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Episode of Care Analysis Reveals Sources of Variations in Costs

Publication
Article
The American Journal of Managed CareOctober 2011
Volume 17
Issue 10

Costs of potentially avoidable complications have significantly more variation than costs of typical care in selected chronic and procedural episodes.

Objectives:

To understand and reveal the underlying sources of inter- and intraplan variation in a selected number of chronic and procedural episodes.

Study Design:

Analysis of allowed claims from 9 regional health plans covering commercially insured populations in different areas of the United States.

Methods:

Use of the PROMETHEUS Evidence-Informed Case Rates analytics to 1) calculate total plan costs and cost of specific episodes, 2) create price and severity adjustments, and 3) determine coefficients of variation.

Results:

The interplan coefficients of variation for total per member per year costs and per episode costs vary from 0.1 to 0.55, while the intraplan coefficients of variation vary from 0.4 to 5.5. In both analyses, the coefficients of variation for potentially avoidable complications (PACs) were higher than the coefficients of variation for typical costs.

Conclusions:

There is significant variation in episode costs within a plan, and PACs have significantly more variation than typical costs. Plans and accountable care organizations would benefit from understanding the source of variation of their episode costs in order to improve overall cost of care.

(Am J Manag Care. 2011;17(10):e383-e392)

Costs of potentially avoidable complications (PACs) have significantly more variation than costs of typical care in selected chronic and procedural episodes.

  • Total episode costs conceal the variation in potentially avoidable costs of each episode, and plans or accountable care organizations (ACOs) should understand the contribution of typical and PAC costs for each episode and create strategies to address each.

  • Interplan variation in per member per year and total average episode costs is much smaller than intraplan variation, and employers comparing plans or ACOs should understand the magnitude of the variation in costs within the plan or ACO.

  • Total episode costs could be reduced if the variation in PAC costs were reduced.

The Affordable Care Act includes a number of payment and delivery system reform pilots and initiatives that have already spurred various provider organizations across the country to launch quality and cost improvement efforts.1 Similarly, private sector health plans are using the opportunity presented by the legislation to work collaboratively with providers on payment reform initiatives.2

One of the many challenges providers and payers face as they launch these efforts is to clearly identify the clinical domains in which they can improve performance in order to reduce variation in care that can lead to excessive costs.3 As these payers and providers move away from fee-for-service payment, the current emphasis in maximizing the volume of services delivered shifts to improving the overall value derived from a given volume of services.4,5 For example, under most forms of episode-of-care bundled payments,6 global payments, or gain-sharing, providers are at financial risk for costs that exceed a specified budget. Analyzing and understanding the costs that comprise these budgets will enable provider and payer organizations to manage their respective financial risks. However, the ability to identify the root cause of variation and justification for the costs of treating a patient’s episode of medical care has remained elusive. That’s because there are at least 4 primary sources of variation in total cost of an episode of medical care: 1) the unit cost of each service, 2) the mix and frequency of routine or typical services, 3) the severity of the patient’s condition, and 4) the competence of the providers in prudently managing the patient. Teasing out the contribution of each source has proved to be a significant challenge.

We analyzed the costs of 2 chronic episodes (chronic obstructive pulmonary disease [COPD] and diabetes), an acute medical episode (acute myocardial infarction [AMI]), and 2 procedural episodes (percutaneous coronary intervention [PCI] and colonoscopy) in several payer data sets. The analysis illustrates the degree to which each source of variation might be identified, and potentially help risk-bearing organizations, whether health plan or accountable care organizations (ACOs), to better manage prospectively set budgets.

