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Active Learning for Convenient Annotation and Classification of Secondary Ion Mass Spectrometry Images

机译:主动学习,方便注释和分类二次离子质谱图像。

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摘要

Digital staining for the automated annotation of mass spectrometry imaging (MSI) data has previously been achieved using state-of-the-art classifiers such as random forests or support vector machines (SVMs). However, the training of such classifiers requires an expert to label exemplary data in advance. This process is time-consuming and hence costly, especially if the tissue is heterogeneous. In theory, it may be sufficient to only label a few highly representative pixels of an MS image, but it is not known a priori which pixels to select. This motivates active learning strategies in which the algorithm itself queries the expert by automatically suggesting promising candidate pixels of an MS image for labeling. Given a suitable querying strategy, the number of required training labels can be significantly reduced while maintaining classification accuracy. In this work, we propose active learning for convenient annotation of MSI data. We generalize a recently proposed active learning method to the multiclass case and combine it with the random forest classifier. Its superior performance over random sampling is demonstrated on secondary ion mass spectrometry data, making it an interesting approach for the classification of MS images.
机译:以前已经使用最新的分类器(例如随机森林或支持向量机(SVM))实现了用于自动标注质谱成像(MSI)数据的数字染色。但是,这种分类器的训练需要专家预先标记示例性数据。该过程是耗时的并且因此是昂贵的,特别是如果组织是异质的。从理论上讲,仅标记MS图像的几个具有高度代表性的像素就足够了,但是先验地选择哪些像素尚不知道。这激发了主动学习策略,其中算法本身通过自动建议用于标记的MS图像的有希望的候选像素来查询专家。给定合适的查询策略,可以在保持分类准确性的同时显着减少所需训练标签的数量。在这项工作中,我们建议主动学习以方便注释MSI数据。我们将最近提出的主动学习方法推广到多类情况,并将其与随机森林分类器结合。在二次离子质谱数据上证明了其优于随机采样的性能,这使其成为用于MS图像分类的有趣方法。

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