Big Data Analytics and Sensor-Enhanced Activity Management to Improve Effectiveness and Efficiency of Outpatient Medical Rehabilitation.

dc.contributor.author

Jones, Mike

dc.contributor.author

Collier, George

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Reinkensmeyer, David J

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DeRuyter, Frank

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Dzivak, John

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Zondervan, Daniel

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Morris, John

dc.date.accessioned

2025-02-26T21:41:32Z

dc.date.available

2025-02-26T21:41:32Z

dc.date.issued

2020-01

dc.description.abstract

Numerous societal trends are compelling a transition from inpatient to outpatient venues of care for medical rehabilitation. While there are advantages to outpatient rehabilitation (e.g., lower cost, more relevant to home and community function), there are also challenges including lack of information about how patient progress observed in the outpatient clinic translates into improved functional performance at home. At present, outpatient providers must rely on patient-reported information about functional progress (or lack thereof) at home and in the community. Information and communication technologies (ICT) offer another option-data collected about the patient's adherence, performance and progress made on home exercises could be used to help guide course corrections between clinic visits, enhancing effectiveness and efficiency of outpatient care. In this article, we describe our efforts to explore use of sensor-enhanced home exercise and big data analytics in medical rehabilitation. The goal of this work is to demonstrate how sensor-enhanced exercise can improve rehabilitation outcomes for patients with significant neurological impairment (e.g., from stroke, traumatic brain injury, and spinal cord injury). We provide an overview of big data analysis and explain how it may be used to optimize outpatient rehabilitation, creating a more efficient model of care. We describe our planned development efforts to build advanced analytic tools to guide home-based rehabilitation and our proposed randomized trial to evaluate effectiveness and implementation of this approach.

dc.identifier

ijerph17030748

dc.identifier.issn

1661-7827

dc.identifier.issn

1660-4601

dc.identifier.uri

https://hdl.handle.net/10161/32087

dc.language

eng

dc.publisher

MDPI AG

dc.relation.ispartof

International journal of environmental research and public health

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10.3390/ijerph17030748

dc.rights.uri

https://creativecommons.org/licenses/by-nc/4.0

dc.subject

Humans

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Exercise

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Rehabilitation

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Bayes Theorem

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Reproducibility of Results

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Artificial Intelligence

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Aged

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Outpatients

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Data Science

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Big Data

dc.title

Big Data Analytics and Sensor-Enhanced Activity Management to Improve Effectiveness and Efficiency of Outpatient Medical Rehabilitation.

dc.type

Journal article

duke.contributor.orcid

DeRuyter, Frank|0000-0002-8370-9052

pubs.begin-page

E748

pubs.issue

3

pubs.organisational-group

Duke

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School of Medicine

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Clinical Science Departments

pubs.organisational-group

Head and Neck Surgery & Communication Sciences

pubs.publication-status

Published

pubs.volume

17

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