TY - JOUR
T1 - Co-designing opportunities for Human-Centred Machine Learning in supporting Type 1 diabetes decision-making
AU - Stawarz, Katarzyna
AU - Katz, Dmitri
AU - Ayobi, Amid
AU - Marshall, Paul
AU - Yamagata, Taku
AU - Santos-Rodriguez, Raul
AU - Flach, Peter A
AU - O'Kane, Aisling Ann
PY - 2023/5/1
Y1 - 2023/5/1
N2 - Type 1 Diabetes (T1D) self-management requires hundreds of daily decisions. Diabetes technologies that use machine learning have significant potential to simplify this process and provide better decision support, but often rely on cumbersome data logging and cognitively demanding reflection on collected data. We set out to use co-design to identify opportunities for machine learning to support diabetes self-management in everyday settings. However, over nine months of interviews and design workshops with 15 people with T1D, we had to re-assess our assumptions about user needs. Our participants reported confidence in their personal knowledge and rejected machine learning based decision support when coping with routine situations, but highlighted the need for technological support in the context of unfamiliar or unexpected situations (holidays, illness, etc.). However, these are the situations where prior data are often lacking and drawing data-driven conclusions is challenging. Reflecting this challenge, we provide suggestions on how machine learning and other artificial intelligence approaches, e.g., expert systems, could enable decision-making support in both routine and unexpected situations.
AB - Type 1 Diabetes (T1D) self-management requires hundreds of daily decisions. Diabetes technologies that use machine learning have significant potential to simplify this process and provide better decision support, but often rely on cumbersome data logging and cognitively demanding reflection on collected data. We set out to use co-design to identify opportunities for machine learning to support diabetes self-management in everyday settings. However, over nine months of interviews and design workshops with 15 people with T1D, we had to re-assess our assumptions about user needs. Our participants reported confidence in their personal knowledge and rejected machine learning based decision support when coping with routine situations, but highlighted the need for technological support in the context of unfamiliar or unexpected situations (holidays, illness, etc.). However, these are the situations where prior data are often lacking and drawing data-driven conclusions is challenging. Reflecting this challenge, we provide suggestions on how machine learning and other artificial intelligence approaches, e.g., expert systems, could enable decision-making support in both routine and unexpected situations.
U2 - 10.1016/j.ijhcs.2023.103003
DO - 10.1016/j.ijhcs.2023.103003
M3 - Article (Academic Journal)
SN - 1071-5819
VL - 173
JO - International Journal of Human-Computer Studies
JF - International Journal of Human-Computer Studies
IS - May 2023
M1 - 103003
ER -