The use of mobile communication devices in health care is spreading worldwide. A huge amount of health data collected by these devices (mobile health data) is nowadays available. Mobile health data may allow for real-time monitoring of patients and delivering ad-hoc treatment recommendations. This paper aims at showing how this may be done by exploiting the potentialities of fuzzy clustering techniques. In fact, such techniques can be fruitfully applied to mobile health data in order to identify clusters of patients for diagnostic classification and cluster-specific therapies. However, since mobile health data are full of noise, fuzzy clustering methods cannot be directly applied to mobile health data. Such data must be denoised prior to an...
IoMT sensors such as wearables, moodables, ingestible sensors and trackers have the potential to pro...
AbstractThe foremost avoidable cause of disease and death is tobacco consume in almost every country...
The aim of this study was to identify, with soft clustering methods, multimorbidity patterns in the ...
In our recent Asthma Mobile Health Study (AMHS), thousands of asthma patients across the country con...
This study aims to develop a methodology for the justification of medical diagnostic decisions based...
Objectives: the aim of this study was to identify, with soft clustering methods, multimorbidity patt...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
The devastating illness known as Covid-19 has disrupted the lives of individuals all over the globe ...
With the ubiquitousness of mobile smart phones, health researchers are increasingly interested in le...
By gleaning insights from the data, fuzzy clustering capable to learn from data, identify patterns a...
Fuzzy clustering is one of the unsupervised machine learning techniques based knowledge of data anal...
Objective: Fuzzy clustering algorithm is a partition method used to assign objects from a data set t...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
Altres ajuts: PERIS/SLT002/16/00058Objectives The aim of this study was to identify, with soft clust...
Prevention of the spread of the 2019 corona virus disease by vaccination has become a controversy in...
IoMT sensors such as wearables, moodables, ingestible sensors and trackers have the potential to pro...
AbstractThe foremost avoidable cause of disease and death is tobacco consume in almost every country...
The aim of this study was to identify, with soft clustering methods, multimorbidity patterns in the ...
In our recent Asthma Mobile Health Study (AMHS), thousands of asthma patients across the country con...
This study aims to develop a methodology for the justification of medical diagnostic decisions based...
Objectives: the aim of this study was to identify, with soft clustering methods, multimorbidity patt...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
The devastating illness known as Covid-19 has disrupted the lives of individuals all over the globe ...
With the ubiquitousness of mobile smart phones, health researchers are increasingly interested in le...
By gleaning insights from the data, fuzzy clustering capable to learn from data, identify patterns a...
Fuzzy clustering is one of the unsupervised machine learning techniques based knowledge of data anal...
Objective: Fuzzy clustering algorithm is a partition method used to assign objects from a data set t...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
Altres ajuts: PERIS/SLT002/16/00058Objectives The aim of this study was to identify, with soft clust...
Prevention of the spread of the 2019 corona virus disease by vaccination has become a controversy in...
IoMT sensors such as wearables, moodables, ingestible sensors and trackers have the potential to pro...
AbstractThe foremost avoidable cause of disease and death is tobacco consume in almost every country...
The aim of this study was to identify, with soft clustering methods, multimorbidity patterns in the ...