How ACOs Can Build Confidence in Their Data
By Rich Moyer
07 November 2018
Practical Analytic Approaches to Healthcare Challenges
All healthcare data has data quality challenges. However, as Accountable Care Organizations (ACOs) have taken on more risk and are working on improving care processes data quality has become a more important issue. Below are some common data quality issues that ACOs face and some of the solutions ACOs can use to build confidence in their data. Incomplete Provider Data Provider level analysis is extremely important for ACOs. ACOs need to know which providers both within and outside the ACO network are providing services to patients attributed to the ACO. This is important not only to work towards bringing a larger percentage of services in-network (leakage management), but also for quality and efficiency improvement. There are multiple issues with provider data from payer data sources that can make it difficult to correctly identify in and out of network providers. These include:- Claims missing complete provider information. Medical claims need to have both the billing and servicing/rendering providers listed, and pharmacy claims need to have both the prescriber and pharmacy listed. It is critical that ACOs work with their data suppliers to ensure that these multiple provider fields are complete on claims.
- Custom provider identifiers. Some data sources use custom provider identifiers, instead of National Provider Identifiers (NPIs). To perform analysis across data sources from different suppliers, any custom identifiers need to be cross-walked and mapped to a consistent standard such as NPI. For facilities or large practices, which generally have multiple NPIs or may use alternative identifiers, it is important to roll up the identifiers present in the data for analytic purposes.