12:25 - 12:45 pmSaturday, September 26
LK 120
Foresites patientcare reduces patient falls in hospitals using machine learning methods
LK 120
Foresites patientcare reduces patient falls in hospitals using machine learning methods
Foresite Healthcare
Background: Patient falls are major problems in hospitals both for patients and the hospital.  Falls dramatically reduce patient health and safety and dramatically increase the cost of healthcare. ... Read more

Description

Background: Patient falls are major problems in hospitals both for patients and the hospital.  Falls dramatically reduce patient health and safety and dramatically increase the cost of healthcare.  Foresite’s Patientcare is a passive monitoring system that uses infrared imaging and decision tree learning algorithms to drastically reduce patient falls, thus increasing patient health and safety while reducing the cost of healthhcare.

Patient falls are among the eight preventable conditions not reimbursed by CMS (Medicare and Medicaid) and insurance companies.  There are millions of hospital patient falls every year costing hospitals billions of dollars in unreimbursed expenses.  This does not take into consideration falls of elders in their living environment which are significantly larger issues and are greatly reduced by another Foresite product, namely Eldercare.

The goal of our study was to 1) identify which patients are most likely to fall in hospitals and 2) reduce the number of falls in hospitals. 

Methodology: Foresite Patientcare uses an infrared depth sensor to capture image data. Patientcare then utilizes a two-stage system for fall detection. The first stage of the system characterizes the vertical state of a segmented 3D object, and then identifies on ground events through temporal segmentation of the vertical state time series of tracked 3D objects. The second stage utilizes an ensemble of decision trees and features extracted from an on ground event to compute a confidence that a fall preceded it. Fall risk assessment is based on gait speed of the segmented moving objects. 

Results: Foresite installed Patientcare in rooms of a top 10 US hospital in August of 2014.  For the previous two years, the same rooms of the hospital averaged 7.04 falls per month and .96 falls per month with an injury.  For the study, Patientcare monitored patients for 3,975 patient days.  Foresite alerted the hospital 66 times for patients having "Elevated Risk" and 11 times for patients having "High Risk" for a total of 77 times of a combined higher probability of falling.

During the study, patients assessed with an Elevated Risk status fell 3.0% of the time within 24 hours, patients assessed with a High Risk status fell 9.1% of the time within 24 hours and patients assessed with a Decreased Risk/Normal status fell 0.00% of the time within 24 hours. 

Accordingly, 100% of the patient falls were within the 1.9% of the patient population that Patientcare assessed as either Elevated Risk or High Risk.  0.0% of the patient falls were within the 98.1% of the patient population that Patientcare assessed as Decreased/Normal Risk.

In addition, patient falls reduced from 7.04 falls per month to 1.52 falls per month.  Patient falls with injury decreased from 0.96 patient fall per month to 0.00 patient falls per month.

Conclusions: Foresite Patientcare is successfully able to determine which patients are most likely to fall.  In addition, during the study, Patientcare dramatically reduced patient falls by 78.4%.

Dr. Chronis received his PhD in Robotics and Artificial Intelligence from the University of Missouri. His work and publications are in computational intelligence and include autonomous mobile robot navigation, spatial relations, linguistic spatial cognition, programming by demonstration, fuzzy logic and evolutionary computation.

Prior to Foresite Healthcare Dr. Chronis founded CyberSense, a software solutions and development company undertaking projects with more than 100 educational organizations worldwide and with large corporations such as Monsanto, University of Arizona and University of California. Projects developed and managed span a wide variety of demanding, large scale, data and computation intensive applications such as intelligent prediction and expert system advice on industry trends based on meta-data such as customs’ import/export records, electronic manuscript management and automated peer-review for millions of users, various crop and seed optimization from planting to sales using GPS guided image processing, data mining and neural network computation and data mining algorithms for agrobiotechnology economics based on meta-data processing from the US Patent Office.

Dr. Chronis develops and commercializes technology to improve quality of life by generating early illness alerts. He was instrumental in the development of Foresite Patientcare®, Foresite Eldercare® and Foresite Health at Home®.

Contact Us

We're not around right now. But you can send us an email and we'll get back to you, asap.

Not readable? Change text. captcha txt

Start typing and press Enter to search