2014
DOI: 10.1109/jbhi.2013.2293059
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Predictive Monitoring of Mobile Patients by Combining Clinical Observations With Data From Wearable Sensors

Abstract: The majority of patients in the hospital are ambulatory and would benefit significantly from predictive and personalized monitoring systems. Such patients are well suited to having their physiological condition monitored using low-power, minimally intrusive wearable sensors. Despite data-collection systems now being manufactured commercially, allowing physiological data to be acquired from mobile patients, little work has been undertaken on the use of the resultant data in a principled manner for robust patien… Show more

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Cited by 153 publications
(85 citation statements)
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“…Applications of machine learning algorithms on sensory data are various such as telemedicine [18,29,30], air quality monitoring [31], indoor localization [32] and smart transportation [33]. However, conventional machine learning still has certain limitations such as inability to optimize non-differentiable discontinuous loss functions or not being able to obtain results following a feasible training duration at all times.…”
Section: Conventional Machine Learning On Sensed Health Datamentioning
confidence: 99%
“…Applications of machine learning algorithms on sensory data are various such as telemedicine [18,29,30], air quality monitoring [31], indoor localization [32] and smart transportation [33]. However, conventional machine learning still has certain limitations such as inability to optimize non-differentiable discontinuous loss functions or not being able to obtain results following a feasible training duration at all times.…”
Section: Conventional Machine Learning On Sensed Health Datamentioning
confidence: 99%
“…Consequently healthcare using wireless sensor networks constitutes an exciting and growing field for scientific investigation. In fact the future of modern healthcare in an aging world will need ubiquitous observation of health with least actual interaction of doctor and patients [5]. In this paper the IoT and healthcare systems are summarized, reviewed and surveyed through the security multifunctional techniques.…”
Section: Problem Statementmentioning
confidence: 99%
“…Being the final goal to ease and automate some intervention and triage in a cost effective manner, recent studies make use of data mining and predictive methods to improve the execution of healthcare pathways [7]. In particular, compliance and adherence to prescribed therapies to chronic diseases [8] [9] are common areas of application.…”
Section: Introductionmentioning
confidence: 99%