METHODS

We used the code definitions from an SAS-based analytical program developed for the PROMETHEUS Payment model to run medical and pharmacy claims data of 9 different health plans.7 These plans were selected based on geographic diversity and the completeness of their data sets. Only commercially insured plan members between the ages of 18 and 65 years were retained for inclusion in the analysis. The claims included allowed amounts paid in 2008 and 2009 for each member (Table) for plan member counts and average per member per year (PMPY) costs. While allowed amounts provide a level playing field relative to intra- and interplan variations in benefit design, we could not account for the potential effects of benefit design on patient compliance.8

All claims relevant for each episode were filtered through several steps in order to ensure that the episodes analyzed were complete and could be used to build the statistical models needed for severity adjustment. In particular, the process included removing claims with outlier costs (under $10 and over $1,000,000),9 removing claims with invalid or missing service dates, and removing those outside of the study period. 10 Patients also had to meet a continuous enrollment criterion, with no enrollment gap greater than 30 days. Finally, patients with complex comorbid conditions (eg, patients with HIV, cancer, or end stage renal disease) were excluded from the final analysis.

We used a set of core services for each chronic care episode11 to calculate the base cost of that episode in each of the databases studied to determine the core price of 1 year of COPD or diabetes care in a given health plan’s database. The core price value is used to adjust for unit price differences in the different health plan populations and thus normalize each plan’s relative price effect.

The cost of each episode was calculated as the sum of costs for all relevant services, which included services for routine and customary care, other diagnostic and minor therapeutic services, pharmacy costs, plus care for potentially avoidable complications (PACs) such as emergency department admissions, hospitalizations, and other acute complications. The PROMETHEUS-defined PACs for chronic and acute episodes have been recently endorsed by the National Quality Forum12 and are understood to be potentially preventable services that could be avoided to some extent if patients were prudently and optimally managed by their treating providers. The average relevant cost of each episode was thus subdivided into 2 component parts, those related to typical care and those related to PACs. By convention, pharmacy costs are primarily assigned to typical costs. These costs are then adjusted by the core price for the health plan to account for some of the differences caused by average negotiated fee schedules. The costs of acute inpatient and procedural episodes were not price adjusted because negotiated fees for inpatient stays are difficult to estimate given the bundling of services in a single stay claim.

The analytic package computes a severity-adjusted expected cost for typical care for each patient independently for each episode using an automated log-linear regression model that runs a bootstrap validation 200 times to identify variables that are significant cost drivers, and assigns weights to each of the variables that are finally retained in the model.13 A plan level average severity score for each episode is derived by aggregating the average weights in the final model for each patient based on the risk factors that were actually present. The severity index, in turn, was derived from the severity score indexed to a reference severity score set at 1 from a benchmark database. The severity index thus calculated gives a reference value to determine if the population in a given database is of a higher or lower severity than in another database.14 For example, the severity scores for COPD for each of the 9 plans were 0.82, 0.72, 0.55, 0.50, 0.84, 1.11, 0.50, 0.55, and 0.55, respectively, illustrating the significant difference in severity of the underlying patients in each data set. The average severity index for members with COPD episodes in these 9 plans is 0.68 and the adjustment factor to adjust the average episode costs for each plan relative to the overall plans’ average was computed by dividing the average index by each plan’s index. For example, Plan 1’s adjustment factor for COPD episode cost would be 0.68/0.82 or 0.83 and Plan 4’s adjustment factor for COPD would be 0.68/0.5 or 1.36. The cost of typical care was then adjusted for the severity of the patient’s condition while PAC cost was only adjusted for price.

The effect of the adjustments can be quite significant. For example, Plan 1’s unadjusted average cost for COPD was $3608 compared with the adjusted cost of $3267 as reported in Table 1. The adjustments were also consistent across episodes; plans with a higher severity index in COPD also had higher severity indices in the other studied episodes. This consistency provides some validation of the methodology used. Similarly, plans with a higher unit price of services in COPD also had a higher unit price of services in diabetes, which is to be expected given that plan contracts apply to all care delivered by network providers.

Coefficients of variation were then calculated for each plan’s episodes, for adjusted PAC and typical costs, as well as their sum, and average relevant episode costs. Coefficients of variation were also calculated to compare the differences between plans in episode costs.

