König Hans-Helmut, Leicht Hanna, Bickel Horst, Fuchs Angela, Gensichen Jochen, Maier Wolfgang, Mergenthal Karola, Riedel-Heller Steffi, Schäfer Ingmar, Schön Gerhard, Weyerer Siegfried, Wiese Birgitt, Bussche Hendrik van den, Scherer Martin, Eckardt Matthias
BMC Health Serv Res. 2013 Jun 15;13:219. doi: 10.1186/1472-6963-13-219.
To analyze the impact of multimorbidity (MM) on health care costs taking into account data heterogeneity.
Data come from a multicenter prospective cohort study of 1,050 randomly selected primary care patients aged 65 to 85 years suffering from MM in Germany. MM was defined as co-occurrence of ≥3 conditions from a list of 29 chronic diseases. A conditional inference tree (CTREE) algorithm was used to detect the underlying structure and most influential variables on costs of inpatient care, outpatient care, medications as well as formal and informal nursing care.
Irrespective of the number and combination of co-morbidities, a limited number of factors influential on costs were detected. Parkinson's disease (PD) and cardiac insufficiency (CI) were the most influential variables for total costs. Compared to patients not suffering from any of the two conditions, PD increases predicted mean total costs 3.5-fold to approximately € 11,000 per 6 months, and CI two-fold to approximately € 6,100. The high total costs of PD are largely due to costs of nursing care. Costs of inpatient care were significantly influenced by cerebral ischemia/chronic stroke, whereas medication costs were associated with COPD, insomnia, PD and Diabetes. Except for costs of nursing care, socio-demographic variables did not significantly influence costs.
Irrespective of any combination and number of co-occurring diseases, PD and CI appear to be most influential on total health care costs in elderly patients with MM, and only a limited number of factors significantly influenced cost.
Current Controlled Trials ISRCTN89818205.
考虑数据异质性,分析共病对医疗保健成本的影响。
数据来自一项对德国1050名随机选取的65至85岁患有共病的初级护理患者进行的多中心前瞻性队列研究。共病定义为在29种慢性病列表中同时出现≥3种病症。使用条件推断树(CTREE)算法来检测住院护理、门诊护理、药物以及正式和非正式护理成本的潜在结构和最具影响力的变量。
无论共病的数量和组合如何,都检测到了对成本有影响的有限数量的因素。帕金森病(PD)和心脏功能不全(CI)是总成本最具影响力的变量。与未患这两种病症的患者相比,PD使预测的平均总成本增加3.5倍,每6个月约为11,000欧元,CI使总成本增加两倍,约为6,100欧元。PD的高总成本主要归因于护理成本。住院护理成本受脑缺血/慢性中风的显著影响,而药物成本与慢性阻塞性肺疾病(COPD)、失眠、PD和糖尿病相关。除护理成本外,社会人口统计学变量对成本没有显著影响。
无论同时发生的疾病的任何组合和数量如何,PD和CI似乎对患有共病的老年患者的总医疗保健成本影响最大,并且只有有限数量的因素对成本有显著影响。
当前受控试验ISRCTN89818205。