The U.S. healthcare system is steadily transitioning from fee-for-service (FFS) reimbursement to fee-for-value (FFV) payment. This change has already started to affect medical practice revenue, and it will have an even bigger impact in the years ahead.
Unfortunately, most physicians and practice managers understand only part of the FFV equation. Under FFV, they know the quality data they report to payers will affect their reimbursement, but many do not understand exactly how payers use these data to adjust payment.
What is the missing piece of this equation? Patient risk scoring.
Under many value-based payment models, payers adjust reimbursement to reflect the relative health or sickness of patients. These adjustments are meant to reflect expected costs, so they can have a big effect on payment. Depending on what risk factors are present, appropriate risk scoring can double or triple per-patient reimbursement.
The challenge is that patient risk scoring is complex. It is easy for medical practices to under-report risk and, therefore, to miss out on full reimbursement. There are some crucial challenges they must confront to understand and properly utilize patient risk scoring.
Physicians and practice managers must first understand the nuts and bolts of patient risk scores.
The overall goal of value-based payment is to reward physicians who provide high-quality care. However, because of differences in patients and patient populations, physicians may see wide variations in outcomes and costs regardless of the quality of the care they provide. If value-based payment is to be fair, there must be a way to account for variation in patient risk.
The solution is risk adjustment—using statistical modeling to convert a patient’s individual health risk factors into an overall patient risk score.
Payer risk models are technically complex. The most commonly used system is the Hierarchical Condition Categories (HCC) risk-adjustment model. The Centers for Medicare & Medicaid Services (CMS) introduced the HCC in 2004 to adjust capitated payments for beneficiaries enrolled in Medicare Advantage plans.
The HCC model incorporates 79 diagnostic categories covering high-cost chronic diseases and some acute conditions. Specific HCC categories include:
The HCC model also includes patient demographic information (age and gender) and patient Medicaid status. Within the model, each HCC and demographic category is assigned an individual risk factor. The sum of each patient’s individual risk factors is his or her total risk score. This patient risk score is also known as the Risk Adjustment Factor (RAF).
In general, the RAF is low for young, healthy patients and high for senior patients and those who have chronic comorbidities.
Medicare Advantage determines plan payments by multiplying the base capitated rate by the patient’s RAF. For example, if the base rate is $9,000 and a beneficiary’s RAF is 1.450, the risk-adjusted capitated payment for that patient will be $13,050. The HCC model also applies to beneficiaries enrolled in state Affordable Care Act (ACA) marketplaces. Many healthcare finance experts believe that most payers will continue to adopt patient risk scoring in some form in the years ahead.
In a risk-based contract, plans calculate and may pay physicians based on a similar methodology. However, physician and practice managers should be aware of two important points:
One of the major problems for medical groups and healthcare systems is that the entire system of value-based payment depends on accurate reporting of diagnostic and demographic data, and physicians are not trained to be “data creators.” There is often a big gap between the data a physician captures and the data required to generate an accurate patient risk score. The result is lower-than-appropriate payment for physicians who provide complex care.
FFV payment models provide higher reimbursement for care that physicians render to complex patients. It’s a great opportunity for doctors who treat large numbers of senior patients and patients with chronic conditions. Unfortunately, common documentation problems cause many physicians to receive less risk-based reimbursement than they deserve.
Most physicians want to spend as little time as possible on documentation. However, documentation is a requirement, and information technology systems and automation can be used to aid the requirement. In the coming years, the financial health of your practice will increasingly depend on accurate diagnostic documentation and coding.
The first step in addressing this issue is to understand how your practice may be under-reporting risk. The following are five common documentation problems that suppress patient risk scores:
Unfortunately, many physicians are not aware that their risk-based patients are considered “healthy until proved sick.” As a result, they fail to recapture diagnoses by documenting ongoing chronic conditions annually and reporting them on claims. In addition, significant medical history—for example, a mastectomy performed five years ago—may be “lost” if it is not re-reported to payers.
All of these scenarios produce an artificially low patient risk score, leading to lowered reimbursements. The solution is to improve documentation of patient data, especially patient diagnoses.
A careful review of recent claims will uncover potential instances of under-documentation and under-coding. This will typically allow a practice to recoup additional payments.
For example, Medicare Advantage allows providers a 12-month prospective period to review coding accuracy and submit corrected claims. For a practice with $4 million in annual claims, a review will typically uncover $250,000 to $1 million in additional payments. Just as important, by improving documentation and data management, physicians can ensure accurate patient risk scores and payments going forward.
Medical practices that implement effective documentation processes and optimize their use of technology will significantly improve their performance under risk-based payment. In addition, capturing diagnoses accurately and fully will help leverage data to improve patient care.
Gene Rondenet is the president of qrcAnalytics.