Towards automatization of organoid analysis: A deep learning approach to localize and quantify organoid images

Asmaa Haja , José M. Horcas-Nieto , Barbara M. Bakker , Lambert Schomaker
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引用次数: 2

Abstract

The interest in the use of organoids in the biomedical field has increased exponentially in the past years. Organoids, or three-dimensional “mini-organs”, have the ability to proliferate and self-organize in-vitro, while displaying varying morphologies. When in culture, these structures can overlap with each other making the quantification and morphological characterization a challenging task. Quick and reliable analysis of organoid images could help in precisely modeling disease phenotypes as well as provide information on organ development. Therefore, automatization of the quantification and measurements is an important step towards an easier, faster, and less biased workflow.

In order to accomplish this, a free e-Science service (OrganelX) has been developed for localization and quantification of organoid size based on deep learning methods. The ability of the system was tested on murine liver organoids, and the data are made publicly available. The OrganelX e-Science free service is available at https://organelx.hpc.rug.nl/organoid/.

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迈向类器官分析的自动化:一种定位和量化类器官图像的深度学习方法
在过去的几年里,在生物医学领域使用类器官的兴趣呈指数增长。类器官,或三维“微型器官”,在体外具有增殖和自组织的能力,同时表现出不同的形态。当在培养中,这些结构可以相互重叠,使量化和形态表征成为一项具有挑战性的任务。快速可靠的类器官图像分析可以帮助精确建模疾病表型,并提供器官发育的信息。因此,量化和测量的自动化是朝着更容易、更快、更少偏差的工作流程迈出的重要一步。为了实现这一目标,已经开发了一个免费的电子科学服务(OrganelX),用于基于深度学习方法的类器官大小的定位和量化。该系统的能力在小鼠肝类器官上进行了测试,并且数据是公开的。OrganelX e-Science免费服务可在https://organelx.hpc.rug.nl/organoid/上获得。
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5.90
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审稿时长
10 weeks
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