{"id":3002,"date":"2020-10-29T10:37:29","date_gmt":"2020-10-29T14:37:29","guid":{"rendered":"https:\/\/www.med.unc.edu\/clinicalinformatics\/?p=3002"},"modified":"2020-11-10T13:04:36","modified_gmt":"2020-11-10T18:04:36","slug":"data-driven-intervention-reduces-cardiovascular-risk-across-north-carolina","status":"publish","type":"post","link":"https:\/\/www.med.unc.edu\/clinicalinformatics\/2020\/10\/data-driven-intervention-reduces-cardiovascular-risk-across-north-carolina\/","title":{"rendered":"Data-driven intervention reduces cardiovascular risk across North Carolina"},"content":{"rendered":"<figure id=\"attachment_3020\" class=\"thumbnail wp-caption alignright\" style=\"width: 189px\"><img loading=\"lazy\" decoding=\"async\" class=\"wp-image-3020 size-medium\" src=\"https:\/\/www.med.unc.edu\/clinicalinformatics\/wp-content\/uploads\/sites\/1167\/2020\/10\/CykertSam_2019-179x300.png\" alt=\"\" width=\"179\" height=\"300\" srcset=\"https:\/\/www.med.unc.edu\/clinicalinformatics\/wp-content\/uploads\/sites\/1167\/2020\/10\/CykertSam_2019-179x300.png 179w, https:\/\/www.med.unc.edu\/clinicalinformatics\/wp-content\/uploads\/sites\/1167\/2020\/10\/CykertSam_2019.png 457w\" sizes=\"auto, (max-width: 179px) 100vw, 179px\" \/><figcaption class=\"caption wp-caption-text\">Sam Cykert, MD<\/figcaption><\/figure>\n<p>October 29, 2020<\/p>\n<p>UNC-Chapel Hill researchers and collaborators including the North Carolina Area Health Education Centers (AHEC) Program and Community Care of North Carolina created a digital intervention using electronic health records to rank 437,556 North Carolinians at 219 primary care clinics according to cardiovascular health metrics and then help practices immediately intervene to reduce risk of heart attacks, stroke, and death among those at greatest risk.<\/p>\n<p>The results, published in\u00a0<em><a href=\"https:\/\/onlinelibrary.wiley.com\/doi\/abs\/10.1111\/1475-6773.13571\">Health Services Research<\/a><\/em>, show that practices were able to reduce the percent of patients at a high 10-year risk of serious cardiovascular events from 23 percent to 17 percent \u2013 a relative reduction of 25 percent of patients. After adjusting for clinical-patient efforts outside this intervention, the 25 percent reduction is essentially equivalent to preventing 6,000 patients from suffering a heart attack or stroke, or dying due to cardiovascular disease within 10 years.<\/p>\n<p>Senior author of the\u00a0<em>HSR<\/em>\u00a0paper Sam Cykert, MD, professor of medicine and member of the Cecil G. Sheps Center for Health Services Research, led this data-driven intervention, which included mobilizing practice facilitators from the North Carolina AHEC Practice Support team to partner with individual clinics and help providers put in place procedures to proactively bring in high risk patients to reduce cardiovascular risk as quickly as possible.<\/p>\n<p>All electronic health records systems have the capabilities to stratify patient populations, according to a given metric, such as cardiovascular risk, Cykert said. These capabilities are possible with digital systems, but they are not automatic or easy to use; they take extra time and know how clinics don\u2019t usually have, and it can be expensive to do the necessary programming.<\/p>\n<p>\u201cRural primary care clinics make less money than anyone in medicine,\u201d Cykert said. \u201cThey are really doing God\u2019s work. Yet no one provides resources to take the pressure off these clinics so they can truly do the best they can. Right now,\u00a0<em>everything<\/em>\u00a0is on their backs.\u201d<\/p>\n<p>Cykert and colleagues were able to help clinics thanks to a $15-million federal grant\u00a0from the Agency for Healthcare Research and Quality\u2019s (AHRQ) Evidence NOW Program. The goal was to use the latest evidence to improve the heart health of millions of Americans. UNC\u2019s Heart Health Now! Advancing Heart Health in NC Primary Care project was one of seven grantees back in 2015.<\/p>\n<p>The first\u00a0<a href=\"https:\/\/news.unchealthcare.org\/2018\/12\/a-population-health-approach-to-dramatically-reduce-heart-disease-risk\/\">research results<\/a>\u00a0from this program were reported in 2018, showing it was possible to build a dashboard of patients in need of risk reduction, based on their cholesterol numbers and other risk factors even if clinics lacked cholesterol data.<\/p>\n<p>In the current paper, Cykert and colleagues report that using health records coupled with mobilizing practice facilitators, or coaches, could immediately reduce cardiovascular risk based on addressing four metrics: hypertension control, aspirin use, smoking interventions, and statin use.<\/p>\n<p>\u201cThe first intervention is to build the stratified risk database,\u201d Cykert said. \u201cThen our quality improvement coaches worked with clinics to understand the data and build a system so they could use it. If a clinic has 100 patients at high risk of cardiovascular disease, what\u2019s the best way for a clinic to engage and reengage with patients to reduce risk as quickly as possible?