Predicting Clinical Deterioration of Outpatients Using Multimodal Data Collected by Wearables

03/12/2018
by   Dingwen Li, et al.
0

Hospital readmission rate is high for heart failure patients. Early detection of deterioration will help doctors prevent readmissions, thus reducing health care cost and providing patients with just-in-time intervention. Wearable devices (e.g., wristbands and smart watches) provide a convenient technology for continuous outpatient monitoring. In the paper, we explore the feasibility of monitoring outpatients using Fitbit Charge HR wristbands and the potential of machine learning models to predicting clinical deterioration (readmissions and death) among outpatients discharged from the hospital. We developed and piloted a data collection system in a clinical study which involved 25 heart failure patients recently discharged from a hospital. The results from the clinical study demonstrated the feasibility of continuously monitoring outpatients using wristbands. We observed high levels of patient compliance in wearing the wristbands regularly and satisfactory yield, latency and reliability of data collection from the wristbands to a cloud-based database. Finally, we explored a set of machine learning models to predict readmissions based on the Fitbit data. Through leave-one-out (LOO) cross validation logistic regression achieved the highest LOO accuracy of 0.92. We show that machine learning models based on multimodal data (step, sleep and heart rate) significantly outperformed the traditional clinical approach based on LACE index and earlier machine learning models based on step data only.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/27/2021

Combining chest X-rays and EHR data using machine learning to diagnose acute respiratory failure

When patients develop acute respiratory failure, accurately identifying ...
research
08/17/2021

Developing Medical AI : a cloud-native audio-visual data collection study

Designing Artificial Intelligence (AI) solutions that can operate in rea...
research
05/26/2022

Looking for Out-of-Distribution Environments in Critical Care: A case study with the eICU Database

Generalizing to new populations and domains in machine learning is still...
research
08/09/2021

Earables for Detection of Bruxism: a Feasibility Study

Bruxism is a disorder characterised by teeth grinding and clenching, and...
research
08/01/2017

Towards Vision-Based Smart Hospitals: A System for Tracking and Monitoring Hand Hygiene Compliance

One in twenty-five patients admitted to a hospital will suffer from a ho...
research
06/09/2022

Enhancement of Healthcare Data Transmission using the Levenberg-Marquardt Algorithm

In the healthcare system, patients are required to use wearable devices ...

Please sign up or login with your details

Forgot password? Click here to reset