Iterative Design of Visual Analytics for a Clinician-in-the-Loop Smart Home.

Abstract:

:In order to meet the health needs of the coming "age wave," technology needs to be designed that supports remote health monitoring and assessment. In this study we design clinician in the loop (CIL), a clinician-in-the-loop visual interface, that provides clinicians with patient behavior patterns, derived from smart home data. A total of 60 experienced nurses participated in an iterative design of an interactive graphical interface for remote behavior monitoring. Results of the study indicate that usability of the system improves over multiple iterations of participatory design. In addition, the resulting interface is useful for identifying behavior patterns that are indicative of chronic health conditions and unexpected health events. This technology offers the potential to support self-management and chronic conditions, even for individuals living in remote locations.

authors

Ghods A,Caffrey K,Lin B,Fraga K,Fritz R,Schmitter-Edgecombe M,Hundhausen C,Cook DJ

doi

10.1109/JBHI.2018.2864287

subject

Has Abstract

pub_date

2019-07-01 00:00:00

pages

1742-1748

issue

4

eissn

2168-2194

issn

2168-2208

journal_volume

23

pub_type

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