MyoFInDer: An AI-Based Tool for Myotube Fusion Index Determination.

IF 3.5 3区 医学 Q3 CELL & TISSUE ENGINEERING Tissue Engineering Part A Pub Date : 2024-10-01 Epub Date: 2024-06-27 DOI:10.1089/ten.TEA.2024.0049
Antoine Weisrock, Rebecca Wüst, Maria Olenic, Pauline Lecomte-Grosbras, Lieven Thorrez
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Abstract

The fusion index is a key indicator for quantifying the differentiation of a myoblast population, which is often calculated manually. In addition to being time-consuming, manual quantification is also error prone and subjective. Several software tools have been proposed for addressing these limitations but suffer from various drawbacks, including unintuitive interfaces and limited performance. In this study, we describe MyoFInDer, a Python-based program for the automated computation of the fusion index of skeletal muscle. At the core of MyoFInDer is a powerful artificial intelligence-based image segmentation model. MyoFInDer also determines the total nuclei count and the percentage of stained area and allows for manual verification and correction. MyoFInDer can reliably determine the fusion index, with a high correlation to manual counting. Compared with other tools, MyoFInDer stands out as it minimizes the interoperator variability, minimizes process time and displays the best correlation to manual counting. Therefore, it is a suitable choice for calculating fusion index in an automated way, and gives researchers access to the high performance and flexibility of a modern artificial intelligence model. As a free and open-source project, MyoFInDer can be modified or extended to meet specific needs.

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MyoFInDer:基于人工智能的肌管融合指数测定工具。
融合指数是量化成肌细胞群分化程度的关键指标,通常需要人工计算。人工量化不仅耗时,而且容易出错,主观性强。为了解决这些局限性,人们提出了几种软件工具,但它们都存在各种缺点,包括界面不直观和性能有限。在此,我们介绍一款基于 Python 的程序 MyoFInDer,用于自动计算骨骼肌的融合指数。MyoFInDer 的核心是一个基于人工智能的强大图像分割模型。MyoFInDer 还能确定细胞核总数和染色面积百分比,并可进行人工验证和校正。MyoFInDer 能可靠地确定融合指数,与人工计数具有很高的相关性。与其他工具相比,MyoFInDer 的突出之处在于它能最大限度地减少操作员之间的差异,最大限度地缩短处理时间,并显示出与人工计数的最佳相关性。因此,MyoFInDer 是自动计算融合指数的合适选择,并能让研究人员获得现代人工智能模型的高性能和灵活性。作为一个免费开源项目,MyoFInDer 可以根据特定需求进行修改或扩展。
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来源期刊
Tissue Engineering Part A
Tissue Engineering Part A Chemical Engineering-Bioengineering
CiteScore
9.20
自引率
2.40%
发文量
163
审稿时长
3 months
期刊介绍: Tissue Engineering is the preeminent, biomedical journal advancing the field with cutting-edge research and applications that repair or regenerate portions or whole tissues. This multidisciplinary journal brings together the principles of engineering and life sciences in the creation of artificial tissues and regenerative medicine. Tissue Engineering is divided into three parts, providing a central forum for groundbreaking scientific research and developments of clinical applications from leading experts in the field that will enable the functional replacement of tissues.
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