Finding and following: a deep learning-based pipeline for tracking platelets during thrombus formation in vivo and ex vivo.

IF 2.5 3区 医学 Q3 CELL BIOLOGY
Platelets Pub Date : 2024-12-01 Epub Date: 2024-05-09 DOI:10.1080/09537104.2024.2344512
Abigail S McGovern, Pia Larsson, Volga Tarlac, Natasha Setiabakti, Leila Shabani Mashcool, Justin R Hamilton, Niklas Boknäs, Juan Nunez-Iglesias
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引用次数: 0

Abstract

The last decade has seen increasing use of advanced imaging techniques in platelet research. However, there has been a lag in the development of image analysis methods, leaving much of the information trapped in images. Herein, we present a robust analytical pipeline for finding and following individual platelets over time in growing thrombi. Our pipeline covers four steps: detection, tracking, estimation of tracking accuracy, and quantification of platelet metrics. We detect platelets using a deep learning network for image segmentation, which we validated with proofreading by multiple experts. We then track platelets using a standard particle tracking algorithm and validate the tracks with custom image sampling - essential when following platelets within a dense thrombus. We show that our pipeline is more accurate than previously described methods. To demonstrate the utility of our analytical platform, we use it to show that in vivo thrombus formation is much faster than that ex vivo. Furthermore, platelets in vivo exhibit less passive movement in the direction of blood flow. Our tools are free and open source and written in the popular and user-friendly Python programming language. They empower researchers to accurately find and follow platelets in fluorescence microscopy experiments.

寻找和跟踪:基于深度学习的管道,用于在体内和体外血栓形成过程中跟踪血小板。
近十年来,先进的成像技术在血小板研究中的应用越来越多。然而,图像分析方法的发展一直滞后,导致大部分信息被困在图像中。在这里,我们提出了一个强大的分析管道,用于在不断生长的血栓中寻找和跟踪单个血小板。我们的流程包括四个步骤:检测、跟踪、估计跟踪精度和量化血小板指标。我们使用深度学习网络检测血小板,并通过多位专家的校对进行验证。然后,我们使用标准粒子跟踪算法跟踪血小板,并通过自定义图像采样验证跟踪结果--这对跟踪高密度血栓中的血小板至关重要。我们的结果表明,我们的方法比之前描述的方法更准确。为了证明我们分析平台的实用性,我们用它来证明体内血栓的形成比体外血栓的形成要快得多。此外,体内血小板在血流方向上的被动运动较少。我们的工具是免费开源的,使用流行且用户友好的 Python 编程语言编写。它们能让研究人员在荧光显微镜实验中准确找到并跟踪血小板。
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
Platelets
Platelets 医学-细胞生物学
CiteScore
6.70
自引率
3.00%
发文量
79
审稿时长
1 months
期刊介绍: Platelets is an international, peer-reviewed journal covering all aspects of platelet- and megakaryocyte-related research. Platelets provides the opportunity for contributors and readers across scientific disciplines to engage with new information about blood platelets. The journal’s Methods section aims to improve standardization between laboratories and to help researchers replicate difficult methods. Research areas include: Platelet function Biochemistry Signal transduction Pharmacology and therapeutics Interaction with other cells in the blood vessel wall The contribution of platelets and platelet-derived products to health and disease The journal publishes original articles, fast-track articles, review articles, systematic reviews, methods papers, short communications, case reports, opinion articles, commentaries, gene of the issue, and letters to the editor. Platelets operates a single-blind peer review policy. Authors can choose to publish gold open access in this journal.
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