比例危险模型
生存分析
危险系数
缓和医疗
癌症存活率
危害
比例(比率)
医学
总体生存率
癌症
统计
人口学
肿瘤科
内科学
置信区间
数学
生物
护理部
生态学
社会学
物理
量子力学
作者
Michael Downing,Francis Lau,Mary Lesperance,Nicholas Karlson,Jack Shaw,Craig Kuziemsky,Steve Bernard,Laura C. Hanson,Lola Olajide,Barbara Head,Christine Ritchie,Joan Harrold,David Casareti
标识
DOI:10.1177/082585970702300402
摘要
This paper aims to reconcile the use of Palliative Performance Scale (PPSv2) for survival prediction in palliative care through an international collaborative study by five research groups. The study involves an individual patient data meta-analysis on 1,808 patients from four original datasets to reanalyze their survival patterns by age, gender, cancer status, and initial PPS score. Our findings reveal a strong association between PPS and survival across the four datasets. The Kaplan-Meier survival curves show each PPS level as distinct, with a strong ordering effect in which higher PPS levels are associated with increased length of survival. Using a stratified Cox proportional hazard model to adjust for study differences, we found females lived significantly longer than males, with a further decrease in hazard for females not diagnosed with cancer. Further work is needed to refine the reporting of survival times/probabilities and to improve prediction accuracy with the inclusion of other variables in the models.
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