Viability classification of unstained cells in microscopic images using deep learning

Q3 Immunology and Microbiology
Tomoaki Kyoden, Shunsuke Akiguchi, Ryo Murakami, Tsugunobu Andoh, Noboru Yamada
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引用次数: 0

Abstract

In research on cells conducted in vitro, cell viability is determined using staining techniques. However, interference with subsequent observation of live cell growth limits their applicability for real-time or continuous investigation. To address this limitation, we developed a deep learning–based algorithm capable of classifying live and dead cancer cells from microscopic images without staining. In this study, microscopic images were first captured prior to staining, and then the same regions were imaged again after staining to obtain live, dead, and other cell labels using a conventional staining method. The stained images served as ground truth data for supervised training with the corresponding pre-staining images. The proposed model achieved an accuracy of 0.931 after 99 training epochs in distinguishing live and dead cells from unstained images. This framework accurately differentiated live and dead cells directly from pre-staining images, demonstrating performance comparable to conventional stained-image analysis. Moreover, the approach enabled estimation of spatial boundaries between live and dead cell populations. These results demonstrate the potential of this approach as a non-invasive technique for assessing cell viability in in vitro studies.

利用深度学习对显微镜图像中未染色细胞进行活力分类。
在体外进行的细胞研究中,使用染色技术确定细胞活力。然而,对活细胞生长的后续观察的干扰限制了它们对实时或连续研究的适用性。为了解决这一限制,我们开发了一种基于深度学习的算法,能够从显微镜图像中对活的和死的癌细胞进行分类,而不需要染色。在本研究中,首先在染色前捕获显微镜图像,然后在染色后再次成像相同区域,使用常规染色方法获得活细胞,死细胞和其他细胞标记。染色后的图像与相应的预染色图像一起作为监督训练的真实数据。经过99次训练,该模型在未染色图像中区分活细胞和死细胞的准确率达到了0.931。该框架可直接从预染色图像中准确区分活细胞和死细胞,其性能可与传统的染色图像分析相媲美。此外,该方法能够估计活细胞和死细胞群体之间的空间边界。这些结果证明了这种方法在体外研究中作为一种评估细胞活力的非侵入性技术的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Applied Microscopy
Applied Microscopy Immunology and Microbiology-Applied Microbiology and Biotechnology
CiteScore
3.40
自引率
0.00%
发文量
10
审稿时长
10 weeks
期刊介绍: Applied Microscopy is a peer-reviewed journal sponsored by the Korean Society of Microscopy. The journal covers all the interdisciplinary fields of technological developments in new microscopy methods and instrumentation and their applications to biological or materials science for determining structure and chemistry. ISSN: 22875123, 22874445.
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