MEdit4CEP-SP: A model-driven solution to improve decision-making through user-friendly management and real-time processing of heterogeneous data streams

2021 ◽  
Vol 213 ◽  
pp. 106682
Author(s):  
David Corral-Plaza ◽  
Guadalupe Ortiz ◽  
Inmaculada Medina-Bulo ◽  
Juan Boubeta-Puig
2019 ◽  
Author(s):  
Timothy R Brick ◽  
James Mundie ◽  
Jonathan Weaver ◽  
Robert Fraleigh ◽  
Zita Oravecz

BACKGROUND Mobile health (mHealth) methods often rely on active input from participants, for example, in the form of self-report questionnaires delivered via web or smartphone, to measure health and behavioral indicators and deliver interventions in everyday life settings. For short-term studies or interventions, these techniques are deployed intensively, causing nontrivial participant burden. For cases where the goal is long-term maintenance, limited infrastructure exists to balance information needs with participant constraints. Yet, the increasing precision of passive sensors such as wearable physiology monitors, smartphone-based location history, and internet-of-things devices, in combination with statistical feature selection and adaptive interventions, have begun to make such things possible. OBJECTIVE In this paper, we introduced <i>Wear-IT</i>, a smartphone app and cloud framework intended to begin addressing current limitations by allowing researchers to leverage commodity electronics and real-time decision making to optimize the amount of useful data collected while minimizing participant burden. METHODS The <i>Wear-IT</i> framework uses real-time decision making to find more optimal tradeoffs between the utility of data collected and the burden placed on participants. <i>Wear-IT</i> integrates a variety of consumer-grade sensors and provides adaptive, personalized, and low-burden monitoring and intervention. Proof of concept examples are illustrated using artificial data. The results of qualitative interviews with users are provided. RESULTS Participants provided positive feedback about the ease of use of studies conducted using the <i>Wear-IT</i> framework. Users expressed positivity about their overall experience with the framework and its utility for balancing burden and excitement about future studies that real-time processing will enable. CONCLUSIONS The <i>Wear-IT</i> framework uses a combination of passive monitoring, real-time processing, and adaptive assessment and intervention to provide a balance between high-quality data collection and low participant burden. The framework presents an opportunity to deploy adaptive assessment and intervention designs that use real-time processing and provides a platform to study and overcome the challenges of long-term mHealth intervention.


2003 ◽  
Author(s):  
Juergen Zettner ◽  
Christian Peppermueller ◽  
Oliver Schreer ◽  
Thomas Hierl

This chapter looks at the relevant tools and technologies that are related/applicable to the process mining and semantic modelling techniques. Theoretically, the chapter describes some of the interrelated tools and area of topics covered by this book. In other words, the chapter introduces the background information that is essential for understanding the context and proposed method of this book. It starts by looking at the process mining term and the different types of its application when applied to solve real-time problems. Consequently, the chapter discusses the wider scope of the different semantic-aware methods that trails to provide valuable information or insights that can be utilized to support the real-time processing or decision-making purposes.


10.2196/16072 ◽  
2020 ◽  
Vol 4 (6) ◽  
pp. e16072 ◽  
Author(s):  
Timothy R Brick ◽  
James Mundie ◽  
Jonathan Weaver ◽  
Robert Fraleigh ◽  
Zita Oravecz

Background Mobile health (mHealth) methods often rely on active input from participants, for example, in the form of self-report questionnaires delivered via web or smartphone, to measure health and behavioral indicators and deliver interventions in everyday life settings. For short-term studies or interventions, these techniques are deployed intensively, causing nontrivial participant burden. For cases where the goal is long-term maintenance, limited infrastructure exists to balance information needs with participant constraints. Yet, the increasing precision of passive sensors such as wearable physiology monitors, smartphone-based location history, and internet-of-things devices, in combination with statistical feature selection and adaptive interventions, have begun to make such things possible. Objective In this paper, we introduced Wear-IT, a smartphone app and cloud framework intended to begin addressing current limitations by allowing researchers to leverage commodity electronics and real-time decision making to optimize the amount of useful data collected while minimizing participant burden. Methods The Wear-IT framework uses real-time decision making to find more optimal tradeoffs between the utility of data collected and the burden placed on participants. Wear-IT integrates a variety of consumer-grade sensors and provides adaptive, personalized, and low-burden monitoring and intervention. Proof of concept examples are illustrated using artificial data. The results of qualitative interviews with users are provided. Results Participants provided positive feedback about the ease of use of studies conducted using the Wear-IT framework. Users expressed positivity about their overall experience with the framework and its utility for balancing burden and excitement about future studies that real-time processing will enable. Conclusions The Wear-IT framework uses a combination of passive monitoring, real-time processing, and adaptive assessment and intervention to provide a balance between high-quality data collection and low participant burden. The framework presents an opportunity to deploy adaptive assessment and intervention designs that use real-time processing and provides a platform to study and overcome the challenges of long-term mHealth intervention.


2016 ◽  
Vol 24 (2) ◽  
pp. 195-202 ◽  
Author(s):  
Keiichi Yasumoto ◽  
Hirozumi Yamaguchi ◽  
Hiroshi Shigeno

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