Source: medicalxpress.com
Researchers have demonstrated the effectiveness of using algorithms that analyze electronic health records (EHRs) to help physicians identify patients at risk for HIV who may benefit from preexposure prophylaxis (PrEP), which significantly reduces the risk of getting HIV . The studies, which were supported by the National Institute of Mental Health (NIMH) and the National Institute of Allergy and Infectious Diseases (NIAID), part of the National Institutes of Health, advance a novel method that can help clinicians identify individuals most in need of PrEP. The two studies were published in The Lancet HIV.
“The development of innovative tools to increase PrEP use and adherence in the United States is crucial to our efforts to end the HIV epidemic,” stated Dianne Rausch, Ph.D., director of the NIMH Division of AIDS Research. “Identifying individuals who may benefit from PrEP is a major challenge for clinicians, and this is an important advance that could help improve PrEP delivery and use.”
PrEP is a strategy in which healthy people routinely take one or more antiretroviral drugs to reduce their risk of getting HIV. It is highly effective for reducing the risk of HIV acquisition, yet it remains greatly underutilized. The Centers for Disease Control and Prevention estimates that as many as 1.1 million Americans may be candidates for PrEP use—but, in 2016, only an estimated 78,360 (about 7 percent) were prescribed PrEP medication.
Physicians may underprescribe PrEP due to a lack of time or skills to adequately assess patients for HIV risk. In other instances, physicians may be unfamiliar with PrEP or consider it outside their purview to prescribe.
“The incorporation of automatic screening algorithms into EHRs could help busy clinicians identify and assess patients who may benefit from PrEP more efficiently, and empower them to prescribe PrEP more frequently,” said study author Douglas Krakower, M.D., of Beth Israel Deaconess Medical Center and Harvard Medical School.
In two large-scale studies, which used EHRs from large healthsystems in Massachusetts and California, researchers created and tested algorithms that analyze a rich array of health data and patient information to help clinicians automatically identify those at highest risk for HIV infection and therefore most likely to benefit from PrEP medications.
In the first study, Krakower and colleagues used machine learning to create an HIV prediction algorithm using 2007-2015 EHR data from more than 1 million patients attending Atrius Health, a large healthcare system in Massachusetts. The model used variables in the EHRs such as diagnosis codes for HIV counseling or sexually transmitted infections (STIs), laboratory tests for HIV or STIs, and prescriptions for medications related to treating STIs. The model was subsequently validated using data from 537,257 patients seen by Atrius Health in 2016, as well as 33,404 patients seen by Fenway Health, a community health center in Boston that specializes in providing healthcare for sexual and gender minorities, between 2011 and 2016. In these validation studies, the prediction algorithm was able to successfully distinguish between patients who did or did not acquire HIV, and between patients who did or did not receive a PrEP prescription, with high precision.
The researchers discovered many potential missed opportunities to prescribe PrEP. For example, more than 9,500 people in the 2016 dataset had particularly high risk scores from the prediction algorithm and lacked prior PrEP prescriptions.
According to Krakower, “A striking outcome is that our analysis suggests nearly 40 percent of new HIV cases could potentially have been averted had clinicians received alerts to discuss and offer PrEP to their patients with the highest 2 percent of risk scores.”
The second study, led by Julia Marcus, Ph.D., of Harvard Medical School and Harvard Pilgrim Health Care Institute, with Krakower and colleagues, scaled-up this prediction approach by using the EHRs of more than 3.7 million patients receiving outpatient services from Kaiser Permanente Northern California. They developed a model to predict HIV incidence using data from patients who entered the Kaiser Permanente system between 2007 and 2014, and they validated the model on data from patients who had entered the Kaiser Permanente system between 2015 and 2017. The model used variables in the EHRs such as high-risk sexual behavior indications, HIV and STI testing frequency, and STI diagnoses and treatments.
“Our model was able to identify nearly half of the incident HIV cases among males by flagging only 2 percent of the general patient population,” Marcus said. “Embedding our algorithm into the Kaiser Permanente EHR could prompt providers to discuss PrEP with patients who are most likely to benefit.”