首页> 外文会议>Annual International Conference of the IEEE Engineering in Medicine and Biology Society >Potential Prognostic Markers in the Heart Rate Variability Features for Early Diagnosis of Sepsis in the Pediatric Intensive Care Unit using Convolutional Neural Network Classifiers
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Potential Prognostic Markers in the Heart Rate Variability Features for Early Diagnosis of Sepsis in the Pediatric Intensive Care Unit using Convolutional Neural Network Classifiers

机译:使用卷积神经网络分类器对小儿重症监护室脓毒症进行早期诊断的心率变异性特征的潜在预后标志物

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Blood infection due to different circumstances could immediately develop to an extreme body reaction that leads to a serious life-threatening condition, called Sepsis. Currently, therapeutic protocols through timely antibiotic resuscitation strategies play an important role to fight against the adverse conditions and improve survival. Therefore, timing, and more specifically early diagnosis of the illness, is crucially important for an effective treatment. Studies have indicated that vital signals such as heart rate variability (HRV) could provide potential prognostic biological markers that can help with early detection of sepsis before it is clinically diagnosed through its actual symptoms. Therefore, this study employs neonatal and pediatric electrocardiogram (ECG) to extract 52 hourly sets of linear and non-linear features from the HRV, starting from 24 hours prior to the clinical diagnosis of sepsis in patients with positive blood cultures (n=14). Similar sets of features were also obtained from a non-sepsis control group to create an evaluation benchmark (n=14).In particular, this study initially demonstrates how the variations within the 24 hours values of specific HRV feature-sets could effectively reveal prognostic information about the evolution of sepsis, prior to the actual clinical diagnosis. Moreover, this study demonstrates that differences in the values of a particular set of features at 22 hours before the actual clinical diagnosis/symptoms can be reliably used to train a convolutional neural network for automatic classification between the individuals in the sepsis and non-sepsis groups with 88.89±7.86% accuracy.
机译:由于不同情况引起的血液感染可能会立即发展为一种极端的身体反应,从而导致严重的威胁生命的状况,称为脓毒症。当前,通过及时的抗生素复苏策略的治疗方案在对抗不利条件和提高存活率方面起着重要作用。因此,时机,尤其是疾病的早期诊断,对于有效治疗至关重要。研究表明,诸如心率变异性(HRV)之类的重要信号可能会提供潜在的预后生物学指标,有助于在通过实际症状临床诊断出败血症之前及早发现败血症。因此,这项研究采用新生儿和小儿心电图(ECG)从HRV中提取52个小时的线性和非线性特征集,从临床诊断为阳性血培养的败血症的患者24小时开始(n = 14) 。还从非败血症对照组中获得了相似的特征集以建立评估基准(n = 14)。特别是,这项研究最初证明了特定HRV特征集在24小时内的变化如何能够有效地揭示预后。在实际临床诊断之前,有关败血症演变的信息。此外,这项研究表明,在实际临床诊断/症状出现之前的22小时,一组特定功能的值差异可以可靠地用于训练卷积神经网络,以对败血症和非败血症组中的个体进行自动分类。精度为88.89±7.86%。

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