Centre for Primary Care and Health Services Research, University of Manchester, Manchester, United Kingdom.
Usher Institute, The University of Edinburgh, Edinburgh, Scotland, United Kingdom.
PLoS Med. 2021 Jan 13;18(1):e1003514. doi: 10.1371/journal.pmed.1003514. eCollection 2021 Jan.
Patients with multimorbidities have the greatest healthcare needs and generate the highest expenditure in the health system. There is an increasing focus on identifying specific disease combinations for addressing poor outcomes. Existing research has identified a small number of prevalent "clusters" in the general population, but the limited number examined might oversimplify the problem and these may not be the ones associated with important outcomes. Combinations with the highest (potentially preventable) secondary care costs may reveal priority targets for intervention or prevention. We aimed to examine the potential of defining multimorbidity clusters for impacting secondary care costs.
We used national, Hospital Episode Statistics, data from all hospital admissions in England from 2017/2018 (cohort of over 8 million patients) and defined multimorbidity based on ICD-10 codes for 28 chronic conditions (we backfilled conditions from 2009/2010 to address potential undercoding). We identified the combinations of multimorbidity which contributed to the highest total current and previous 5-year costs of secondary care and costs of potentially preventable emergency hospital admissions in aggregate and per patient. We examined the distribution of costs across unique disease combinations to test the potential of the cluster approach for targeting interventions at high costs. We then estimated the overlap between the unique combinations to test potential of the cluster approach for targeting prevention of accumulated disease. We examined variability in the ranks and distributions across age (over/under 65) and deprivation (area level, deciles) subgroups and sensitivity to considering a smaller number of diseases. There were 8,440,133 unique patients in our sample, over 4 million (53.1%) were female, and over 3 million (37.7%) were aged over 65 years. No clear "high cost" combinations of multimorbidity emerged as possible targets for intervention. Over 2 million (31.6%) patients had 63,124 unique combinations of multimorbidity, each contributing a small fraction (maximum 3.2%) to current-year or 5-year secondary care costs. Highest total cost combinations tended to have fewer conditions (dyads/triads, most including hypertension) affecting a relatively large population. This contrasted with the combinations that generated the highest cost for individual patients, which were complex sets of many (6+) conditions affecting fewer persons. However, all combinations containing chronic kidney disease and hypertension, or diabetes and hypertension, made up a significant proportion of total secondary care costs, and all combinations containing chronic heart failure, chronic kidney disease, and hypertension had the highest proportion of preventable emergency admission costs, which might offer priority targets for prevention of disease accumulation. The results varied little between age and deprivation subgroups and sensitivity analyses. Key limitations include availability of data only from hospitals and reliance on hospital coding of health conditions.
Our findings indicate that there are no clear multimorbidity combinations for a cluster-targeted intervention approach to reduce secondary care costs. The role of risk-stratification and focus on individual high-cost patients with interventions is particularly questionable for this aim. However, if aetiology is favourable for preventing further disease, the cluster approach might be useful for targeting disease prevention efforts with potential for cost-savings in secondary care.
患有多种疾病的患者对医疗系统的需求最大,产生的支出最高。人们越来越关注确定特定的疾病组合以改善不良结局。现有研究已经确定了一般人群中少数常见的“集群”,但检查的数量有限可能会使问题过于简单化,而且这些集群可能与重要结局无关。具有最高(潜在可预防)二级医疗保健费用的组合可能揭示干预或预防的优先目标。我们旨在研究定义多种疾病集群以影响二级医疗保健成本的潜力。
我们使用了来自英格兰所有医院就诊的全国性、医院发病统计数据(2017/2018 年的患者队列超过 800 万),并根据 ICD-10 代码定义了 28 种慢性疾病的多种疾病(我们从 2009/2010 年填补了条件以解决潜在的编码不足问题)。我们确定了导致二级保健当前和前 5 年总成本以及潜在可预防的紧急住院费用最高的多种疾病组合的组合。我们检查了成本在独特疾病组合中的分布情况,以检验集群方法在高成本干预方面的潜力。然后,我们估计了独特组合之间的重叠情况,以检验集群方法在预防疾病积累方面的潜力。我们检查了年龄(65 岁以上/以下)和贫困(地区水平,十分位数)亚组中排名和分布的差异,以及考虑较少疾病的敏感性。我们的样本中有 8440133 个独特的患者,超过 400 万(53.1%)是女性,超过 300 万(37.7%)年龄在 65 岁以上。没有明确的多种疾病“高成本”组合作为干预的可能目标。超过 200 万(31.6%)的患者有 63124 种独特的多种疾病组合,每个组合对当前年度或 5 年的二级保健费用仅贡献一小部分(最高 3.2%)。最高总成本组合往往具有较少的疾病(对偶/三联体,大多数包括高血压),但影响相对较大的人群。这与为单个患者产生最高成本的组合形成鲜明对比,这些组合是影响较少人群的多种(6+)疾病的复杂组合。然而,所有包含慢性肾脏病和高血压或糖尿病和高血压的组合构成了二级保健总成本的重要比例,所有包含慢性心力衰竭、慢性肾脏病和高血压的组合具有最高比例的可预防急诊入院费用,这可能为预防疾病积累提供优先目标。结果在年龄和贫困亚组之间变化很小,敏感性分析也是如此。主要限制包括仅可从医院获得数据以及依赖医院对健康状况的编码。
我们的研究结果表明,不存在用于降低二级保健成本的集群靶向干预方法的明确多种疾病组合。对于这一目标,风险分层和关注具有高成本的个体患者的干预措施的作用特别值得怀疑。但是,如果病因有利于预防进一步的疾病,那么集群方法可能有助于针对具有潜在成本节约的疾病预防工作,以节省二级保健费用。