School of Electrical Engineering and Telecommunications, The University of New South Wales, Sydney, NSW 2052, Australia.
Physiol Meas. 2010 Jun;31(6):775-93. doi: 10.1088/0967-3334/31/6/004. Epub 2010 May 7.
Sepsis has been defined as the systemic response to infection in critically ill patients, with severe sepsis and septic shock representing increasingly severe stages of the same disease. Based on the non-invasive cardiovascular spectrum analysis, this paper presents a pilot study on the potential use of the nonlinear support vector machine (SVM) in the classification of the sepsis continuum into severe sepsis and systemic inflammatory response syndrome (SIRS) groups. 28 consecutive eligible patients attending the emergency department with presumptive diagnoses of sepsis syndrome have participated in this study. Through principal component analysis (PCA), the first three principal components were used to construct the SVM feature space. The SVM classifier with a fourth-order polynomial kernel was found to have a better overall performance compared with the other SVM classifiers, showing the following classification results: sensitivity = 94.44%, specificity = 62.50%, positive predictive value = 85.00%, negative predictive value = 83.33% and accuracy = 84.62%. Our classification results suggested that the combinatory use of cardiovascular spectrum analysis and the proposed SVM classification of autonomic neural activity is a potentially useful clinical tool to classify the sepsis continuum into two distinct pathological groups of varying sepsis severity.
脓毒症已被定义为危重病患者感染的全身反应,严重脓毒症和脓毒性休克代表了同一疾病的严重程度不断增加的阶段。基于无创心血管频谱分析,本文提出了一项关于非线性支持向量机(SVM)在将脓毒症连续体分类为严重脓毒症和全身炎症反应综合征(SIRS)组中的潜在用途的初步研究。28 名连续符合条件的患者在急诊室就诊,诊断为脓毒症综合征。通过主成分分析(PCA),使用前三个主成分来构建 SVM 特征空间。与其他 SVM 分类器相比,四阶多项式核 SVM 分类器具有更好的整体性能,分类结果如下:敏感性=94.44%,特异性=62.50%,阳性预测值=85.00%,阴性预测值=83.33%和准确性=84.62%。我们的分类结果表明,心血管频谱分析与自主神经活动的建议 SVM 分类相结合,是一种将脓毒症连续体分类为两种不同严重程度的潜在有用的临床工具。