A MAP approach for convex non-negative matrix factorization in the diagnosis of brain tumors

A. Vilamala, L. B. Muñoz, A. Vellido
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引用次数: 2

Abstract

Convex non-negative matrix factorization is a blind signal separation technique that has previously demonstrated to be well-suited for the task of human brain tumor diagnosis from magnetic resonance spectroscopy data. This is due to its ability to retrieve interpretable sources of mixed sign that highly correlate with tissue type prototypes. The current study provides a Bayesian formulation for such problem and derives a maximum a posteriori estimate based on a gradient descent algorithm specifically designed to deal with matrices with different sign restrictions. Its applicability to neuro-oncology diagnosis was experimentally assessed and the results were found to be comparable to those achieved by state of the art methods in tumor type discrimination and consistently better in source extraction.
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凸非负矩阵分解在脑肿瘤诊断中的MAP方法
凸非负矩阵分解是一种盲信号分离技术,已被证明非常适合于从磁共振波谱数据中诊断人脑肿瘤的任务。这是由于它能够检索与组织类型原型高度相关的混合标志的可解释来源。目前的研究为这类问题提供了一个贝叶斯公式,并基于专门设计用于处理具有不同符号限制的矩阵的梯度下降算法导出了最大后验估计。实验评估了其对神经肿瘤诊断的适用性,并发现其结果可与最先进的肿瘤类型识别方法相媲美,并且在源提取方面始终更好。
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