Philips Research North America, United States.
Philips Research North America, United States.
Resuscitation. 2018 Jan;122:99-105. doi: 10.1016/j.resuscitation.2017.10.026. Epub 2017 Nov 6.
Early detection of deterioration could facilitate more timely interventions which are instrumental in reducing transfer to higher levels of care such as Intensive Care Unit (ICU) and mortality [1,2].
We developed the Early Deterioration Indicator (EDI) which uses log likelihood risk of vital signs to calculate continuous risk scores. EDI was developed using data from 11,864 general ward admissions. To validate EDI, we calculated EDI scores on an additional 2418 general ward stays and compared it to the Modified Early Warning Score (MEWS) and National Early Warning Score (NEWS). EDI was trained using the most significant variables in predicting deterioration by leveraging the knowledge from a large dataset through data mining. It was implemented electronically for continuous automatic computation. The discriminative performance of EDI, MEWS, and NEWS was calculated before deterioration using the area under the receiver operating characteristic curve (AUROC). Additionally, the performance of the 3 scores for 24h prior to deterioration were computed. EDI was a better discriminator of deterioration than MEWS or NEWS; AUROC values for the validation dataset were: EDI - 0.7655, NEWS - 0.6569, MEWS - 0.6487. EDI also identified more patients likely to deteriorate for the same specificity as NEWS or MEWS. EDI had the best performance among the 3 scores for the last 24h of the patient stay.
EDI detects more deteriorations for the same specificity as the other two scores. Our results show that EDI performs better at predicting deterioration than commonly used NEWS and MEWS.
早期发现病情恶化有助于更及时地进行干预,这对于减少向更高水平的护理(如重症监护病房[ICU])和降低死亡率至关重要[1,2]。
我们开发了早期恶化指标(EDI),它使用生命体征的对数似然风险来计算连续风险评分。EDI 是使用来自 11864 例普通病房入院的数据开发的。为了验证 EDI,我们在另外 2418 例普通病房住院患者中计算了 EDI 评分,并将其与改良早期预警评分(MEWS)和国家早期预警评分(NEWS)进行了比较。EDI 通过利用大数据集中的知识进行数据挖掘,利用预测恶化的最显著变量进行训练。它被电子实现,用于连续自动计算。在恶化前使用接受者操作特征曲线(AUROC)下的面积来计算 EDI、MEWS 和 NEWS 的判别性能。此外,还计算了 3 个评分在恶化前 24 小时的性能。与 MEWS 或 NEWS 相比,EDI 是恶化的更好判别器;验证数据集的 AUROC 值分别为:EDI-0.7655、NEWS-0.6569、MEWS-0.6487。EDI 还可以识别出更多可能恶化的患者,而特异性与 NEWS 或 MEWS 相同。在患者住院的最后 24 小时内,EDI 在这 3 个评分中的表现最好。
EDI 在具有相同特异性的情况下检测到更多的恶化情况。我们的结果表明,EDI 在预测恶化方面的表现优于常用的 NEWS 和 MEWS。