迈向蛋白质亚细胞定位的分类学:蛋白质定位模式的定量描述和荧光显微镜图像的自动分析。

R F Murphy, M V Boland, M Velliste
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引用次数: 0

摘要

确定所有表达蛋白的功能是计算分子生物学即将面临的主要挑战之一。由于亚细胞定位在蛋白质功能中起着至关重要的作用,因此可以从序列中预测位置的系统或通过实验确定位置的高通量系统的可用性对于表达蛋白的全面表征至关重要。预测系统的发展目前受到缺乏充分捕捉蛋白质定位模式复杂性的训练数据的阻碍。我们需要的是蛋白质亚细胞位置的系统学。本文描述了一种使用数字特征定量描述蛋白质定位模式的方法,并利用这些特征开发可以识别荧光显微镜图像中所有主要亚细胞结构的分类器。这种分类器为旨在确定所有表达蛋白的亚细胞分布的实验提供了有价值的工具。这些特征在成像实验的自动解释中也有应用,例如选择代表性图像或在不同实验条件下对蛋白质分布进行严格的统计比较。一个关键的结论是,至少在某些情况下,这些自动化方法比人类观察者更能区分相似的蛋白质定位模式。
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Towards a systematics for protein subcelluar location: quantitative description of protein localization patterns and automated analysis of fluorescence microscope images.

Determination of the functions of all expressed proteins represents one of the major upcoming challenges in computational molecular biology. Since subcellular location plays a crucial role in protein function, the availability of systems that can predict location from sequence or high-throughput systems that determine location experimentally will be essential to the full characterization of expressed proteins. The development of prediction systems is currently hindered by an absence of training data that adequately captures the complexity of protein localization patterns. What is needed is a systematics for the subcellular locations of proteins. This paper describes an approach to the quantitative description of protein localization patterns using numerical features and the use of these features to develop classifiers that can recognize all major subcellular structures in fluorescence microscope images. Such classifiers provide a valuable tool for experiments aimed at determining the subcellular distributions of all expressed proteins. The features also have application in automated interpretation of imaging experiments, such as the selection of representative images or the rigorous statistical comparison of protein distributions under different experimental conditions. A key conclusion is that, at least in certain cases, these automated approaches are better able to distinguish similar protein localization patterns than human observers.

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