首页> 外文会议>International Conference on Medical Image Computing and Computer-Assisted Intervention;MICCAI 2008 >Consensus-Locally Linear Embedding (C-LLE):Application to Prostate Cancer Detection on Magnetic Resonance Spectroscopy
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Consensus-Locally Linear Embedding (C-LLE):Application to Prostate Cancer Detection on Magnetic Resonance Spectroscopy

机译:共识局部线性嵌入(C-LLE):在磁共振波谱学中对前列腺癌检测的应用

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Locally Linear Embedding (LLE) is a widely used non-linear dimensionality reduction (NLDR) method that projects multi-dimensional data into a low-dimensional embedding space while attempting to preserve object adjacencies from the original high-dimensional feature space. A limitation of LLE, however, is the presence of free parameters, changing the values of which may dramatically change the low dimensional representations of the data. In this paper, we present a novel Consensus-LLE (C-LLE) scheme which constructs a stable consensus embedding from across multiple low dimensional unstable LLE data representations obtained by varying the parameter (k) controlling locally linearity. The approach is analogous to Breiman's Bagging algorithm for generating ensemble classifiers by combining multiple weak predictors into a single predictor. In this paper we demonstrate the utility of C-LLE in creating a low dimensional stable representation of Magnetic Resonance Spectroscopy (MRS) data for identifying prostate cancer. Results of quantitative evaluation demonstrate that our C-LLE scheme has higher cancer detection sensitivity (86.90%) and specificity (85.14%) compared to LLE and other state of the art schemes currently employed for analysis of MRS data.
机译:局部线性嵌入(LLE)是一种广泛使用的非线性降维方法(NLDR),该方法将多维数据投影到低维嵌入空间中,同时尝试保留原始高维特征空间中的对象邻接关系。但是,LLE的局限性在于存在自由参数,更改自由参数的值可能会大大改变数据的低维表示形式。在本文中,我们提出了一种新颖的Consensus-LLE(C-LLE)方案,该方案通过更改通过控制局部线性度的参数(k)获得的多个低维不稳定LLE数据表示来构建稳定的共识嵌入。该方法类似于Breiman的Bagging算法,该算法通过将多个弱预测变量组合为单个预测变量来生成集成分类器。在本文中,我们演示了C-LLE在创建磁共振光谱(MRS)数据的低维稳定表示形式以识别前列腺癌中的实用性。定量评估结果表明,与LLE和目前用于MRS数据分析的其他现有技术相比,我们的C-LLE方案具有更高的癌症检测灵敏度(86.90%)和特异性(85.14%)。

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