Summary box.
Consensus agreement on the taxonomy of patients living with more than one chronic condition is needed.
Prevention of chronic diseases through improvements to lifestyle behaviours remains paramount to tackling multiple chronic conditions (MCC); evaluations to establish cost-effective interventions are required.
Data reporting and monitoring systems, such as hospital coding, should specifically address and monitor MCCs.
Healthcare delivery systems need to adapt to manage more than one chronic condition simultaneously; this will be facilitated by innovative changes in healthcare payment mechanisms.
An increase in the resources to further the evidence base must be part of any strategic solution for MCCs.
Introduction
One in three adults globally suffers from multiple chronic conditions (MCC).1 This figure is closer to three out of four in older adults living in developed countries1 and is predicted to rise dramatically, with the proportion of patients with four or more diseases almost doubling between 2015 and 2035 in the UK.2
Yet the response from the health community is non-commensurate. In our 2017 overview of the burden from MCCs, presented at a World Economic Forum event in September 2017 alongside the United Nations General Assembly, we concluded that despite MCCs being so prevalent, there is a dearth of information on their prevalence, clustering, cost and patient burden.3
A 2018 systematic review published in BMJ Global Health by Sum et al aimed to quantify out-of-pocket expenditure (OOPE) on medicines in patients with MCCs.4 Using the context of the findings from Sum et al, we argue why MCCs warrant specific focus by the health community.
Terminology and definitions
Challenges persist in framing the topic of MCCs. First, there is no agreed taxonomy. Our research found that several terms including MCCs, multimorbidity, comorbidity and polychronic diseases are all used interchangeably to mean ‘more than one chronic condition’.3 However, experts deemed multimorbidity to signify end-stage disease and comorbidity to signify only one main condition.3 Second, there is no agreed definition of which ‘chronic’ conditions should be included in the context of MCCs, with studies including between 4 and 147 conditions.3 We previously found this lack of consensus can lead to variation in prevalence rates by up to threefold,3 and in the review by Sum et al resulted in too much heterogeneity to perform a meta-analysis.4 Also of note, the review by Sum et al focused on MCC but did not include the broader definition including long-term communicable conditions such as tuberculosis (TB) and HIV/AIDS.5 6
Current gaps in the evidence base
In addition to the noted dearth of academic literature,3 commonly used health, epidemiological and administrative data sources such as WHO, Global Burden of Disease and the International Classification of Diseases coding systems do not report specifically on MCCs which would otherwise contribute significantly to the available data.3 The evidence base is particularly scarce in younger populations and low/middle-income country settings. It is worth noting that development assistance for non-communicable diseases (NCD) has historically been disproportionately low: NCDs accounted for 49.8% of the disease burden whereas the level of health assistance allocated was just 2.3% to NCDs for low/middle-income countries in 2010.3 The amount of funding for MCCs is unknown but is likely to represent only a small proportion of that for NCDs overall. We are unlikely to see a change in how chronic conditions are managed until we increase funding for them.
Financial and social burden
MCCs accrue a markedly elevated cost and personal burden with some evidence of a doubling of healthcare expenditure with each additional chronic condition.7 In addition, individual patients are also impacted by elevated costs of MCCs if they are responsible for expenses associated with their healthcare usage. For example, OOPE is 2.1 times higher for older patients with MCCs than those without MCCs.8 Sum et al report that the greater the number of conditions, the higher the OOPE on medicines as a proportion of total healthcare expenditure.4 Furthermore, OOPEs for people with MCCs are increasing at a faster rate than wage growth or broader consumer inflation levels4 and elderly and low-income families are disproportionately affected.4 MCCs have the potential to adversely affect the lives of the most vulnerable members of society, particularly those without adequate health insurance coverage or access to universal healthcare systems.7
It is difficult to quantify OOPE accurately due to the sheer complexity of healthcare payment systems, including: large variations in copays, coinsurance, absolute caps and other payment models. As the studies arise from several differing health systems, the variation is likely to be even greater. Nevertheless, as the authors rightly emphasise, this finding highlights an urgent need to review and revise existing OOPE payment requirements for chronic conditions to move from single-disease frameworks to ones that take MCCs into account. Finally, the burden of MCCs also increases the burden of care on individuals while also reducing patients’ abilities to care for themselves.
Clusters of chronic conditions
Certain conditions occur together more frequently by virtue of high prevalence rates, shared risk factors or due to causation of one condition by another. A cluster of chronic conditions is when two or more chronic conditions occur together more often than expected.
