If researchers were the ones designing the information-gathering mechanisms in healthcare, it’s fair to say they wouldn’t structure them like our current claims system.
Claims are meant to communicate the minimum information necessary to support reimbursement for health services. They may also be incomplete at times as patients move from one health plan to another, leaving gaps in care timelines.
For a while, claims were the only consistent data we had to conduct analyses on, so we made it work. But claims miss rich, meaningful details that could better inform analyses and help uncover insights for life sciences companies.
We can’t say the industry hasn’t tried to make things better. There have been attempts to support more thorough claims documentation, though the reality isn’t where we want it to be. For instance, providers can report social determinants via Z codes, but a recent government review showed that they only appeared in 1.59% of Medicare beneficiary claims.*
Recommendations:
Understand the factors driving the presence and absence of certain information in the data.
Recognize that sometimes what is not in the data can be just as valuable to a researcher as what is.
- Closed claims, otherwise known as eligibility-controlled claims, are sourced from health plans.
- And while they, too, will show when a patient seeks care or fills a prescription, they’ll also allow you to analyze when the patient doesn’t take action.
Lay out the key objectives of your RWD analyses ahead of time and line them up with the appropriate data source to meet your study needs.
- Thoughtfully considering the questions you’re seeking to answer is critical to selecting a fit-for-purpose data set.
Consider linking claims data with clinical data to provide better visibility into the full continuum of care.
- Linked data sets can help you connect the dots across patient health histories with information on utilization, adherence and the costs associated with care.
- It may also be helpful to verify your findings in linked data by revisiting the context behind the research in which the data were collected or reviewing comparable existing literature.