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Laryngeal cancer discrimination using linear predictive features

机译:使用线性预测特征​​区分喉癌

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In this work, we focus on development of non-invasive, cost-effective and user friendly method for automatic discrimination of Laryngeal cancer, an uncontrolled cell growth near human voice box. Proposed system models the significant vocal characteristics for cancer patient discrimination using just their speech as an input to the system. The four distinct mathematical representations of state of the art linear predictive features namely reflection coefficients, log area ratio, Line Spectral Frequency (LSF) and perceptual linear prediction are analyzed. The state of the art linear discriminant analysis is used to segregate probable cancerous voice samples. The dominance of a particular feature is understood using objective performance measures like accuracy, sensitivity, precision, specificity, F-ratio and miss rate. LSF performs slightly better than its counter representations with 89.03% accuracy and miss rate of 5.55%.
机译:在这项工作中,我们专注于开发非侵入性,经济高效且用户友好的方法来自动判别喉癌,这是人声箱附近细胞不受控制的生长。拟议的系统仅使用他们的语音作为系统的输入,就可以对癌症患者的重要语音特征进行建模。分析了四种最新的线性预测特征​​的数学表示形式,即反射系数,对数面积比,线谱频率(LSF)和感知线性预测。现有技术的线性判别分析用于分离可能的癌性语音样本。可以使用客观的性能指标(例如准确性,敏感性,准确性,特异性,F比和缺失率)来理解特定功能的优势。 LSF的性能比其计数器表示的要好一些,准确性为89.03%,丢失率为5.55%。

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