Sepsis and Septic Shock Analysis using Neural Networks

C. Schuh
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引用次数: 12

Abstract

After major surgery many patients develop signs and symptoms of generalized inflammation, which is defined as Systemic Inflammatory Response Syndrome (SIRS). To examine the systemic inflammatory response syndrome in the intensive care unit (ICU) after cardiac and thoracic surgery a retrospective study was performed on 1674 selected patients admitted in the Cardiothoracic ICU of the University Hospital of Vienna. SIRS was defined according to the American College of Chest Physicians / Society of Critical Care Medicine (ACCP / SCCM) Consensus Conference. The term's SIRS, sepsis, septic shock and MODS (multi organ dysfunction syndrome) are used to describe the different extents of inflammation and infections. In the first phase the moment of the first occurrence of SIRS, and of severe SIRS was determined. An SIRS episode was defined as a time interval from the beginning of SIRS until the receding of the symptoms for more than 24 hours. Based on this information, an artificial neural network (ANN) was constructed to predict severe SIRS. SIRS was present in 1544 patients (92.2%), SIRS with additional signs of organ dysfunction evolving in 76.1% of the cases; the progression took less than 24 hours in 87.9% of the cases. The presence of signs of the SIRS on the first operative day is hardly suitable for the risk prediction. A significant correlation between the number of SIRS episodes and the outcome for each individual patient was found. The number of SIRS episodes could be an accurate parameter for estimating the outcome and the treatment outlay.
用神经网络分析脓毒症和感染性休克
大手术后,许多患者出现全身性炎症的体征和症状,这被定义为全身炎症反应综合征(SIRS)。为了研究心脏和胸外科手术后重症监护病房(ICU)的全身性炎症反应综合征,我们对入选维也纳大学医院心胸ICU的1674例患者进行了回顾性研究。SIRS是根据美国胸科医师学会/重症医学学会(ACCP / SCCM)共识会议定义的。SIRS、脓毒症、脓毒性休克和MODS(多器官功能障碍综合征)被用来描述不同程度的炎症和感染。在第一阶段,确定首次发生SIRS和严重SIRS的时刻。SIRS发作定义为从SIRS开始到症状消退超过24小时的时间间隔。基于这些信息,构建了人工神经网络(ANN)来预测严重的SIRS。1544例(92.2%)患者出现SIRS, 76.1%的病例伴有器官功能障碍的体征;87.9%的病例进展时间少于24小时。在手术第一天出现SIRS的迹象很难用于风险预测。发现SIRS发作次数与个体患者预后之间存在显著相关性。SIRS发作次数可以作为估计预后和治疗费用的准确参数。
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