关于感染性休克死亡率预测的自适应状态知识提取

R. Brause
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引用次数: 5

摘要

死亡率的早期预测是重症监护医学尚未解决的问题之一。本文将医学症状建模为由隐马尔可夫状态之间的转换引起的观察结果。学习潜在的状态转移概率导致预测成功率约为91%。讨论了结果,并将其与所使用的模型联系起来。最后,反映了使用该模型的依据:脓毒性休克数据中是否存在状态?
本文章由计算机程序翻译,如有差异,请以英文原文为准。
About adaptive state knowledge extraction for septic shock mortality prediction
The early prediction of mortality is one of the unresolved tasks in intensive care medicine. This paper models medical symptoms as observations cased by transitions between hidden Markov states. Learning the underlying state transition probabilities results in a prediction probability success of about 91%. The results are discussed and put in relation to the model used. Finally, the rationales for using the model are reflected: Are there states in the septic shock data?.
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