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Variation in Hospital Cost Trajectories at the End of Life by Age, Multimorbidity and Cancer Type

International journal of population data science(2023)

Univ Edinburgh | Univ Lausanne | NHS Fife | Royal Marsden NHS Fdn Trust | Univ Leeds

Cited 1|Views5
Abstract
BackgroundApproximately thirty thousand people in Scotland are diagnosed with cancer annually, of whom a third live less than one year. The timing, nature and value of hospital-based healthcare for patients with advanced cancer are not well understood. The study's aim was to describe the timing and nature of hospital-based healthcare use and associated costs in the last year of life for patients with a cancer diagnosis. MethodsWe undertook a Scottish population-wide administrative data linkage study of hospital-based healthcare use for individuals with a cancer diagnosis, who died aged 60 and over between 2012 and 2017. Hospital admissions and length of stay (LOS), as well as the number and nature of outpatient and day case appointments were analysed. Generalised linear models were used to adjust costs for age, gender, socioeconomic deprivation status, rural-urban (RU) status and comorbidity. ResultsThe study included 85,732 decedents with a cancer diagnosis. For 64,553 (75.3%) of them, cancer was the primary cause of death. Mean age at death was 80.01 (SD 8.15) years. The mean number of inpatient stays in the last year of life was 5.88 (SD 5.68), with a mean LOS of 7 days. Admission rates rose sharply in the last month of life. One year adjusted and unadjusted costs decreased with increasing age. A higher comorbidity burden was associated with higher costs. Major cost differences were present between cancer types. ConclusionsPeople in Scotland in their last year of life with cancer are high users of secondary care. Hospitalisation accounts for a high proportion of costs, particularly in the last month of life. Further research is needed to examine triggers for hospitalisations and to identify influenceable reasons for unwarranted variation in hospital use among different cancer cohorts.
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healthcare use,end of life care,secondary care,costs,cancer
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要点】:本研究探讨了苏格兰癌症晚期患者在生命最后一年中,医院医疗使用情况和相关成本的变化,揭示了年龄、多病共患和癌症类型对成本轨迹的影响。

方法】:通过苏格兰全人群行政数据关联研究,对2012年至2017年间60岁及以上癌症诊断患者的医院医疗使用情况进行统计分析。

实验】:研究纳入了85,732名癌症诊断死者,分析了住院次数、住院时长以及门诊和日间病例预约的数量和性质,使用广义线性模型调整成本。结果显示,住院率在生命最后一个月急剧上升,年龄越大,调整后的一年成本越低,多病共患负担越高,成本越高,不同癌症类型之间存在主要成本差异。