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Human breath-print identification by E-nose, using information-theoretic feature selection prior to classification

机译:通过电子鼻识别人的呼吸印迹,在分类之前使用信息理论特征选择

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摘要

The composition of bodily fluids reflects many aspects of health status of a patient. Breath is another sample that may be useful for diagnosis of infectious and other diseases. Analysis of breath has the advantage of being less invasive than analysis of other fluids such as blood and bronchial biopsy. Two recent studies, using either mass spectrometry or electronic nose (E-nose) technologies, showed there are definite "breath-prints" that characterised individuals despite temporal variation in internal metabolism and environment. In this study we demonstrate that by employing an information-theoretic feature selection method that is specific to the problem together with machine learning techniques, we can dramatically improve (cross-validated) identification of individuals through their breath using a very small selected subset of E-nose measurement features. Indeed, we demonstrate here that we can identify the 10 individuals in this study with perfect accuracy using fewer than 10 features.
机译:体液的成分反映了患者健康状况的许多方面。呼吸是另一个可用于诊断传染病和其他疾病的样本。呼吸分析的优点是比其他液体(例如血液和支气管活检)的分析更具侵入性。两项最近的使用质谱或电子鼻(E-nose)技术的研究表明,尽管内部代谢和环境随时间发生了变化,但仍存在明确的“呼吸图”,该图表征了个体。在这项研究中,我们证明了通过采用针对该问题的信息理论特征选择方法以及机器学习技术,我们可以使用非常小的E选择子集极大地改善(交叉验证)个体通过其呼吸的识别-鼻子测量功能。确实,我们在这里证明了我们可以使用少于10个特征以十全十美的准确性识别出本研究中的10个人。

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