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一个用于预测终末期癌症患者 7 天生存率的公式。

A proposed prognostic 7-day survival formula for patients with terminal cancer.

机构信息

Department of Family Medicine, Tainan Municipal Hospital, Tainan, Taiwan, Republic of China.

出版信息

BMC Public Health. 2009 Sep 29;9:365. doi: 10.1186/1471-2458-9-365.

Abstract

BACKGROUND

The ability to identify patients for hospice care results in better end-of-life care. To develop a validated prognostic scale for 7-day survival prediction, a prospective observational cohort study was made of patients with terminal cancer.

METHODS

Patient data gathered within 24 hours of hospital admission included demographics, clinical signs and symptoms and their severity, laboratory test results, and subsequent survival data. Of 727 patients enrolled, data from 374 (training group) was used to develop a prognostic tool, with the other 353 serving as the validation group.

RESULTS

Five predictors identified by multivariate logistic regression analysis included patient's cognitive status, edema, ECOG performance status, BUN and respiratory rate. A formula of the predictor model based on those five predictors was constructed. When probability was >0.2, death within 7 days was predicted in the training group and validation group, with sensitivity of 80.9% and 71.0%, specificity of 65.9% and 57.7%, positive predictive value of 42.6% and 26.8%, and negative predictive value (NPV) of 91.7% and 90.1%, respectively.

CONCLUSION

This predictor model showed a relatively high sensitivity and NPV for predicting 7-day survival among terminal cancer patients, and could increase patient satisfaction by improving end-of-life care.

摘要

背景

识别适合临终关怀的患者可以改善临终关怀的效果。为了开发一种经过验证的、用于预测 7 天生存率的预后量表,我们对终末期癌症患者进行了一项前瞻性观察队列研究。

方法

在患者入院后 24 小时内收集患者的人口统计学数据、临床体征和症状及其严重程度、实验室检查结果以及随后的生存数据。在纳入的 727 名患者中,有 374 名(训练组)的数据用于开发预后工具,其余 353 名(验证组)的数据用于验证。

结果

多变量逻辑回归分析确定了 5 个预测因素,包括患者的认知状态、水肿、ECOG 表现状态、BUN 和呼吸频率。基于这 5 个预测因素的预测模型公式被构建。当概率>0.2 时,训练组和验证组预测患者在 7 天内死亡,其灵敏度分别为 80.9%和 71.0%,特异性分别为 65.9%和 57.7%,阳性预测值分别为 42.6%和 26.8%,阴性预测值(NPV)分别为 91.7%和 90.1%。

结论

该预测模型对预测终末期癌症患者 7 天生存率具有较高的灵敏度和 NPV,可通过改善临终关怀来提高患者的满意度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8f6d/2761894/c1445e5e2e1b/1471-2458-9-365-1.jpg

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