Estimating the Costs of Primary Care Transformation: A Practical Guide and Synthesis Report

A Practical Guide for Estimating the Costs of Primary Care Transformation

Table of Contents

Introduction and Purpose

This Practical Guide was developed based on the experiences and lessons learned from the 15 AHRQ Estimating Costs grants. Final reports for these grants were reviewed when available. In addition, telephone interviews were conducted with each principal investigator in February and March 2015. Interviews focused on clarifying what costs of primary care transformation were estimated; what methods were used to estimate costs; what, if any, tools were developed based on the study; and key lessons learned. Interviews were recorded and transcribed. The information collected from these sources was used to identify successful approaches for measuring the costs of a primary care transformation effort and key lessons learned for the field.

In addition, AHRQ hosted a conference call in July 2015 with the grantees to discuss their advice for other researchers, based on their experiences, to be included in a Practical Guide that would be useful for 1) researchers examining the costs of primary care transformation, and 2) administrators in health care organizations who want to predict or report the costs of primary care transformation efforts.

The intention of this guide is not to provide detailed methodological instructions, but rather to list the key steps in an analysis of the costs of a primary care transformation effort, review the range of methodological options, and describe key considerations for each method. References and appendixes provide additional detail for readers who wish to learn more about each method.

Step 1. Develop a Detailed Description of Study Setting and Transformation Efforts

An important first step in estimating the costs of a primary care transformation effort is to describe the transformation effort and the setting in which it is taking place. The costs of implementing primary care transformation can vary widely by organization type and clinic characteristics. Contextual information about the setting of interest, including provider and other staff mix, patient demographics and health status, number of providers, number of administrative staff, number of patient visits per year, payer mix, indicators of health care quality, and PCMH recognition or certification status, are important to consider when making cost calculations.

Primary care transformation can take many forms; therefore, it is important to describe the nature of the transformation whose cost is being estimated. Research questions at this stage may include: What standards or aspects of care were addressed by the transformation effort? What specific changes were implemented to address each standard or aspect of care? How did quality of care improve after practice changes were made (e.g., as measured by patient satisfaction ratings or the proportion of hypertension patients with blood pressure of ≤140/70 mm Hg)? It is also important to consider, and report, whether PCMH certification was sought and what level and stages of transformation are included in the study, including planning, model development, and training; implementation of PCMH-related practice changes; and maintenance. Primary care transformation efforts can take a number of years to implement and are an ongoing process. Therefore, determining what stages to include and the timeframe for these should be done at the outset of the study.

In addition, detailed descriptions of study settings, practice change efforts, and what is included in the cost estimations can help others infer the applicability of estimated costs to other settings.

Step 2. Select and Apply a Cost Estimation Method

Cost estimation methods can be divided into two main categories: micro-costing methods, also known as activity-based costing (ABC), which are based on a detailed analysis of resource use and unit costs of each resource; and gross-costing methods, which are based on aggregate data.9 Most AHRQ Estimating Costs grantees used an ABC method. Exhibit 1 summarizes for each method the purposes it serves, data required, possible analysis methods, and key considerations. Additional details about each method are provided below.

Gross-Costing Methods

Gross-costing methods can be used to conduct retrospective cost analyses of a primary care transformation effort when a good source of aggregate data is available. Data sources can include insurance claims data, general ledger data (e.g., from a staff model health maintenance organization [HMO] with many primary care clinics), or general ledger data from a grant program funding a primary care transformation effort.

It is important to note that claims data reflect the costs and savings experienced by insurers. This information may not reflect the full costs of the primary care transformation effort incurred by clinics, because many of the costs related to practice redesign are not fully covered.

Aggregate sources of data can be used to produce a descriptive analysis of clinic cost evolution before, during, and after the transformation effort took place. Exhibit 2 provides an example of cost trend analyses completed using general ledger data from a grant program that funded the primary care transformation effort. The graphs compare grant expenditures by clinics that ultimately succeeded in transforming into PCMHs with those of clinics that did not. The graphs’ middle line shows the difference in the costs incurred by clinics that completed transformation to a PCMH with clinics that did not. 10

Descriptive analyses alone cannot establish the cost of a PCMH transformation effort; factors not related to the PCMH transformation effort, such as changes in patient mix and co-occurring quality improvement or other initiatives, can differentially affect costs across clinics over time.

Linear regression models can be used to compare costs before and after a transformation effort, or the costs of clinics that transformed versus those that did not, controlling for other possible causes of trends examined. Control variables can include patient case-mix, demographics, clinic characteristics, and other factors. When patients are the unit of analysis, fixed effects and random effects models can be used to account for unobserved clinic characteristics that may affect results.

A strong study design uses a difference-in-difference method, which compares differences in costs between transformed and untransformed clinics before and after transformation. This design requires data not only about clinics that completed PCMH transformation, but also data about a comparable control group of clinics that did not undergo or complete transformation. Propensity score matching techniques can be used to identify a comparable sample. Control groups are also helpful in descriptive analyses.

Key considerations for gross-costing methods include: