ECLiPSE: a versatile classification technique for structural and morphological analysis of 2D and 3D single-molecule localization microscopy data

IF 36.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Nature Methods Pub Date : 2024-09-10 DOI:10.1038/s41592-024-02414-3
Siewert Hugelier, Qing Tang, Hannah Hyun-Sook Kim, Melina Theoni Gyparaki, Charles Bond, Adriana Naomi Santiago-Ruiz, Sílvia Porta, Melike Lakadamyali
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Abstract

Single-molecule localization microscopy (SMLM) has gained widespread use for visualizing the morphology of subcellular organelles and structures with nanoscale spatial resolution. However, analysis tools for automatically quantifying and classifying SMLM images have lagged behind. Here we introduce Enhanced Classification of Localized Point clouds by Shape Extraction (ECLiPSE), an automated machine learning analysis pipeline specifically designed to classify cellular structures captured through two-dimensional or three-dimensional SMLM. ECLiPSE leverages a comprehensive set of shape descriptors, the majority of which are directly extracted from the localizations to minimize bias during the characterization of individual structures. ECLiPSE has been validated using both unsupervised and supervised classification on datasets, including various cellular structures, achieving near-perfect accuracy. We apply two-dimensional ECLiPSE to classify morphologically distinct protein aggregates relevant for neurodegenerative diseases. Additionally, we employ three-dimensional ECLiPSE to identify relevant biological differences between healthy and depolarized mitochondria. ECLiPSE will enhance the way we study cellular structures across various biological contexts.

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ECLiPSE:用于二维和三维单分子定位显微镜数据的结构和形态分析的多功能分类技术
单分子定位显微镜(SMLM)已被广泛应用于以纳米级空间分辨率观察亚细胞器和结构的形态。然而,用于自动量化和分类 SMLM 图像的分析工具却相对落后。在此,我们介绍通过形状提取增强局部点云分类(ECLiPSE),这是一种自动机器学习分析管道,专门用于对通过二维或三维 SMLM 捕捉到的细胞结构进行分类。ECLiPSE 利用一套全面的形状描述符,其中大部分直接从定位中提取,以尽量减少单个结构表征过程中的偏差。ECLiPSE 已在包括各种细胞结构在内的数据集上进行了无监督和有监督分类验证,达到了近乎完美的准确性。我们应用二维 ECLiPSE 对与神经退行性疾病相关的形态各异的蛋白质聚集体进行分类。此外,我们还利用三维 ECLiPSE 来识别健康线粒体和去极化线粒体之间的相关生物学差异。ECLiPSE 将改进我们在各种生物背景下研究细胞结构的方法。
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来源期刊
Nature Methods
Nature Methods 生物-生化研究方法
CiteScore
58.70
自引率
1.70%
发文量
326
审稿时长
1 months
期刊介绍: Nature Methods is a monthly journal that focuses on publishing innovative methods and substantial enhancements to fundamental life sciences research techniques. Geared towards a diverse, interdisciplinary readership of researchers in academia and industry engaged in laboratory work, the journal offers new tools for research and emphasizes the immediate practical significance of the featured work. It publishes primary research papers and reviews recent technical and methodological advancements, with a particular interest in primary methods papers relevant to the biological and biomedical sciences. This includes methods rooted in chemistry with practical applications for studying biological problems.
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