Advancements in Big Data processing tools, data mining and data organization are causing market research firms to predict huge gains in the predictive analytics market for healthcare.
Moreover, those actually working with data in healthcare organizations are beginning to see how the advent of the technology is fueling the future of patient care.
"By leveraging Big Data and scientific advancements while maintaining the important doctor-patient bond, we believe we can create a health system that will go beyond curing disease after the fact to preventing disease before it strikes by focusing on health and wellness," writes Lloyd B. Minor, MD, dean of the Stanford School of Medicine, in a new report exploring the Big Data revolution, HealthITAnalytics reports.
While there are still several roadblocks to using analytics effectively to drive care, here are three ways that Big Data use can realistically revolutionize the health field:
1. Precision Medicine and Research Get a Big Data Boost
Precision medicine promises to move away from a one-size-fits-all approach to medicine, to treating individuals by using therapies and treatment plans specific to them. It does so by tapping reams of data from tools such as mobile biometric sensors, smartphone apps and genomics.
"Health data is allowing doctors to build better patient profiles and predictive models to more effectively anticipate, diagnose and treat disease," Minor writes in the report.
Moreover, collaborations and partnerships between researchers and healthcare organizations are allowing organizations to build out pools of data that they can use to build better personalized healthcare models. These new capabilities are still in early days and Minor expects Big Data capabilities and policies to grow to allow patient data to continuously inform health research.
2. Tapping Big Data for Real-Time Infection Control
The data analytics pilots "determine which central lines are due for maintenance, or identify patients that are at risk for sepsis by using 'sniffer' algorithms to assign risk scores," Hundorfean writes.
Many organizations are already putting this in practice. Geisinger Health System, for example, uses data analytics technology to monitor and analyze sepsis patient outcomes while the University of Virginia has tapped Big Data to monitor sepsis in neonatal infants.
"The networks that can figure out how to predict, and prevent infections will squeeze cost out of the system and create a safer care environment for patients," Hundorfean writes.
3. Cutting Costs with Patient Data
One of the many ways that predictive analytics help cut costs is by reducing the rate of hospital readmissions.
"The idea of predictive analytics comes in looking for relationships that are consistent with readmission that we would not have predicted or we did not understand before," Mark Wolff, chief health analytics strategist for SAS Institute, an analytics software developer says in a post on the Hewlett Packard Enterprise Enterprise.nxt blog. "Once we identify those relationships, we can set up protocols on how to deal with this type of patient and manage things to prevent readmission."
Moreover, the technology can help to forecast operating room demands, optimize staffing, streamline patient care and make way for a better pharmaceutical supply chain.
"The common theme here is that there's a tremendous amount of digital data available in hospitals and in the broader healthcare community that has never been available before," Wolff told HPE's Enterprise.nxt blog. "We have algorithms -- statistical, mathematical techniques that produce incredible analysis efficiently with a high degree of confidence -- and now we're using that to tackle the problems we've all been dealing with for quite some time in a deeper, more robust way."
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Source: HealthTech (View full article)
Posted by Dan Corcoran on November 29, 2017 07:39 AM
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