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RESEARCH PRODUCT
A User-Centered Chatbot (Wakamola) to Collect Linked Data in Population Networks to Support Studies of Overweight and Obesity Causes: Design and Pilot Study
Juan M. García-gómezLuis Fernandez-luqueVicent Blanes-selvaJuan Francisco Merino-torresManuel PortolésShabbir Syed-abdulYu-chuan Jack LiJ. Alberto ConejeroMatilde Rubio AlmanzaSabina Asensio-cuestaRuth Vilar-mateoAna Frígolasubject
Gerontologyobesity020205 medical informaticsassessment02 engineering and technologyOverweightcomputer.software_genreChatbot0302 clinical medicineHealth Information Management0202 electrical engineering electronic engineering information engineering03.- Garantizar una vida saludable y promover el bienestar para todos y todas en todas las edades030212 general & internal medicinemHealthuser-centered designTelegrameducation.field_of_studyPublic healthpublic healthmHealthlcsh:R858-859.7medicine.symptomUnderweightPsychologyMATEMATICA APLICADASocial Network AnalysisPopulationHealth InformaticsMHealthAssessmentlcsh:Computer applications to medicine. Medical informatics03 medical and health sciencesmedicineoverweightObesityeducationPROYECTOS DE INGENIERIAUser-centered designOriginal PaperSocial networkbusiness.industryUser-centered designchatbotOverweightmedicine.diseaseObesityFISICA APLICADAbusinesscomputerChatbotdescription
[EN] Background: Obesity and overweight are a serious health problem worldwide with multiple and connected causes. Simultaneously, chatbots are becoming increasingly popular as a way to interact with users in mobile health apps. Objective: This study reports the user-centered design and feasibility study of a chatbot to collect linked data to support the study of individual and social overweight and obesity causes in populations. Methods: We first studied the users' needs and gathered users' graphical preferences through an open survey on 52 wireframes designed by 150 design students; it also included questions about sociodemographics, diet and activity habits, the need for overweight and obesity apps, and desired functionality. We also interviewed an expert panel. We then designed and developed a chatbot. Finally, we conducted a pilot study to test feasibility. Results: We collected 452 answers to the survey and interviewed 4 specialists. Based on this research, we developed a Telegram chatbot named Wakamola structured in six sections: personal, diet, physical activity, social network, user's status score, and project information. We defined a user's status score as a normalized sum (0-100) of scores about diet (frequency of eating 50 foods), physical activity, BMI, and social network. We performed a pilot to evaluate the chatbot implementation among 85 healthy volunteers. Of 74 participants who completed all sections, we found 8 underweight people (11%), 5 overweight people (7%), and no obesity cases. The mean BMI was 21.4 kg/m(2) (normal weight). The most consumed foods were olive oil, milk and derivatives, cereals, vegetables, and fruits. People walked 10 minutes on 5.8 days per week, slept 7.02 hours per day, and were sitting 30.57 hours per week. Moreover, we were able to create a social network with 74 users, 178 relations, and 12 communities. Conclusions: The Telegram chatbot Wakamola is a feasible tool to collect data from a population about sociodemographics, diet patterns, physical activity, BMI, and specific diseases. Besides, the chatbot allows the connection of users in a social network to study overweight and obesity causes from both individual and social perspectives.
year | journal | country | edition | language |
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2021-04-01 |