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Feasibility of Automated Vital Sign Instability Detection in Children Admitted to the Pediatric Intensive Care Unit

机译:儿童重症监护病房自动进行生命体征不稳定性检测的可行性

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Children admitted to a Pediatric Intensive Care Unit (PICU) are at risk of deterioration, which can lead to a cardiac arrest if undetected. Outcomes after pediatric cardiac arrest remain poor, even for witnessed, inhospital events. Thus, early detection of deterioration is paramount; ideally long before the risk of harm increases. Vital signs trends of patients admitted to the PICU at BC Children’s Hospital were extracted from local outcomes registries (n=96). A rule-based algorithm (RBA) for detecting vital signs instabilities was developed; we did so in the expectation of enhancing clinician trust compared to black box approaches such as deep neural networks. Two PICU physicians provided expert classifications for episodes indicative of vital signs instability or their absence. The RBA’s best result generated 91.6% correct, 6% false negatives, and 3% false positives on the test data (n=29) showing promise for eventual application in a clinical setting. Future research is needed to refine the algorithm and implement it in clinical practice.
机译:进入儿科重症监护病房(PICU)的儿童面临恶化的风险,如果未被发现,这可能导致心脏骤停。在儿科心脏骤停后的结果仍然是穷人,即使是目睹的,Inhospoment事件也是如此。因此,早期发现劣化是至关重要的;理想地在危害风险增加之前。在BC儿童医院录取PICU的患者的生命迹象表明,从当地结果注册管理机构提取(n = 96)。开发了一种用于检测生命符号稳定性的基于规则的算法(RBA);我们在预期加强临床医生信任的期望与深度神经网络等黑匣子的方法相比。两张PICU医师为表演的剧集提供了专家分类,这表明生命体征不稳定或缺席。 RBA的最佳结果在测试数据(n = 29)上产生了91.6%的正确,6%的假否定,以及3%的假阳性,显示了临床环境中最终应用的承诺。需要进行未来的研究来改进算法并在临床实践中实施。

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