A Hybrid Model to Classify Patients with Chronic Obstructive Respiratory Diseases

Data de publicação:

Autores da FMUP

  • José Alberto Da Silva Freitas

    Autor

  • Ana Isabel Alves De Sá E Sousa

    Autor

Participantes de fora da FMUP

  • Martinho, D
  • Vieira, A
  • Meira, J
  • Martins, C
  • Marreiros, G

Unidades de investigação

Abstract

Over the last decades, an increase in the ageing population and age-related diseases has been observed, with the increase in healthcare costs. As so, new solutions to provide more efficient and affordable support to this group of patients are needed. Such solutions should never discard the user and instead should focus on promoting more healthy lifestyles and provide tools for patients' active participation in the treatment and management of their diseases. In this concern, the Personal Health Empowerment (PHE) project presented in this paper aims to empower patients to monitor and improve their health, using personal data and technology assisted coaching. The work described in this paper focuses on defining an approach for user modelling on patients with chronic obstructive respiratory diseases using a hybrid modelling approach to identify different groups of users. A classification model with 90.4% prediction accuracy was generated combining agglomerative hierarchical clustering and decision tree classification techniques. Furthermore, this model identified 5 clusters which describe characteristics of 5 different types of users according to 7 generated rules. With the modelling approach defined in this study, a personalized coaching solution will be built considering patients with different necessities and capabilities and adapting the support provided, enabling the recognition of early signs of exacerbations and objective self-monitoring and treatment of the disease. The novel factor of this approach resides in the possibility to integrate personalized coaching technologies adapted to each kind of user within a smartphone-based application resulting in a reliable and affordable alternative for patients to manage their disease.

Dados da publicação

ISSN/ISSNe:
0148-5598, 1573-689X

Journal of Medical Systems  Springer New York

Tipo:
Article
Páginas:
31-
Link para outro recurso:
www.scopus.com

Citações Recebidas na Web of Science: 2

Citações Recebidas na Scopus: 3

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Keywords

  • User Modelling; Personalized coaching; Mobile health; Preventive healthcare; Healthcare management systems

Financiamento

Proyectos asociados

A machine learning-based approach to support the assessment of clinical coded data quality in the context of Diagnosis-Related Groups classification systems

Investigador Principal: José Alberto da Silva Freitas

Estudo Clínico Académico . 2020

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