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Feature Selection of Voluntary Cough Patterns for Detecting Lung Diseases

机译:特色选择术语肺疾病的抗咳嗽模式

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Cough is a classic symptom of respiratory disease. Airflow patterns produced during a cough represent a portion of the maximum expiratory flow-volume curve which has often been used to diagnose lung disorders. We have previously described a system for detecting lung disease that was based on both the airflow and the acoustic properties of a voluntary cough. The system used 26 representative features of the cough airflow measurements and 111 of the cough sound pressure wave. Redundancy within the feature set was eliminated using principle component analysis (PCA). A classifier was developed based on the projections of the principle components. The objective of this study was to determine the effect of eliminating irrelevant features of the cough prior to the PCA classifier to maintain, or even improve, overall system accuracy. Four types of feature selection methods were examined. They included forward sequential selection (SFS), backward sequential selection (SBS), sequential plus l-take away r (SLR), and genetic algorithm (GA) techniques. Three coughs from 112 individual with and without lung disease were classified using this system, and the results were compared with the diagnosis of pulmonary physicians. The overall classification accuracy was 94% when no attempt was made to optimize the feature set. This can be compared with the results of the genetic algorithm which used only 59 out of 137 features and increased the average classifier accuracy to 97.6%. The accuracy (number of features) using the above-mentioned algorithms was; 97.32% (35) for the SFS; 96.71% (111) for the SBS; 97.08 % (42) for the LRS; and 97.62% (59) for the GA. In conclusion, all feature selection methods improved the classification accuracy while simultaneously reducing the number of features.
机译:咳嗽是呼吸系统疾病的经典症状。在咳嗽期间产生的气流模式代表了通常用于诊断肺病的最大呼气流量曲线的一部分。我们之前已经描述了一种检测基于气流和自愿咳嗽的声学性质的肺病的系统。该系统使用了26个代表特征的咳嗽气流测量和咳嗽声压力的111。使用原理分量分析(PCA)消除了功能集中的冗余。基于原理组件的预测开发了分类器。本研究的目的是确定在PCA分类器之前消除咳嗽无关的功能,以维持,甚至改善整体系统准确性。检查了四种类型的特征选择方法。它们包括向前顺序选择(SFS),向后顺序选择(SBS),顺序加L-Cake R(SLR)和遗传算法(GA)技术。使用该系统对112个单身的三次咳嗽咳嗽,并将结果与​​肺部医生的诊断进行了比较。当没有尝试优化功能集时,整体分类准确性为94%。这可以与遗传算法的结果进行比较,该遗传算法仅使用137个特征中的59个,并且将平均分类器精度增加到97.6%。使用上述算法的准确性(功能数量)是; 97.32%(35)为SFS; SBS的96.71%(111); LRS 97.08%(42);为GA为97.62%(59)。总之,所有特征选择方法都提高了分类准确性,同时减少了特征的数量。

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