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首页> 外文期刊>International Journal of Neural Systems >SEMI-SUPERVISED ANALYSIS OF HUMAN BRAIN TUMOURS FROM PARTIALLY LABELED MRS INFORMATION, USING MANIFOLD LEARNING MODELS
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SEMI-SUPERVISED ANALYSIS OF HUMAN BRAIN TUMOURS FROM PARTIALLY LABELED MRS INFORMATION, USING MANIFOLD LEARNING MODELS

机译:使用流形学习模型从部分标记的MRS信息进行人脑肿瘤的半监督分析

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摘要

Medical diagnosis can often be understood as a classification problem. In oncology, this typically involves differentiating between tumour types and grades, or some type of discrete outcome prediction. From the viewpoint of computer-based medical decision support, this classification requires the availability of accurate diagnoses of past cases as training target examples. The availability of such labeled databases is scarce in most areas of oncology, and especially so in neuro-oncology. In such context, semi-supervised learning oriented towards classification can be a sensible data modeling choice. In this study, semi-supervised variants of Generative Topographic Mapping, a model of the manifold learning family, are applied to two neuro-oncology problems: the diagnostic discrimination between different brain tumour pathologies, and the prediction of outcomes for a specific type of aggressive brain tumours. Their performance compared favorably with those of the alternative Laplacian Eigenmaps and Semi-Supervised SVM for Manifold Learning models in most of the experiments.
机译:医学诊断通常可以理解为分类问题。在肿瘤学中,这通常涉及区分肿瘤类型和等级,或某种类型的离散结果预测。从基于计算机的医疗决策支持的角度来看,此分类要求提供对过去病例的准确诊断作为培训目标示例。在大多数肿瘤学领域,尤其是在神经肿瘤学领域,这种标记数据库的可用性是稀缺的。在这种情况下,面向分类的半监督学习可能是明智的数据建模选择。在这项研究中,生成拓扑地形图的半监督变体(流形学习家族的模型)被应用于两个神经肿瘤学问题:不同脑肿瘤病理学之间的诊断区别,以及针对特定类型的侵略性疾病的结果预测脑肿瘤。在大多数实验中,它们的性能优于替代的Laplacian特征图和用于流形学习模型的半监督SVM。

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