首页> 外文会议>JSME Motion and Vibration Conference;ASME Annual Dynamic Systems and Control Division Conference >TIME-FREQUENCY ANALYSIS OF HEMODYNAMIC WAVEFORMS TO PREDICT THE OCCURRENCE AND SEVERITY OF PERIVENTRICULAR LEUKOMALACIA
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TIME-FREQUENCY ANALYSIS OF HEMODYNAMIC WAVEFORMS TO PREDICT THE OCCURRENCE AND SEVERITY OF PERIVENTRICULAR LEUKOMALACIA

机译:血流动力学波形的时频分析预测室周白血病的发生率和严重程度

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This paper is concerned with the prediction of the occurrence and severity of Periventricular Leukomalacia (PVL), a form of white-matter brain injury that occurs often in neonates after heart surgery. The data which is collected over a period of twelve hours after the cardiac surgery contains vital measurements. The fact that the exact cause of the PVL have still not been clearly understood renders a mathematical modeling approach for fault diagnosis impractical, if not impossible. Hence, the decision tree classification technique has been selected for its capacity for discovering rules and novel associations in the data. It classifies groups based on reducing uncertainty in the classified data. From a physiological point of view we know that there are several regulatory mechanisms responsible for fluctuation of the hemodynamic variables at different time scales. To discover the most important active physiological components which might lead to the occurrence of PVL and possibly affect its severity, we focus on the variation in the data in one minute, twenty minute and two hour periods. We calculate the energy of continuous wavelet transform coefficients of vital data at these time scales as a measure of variation in the different time frames. The results obtained from developing decision tree classifiers show that among all variations in all the variables, 2 hour and 20 minute variations in the heart rate, 1 minute and 20 minute variations in Oxygen saturation, and 2 hour variations in the mean arterial pressure are the most important parameters to be able to predict PVL occurrence.
机译:本文涉及对脑室周围白细胞软化(PVL)的发生和严重程度的预测,PVL是一种白色物质的脑损伤,在心脏手术后的新生儿中经常发生。心脏手术后十二小时内收集的数据包含重要的测量结果。尚未清楚了解PVL的确切原因这一事实使用于故障诊断的数学建模方法不可行,甚至不可行。因此,已经选择了决策树分类技术,因为它具有发现数据中的规则和新颖关联的能力。它基于减少分类数据中的不确定性对组进行分类。从生理学的角度来看,我们知道有几种调节机制负责不同时间范围内的血液动力学变量的波动。为了发现可能导致PVL发生并可能影响其严重程度的最重要的活性生理成分,我们着眼于一分钟,二十分钟和两小时内数据的变化。我们在这些时间尺度上计算生命数据的连续小波变换系数的能量,作为不同时间范围内变化的度量。从开发决策树分类器获得的结果表明,在所有变量的所有变化中,心率分别为2小时和20分钟变化,氧饱和度分别为1分钟和20分钟变化,平均动脉压2小时变化。能够预测PVL发生的最重要参数。

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