360 Quantified Self
Hamed Haddadi, Ferda Ofli, Yelena Mejova, Ingmar Weber, Jaideep, Srivastava

TL;DR
This paper proposes a holistic approach called 360 Quantified Self, integrating wearable sensor data with social media information to provide a comprehensive view of individual health and wellbeing.
Contribution
It introduces a framework for combining sensor data with social media insights to enhance health monitoring and diagnosis.
Findings
Social media data can complement wearable sensors for health insights
Social network information can inform about social wellbeing
A vision for integrated health data systems is outlined
Abstract
Wearable devices with a wide range of sensors have contributed to the rise of the Quantified Self movement, where individuals log everything ranging from the number of steps they have taken, to their heart rate, to their sleeping patterns. Sensors do not, however, typically sense the social and ambient environment of the users, such as general life style attributes or information about their social network. This means that the users themselves, and the medical practitioners, privy to the wearable sensor data, only have a narrow view of the individual, limited mainly to certain aspects of their physical condition. In this paper we describe a number of use cases for how social media can be used to complement the check-up data and those from sensors to gain a more holistic view on individuals' health, a perspective we call the 360 Quantified Self. Health-related information can be…
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Taxonomy
TopicsInnovative Human-Technology Interaction · Digital Mental Health Interventions · Mobile Health and mHealth Applications
