基于反向传播的生物医学非线性主成分分析

A. Landi, P. Piaggi, G. Pioggia
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引用次数: 4

摘要

机器学习方法,如人工神经网络(ANN)、模糊逻辑或遗传规划,以及主成分分析(PCA)和智能控制,最近已被引入医学。人工神经网络通过能够适应几个参数的数学模型来模仿人脑的结构和工作方式。人工神经网络通过监督或无监督学习算法学习系统的输入/输出行为。在这项工作中,我们提出并展示了一种新的预处理算法,能够提高人工神经网络在处理生物医学数据集方面的性能。对该算法进行了测试,分析了过敏性支气管哮喘儿童和正常人群呼吸中肺功能和呼出一氧化氮分数的差异。基于新算法的非线性主成分分析得到的分类结果表明,该算法在哮喘和对照组的分类中具有更好的精度。
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Backpropagation-Based Non Linear PCA for Biomedical Applications
Machine learning methodologies such as artificial neural networks (ANN), fuzzy logic or genetic programming, as well as principal component analysis (PCA) and intelligent control have been recently introduced in medicine. ANNs imitate the structure and workings of the human brain by means of mathematical models able to adapt several parameters. ANNs learn the input/output behavior of a system through a supervised or an unsupervised learning algorithm. In this work, we present and demonstrate a new pre-processing algorithm able to improve the performance of an ANN in the processing of biomedical datasets. The algorithm was tested analyzing lung function and fractional exhaled nitric oxide differences in the breath in children with allergic bronchial asthma and in normal population. Classification obtained using non linear PCA based on the new algorithm shows a better precision in separating asthmatic and control subjects.
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