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A Bayesian network for early diagnosis of sepsis patients: a basis for a clinical decision support system

机译:贝叶斯网络对败血症患者的早期诊断:临床决策支持系统的基础

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Sepsis is a severe medical condition caused by an inordinate immune response to an infection. Early detection of sepsis symptoms is important to prevent the progression into the more severe stages of the disease, which kills one in four it effects. Electronic medical records of 1492 patients containing 233 cases of sepsis were used in a clustering analysis to identify features that are indicative of sepsis and can be further used for training a Bayesian inference network. The Bayesian network was constructed using the systemic inflammatory response syndrome criteria, mean arterial pressure, and lactate levels for sepsis patients. The resulting network reveals a clear correlation between lactate levels and sepsis. Furthermore, it was shown that lactate levels may be predicative of the SIRS criteria. In this light, Bayesian networks of sepsis patients hold the promise of providing a clinical decision support system in the future.
机译:败血症是由对感染的过度免疫反应引起的严重医学病症。败血症症状的早期发现对于防止疾病发展到更严重的阶段非常重要,这种疾病会杀死四分之一的疾病。在聚类分析中使用了包含233例脓毒症的1492例患者的电子病历,以识别表明脓毒症的特征,并可进一步用于训练贝叶斯推理网络。使用败血症患者的全身炎症反应综合征标准,平均动脉压和乳酸水平构建贝叶斯网络。由此产生的网络揭示了乳酸水平和败血症之间的明确关联。此外,研究表明乳酸水平可能是SIRS标准的基础。因此,败血症患者的贝叶斯网络有望在将来提供临床决策支持系统。

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