On computing critical factors based healthy behavior index for behavior assessment

•A user-centric methodology to identify healthy behavior index (HBI) to facilitate the individual through correlated primary habits in appropriate proportion.•The study has focused the derivation of index to represent the lifestyle based healthy behavior status.•The healthy behavior index comprehend...

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Veröffentlicht in:International journal of medical informatics (Shannon, Ireland) Ireland), 2020-09, Vol.141, p.104181-104181, Article 104181
Hauptverfasser: Bilal, Hafiz Syed Muhammad, Amin, Muhammad Bilal, Hussain, Jamil, Ali, Syed Imran, Hussain, Shujaat, Sadiq, Muhammad, Razzaq, Muhammad Asif, Abbas, Asim, Choi, Chunho, Lee, Sungyoung
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Sprache:eng
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Zusammenfassung:•A user-centric methodology to identify healthy behavior index (HBI) to facilitate the individual through correlated primary habits in appropriate proportion.•The study has focused the derivation of index to represent the lifestyle based healthy behavior status.•The healthy behavior index comprehends the impact of fundament lifestyle factors.•Integration of the developed HBI service with wellness management service-enabled platform.•UEQ based evaluation of HBI for the effectiveness, novelty, attraction and motivation prospects. Ubiquitous computing has supported personalized health through a vast variety of wellness and healthcare self-quantification applications over the last decade. These applications provide insights for daily life activities but unable to portray the comprehensive impact of personal habits on human health. Therefore, in order to facilitate the individuals, we have correlated the lifestyle habits in an appropriate proportion to determine the overall impact of influenced behavior on the well-being of humans. To study the combined impact of personal behaviors, we have proposed a methodology to derive the comprehensive Healthy Behavior Index (HBI) consisting of two major processes: (1) Behaviors’ Weight-age Identification (BWI), and (2) Healthy Behavior Quantification and Index (HBQI) modeling. The BWI process identifies the high ranked contributing behaviors through life-expectancy based weight-age, whereas HBQI derives a mathematical model based on quantification and indexing of behavior using wellness guidelines. The contributing behaviors are identified through text mining technique and verified by seven experts with a Kappa agreement level of 0.379. A real-world user-centric statistical evaluation is applied through User Experience Questionnaire (UEQ) method to evaluate the impact of HBI service. This HBI service is developed for the Mining Minds, a wellness management application. This study involves 103 registered participants (curious about the chronic disease) for a Korean wellness management organization. They used the HBI service over 12 weeks, the results for which were evaluated through UEQ and user feedback. The service reliability for the Cronbach's alpha coefficient greater than 0.7 was achieved using HBI service whereas the stimulation coefficient of the value 0.86 revealed significant effect. We observed an overall novelty of the value 0.88 showing the potential interest of participants. The comprehensive HBI has demonstr
ISSN:1386-5056
1872-8243
DOI:10.1016/j.ijmedinf.2020.104181