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On the computation of the geodesic distance with an application to dimensionality reduction in a neuro-oncology problem

机译:关于测地距离的计算与应用于神经肿瘤学问题的降维

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摘要

Manifold learning models attempt to parsimoniously describe multivariate data through a low-dimensional manifold embedded in data space. Similarities between points along this manifold are often expressed as Euclidean distances. Previous research has shown that these similarities are better expressed as geodesic distances. Some problems concerning the computation of geodesic distances along the manifold have to do with time and storage restrictions related to the graph representation of the manifold. This paper provides different approaches to the computation of the geodesic distance and the implementation of Dijkstra’s shortest path algorithm, comparing their performances. The optimized procedures are bundled into a software module that is embedded in a dimensionality reduction method, which is applied to MRS data from human brain tumours. The experimental results show that the proposed implementation explains a high proportion of the data variance with a very small number of extracted features, which should ease the medical interpretation of subsequent results obtained from the reduced datasets.
机译:流形学习模型试图通过嵌入数据空间中的低维流形来简约地描述多元数据。沿着该流形的点之间的相似性通常表示为欧几里得距离。先前的研究表明,这些相似性可以更好地表示为测地距离。与沿歧管测地距离的计算有关的一些问题与与歧管的图形表示有关的时间和存储限制有关。通过比较测地距离,本文提供了不同的测地距离计算方法和Dijkstra最短路径算法的实现方法。经过优化的程序被捆绑到一个软件模块中,该软件模块嵌入降维方法中,该方法可应用于人脑肿瘤的MRS数据。实验结果表明,所提出的实现方法可以解释很大比例的数据方差,并且提取的特征数量很少,这应该简化从简化数据集中获得的后续结果的医学解释。

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