Common clusters of conditions are shown in table 1: strong associations exist between depression associated with stroke and Alzheimer’s disease, and communicable conditions such as TB and HIV/AIDS with diabetes and cardiovascular disease (CVD), respectively.
Table 1.
Condition 1 | Condition 2 | Association* |
Ischaemic stroke | Depression | Relative risk: 3.1910 |
Diabetes | Tuberculosis | OR: 3.115 |
COPD | Tuberculosis | OR: 2.4711 |
HIV/AIDS | CVD | OR6: On ART: 2.0 Not on ART: 1.6 |
Diabetes | Ischaemic stroke | Relative risk: 1.912 |
Depression | Alzheimer’s and other dementias | Relative risk: 1.8513 |
*OR or relative risk (RR) of having condition 2 for those with condition 1.
ART, antiretroviral therapy; COPD, chronic obstructive pulmonary disease; CVD, cardiovascular disease (includes ischaemic stroke and ischaemic heart disease).
Sum et al reported that some clusters of conditions yielded greater OOPE for medications.4 This aligns with previous findings of greater healthcare expenditures on specific clusters of conditions.3 However, only one of the 14 studies that were included investigated this issue and it was limited to only two clusters of conditions, namely those including diabetes and acute coronary syndrome. While this issue warrants considerable further investigation, caution must be made in the interpretation of the findings from a single study from Australia9 in terms of making policy recommendations. A thorough investigation of all chronic conditions, including both NCDs and long-term communicable conditions, and covering different geographical health systems, would be required to truly identify which clusters of conditions account for higher OOPE.
In low/middle-income countries, where conditions such as diabetes and TB are highly prevalent, the failure to take clustering into account risks serious failures in the epidemiological estimates and clinical management of these conditions. Clusters are also highly amenable to large improvements in health and cost outcomes through relatively simple shifts in healthcare delivery such as the use of joint disease guidelines that tackle more than one common condition in a cluster, tailored screening and prevention. Healthcare payment mechanisms in developed countries often reward activity rather than desirable outcomes; shifting towards payment for quality or outcomes would facilitate better management of MCCs. As the majority of chronic conditions that are part of MCC clusters are amenable to prevention, interventions that tackle both primary and secondary prevention must be part of the longer term strategy to reducing the MCC burden.
Recommendations
Key recommendations for moving forward with the science and interventions for MCCs include:
Consensus agreement on the taxonomy of MCCs is needed including the terminology, the definition and even what constitutes a chronic condition.
Prevention of chronic diseases through improvements to lifestyle behaviours remains paramount to tackling MCCs and economic evaluations to establish the most cost-effective interventions to reduce the MCC burden are required.
Data reporting and monitoring systems should specifically address and monitor MCCs; the ability to report on multiple primary diagnoses in future coding systems should be considered.
Healthcare delivery systems need to adapt to move away from single-disease frameworks to managing more than one chronic condition simultaneously, examples of which are emerging for HIV and CVD management.
Healthcare payment mechanisms that reward positive health outcomes rather than activity-based funding may help in achieving improved patient outcomes, such as the shift to outcome-based reimbursement in the USA.
Conclusion
The authors agree with the recommendations of Sum et al that urgent reforms are required in the healthcare delivery and financing mechanisms applied to the management of chronic conditions to move away from a single-disease framework towards one that considers clusters of chronic conditions. By tackling clusters rather than single conditions, interventions and systems can directly address particular difficulties faced by such patients, through medication design (eg, fixed-dose combination pills), approaches for screening and detection (eg, mental health screening in diabetes clinics) and joint care guidelines (eg, for diabetes and TB). These relatively small changes in the way that such care is delivered may lead to considerable changes in the ability to deliver greater patient-centric care. However, the current gaps in evidence base related to MCCs prevent such policy changes being fully informed. An increase in the resources to further the evidence base must be part of any strategic solution for MCCs. The rapid ageing of populations globally and the alarming predictions of increased MCCs render these changes urgent.
Footnotes
Handling editor: Seye Abimbola
Contributors: The content of this article is solely that of the two authors. CH prepared the first draft, SPK contributed to the manuscript.
Competing interests: CH has received support from Teva Pharmaceuticals for analysis on multiple chronic conditions. SPK leads a partnership with Arnhold Institute for Global Health at the Icahn School of Medicine at Mount Sinai and Teva Pharmaceuticals on multiple chronic conditions.
Patient consent: Not required.
Provenance and peer review: Not commissioned; externally peer reviewed.
Data sharing statement: No additional data are available.
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