The application of convolutional neural network to stem cell biology.

Inflammation and regeneration Pub Date : 2019-07-05 eCollection Date: 2019-01-01 DOI:10.1186/s41232-019-0103-3
Dai Kusumoto, Shinsuke Yuasa
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Abstract

Induced pluripotent stem cells (iPSC) are one the most prominent innovations of medical research in the last few decades. iPSCs can be easily generated from human somatic cells and have several potential uses in regenerative medicine, disease modeling, drug screening, and precision medicine. However, further innovation is still required to realize their full potential. Machine learning is an algorithm that learns from large datasets for pattern formation and classification. Deep learning, a form of machine learning, uses a multilayered neural network that mimics human neural circuit structure. Deep neural networks can automatically extract features from an image, although classical machine learning methods still require feature extraction by a human expert. Deep learning technology has developed recently; in particular, the accuracy of an image classification task by using a convolutional neural network (CNN) has exceeded that of humans since 2015. CNN is now used to address several tasks including medical issues. We believe that CNN would also have a great impact on the research of stem cell biology. iPSCs are utilized after their differentiation to specific cells, which are characterized by molecular techniques such as immunostaining or lineage tracing. Each cell shows a characteristic morphology; thus, a morphology-based identification system of cell type by CNN would be an alternative technique. The development of CNN enables the automation of identifying cell types from phase contrast microscope images without molecular labeling, which will be applied to several researches and medical science. Image classification is a strong field among deep learning tasks, and several medical tasks will be solved by deep learning-based programs in the future.

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卷积神经网络在干细胞生物学中的应用。
诱导多能干细胞(iPSC)是近几十年来医学研究中最突出的创新之一。iPSC可以很容易地从人类体细胞中产生,并在再生医学、疾病建模、药物筛选和精准医学中具有多种潜在用途。然而,要充分发挥其潜力,仍然需要进一步的创新。机器学习是一种从大型数据集中学习用于模式形成和分类的算法。深度学习是机器学习的一种形式,它使用模仿人类神经电路结构的多层神经网络。深度神经网络可以自动从图像中提取特征,尽管经典的机器学习方法仍然需要由人类专家进行特征提取。深度学习技术最近得到了发展;特别是,自2015年以来,使用卷积神经网络(CNN)的图像分类任务的准确性已经超过了人类。CNN现在被用来处理包括医疗问题在内的多项任务。我们相信CNN也将对干细胞生物学的研究产生巨大影响。iPSC在分化为特定细胞后被利用,其特征在于分子技术,如免疫染色或谱系追踪。每个细胞都显示出一种特征形态;因此,通过CNN的基于形态学的细胞类型识别系统将是一种替代技术。CNN的发展使从相差显微镜图像中自动识别细胞类型成为可能,而无需分子标记,这将应用于多项研究和医学科学。图像分类是深度学习任务中的一个强大领域,未来基于深度学习的程序将解决一些医学任务。
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CiteScore
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