A recent report for Computerworld by Brian Eastwood examines big data analytics and healthcare IT. The increasing digitization of healthcare data means that organizations often add terabytes’ worth of patient records to data centers annually.
At the moment, much of that unstructured data sits unused, having been retained largely (if not solely) for regulatory purposes. However, as speakers at the inaugural Medical Informatics World conference suggest, a little bit of data analytics know-how can go a long way.
Here are some real-world examples of how healthcare can use big data analytics.
1. Ditch the Cookbook, Move to Evidence-Based Medicine
Cookbook medicine refers to the practice of applying the same battery of tests to all patients who come into the emergency department with similar symptoms. This is efficient, but it’s rarely effective. As Dr. Leana Wan, an ED physician and co-author of When Doctors Don’t Listen, puts it, “Having our patient be ‘ruled out’ for a heart attack while he has gallstone pain doesn’t help anyone.”
Dr. John Halamka, CIO at Boston’s Beth Israel Deaconess Medical Center, says access to patient data-even from competing institutions-helps caregivers take an evidence-based approach to medicine. To that end, Beth Israel is rolling out a smartphone app that uses a Web-based- drag-and-drop UI to give caregivers self-service access to 200 million data points about 2 million patients.
Admittedly, the health information exchange process necessary for getting that patient data isn’t easy, Halamka says. Even when data’s in hand, analytics can be complicated; what one electronic health record (EHR) system calls “high blood pressure” a second may call “elevated blood pressure” and a third “hypertension.” To combat this, Beth Israel is encoding physician notes using the SNOMED CT standard. In addition to the benefit of standardization, using SNOMED CT makes data more searchable, which aids the research query process.
2. Give Everyone a Chance to Participate
The practice of medicine cannot succeed without research, but the research process itself is flawed, says Leonard D’Avolio, associate center director of biomedical informatics for MAVERIC within the U.S. Department of Veterans Affairs. Randomized controlled trials can last many years and cost millions of dollars, he says, while observational studies can suffer from inherent bias.
The VA’s remedy has been the Million Veteran Program, a voluntary research program that’s using blood samples and other health information from U.S. military veterans to study how genes affect one’s health. So far, more than 150,000 veterans have enrolled, D’Avolio says.
All data is available to the VA’s 3,300 researchers and its hospital academic affiliates. The idea, he says, is to embed the clinical trial within VistA, the VA EHR system, with the data then used to augment clinical decision support.
3. Build Apps That Make EHR ‘Smart’
A data warehouse is great, says John D’Amore, founder of clinical analytics software vendor Clinfometrics, but it’s the healthcare equivalent of a battleship that’s big and powerful but comes with a hefty price tag and isn’t suitable for many types of battles. It’s better to use lightweight drones—in this case, applications—which are easy to build in order to accomplish a specific task.
To accomplish this, you’ll need records that adhere to the Continuity of Care Document (CCD) standard. A certified EHR must be able to generate a CCD file, and this is often done in the form of a patient care summary. In addition, D’Amore says, you’ll need to use SNOMED CT as well as LOINC to standardize your terminology.
Echoing Halamka, co-presenter Dean Sittig, professor in the School of Biomedical Informatics at the University of Texas Health Science Center at Houston, acknowledges that this isn’t easy. Stage 1 of meaningful use, the government incentive program that encourages EHR use, only makes the testing of care summary exchange optional, and at the moment fewer than 25 percent of hospitals are doing so.
The inability or EHR, health and wellness apps to communicate among themselves is a “significant limitation,” Sittig says. This is something providers will learn the hard way when stage 2 of meaningful use begins in 2014, D’Amore adds.
That said, the data that’s available in CCD files can be put to use in several ways, D’Amore says, ranging from predictive analytics that can reduce hospital readmissions to data mining rules that look at patient charts from previous visits to fill gaps in current charts. The latter scenario has been proven to nearly double the number of problems that get documented in the patient record, he adds.
4. ‘Domesticate’ Data for Better Public Health Reporting, Research
Stage 2 of meaningful use requires organizations to submit syndromic surveillance data, immunization registries and other information to public health agencies. This, says Brian Dixon, assistant professor of health informatics at Indiana University and research scientist with the Regenstrief Institute, offers a great opportunity to “normalize” raw patient data by mapping it to LOINC and SNOMED CT, as well as by performing real-time natural language processing and using tools such as the Notifiable Condition Detector to determine which conditions are worth reporting.
Dixon compares this process to the Neolithic Revolution that refers to the shift from hunter-gatherer to agrarian society approximately 12,000 years ago. Healthcare organizations no longer need to hunt for and gather data; now, he says, the challenge is to domesticate and tame the data for an informaticist’s provision and control.
The benefits of this process-in addition to meeting regulatory requirements-include research that takes into account demographic information as well as corollary tests related to specific treatments. This eliminates gaps in records that public health agencies often must fill with phone calls to already burdened healthcare organizations, Dixon notes. In return, the community data that physicians receive from public health agencies will be robust enough to offer what Dixon dubs “population health decision support.”
Read the rest of the article here.