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Fuzzy k-NN Lung Cancer Identification by an Electronic Nose

机译:电子鼻的模糊k-NN肺癌识别

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摘要

We present a method to recognize the presence of lung cancer in individuals by classifying the olfactory signal acquired through an electronic nose based on an array of MOS sensors. We analyzed the breath of 101 persons, of which 58 as control and 43 suffering from different types of lung cancer (primary and not) at different stages. In order to find the components able to discriminate between the two classes 'healthy' and 'sick' as best as possible and to reduce the dimensionality of the problem, we extracted the most significative features and projected them into a lower dimensional space, using Nonparametric Linear Discriminant Analysis. Finally, we used these features as input to a pattern classification algorithm, based on Fuzzy fc-Nearest Neighbors (Fuzzy fc-NN). The observed results, all validated using cross-validation, have been satisfactory achieving an accuracy of 92.6%, a sensitivity of 95.3% and a specificity of 90.5%. These results put the electronic nose as a valid implementation of lung cancer diagnostic technique, being able to obtain excellent results with a non invasive, small, low cost and very fast instrument.
机译:我们提出一种方法,通过对基于MOS传感器阵列通过电子鼻获取的嗅觉信号进行分类来识别个体中肺癌的存在。我们分析了101人的呼吸,其中58人作为对照,43人在不同阶段患有不同类型的肺癌(原发性和非肺癌)。为了找到能够最好地区分“健康”和“病态”两类的组件并减少问题的维度,我们使用非参数提取了最重要的特征并将其投影到较低维度的空间中线性判别分析。最后,我们将这些功能用作基于模糊fc-最近邻居(Fuzzy fc-NN)的模式分类算法的输入。所有观察结果均使用交叉验证进行了验证,它们令人满意,达到了92.6%的准确度,95.3%的灵敏度和90.5%的特异性。这些结果使电子鼻成为肺癌诊断技术的有效实施,能够使用无创,体积小,成本低和速度快的仪器获得出色的结果。

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