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仅使用实验室指标列线图预测急诊入院结局

Predicting Outcomes in Emergency Medical Admissions Using a Laboratory Only Nomogram.

作者信息

Cournane Seán, Conway Richard, Byrne Declan, O'Riordan Deirdre, Silke Bernard

机构信息

Medical Physics and Bioengineering Department, St. James's Hospital, Dublin 8, Ireland.

Department of Internal Medicine, St. James's Hospital, Dublin 8, Ireland.

出版信息

Comput Math Methods Med. 2017;2017:5267864. doi: 10.1155/2017/5267864. Epub 2017 Nov 14.

Abstract

BACKGROUND

We describe a nomogram to explain an Acute Illness Severity model, derived from emergency room triage and admission laboratory data, to predict 30-day in-hospital survival following an emergency medical admission.

METHODS

For emergency medical admissions (96,305 episodes in 50,612 patients) between 2002 and 2016, the relationship between 30-day in-hospital mortality and admission laboratory data was determined using logistic regression. The previously validated Acute Illness Severity model was then transposed to a Kattan-style nomogram with a Stata user-written program.

RESULTS

The Acute Illness Severity was based on the admission Manchester triage category and biochemical laboratory score; these latter were based on the serum albumin, sodium, potassium, urea, red cell distribution width, and troponin status. The laboratory admission data was predictive with an AUROC of 0.85 (95% CI: 0.85, 0.86). The sensitivity was 94.4%, with a specificity of 62.7%. The positive predictive value was 21.2%, with a negative predictive value of 99.1%. For the Kattan-style nomogram, the regression coefficients are converted to a 100-point scale with the predictor parameters mapped to a probability axis. The nomogram would be an easy-to-use tool at the bedside and for educational purposes, illustrating the relative importance of the contribution of each predictor to the overall score.

CONCLUSION

A nomogram to illustrate and explain the prognostic factors underlying an Acute Illness Severity Score system is described.

摘要

背景

我们描述了一种列线图,用于解释一种急性疾病严重程度模型,该模型源自急诊室分诊和入院实验室数据,以预测急诊入院后30天的院内生存率。

方法

对于2002年至2016年间的急诊入院病例(50,612例患者中的96,305次发作),使用逻辑回归确定30天院内死亡率与入院实验室数据之间的关系。然后使用Stata用户编写的程序将先前验证的急性疾病严重程度模型转换为卡坦风格的列线图。

结果

急性疾病严重程度基于入院时的曼彻斯特分诊类别和生化实验室评分;后者基于血清白蛋白、钠、钾、尿素、红细胞分布宽度和肌钙蛋白状态。实验室入院数据具有预测性,曲线下面积(AUROC)为0.85(95%可信区间:0.85, 0.86)。敏感性为94.4%,特异性为62.7%。阳性预测值为21.2%,阴性预测值为99.1%。对于卡坦风格的列线图,回归系数转换为100分制,预测参数映射到概率轴上。该列线图将是一种便于在床边使用和用于教育目的的工具,说明了每个预测因素对总分贡献的相对重要性。

结论

描述了一种列线图,用于说明和解释急性疾病严重程度评分系统背后的预后因素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/59d0/5705890/ae0f03cc25be/CMMM2017-5267864.001.jpg

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