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Many Local Pattern Texture Features: Which Is Better for Image-Based Multilabel Human Protein Subcellular Localization Classification?

机译:许多局部图案纹理特征:哪种更好的基于图像的多标签人类蛋白质亚细胞定位分类?

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摘要

Human protein subcellular location prediction can provide critical knowledge for understanding a protein's function. Since significant progress has been made on digital microscopy, automated image-based protein subcellular location classification is urgently needed. In this paper, we aim to investigate more representative image features that can be effectively used for dealing with the multilabel subcellular image samples. We prepared a large multilabel immunohistochemistry (IHC) image benchmark from the Human Protein Atlas database and tested the performance of different local texture features, including completed local binary pattern, local tetra pattern, and the standard local binary pattern feature. According to our experimental results from binary relevance multilabel machine learning models, the completed local binary pattern, and local tetra pattern are more discriminative for describing IHC images when compared to the traditional local binary pattern descriptor. The combination of these two novel local pattern features and the conventional global texture features is also studied. The enhanced performance of final binary relevance classification model trained on the combined feature space demonstrates that different features are complementary to each other and thus capable of improving the accuracy of classification.
机译:人类蛋白质亚细胞定位预测可以提供重要的知识,以了解蛋白质的功能。由于数字显微镜已取得重大进展,因此迫切需要基于图像的自动蛋白质亚细胞定位分类。在本文中,我们旨在研究可有效用于处理多标签亚细胞图像样本的更具代表性的图像特征。我们从人类蛋白质图谱数据库中准备了一个大型的多标签免疫组织化学(IHC)图像基准,并测试了不同局部纹理特征的性能,包括完整的局部二进制图案,局部四边形图案和标准的局部二进制图案特征。根据我们从二进制相关多标签机器学习模型获得的实验结果,与传统的本地二进制模式描述符相比,完整的本地二进制模式和本地四边形模式在描述IHC图像方面更具判别力。还研究了这两种新颖的局部图案特征与常规全局纹理特征的组合。在组合特征空间上训练的最终二进制相关性分类模型的增强性能表明,不同特征彼此互补,因此能够提高分类的准确性。

著录项

  • 期刊名称 other
  • 作者单位
  • 年(卷),期 -1(2014),-1
  • 年度 -1
  • 页码 429049
  • 总页数 14
  • 原文格式 PDF
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  • 中图分类
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