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Exploring the Similarity of Medical Imaging Classification Problems

机译:探索医学成像分类问题的相似性

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摘要

Supervised learning is ubiquitous in medical image analysis. In this paper we consider the problem of meta-learning - predicting which methods will perform well in an unseen classification problem, given previous experience with other classification problems. We investigate the first step of such an approach: how to quantify the similarity of different classification problems. We characterize datasets sampled from six classification problems by performance ranks of simple classifiers, and define the similarity by the inverse of Euclidean distance in this meta-feature space. We visualize the similarities in a 2D space, where meaningful clusters start to emerge, and show that the proposed representation can be used to classify datasets according to their origin with 89.3% accuracy. These findings, together with the observations of recent trends in machine learning, suggest that meta-learning could be a valuable tool for the medical imaging community.
机译:监督学习是普遍存在的医学图像分析。在本文中,我们考虑了元学习的问题 - 预测哪种方法在看不见的分类问题中表现良好,给予以前的其他分类问题。我们调查了这种方法的第一步:如何量化不同分类问题的相似性。我们通过简单分类器的性能等级来表征从六个分类问题中采样的数据集,并通过该元特征空间中的欧几里德距离的逆定义相似度。我们可视化2D空间中的相似性,其中有意义的群集开始出现,并表明所提出的表示可用于根据其来源对数据集进行分类,以89.3%的精度为89.3%。这些发现与最近的机器学习趋势的观察结果表明,元学习可能是医学影像社区的宝贵工具。

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