首页> 外文期刊>Biomedical Engineering: Applications, Basis and Communications >NONLINEAR HEART RATE VARIABILITY-BASED ANALYSIS AND PREDICTION OF PERFORMANCE STATUS IN PULMONARY METASTASES PATIENTS
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NONLINEAR HEART RATE VARIABILITY-BASED ANALYSIS AND PREDICTION OF PERFORMANCE STATUS IN PULMONARY METASTASES PATIENTS

机译:基于非线性心率变化的肺转移患者性能状态的分析与预测

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摘要

Cancer causes chronic stress and is associated with impaired autonomic nervous system (ANS). Heart rate variability (HRV) has been suggested to be an important tool in the identification and prediction of performance status (PS) in cancer. Lead II surface electrocardiogram (ECG) was recorded from 24 pulmonary metastases (PM) subjects and 30 healthy controls for nonlinear HRV analysis. Artificial neural network (ANN) and support vector machine (SVM) were applied for the prediction analysis. Analysis of variance (ANOVA) along with post-hoc Tukey’s HSD test was conducted using statistical R, 64-bit, v.3.3.2, at p≤0.05. The obtained results suggested lower HRV that increases with cancer severity from the Eastern Cooperative Oncology Group (ECOG)1 PS to ECOG4 PS. ANOVA results stated that approximate entropy (ApEn) (F-statistic=5.0821, p=0.001661), detrended fluctuation analysis (DFA) α2 (F-statistic=3.2332, p=0.01969) and correlation dimension (CD) (F-statistic=5.3955, p=0.001111) were significant. The 13 nonlinear features were fed to ANN and SVM to obtain 82.25% and 100% accuracies, respectively. Nonlinear HRV analysis has given promising results in the prediction of diagnosis of PS in PM patients. These inputs would be very useful for clinicians to diagnose PS in their cancer patients and improve their quality of living.
机译:癌症导致慢性应激,与自主神经系统(ANS)受损有关。心率变异性(HRV)已被建议成为癌症中识别和预测性能状态(PS)的重要工具。引线II表面心电图(ECG)从24例肺转移(PM)受试者和30个用于非线性HRV分析的健康对照中记录。应用人工神经网络(ANN)和支持向量机(SVM)用于预测分析。使用统计R,64位,V.3.3.3.2,在P≤0.05中进行差异分析(ANOVA)以及HOC Tukey的HSD测试。所得结果表明,从东方合作肿瘤学群(ECOG)1 PS到ECOG4 PS的癌症严重程度增加了较低的HRV。 ANOVA结果表明,近似熵(APEN)(F函数= 5.0821,P = 0.001661),减法的波动分析(DFA)α2(F函数= 3.2332,P = 0.01969)和相关尺寸(CD)(F-Statistic = 5.3955,p = 0.001111)是显着的。将13个非线性特征送入ANN和SVM,分别获得82.25%和100%的精度。非线性HRV分析具有有前途的导致PM患者PS的诊断。这些投入对于临床医生来说非常有用,可在其癌症患者中诊断PS并提高他们的生活质量。

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