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用于生物对象通用分析的球谐纹理提取

Spherical harmonics texture extraction for versatile analysis of biological objects.

作者信息

Gros Oane, Passmore Josiah B, Borst Noa O, Kutra Dominik, Nijenhuis Wilco, Fuqua Timothy, Kapitein Lukas C, Crocker Justin M, Kreshuk Anna, Köhler Simone

机构信息

European Molecular Biology Laboratory, Cell Biology and Biophysics Unit, Heidelberg, Germany.

Cell Biology, Neurobiology and Biophysics, Department of Biology, Faculty of Science, Utrecht University, Utrecht, The Netherlands.

出版信息

PLoS Comput Biol. 2025 Jan 29;21(1):e1012349. doi: 10.1371/journal.pcbi.1012349. eCollection 2025 Jan.

Abstract

The characterization of phenotypes in cells or organisms from microscopy data largely depends on differences in the spatial distribution of image intensity. Multiple methods exist for quantifying the intensity distribution - or image texture - across objects in natural images. However, many of these texture extraction methods do not directly adapt to 3D microscopy data. Here, we present Spherical Texture extraction, which measures the variance in intensity per angular wavelength by calculating the Spherical Harmonics or Fourier power spectrum of a spherical or circular projection of the angular mean intensity of the object. This method provides a 20-value characterization that quantifies the scale of features in the spherical projection of the intensity distribution, giving a different signal if the intensity is, for example, clustered in parts of the volume or spread across the entire volume. We apply this method to different systems and demonstrate its ability to describe various biological problems through feature extraction. The Spherical Texture extraction characterizes biologically defined gene expression patterns in Drosophila melanogaster embryos, giving a quantitative read-out for pattern formation. Our method can also quantify morphological differences in Caenorhabditis elegans germline nuclei, which lack a predefined pattern. We show that the classification of germline nuclei using their Spherical Texture outperforms a convolutional neural net when training data is limited. Additionally, we use a similar pipeline on 2D cell migration data to extract the polarization direction and quantify the alignment of fluorescent markers to the migration direction. We implemented the Spherical Texture method as a plugin in ilastik to provide a parameter-free and data-agnostic application to any segmented 3D or 2D dataset. Additionally, this technique can also be applied through a Python package to provide extra feature extraction for any object classification pipeline or downstream analysis.

摘要

通过显微镜数据对细胞或生物体中的表型进行表征,在很大程度上取决于图像强度空间分布的差异。存在多种方法可用于量化自然图像中物体的强度分布,即图像纹理。然而,这些纹理提取方法中的许多方法并不能直接适用于三维显微镜数据。在此,我们提出了球形纹理提取方法,该方法通过计算物体角平均强度的球形或圆形投影的球谐函数或傅里叶功率谱,来测量每个角波长的强度方差。这种方法提供了一种20值的表征,可量化强度分布球形投影中特征的尺度,如果强度例如聚集在体积的某些部分或分布在整个体积中,则会给出不同的信号。我们将此方法应用于不同的系统,并通过特征提取展示了其描述各种生物学问题的能力。球形纹理提取方法可表征黑腹果蝇胚胎中生物学定义的基因表达模式,为模式形成提供定量读数。我们的方法还可以量化缺乏预定义模式的秀丽隐杆线虫生殖系细胞核的形态差异。我们表明,在训练数据有限的情况下,使用球形纹理对生殖系细胞核进行分类的性能优于卷积神经网络。此外,我们在二维细胞迁移数据上使用类似的流程来提取极化方向,并量化荧光标记与迁移方向的对齐情况。我们将球形纹理方法作为一个插件在ilastik中实现,以便为任何分割的三维或二维数据集提供无参数且与数据无关的应用。此外,该技术还可以通过一个Python包来应用,为任何物体分类流程或下游分析提供额外的特征提取。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e6f1/11798461/621746fd632f/pcbi.1012349.g002.jpg

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