RESULTS

After adjusting for the differences in severity and price, the overall coefficient of variation between plans, as measured by each plan’s PMPY costs, was 0.21, and the coefficients of variation for the studied episodes varied from a low of 0.11 for diabetes to a high of 0.49 for AMI. The average coefficient of variation within each plan (intraplan) for each of the episode costs was higher than the interplan (between plans) variation and ranged from 0.77 for colonoscopy to 2.40 for COPD.

Figure 1

As seen in the Table and , for all studied episodes,the coefficients of variation for PAC costs were 2 to 3 times higher than for typical costs, and the coefficients of variation for typical costs both tracked and were within a close range of the coefficients for average relevant episode costs.

Figure 2

Appendices A

summarizes the average typical and PAC cost of each episode across the 9 plans studied. The proportion of PAC cost to relevant episode cost varied by episode, from a high of 47% for COPD to a low of 14% for colonoscopy (see through D).

Figure 3

Using diabetes as an example, shows the average adjusted episode cost for 12 months of diabetes care, split between the average typical and PAC cost for each plan, and the average across plans.

Although the average adjusted relevant costs vary little across plans, there was a lot of variability in each component of the costs within each plan. Figure 4 shows the coefficients of variation for the typical, PAC, and relevant costs of an episode of diabetes for each plan studied, as well as for the average of the 9 plans. The coefficient of variation for typical care ranged from 0.9 to 1.7, while the coefficient of variation for PAC cost (which represents about 30% of total episode cost for diabetes) ranged from 3.9 to 5.4, and was generally 3 times greater than that of typical care. Coefficients of variation for average relevant episode cost ranged from 1.3 to 2.4, and tracked the coefficients of variation for typical costs.

A similar detailed comparison of average episode cost for COPD and colonoscopy and its breakdown into typical and PAC cost, as well as their respective coefficients of variation, can be found in the Appendices.

DISCUSSION

We used a standardized episode of care method to shed light on the sources of variation observed between and within plans for a selected number of episodes of care. Sources of potential variation in the total cost of an episode include: 1) unit price per service, as determined by fee schedules or contracted rates; 2) severity of the patient’s condition—patients with a greater number of comorbidities require more resources to manage their condition; 3) provider practice patterns, evidenced by the frequency and mix of services provided for routine or typical care; and 4) provider performance in the management of their patients, illustrated here by the frequency and cost of PACs.

There is another source of variation related to patient compliance that we could not account for nor explain using administrative claims data. For the purpose of this discussion, we have to assume that lack of patient compliance would be captured in the error term of the models and contribute to the unexplained variation within each plan. Additionally, while the plan membership for the selected plans is composed only of patients commercially insured under the age of 65 years, we did not adjust for potential socioeconomic differences between plan members, such as income. The adjustment for severity of patients’ condition, however, did adjust for differences in age and gender.

As we move from a PMPY view of plan costs to a perepisode cost, the relative performance of each plan changes. For example, while Plan 6’s PMPY cost was the highest, the average relevant cost of each studied episode was close to the average of all plans, and some of the episode costs were among the lowest. And as we move from average relevant episode cost to the average for PAC and typical cost, and the variation in their respective parts, the picture changes yet again. For example, Figure 3 shows that Plan 5’s average cost of a diabetes episode was the lowest of the plans studied. However, as seen in Figure 4, that same plan’s coefficient of variation for PAC cost is one of the highest, which means that an individual plan member is far more likely to incur a PAC cost that is different than the average for other plans. And given the skewed episode costs, the variation means that a patient is likely to incur higher PAC costs than the average.

By separating the total cost of each episode into typical and PAC cost we can better understand the differences between warranted and unwarranted cost of care, and the coefficients of variation for each episode within each plan provide insights into the intrinsic variation of each cost component.15 However, the coefficients of variation have to be examined in conjunction with the magnitude of their effect. For example, in episodes such as diabetes where PACs constitute a significant proportion (30%) of average relevant cost of the episode, the dollar impact of the PAC cost variation on total episode cost is much higher than in episodes such as colonoscopy, for which PAC costs are a much smaller portion of relevant episode costs (14%).

