全基因组细胞筛选中评价荧光显微镜图像的特征选择

V. Kovalev, N. Harder, B. Neumann, Michael Held, U. Liebel, H. Erfle, J. Ellenberg, R. Eils, K. Rohr
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引用次数: 17

摘要

我们研究了不同的有效特征空间约简方法,并比较了不同的细胞分类方法。应用背景是开发用于分析荧光显微镜图像的自动方法,目的是识别那些参与人类细胞有丝分裂(细胞分裂)的基因。我们将细胞分为四类,包括间期细胞、有丝分裂细胞、凋亡细胞和细胞核聚集的细胞。采用主成分分析和独立成分分析方法进行特征空间约简。研究了六种分类方法,包括无监督聚类算法,如K-means、硬竞争学习和神经气体,以及分层聚类、支持向量机和随机森林分类器。本文报道了不同特征集和不同分类方法对细胞图像分类精度和计算效率的影响。
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Feature Selection for Evaluating Fluorescence Microscopy Images in Genome-Wide Cell Screens
We investigate different approaches for efficient feature space reduction and compare different methods for cell classification. The application context is the development of automatic methods for analysing fluorescence microscopy images with the goal to identify those genes that are involved in the mitosis of human cells (cell division). We distinguish four cell classes comprising interphase cells, mitotic cells, apoptotic cells, and cells with clustered nuclei. Feature space reduction was performed using the Principal Component Analysis and Independent Component Analysis methods. Six classification methods were examined including unsupervised clustering algorithms such as K-means, Hard Competitive Learning, and Neural Gas as well as Hierarchical Clustering, Support Vector Machines, and Random Forests classifiers. Detailed results on the cell image classification accuracy and computational efficiency achieved using different feature sets and different classification methods are reported.
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