In our recent Asthma Mobile Health Study (AMHS), thousands of asthma patients across the country contributed medical data through the iPhone Asthma Health App on a daily basis for an extended period of time. The collected data included daily self-reported asthma symptoms, symptom triggers, and real time geographic location information. The AMHS is just one of many studies occurring in the context of now many thousands of mobile health apps aimed at improving wellness and better managing chronic disease conditions, leveraging the passive and active collection of data from mobile, handheld smart devices. The ability to identify patient groups or patterns of symptoms that might predict adverse outcomes such as asthma exacerbations or hospitali...
ObjectiveThe heterogeneity of asthma has inspired widespread application of statistical clustering a...
Background: The broad availability of smartphones and the number of health apps in app stores have r...
Background and Aim: Data mining is a very important branch in deeper understanding of medical data, ...
Mobile technology has become increasingly popular in the past decade through the combination of devi...
The self-reporting of asthma frequently leads to patient misidentification in epidemiological studie...
Background: The self-reporting of asthma frequently leads to patient misidentification in epidemiolo...
Mobile healthcare applications can empower users to self-monitor their health conditions without the...
Monitoring asthma is essential for self-management. However, traditional monitoring methods require ...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
With the ubiquitousness of mobile smart phones, health researchers are increasingly interested in le...
As no one symptom can predict disease severity or the need for dedicated medical support in coronavi...
The use of mobile communication devices in health care is spreading worldwide. A huge amount of heal...
Mobile apps are increasingly utilized to gather data for various healthcare aspects. Furthermore, mo...
Background: Asthma is a variable long-term condition. Currently, there is no cure for asthma and the...
INTRODUCTION: Supported self-management empowering people with asthma to detect early deterioration ...
ObjectiveThe heterogeneity of asthma has inspired widespread application of statistical clustering a...
Background: The broad availability of smartphones and the number of health apps in app stores have r...
Background and Aim: Data mining is a very important branch in deeper understanding of medical data, ...
Mobile technology has become increasingly popular in the past decade through the combination of devi...
The self-reporting of asthma frequently leads to patient misidentification in epidemiological studie...
Background: The self-reporting of asthma frequently leads to patient misidentification in epidemiolo...
Mobile healthcare applications can empower users to self-monitor their health conditions without the...
Monitoring asthma is essential for self-management. However, traditional monitoring methods require ...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
With the ubiquitousness of mobile smart phones, health researchers are increasingly interested in le...
As no one symptom can predict disease severity or the need for dedicated medical support in coronavi...
The use of mobile communication devices in health care is spreading worldwide. A huge amount of heal...
Mobile apps are increasingly utilized to gather data for various healthcare aspects. Furthermore, mo...
Background: Asthma is a variable long-term condition. Currently, there is no cure for asthma and the...
INTRODUCTION: Supported self-management empowering people with asthma to detect early deterioration ...
ObjectiveThe heterogeneity of asthma has inspired widespread application of statistical clustering a...
Background: The broad availability of smartphones and the number of health apps in app stores have r...
Background and Aim: Data mining is a very important branch in deeper understanding of medical data, ...