2022
DOI: 10.1080/10447318.2022.2075637
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Data Sensemaking in Self-Tracking: Towards a New Generation of Self-Tracking Tools

Abstract: Human-Computer Interaction (HCI) researchers have been increasingly interested in investigating self-trackers' experience with self-tracking tools (STT) to get meaningful insights from their data. However, the literature lacks a coherent, integrated and dedicated source on designing tools that support self-trackers' sensemaking practices. To address this, we carried out a systematic literature review by synthesizing the findings of 91 articles published before 2021 in HCI literature. We identified four data se… Show more

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Cited by 15 publications
(4 citation statements)
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“…Representing personal data makes the artifacts unique and personalized while recognizing that children's and adolescents' experiences with such artifacts are individual, subjective and relational (Bentvelzen et al, 2022;McCarthy & Wright, 2007). The personalized representation also enhances the customized tracking experience and sense-making of health data (Coşkun & Karahanoğlu, 2022). Therefore, we investigated how faded-weekly tangible visualizations might open a space for connecting, reflecting, interpreting, and learning about PA over time.…”
Section: Temporal Methods For Participant Engagement In Hcimentioning
confidence: 99%
“…Representing personal data makes the artifacts unique and personalized while recognizing that children's and adolescents' experiences with such artifacts are individual, subjective and relational (Bentvelzen et al, 2022;McCarthy & Wright, 2007). The personalized representation also enhances the customized tracking experience and sense-making of health data (Coşkun & Karahanoğlu, 2022). Therefore, we investigated how faded-weekly tangible visualizations might open a space for connecting, reflecting, interpreting, and learning about PA over time.…”
Section: Temporal Methods For Participant Engagement In Hcimentioning
confidence: 99%
“…Previous studies indicate that trial-and-error learning is prevalent among women with GDM [37][38][39][40][41][42]. In a recent study by Ibrahim et al [37], women diagnosed with GDM expressed a desire to have all their self-monitoring tools (such as phone apps, paper-based journals, spreadsheets) gathered in one place to aid in sense-making.…”
Section: Self-discoverymentioning
confidence: 99%
“…[21] To increase the utility of the weekly report displaying nightly oxygen saturation data and patient reported outcomes on sleep quality, mood, and functioning, our study will include a check-in video visit at day 7 to orient the participant to the weekly report, which may promote participant engagement. [22] We will explore the effect of these sessions as well as participant experience with the intervention with semi-structured interviews conducted at the end of the research study.…”
Section: Limitationsmentioning
confidence: 99%