MicroBundlePillarTrack:用于自动分割、跟踪和分析心脏微束中支柱偏转的 Python 软件包。

ArXiv Pub Date : 2024-08-15
Hiba Kobeissi, Xining Gao, Samuel J DePalma, Jourdan K Ewoldt, Miranda C Wang, Shoshana L Das, Javiera Jilberto, David Nordsletten, Brendon M Baker, Christopher S Chen, Emma Lejeune
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引用次数: 0

摘要

人类诱导多能干细胞(hiPSC)衍生的工程化心脏组织(微束)的视频包含大量有关结构和功能成熟度的信息。然而,以可重复和高通量的方式提取这些数据仍是一大挑战。此外,对用于制造这些组织的多个体外实验平台进行直接定量比较也不是一件简单的事。在这里,我们介绍 "MicroBundlePillarTrack",这是一个基于光流的开源软件包,用 Python 开发,用于跟踪在具有两种不同支柱设计("1 型 "和 "2 型 "设计)的实验平台上生长的心脏微束中支柱的偏转。我们的软件能够自动分割支柱,跟踪其位移,并输出随时间变化的指标用于收缩力分析,包括搏动幅度和速率、收缩力和组织应力。由于该软件是全自动的,因此可以更快、更可重复地分析较大的数据集,与现有的需要手动步骤并为特定实验平台量身定制的方法相比,它可以进行更可靠的跨平台比较。作为对该开源软件的补充,我们还分享了一个包含 1540 个明场示例影片的数据集,并在该数据集上对我们的软件进行了测试。通过共享这些数据和软件,我们的目标是直接实现跨实验室的定量比较,并通过生物医学工程开源数据和软件生态系统促进未来的集体进步。
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MicroBundlePillarTrack: A Python package for automated segmentation, tracking, and analysis of pillar deflection in cardiac microbundles.

Movies of human induced pluripotent stem cell (hiPSC)-derived engineered cardiac tissue (microbundles) contain abundant information about structural and functional maturity. However, extracting these data in a reproducible and high-throughput manner remains a major challenge. Furthermore, it is not straightforward to make direct quantitative comparisons across the multiple in vitro experimental platforms employed to fabricate these tissues. Here, we present "MicroBundlePillarTrack," an open-source optical flow-based package developed in Python to track the deflection of pillars in cardiac microbundles grown on experimental platforms with two different pillar designs ("Type 1" and "Type 2" design). Our software is able to automatically segment the pillars, track their displacements, and output time-dependent metrics for contractility analysis, including beating amplitude and rate, contractile force, and tissue stress. Because this software is fully automated, it will allow for both faster and more reproducible analyses of larger datasets and it will enable more reliable cross-platform comparisons as compared to existing approaches that require manual steps and are tailored to a specific experimental platform. To complement this open-source software, we share a dataset of 1,540 brightfield example movies on which we have tested our software. Through sharing this data and software, our goal is to directly enable quantitative comparisons across labs, and facilitate future collective progress via the biomedical engineering open-source data and software ecosystem.

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