[HTML][HTML] How do automated reasoning features impact the usability of a clinical task management system? Development and usability testing of a prototype

SH Kim, J Jin, M Sevinchan, A Davies - International Journal of Medical …, 2023 - Elsevier
SH Kim, J Jin, M Sevinchan, A Davies
International Journal of Medical Informatics, 2023Elsevier
Background Electronic clinical task management systems (ECTMSs) have been developed
and adopted by care providers to improve care coordination. Some systems utilised
automated reasoning (AR) to enable more intelligent task management functionalities, such
as automated task allocation. Yet, the impact of such features on usability remains unclear.
Poor usability of health information systems has been described to cause frustration and
contribute to patient safety incidents. Aim To design AR features for an ECTMS and to …
Background
Electronic clinical task management systems (ECTMSs) have been developed and adopted by care providers to improve care coordination. Some systems utilised automated reasoning (AR) to enable more intelligent task management functionalities, such as automated task allocation. Yet, the impact of such features on usability remains unclear. Poor usability of health information systems has been described to cause frustration and contribute to patient safety incidents.
Aim
To design AR features for an ECTMS and to evaluate their impact on usability.
Methods
In this mixed methods study, four ECTMS feature prototypes were co-designed with two clinicians. For each prototype, one AR variant and one non-AR variant with equivalent functionalities were developed. A moderated usability testing was conducted with seven clinicians to obtain ease-of-use ratings of prototypes and measure task durations. Parameters related to demographics and attitudes of participants were obtained via a questionnaire. A framework analysis was performed to summarise qualitative feedback. To determine statistical relationships of study variables, Spearmańs rank coefficients were calculated and presented as a correlation matrix.
Results
Three out of four prototypes received higher median ease-of-use ratings for AR variants and were associated with shorter average task durations. Multiple clinical use cases suitable for AR were identified. Preference for AR was found to moderately correlate with digital proficiency and prior experience with ECTMSs. Insufficient trust in automation, alert fatigue, and system customisation were identified as challenges in the adoption of AR features.
Conclusions
This study provides evidence for the potential of AR to enhance usability in ECTMSs. Consideration of psychological and organisational context of users in the feature design was found to be decisive for usability. Future research should explore implications for operational and clinical outcomes.
Elsevier
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