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Early-warning of ARDS using novelty detection and data fusion

机译:使用新奇检测和数据融合的ARDS的早期预警

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Acute respiratory distress syndrome (ARDS) is a critical condition that disturbs the respiratory system and may lead to death. Early identification of this syndrome is crucial for the implementation of preventive measures. The present paper focuses on the prediction of the onset of this syndrome using physiological records of patients. Heart rate, respiratory rate, peripheral arterial oxygen saturation and mean airway blood pressure were considered. The method proposed in this paper uses first distance-based novelty detection that allows detecting deviations from normal states for each signal. Then, linear and nonlinear kernel-based data fusion algorithms are introduced to combine the individual signal decisions. The proposed method is evaluated using the MIMIC II physiological database. As a result, ARDS is detected in the early phases of occurrence with sensitivity and specificity of 65% and 100% respectively for the combination of all the signals in study. Moreover, the proposed method outperforms current state-of-the-art methods in real-time surveillance of ARDS using only physiological data with an average prediction before 39 h of onset.
机译:急性呼吸窘迫综合征(ARDS)是一种扰乱呼吸系统的危急情况,可能导致死亡。这种综合征的早期识别对于实施预防措施至关重要。本文侧重于使用患者生理记录预测该综合征的发作。考虑心率,呼吸速率,外周血动脉氧饱和度和平均气道血压。本文提出的方法使用了基于距离的新颖性检测,允许检测来自每个信号的正常状态的偏差。然后,引入了基于线性和非线性内核的数据融合算法以组合各个信号决策。使用模拟II生理数据库评估所提出的方法。结果,在研究的敏感性和特异性的早期阶段中检测到ARDS,分别用于所有在研究中的所有信号的组合的65%和100%。此外,所提出的方法在实时监测ARDS的目前最先进的方法,仅使用39小时之前的生理数据进行平均预测。

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