A study of longitudinal mobile health data through fuzzy clustering methods for functional data: The case of allergic rhinoconjunctivitis in childhood.

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 p...

Full description

Bibliographic Details
Main Authors: Paolo Giordani, Serena Perna, Annamaria Bianchi, Antonio Pizzulli, Salvatore Tripodi, Paolo Maria Matricardi
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0242197
id doaj-d976547a60134117bf235cbd929d451b
record_format Article
spelling doaj-d976547a60134117bf235cbd929d451b2021-03-04T12:27:13ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-011511e024219710.1371/journal.pone.0242197A study of longitudinal mobile health data through fuzzy clustering methods for functional data: The case of allergic rhinoconjunctivitis in childhood.Paolo GiordaniSerena PernaAnnamaria BianchiAntonio PizzulliSalvatore TripodiPaolo Maria MatricardiThe 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 analyzing them. When longitudinal mobile health data are available, functional data analysis represents a powerful tool for filtering out the noise in the data. Fuzzy clustering methods for functional data can then be used to determine groups of patients. In this work we develop a fuzzy clustering method, based on the concept of medoid, for functional data and we apply it to longitudinal mHealth data on daily symptoms and consumptions of anti-symptomatic drugs collected by two sets of patients in Berlin (Germany) and Ascoli Piceno (Italy) suffering from allergic rhinoconjunctivitis. The studies showed that clusters of patients with similar changes in symptoms were identified opening the possibility of precision medicine.https://doi.org/10.1371/journal.pone.0242197
collection DOAJ
language English
format Article
sources DOAJ
author Paolo Giordani
Serena Perna
Annamaria Bianchi
Antonio Pizzulli
Salvatore Tripodi
Paolo Maria Matricardi
spellingShingle Paolo Giordani
Serena Perna
Annamaria Bianchi
Antonio Pizzulli
Salvatore Tripodi
Paolo Maria Matricardi
A study of longitudinal mobile health data through fuzzy clustering methods for functional data: The case of allergic rhinoconjunctivitis in childhood.
PLoS ONE
author_facet Paolo Giordani
Serena Perna
Annamaria Bianchi
Antonio Pizzulli
Salvatore Tripodi
Paolo Maria Matricardi
author_sort Paolo Giordani
title A study of longitudinal mobile health data through fuzzy clustering methods for functional data: The case of allergic rhinoconjunctivitis in childhood.
title_short A study of longitudinal mobile health data through fuzzy clustering methods for functional data: The case of allergic rhinoconjunctivitis in childhood.
title_full A study of longitudinal mobile health data through fuzzy clustering methods for functional data: The case of allergic rhinoconjunctivitis in childhood.
title_fullStr A study of longitudinal mobile health data through fuzzy clustering methods for functional data: The case of allergic rhinoconjunctivitis in childhood.
title_full_unstemmed A study of longitudinal mobile health data through fuzzy clustering methods for functional data: The case of allergic rhinoconjunctivitis in childhood.
title_sort study of longitudinal mobile health data through fuzzy clustering methods for functional data: the case of allergic rhinoconjunctivitis in childhood.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description 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 analyzing them. When longitudinal mobile health data are available, functional data analysis represents a powerful tool for filtering out the noise in the data. Fuzzy clustering methods for functional data can then be used to determine groups of patients. In this work we develop a fuzzy clustering method, based on the concept of medoid, for functional data and we apply it to longitudinal mHealth data on daily symptoms and consumptions of anti-symptomatic drugs collected by two sets of patients in Berlin (Germany) and Ascoli Piceno (Italy) suffering from allergic rhinoconjunctivitis. The studies showed that clusters of patients with similar changes in symptoms were identified opening the possibility of precision medicine.
url https://doi.org/10.1371/journal.pone.0242197
work_keys_str_mv AT paologiordani astudyoflongitudinalmobilehealthdatathroughfuzzyclusteringmethodsforfunctionaldatathecaseofallergicrhinoconjunctivitisinchildhood
AT serenaperna astudyoflongitudinalmobilehealthdatathroughfuzzyclusteringmethodsforfunctionaldatathecaseofallergicrhinoconjunctivitisinchildhood
AT annamariabianchi astudyoflongitudinalmobilehealthdatathroughfuzzyclusteringmethodsforfunctionaldatathecaseofallergicrhinoconjunctivitisinchildhood
AT antoniopizzulli astudyoflongitudinalmobilehealthdatathroughfuzzyclusteringmethodsforfunctionaldatathecaseofallergicrhinoconjunctivitisinchildhood
AT salvatoretripodi astudyoflongitudinalmobilehealthdatathroughfuzzyclusteringmethodsforfunctionaldatathecaseofallergicrhinoconjunctivitisinchildhood
AT paolomariamatricardi astudyoflongitudinalmobilehealthdatathroughfuzzyclusteringmethodsforfunctionaldatathecaseofallergicrhinoconjunctivitisinchildhood
AT paologiordani studyoflongitudinalmobilehealthdatathroughfuzzyclusteringmethodsforfunctionaldatathecaseofallergicrhinoconjunctivitisinchildhood
AT serenaperna studyoflongitudinalmobilehealthdatathroughfuzzyclusteringmethodsforfunctionaldatathecaseofallergicrhinoconjunctivitisinchildhood
AT annamariabianchi studyoflongitudinalmobilehealthdatathroughfuzzyclusteringmethodsforfunctionaldatathecaseofallergicrhinoconjunctivitisinchildhood
AT antoniopizzulli studyoflongitudinalmobilehealthdatathroughfuzzyclusteringmethodsforfunctionaldatathecaseofallergicrhinoconjunctivitisinchildhood
AT salvatoretripodi studyoflongitudinalmobilehealthdatathroughfuzzyclusteringmethodsforfunctionaldatathecaseofallergicrhinoconjunctivitisinchildhood
AT paolomariamatricardi studyoflongitudinalmobilehealthdatathroughfuzzyclusteringmethodsforfunctionaldatathecaseofallergicrhinoconjunctivitisinchildhood
_version_ 1714802793870524416