荧光显微镜图像中亚细胞定位模式的鲁棒分类

R. Murphy, M. Velliste, G. Porreca
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引用次数: 36

摘要

正在进行的生物技术革命保证了对细胞和组织执行其功能的机制的全面理解。这一目标的核心是确定存在于特定细胞类型中的每种蛋白质的功能,而确定蛋白质在细胞内的位置对于理解其功能至关重要。随着蛋白质亚细胞定位的全基因组测定获得大量数据,迫切需要对定位模式进行分类和比较的自动化方法。由于亚细胞位置通常是用荧光显微镜确定的,我们开发了自动化系统来解释所产生的图像。我们在这里报告了用于描述这些图像的改进的数字特征,这些特征对图像强度分形和空间分辨率相当稳健。我们通过使用这些特征来训练神经网络来验证这些特征,这些神经网络可以准确识别所有主要的亚细胞模式,其准确性高于之前的报道。通过使用它们进行分类验证了特征,我们还演示了使用它们创建亚细胞定位树,将相似的蛋白质分组,并为描述亚细胞定位提供系统框架。
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Robust classification of subcellular location patterns in fluorescence microscope images
The ongoing biotechnology revolution promises a complete understanding of the mechanisms by which cells and tissues carry out their functions. Central to that goal is the determination of the function of each protein that is present in a given cell type, and determining a protein's location within cells is critical to understanding its function. As large amounts of data become available from genome-wide determination of protein subcellular location, automated approaches to categorizing and comparing location patterns are urgently needed. Since subcellular location is most often determined using fluorescence microscopy, we have developed automated systems for interpreting the resulting images. We report here improved numeric features for describing such images that are fairly robust to image intensity binning and spatial resolution. We validate these features by using them to train neural networks that accurately recognize all major subcellular patterns with an accuracy higher than previously reported. Having validated the features by using them for classification, we also demonstrate using them to create Subcellular Location Trees that group similar proteins and provide a systematic framework for describing subcellular location.
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