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Multi-class Surveillance for Acute Respiratory Distress Syndrome using Belief Functions

机译:基于信念函数的急性呼吸窘迫综合征多分类监测

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The high incidence of pathologies implies the necessity of developing and implementing health surveillance technologies. This paper proposes a multi-class surveillance approach for a particular pathology, which is the acute respiratory distress syndrome. The multi-class model uses parameters extraction and belief functions theory applied on four vital signs. Vital signs are heart rate, respiratory rate, blood oxygen saturation and blood pressure. Thus, different linear and nonlinear parameters are extracted from these vital signs. A modeling of each class according to each parameter is performed in the framework of the belief functions theory. Then, these models are affected by a measure of confidence according to each parameter and combined together to lead finally to one model that distinguishes between the multi classes. This multi-class surveillance approach has shown interesting performances for the prediction of ARDS.
机译:病理的高发意味着必须开发和实施健康监测技术。本文针对一种特殊的病理学,即急性呼吸窘迫综合征,提出了一种多类别的监测方法。多类模型使用了应用于四个生命体征的参数提取和置信函数理论。生命体征是心率,呼吸频率,血氧饱和度和血压。因此,从这些生命体征中提取出不同的线性和非线性参数。在置信函数理论的框架内,根据每个参数对每个类别进行建模。然后,这些模型会受到根据每个参数的置信度度量的影响,并组合在一起最终形成一个区分多类的模型。这种多类别的监视方法已显示出用于ARDS预测的有趣性能。

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