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hands of doctor and elderly patient.

Delivering better care to the frail by analyzing risks

By GROVE POTTER

Published January 9, 2017 This content is archived.

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Steven Buslovich.
“What we’re identifying is not something used on a day-to-day level. It supersedes that. It gives us the big picture of clinical decision-making. ”
Steven Buslovich, founder
Patient Pattern

The likelihood of an elderly patient falling in a nursing home, developing a wound or receiving inappropriate treatments are things that can be predicted based on thousands and thousands of other cases. But how could a doctor, nurse or other clinician caring for that person access such information?

A new company in the START-UP NY program, founded by an adjunct professor in the Jacobs School of Medicine and Biomedical Sciences at UB, has a cloud-based solution. Patient Pattern uses data taken when a patient is admitted to a nursing home or a hospital and compares it with thousands of previous cases to assess that patient’s risks.

“We use a clinical business intelligence platform that uses mathematical models of vulnerability to assess patients’ risks for poor outcomes,” says Steven Buslovich, a geriatrician and founder of the company.

Patient Pattern is not a tool for day-to-day care, he says, but rather a broader assessment of the risks a patient faces and how to handle them. For instance, some patients receive too much medicine or receive unnecessary tests. For a frail person, that raises risks of poor outcomes.

“What we’re identifying is not something used on a day-to-day level,” Buslovich says. “It supersedes that. It gives us the big picture of clinical decision-making.”

Saving money, improving results

Such decisions can have immediate effects on a health care facility. Reducing hospital readmissions and reducing the use of expensive low-yield therapies rapidly improves patient outcomes, as well as the finances and overall facility operations, he says.

The company recently was recognized as a “Top Innovative Startup of 2016” by the magazine PM360, a monthly aimed at marketing professionals in the pharmacology, biotech and medical device industries.

The company’s product, called LivePAC, calculates in real time the level of a patient’s frailty and informs the clinician what therapies might deliver the best outcomes. A 300-bed nursing home using LivePAC saw its 30-day hospital readmission rate drop from 24 percent to 11 percent in less than six months.

“We are also working with hospitals to help them handle complex patient populations, which tend to be high users of resources,” Buslovich says. “We are able to make dramatic savings.”

Pressure to improve

The government is penalizing hospitals for too many readmissions, but is not providing help to resolve the problem, he says.

“There is no data in this market. There is no clinical intelligence in post-acute care. Right now, it’s all eyeball care,” he notes, referring to the gut-level decisions being made about care. “We’re working to integrate this into electronic health records because they do not provide this level of information.”

Three area hospitals and multiple nursing homes are using LivePAC, Buslovich says. It is also being adopted in Canada, Great Britain and, soon, Australia.