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首页> 外文期刊>Journal of Structural Biology >Experimental evaluation of support vector machine-based and correlation-based approaches to automatic particle selection
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Experimental evaluation of support vector machine-based and correlation-based approaches to automatic particle selection

机译:基于支持向量机和基于相关性的自动粒子选择方法的实验评估

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The goal of this study is to evaluate the performance of software for automated particle-boxing, and in particular the performance of a new tool (TextonSVM) that recognizes the characteristic texture of particles of interest. As part of a high-throughput protocol, we use human editing that is based solely on class-average images to create final data sets that are enriched in what the investigator considers to be true-positive particles. The Fourier shell correlation (FSC) function is then used to characterize the homogeneity of different single-particle data sets that are derived from the same micrographs by two or more alternative methods. We find that the homogeneity is generally quite similar for class-edited data sets obtained by the texture-based method and by SIGNATURE, a cross-correlation-based method. The precision recall characteristics of the texture-based method are, on the other hand, significantly better than those of the cross-correlation based method; that is to say, the texture-based approach produces a smaller fraction of false positives in the initial set of candidate particles. The computational efficiency of the two approaches is generally within a factor of two of one another. In situations when it is helpful to use a larger number of templates (exemplars), however, TextonSVM scales in a much more efficient way than do boxing programs that are based on localized cross-correlation
机译:这项研究的目的是评估用于自动装箱的软件的性能,尤其是评估识别目标颗粒特征纹理的新工具(TextonSVM)的性能。作为高通量协议的一部分,我们使用仅基于类平均图像的人工编辑来创建最终数据集,这些数据集丰富了研究者认为是真正阳性的粒子。然后,使用傅立叶壳相关(FSC)函数来表征通过两种或多种替代方法从同一张显微照片得出的不同单粒子数据集的同质性。我们发现,对于通过基于纹理的方法和通过基于互相关的方法SIGNATURE获得的类编辑数据集,同质性通常非常相似。另一方面,基于纹理的方法的精度召回特性明显优于基于互相关的方法;也就是说,基于纹理的方法会在初始候选粒子集中产生较小比例的误报。两种方法的计算效率通常在彼此的两倍之内。但是,在使用大量模板(示例)很有用的情况下,TextonSVM的缩放方式比基于局部互相关的装箱程序更有效

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