\u201d<\/p>\n<p>Of the more than 400,000 patients age 40-79 at the 219 clinics, about 147,000 were identified as being at high risk of developing cardiovascular disease, suffering a stroke, having a heart attack or dying. With the help of coaches, clinics were able to quickly reduce the degree of risk from 23 percent to 17 percent. This 6 percent reduction was the equivalent of preventing about 9,000 adverse events related to cardiovascular health. When factoring in the steps clinics took to reduce risk aside from this intervention, Cykert said his team\u2019s analysis showed the actual reduction due to the intervention was 4 percent, the equivalent of 6,000 adverse health events, such as strokes.<\/p>\n<p>About 50 percent of the 219 clinics were in largely eastern North Carolina, known as the stroke belt. \u201cDuring our intervention, these practices did as well as more sophisticated practices in more urban settings,\u201d Cykert said.<\/p>\n<p>This kind of approach, according to Cykert, could extend beyond cardiovascular health. Such support could help practices with patients in need of social services support, COVID-19 prevention and testing, telehealth needs, life style and health education interventions, and prevention methods to avoid chronic illnesses.<\/p>\n<p>\u201cThink of how good we could be at helping those in most need if we took a holistic population health approach like this, instead of only focusing on medical issues,\u201d Cykert said. \u201cThink of what we could accomplish if we took on alcohol and opioid abuse.\u201d<\/p>\n<p>Alcohol use is up 40 percent during the COVID-19 pandemic, mostly due to people who had not been drinking alcohol previously or very little. And regardless of the pandemic, alcohol-related deaths are the third biggest cause of preventable death in the United States. Dan Jonas, MD, MPH, professor at the UNC School of Medicine and member of the UNC Sheps Center, started a project to use the same intervention techniques to help primary practices reduce risky drinking while Cykert is working on the opiate problem in several rural counties.<\/p>\n<p>To create such a data-driven, boots on the ground approach across the entire state or nation, Cykert said state governments could invest in building health extension centers, similar to agriculture extension centers that help farmers.<\/p>\n<p>\u201cThese would be physical places in every region so that multiple small practices could share the same services, the same quality improvement coaches, the same kind of help we need to improve the lives of thousands or even millions of people.\u201d<\/p>\n<p><em>In addition to Cykert, other authors of the paper are Thomas C. Keyserling, MD, MPH, professor at the UNC School of Medicine and member of the UNC Center for Health Promotion and Disease Prevention; Michael Pignone, MD, MPH,\u00a0<\/em><em>Chair of the Department of Internal Medicine and professor of Medicine at the Dell Medical School at the University of Texas at Austin; Darren DeWalt, MD, MPH,\u00a0<\/em><em>Chief of the Division of General Medicine and Clinical Epidemiology, the John R. and Helen B. Chambliss Distinguished Professor at the UNC School of Medicine, and member of the UNC Sheps Center; Bryan J. Weiner, PhD, professor of global health and health services at the University of Washington; Justin G. Trogdon, PhD, professor of health policy and management at the UNC Gillings School of Global Public Health; Thomas Wroth, MD, President of Community Care of North Carolina; Jacqueline Halladay, MD, MPH,\u00a0<\/em><em>professor at the UNC Department of Family Medicine, Chair for Research at UNC Health Sciences at MAHEC, and member of the UNC Sheps Center; Monique Mackey, MLS, q<\/em><em>uality improvement manager for NC AHEC; Jason Fine, ScD, professor of biostatistics at UNC Gillings; Jung In Kim, PhD, assistant research professor of statistics at Penn State University; and Crystal\u00a0<\/em><em>Cen\u00e9, MD, MPH, associate professor of medicine at UNC, member of the UNC Sheps Center, and Executive Director for Health Equity at UNC Health.<\/em><\/p>\n<p><em><br \/>\n<\/em>Media contact:\u00a0<a href=\"mailto:mark.derewicz@unchealth.unc.edu\">Mark Derewicz<\/a>, (919) 923-0959<\/p>\n","protected":false},"excerpt":{"rendered":"<p>UNC School of Medicine researchers and collaborators use a population health intervention to prevent an estimated 6,000 heart attacks, strokes, and deaths due to cardiovascular disease at 219 North Carolina clinics.<\/p>\n","protected":false},"author":79967,"featured_media":3022,"comment_status":"closed","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"_acf_changed":false,"layout":"","cellInformation":"","apiCallInformation":"","footnotes":"","_links_to":"","_links_to_target":""},"categories":[18],"tags":[],"class_list":["post-3002","post","type-post","status-publish","format-standard","has-post-thumbnail","hentry","category-news","odd"],"acf":[],"yoast_head":"<!-- This site is optimized with the Yoast SEO plugin v26.8 - https:\/\/yoast.com\/product\/yoast-seo-wordpress\/ -->\n<title>Data-driven intervention reduces cardiovascular risk across North Carolina | UNC Hospitals Clinical Informatics Fellowship Program<\/title>\n<meta name=\"robots\" content=\"index, follow, max-snippet:-1, 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