The Cumulative Perioperative Model: Predicting 30-Day Mortality in Abdominal Surgery Cancer Patients.

Risa B Myers, Joseph R Ruiz, Christopher M Jermaine, Joseph L Nates
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Abstract

Objectives: 1) To develop a cumulative perioperative model (CPM) using the hospital clinical course of abdominal surgery cancer patients that predicts 30 and 90-day mortality risk; 2) To compare the predictive ability of this model to ten existing other models.

Materials and methods: We constructed a multivariate logistic regression model of 30 (90)-day mortality, which occurred in 106 (290) of the cases, using 13,877 major abdominal surgical cases performed at the University of Texas MD Anderson Cancer Center from January 2007 to March 2014. The model includes race, starting location (home, inpatient ward, intensive care unit or emergency center), Charlson Comorbidity Index, emergency status, ASA-PS classification, procedure, surgical Apgar score, destination after surgery (hospital ward location) and delayed intensive care unit admit within six days. We computed and compared the model mortality prediction ability (C-statistic) as we accumulated features over time.

Results: We were able to predict 30 (90)-day mortality with C-statistics from 0.70 (0.71) initially to 0.87 (0.84) within six days postoperatively.

Conclusion: We achieved a high level of model discrimination. The CPM enables a continuous cumulative assessment of the patient's mortality risk, which could then be used as a decision support aid regarding patient care and treatment, potentially resulting in improved outcomes, decreased costs and more informed decisions.

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累积围手术期模型:预测腹部手术癌症患者30天死亡率。
目的:1)利用腹部外科肿瘤患者的住院临床病程建立围手术期累积模型(CPM),预测30天和90天的死亡风险;2)将该模型的预测能力与现有的10个模型进行比较。材料与方法:利用2007年1月至2014年3月在德克萨斯大学MD安德森癌症中心进行的13877例腹部外科手术病例,构建了30(90)天死亡率的多变量logistic回归模型,其中106(290)例发生死亡。该模型包括比赛、起跑地点(家庭、住院病房、重症监护病房或急救中心)、Charlson共病指数、急诊状态、ASA-PS分类、手术程序、手术Apgar评分、手术后目的地(医院病房位置)和6天内延迟入住重症监护病房。随着时间的推移,我们计算并比较了模型的死亡率预测能力(c统计)。结果:我们能够预测30(90)天的死亡率,c统计量在术后6天内从0.70(0.71)到0.87(0.84)。结论:我们获得了高水平的模型判别。CPM能够对患者死亡风险进行持续累积评估,然后将其用作患者护理和治疗方面的决策支持援助,从而可能改善结果,降低成本并做出更明智的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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