支持向量机的肺活量测量数据分析

Jitendra Khubani, M. Mhetre
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引用次数: 2

摘要

肺活量计是一种测量肺部吸入和呼出空气量的仪器。肺量测定法是呼吸医学中应用最广泛的诊断阻塞性肺疾病和排除限制性肺疾病的临床检测方法之一。在这项工作中,尝试使用支持向量回归来预测模式识别的准确性,以增强肺活量测定的研究。支持向量机在高维或无限维空间中构造一个或一组超平面,可用于分类、回归或其他任务。我们从不同的医院收集了数据。然后使用获取的数据来预测模式识别的准确性。由于该方法对资料不完整或资料记录不佳的肺部异常的诊断是有用的。应用支持向量机构建预测模型,选择多项式函数作为核函数。
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Spirometric data analysis by support vector machine
A spirometer is an apparatus for measuring the volume of air inspired and expired by the lungs. Spirometry is one of the most widely applied clinical tests in respiratory medicine to diagnose obstructive and to rule out restrictive pulmonary diseases. In this work, attempt has been made to predict pattern recognition accuracy using support vector regression in order to enhance the spirometric investigations. Support vector machine constructs a hyperplane or set of hyperplanes in a high-or infinite- dimensional space, which can be used for classification, regression, or other tasks. We have collected data from different hospitals. The acquired data are then used to predict pattern recognition accuracy. Since this method is useful in diagnosing the pulmonary abnormalities with incomplete data and data with poor recording. We applied the SVM to construct the prediction model and select Polynomial Function as the kernel function.
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