Understanding both the weight of typical and PAC cost in total episode cost and their respective coefficients of variation can lead to different tactics in cost reduction. For example, episodes with high PAC rates and high PAC coefficients of variation should be targeted for aggressive PAC reductions. Alternatively, episodes with a high proportion of typical costs are candidates for targeted reductions in duplicated tests or some greater harmonization in the type and frequency of typical services.

These insights can create an early road map for risk-bearing organizations, whether health plans or ACOs.16,17 To reduce variation in its total cost of care, a risk-bearing organization must first understand the costs of its underlying episodes of care; the amount of variation in costs that is caused by differences in practice patterns (from severity-adjusted typical costs); and the variation caused by the frequency of PACs (related to provider performance). With that analysis done, it can look to implement specific interventions. For example, a central component of ACOs is clinical integration, which presumes the use of standard clinical protocols in the management of patients. Those guidelines should help reduce the variation caused by differences in practice patterns. Another goal of ACOs is to reduce the frequency of hospitalizations and emergency department visits by patients as a means to reduce the total cost of caring for that population.18 Reducing PACs and their variability will help ACOs accomplish that goal.

Total PMPY costs, and even average episode costs, do not reveal the extent and source of variation in costs that exist within risk-bearing organizations. Despite the limitation of our analysis to account for the effect of patient compliance or socioeconomic differences on total variation, our study shows that the variation between plans is relatively small, and certainly far lower than the observed variation within each plan. As risk-bearing shifts to ACOs, employers and plans should require far more information on the source of variation in cost than would be apparent by comparing the total per member cost of each episode or of total costs.

Author Affiliations: From Health Care Incentives Improvement Institute, Inc (FdB, AR, CMS), Newton, CT.

Funding Source: None.

Author Disclosures: Mr de Brantes, Dr Rastogi, and Ms Soerensen report employment with Health Care Incentives Improvement Institute, Inc, which developed the PROMETHEUS Payment model used in this study to run medical and pharmacy claims.

Authorship Information: Concept and design (FdB, AR); acquisition of data (FdB, AR); analysis and interpretation of data (FdB, AR, CMS); drafting of the manuscript (FdB, AR, CMS); critical revision of the manuscript for important intellectual content (FdB, AR, CMS); statistical analysis (FdB, AR, CMS); and supervision (FdB).

Address correspondence to: Francois de Brantes, MS, MBA, Health Care Incentives Improvement Institute, Inc, 13 Sugar St, Newton, CT 06470. Email: francois.debrantes@hci3.org.

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2. Ginsburg PB. Rapidly evolving physician-payment policy — more than the SGR. N Engl J Med. 2011;364(2):172-176.

3. Rosenthal J, Gauthier A, Arons A. State strategies to improve quality and efficiency: making the most of opportunities in national health reform. http://www.commonwealthfund.org/Publications/Fund-Reports/ 2010/Dec/State-Strategies-to-Improve-Quality-and-Efficiency.aspx. Accessed February 28, 2011.

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13. de Brantes F, Rastogi A. Evidence-informed case rates: paying for safer, more reliable care. http://www.commonwealthfund.org/Publications/ Fund-Reports/2007/Apr/Evidence-Informed-Case-Rates--A-New-Health-Care-Payment-Model.aspx. Accessed February 28, 2011.

14. Duncan I. Provider efficiency assessment and reimbutsement using risk adjustment. In: Healthcare Risk Adjustment and Predictive Modeling. Winsted, CT: ACTEX Publications, Inc; 2011:263-267.

15. de Brantes F, Rastogi A, Painter M. Reducing potentially avoidable complications in patients with chronic diseases: the Prometheus Payment approach. Health Serv Res. 2010:45(6, pt 2):1854-1871.

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17. Berwick DM. Launching accountable care organizations — the proposed rule for the Medicare Shared Savings Program [published online ahead of print March 31, 2011]. N Engl J Med. 2011;364(16):e32.

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