Monitoramento ubíquo da saúde mental: detectando padrões de sociabilidade enriquecidos por contexto através do processamento de eventos complexos
Nenhuma Miniatura disponível
Data
2020-02-10
Autores
Título da Revista
ISSN da Revista
Título de Volume
Editor
Universidade Federal do Maranhão
Resumo
Traditionally, the monitoring of individuals with mental disorders is
conducted through face-to-face meetings with professionals specialized in mental
health. Today, however, computational methods can use ubiquitous devices (e.g.,
smartphones and wearable technologies) to monitor social behaviors related to mental
health rather than relying on self-reports. These devices represent a valuable source
of contextual data that allows the identification of the social activities experienced by
individuals in their daily routine. Therefore, the use of these technologies to identify
social activities habit enables the recognition of abnormal social behaviors that may
be mental disorders indicative. For this reason, this study presents a new approach
to monitoring mental health through social situation awareness. This work introduces
an algorithm capable of detecting sociability patterns, i.e., it characterizes the periods
of the day when the individual socializes habitually. The recognition of social routine
is performed under different context conditions (e.g., workday and weekend), which
allows differentiating abnormal social behaviors from changes in social habits expected
in certain situations. The solution presented is also able to identify changes in social
patterns that may be indicative of mental disorders presence. The implementation
of the proposed algorithm used the combination of the Frequent Patterns Mining
approach with the Complex Events Processing, which allows the realization of the
continuous social data stream processing. The evaluation performed demonstrated
that context-based recognition provides a better understanding of the social routine,
also indicating that the proposed solution is capable of detecting sociability patterns
similar to a batch algorithm. Additionally, it was validated the performance of the
social behavior change detection mechanism.
Descrição
Palavras-chave
Saúde Mental, Transtornos mentais, Computação ubíqua, Computação móvel, Padrões de sociabilidade, Mental health, Mental disorders, Ubiquitous computing, Mobile computing, Sociability pattern
Citação
MOURA, Ivan Rodrigues de. Monitoramento ubíquo da saúde mental: detectando padrões de sociabilidade enriquecidos por contexto através do processamento de eventos complexos. 2020.111 f. Dissertação (Programa de Pós-Graduação em Ciência da Computação/CCET) - Universidade Federal do Maranhão, São Luís, 2020.