件都有共同的缺点,如运行成本昂贵、机器复杂等。本研究的目的是研究几种选定的卷积神经网络(CNN)预训练模型,以克服这些制约因素,实现 CFU 自动分类。在进行CFU分类之前,先获取小鼠干细胞图像,并将其分为三种类型,即CFU-红细胞(E)、CFU-粒细胞/巨噬细胞(GM)和CFU-PreB。然后对这些图像进行预处理,再输入 CNN 预训练模型。分类结果表明,与预处理模块集成的模型可以对 CFU 进行分类,准确率高,计算时间短,分别为 61 分钟和 37 秒,准确率为 96.33%。因此,这项研究成果可作为进一步研究的基准参考。
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来源期刊
Jurnal Kejuruteraan
Jurnal Kejuruteraan ENGINEERING, MULTIDISCIPLINARY-
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16.70%
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审稿时长
24 weeks
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