结果评估与临床决策支持系统的整合:在新生儿重症监护病房(NICU)的应用

M. Frize, Jeff Gilchrist, Hasmik Martirosyan, E. Bariciak
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引用次数: 9

摘要

我们之前的研究导致了使用高质量存档数据库对新生儿重症监护病房(NICU)婴儿死亡率风险估计的发展。创建了一个决策支持系统,其中包含临床医生模块,其中包含相关患者信息和各种结果估计;PPADS(医生-父母决策支持)工具还包含一个供父母使用的模块,目的是帮助他们与医生就婴儿护理方向共同做出决定。新的工作开发了ANN-Builder,它使用一个开源的人工神经网络库,可以处理实时数据流,并自动提供死亡率风险估计的过程。此外,患者数据和风险评估成功地整合到PPADS工具中。死亡率估计超出了临床预期。下一步也是最后一步是替换数据中的缺失值,并为系统提供的风险估计中的重大变化添加警报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integration of outcome estimations with a clinical decision support system: Application in the neonatal intensive care unit (NICU)
Our previous research led to the development of mortality risk estimations for infants in the neonatal intensive care unit (NICU) using quality archived databases. A decision support system was created with a clinician module containing relevant patient information and a variety of outcome estimations; the PPADS (Physician-Parent Decision Support) tool also contains a module for parents with the aim to help them make joint decisions with physicians on the direction of care for their infant. New work developed the ANN-Builder which uses an open-source artificial neural network library that would enable handling real-time data streaming and automate the process of providing risk estimations of mortality. Additionally, the patient data and risk estimations were successfully integrated into the PPADS tool. The mortality estimations surpass the clinical expectations. The next and final step will be to replace missing values in the data and add alarms for major changes in the risk estimations provided by the system.
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