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Patient's Perception of Digital Symptom Assessment Technologies in Rheumatology: Results From a Multicentre Study
43
Zitationen
20
Autoren
2022
Jahr
Abstract
Introduction: An increasing number of digital tools, including dedicated diagnostic decision support systems (DDSS) exist to better assess new symptoms and understand when and where to seek medical care. The aim of this study was to evaluate patient's previous online assessment experiences and to compare the acceptability, usability, usefulness and potential impact of artificial intelligence (AI)-based symptom checker (Ada) and an online questionnaire-based self-referral tool (Rheport). Materials and Methods: Patients newly presenting to three German secondary rheumatology outpatient clinics were randomly assigned in a 1:1 ratio to complete consecutively Ada or Rheport in a prospective non-blinded multicentre controlled crossover randomized trial. DDSS completion time was recorded by local study personnel and perceptions on DDSS and previous online assessment were collected through a self-completed study questionnaire, including usability measured with the validated System Usability Scale (SUS). Results: = 0.005). Both effects were independent of each other. 440/600 (73.3%) and 475/600 (79.2%) of the patients would recommend Ada and Rheport to friends and other patients, respectively. Conclusion: In summary, patients increasingly assess their symptoms independently online, however only a minority used dedicated symptom assessment websites or DDSS. DDSS, such as Ada an Rheport are easy to use, well accepted among patients with musculoskeletal complaints and could replace online search engines for patient symptom assessment, potentially saving time and increasing helpfulness.
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Autoren
- Johannes Knitza
- Felix Muehlensiepen
- Yuriy Ignatyev
- Franziska Fuchs
- Jacob Mohn
- David Simón
- Arnd Kleyer
- Filippo Fagni
- Sebastian Boeltz
- Harriet Morf
- Christina Bergmann
- Hannah Labinsky
- Wolfgang Vorbrüggen
- Andreas Ramming
- Jörg H. W. Distler
- Peter Bartz‐Bazzanella
- Nicolas Vuillerme
- Georg Schett
- Martin Welcker
- Axel J. Hueber
Institutionen
- Friedrich-Alexander-Universität Erlangen-Nürnberg(DE)
- Université Grenoble Alpes(FR)
- Universitätsklinikum Erlangen(DE)
- Medizinische Hochschule Brandenburg Theodor Fontane(DE)
- Klinikum Rheine(DE)
- Orange (France)(FR)
- Institut Universitaire de France(FR)
- Centre Inria de l'Université Grenoble Alpes(FR)
- Centre National de la Recherche Scientifique(FR)
- Institut polytechnique de Grenoble(FR)
- Medizinisches Versorgungszentrum Prof. Mathey, Prof. Schofer(DE)
- Nuremberg Hospital(DE)
- Paracelsus Medizinische Privatuniversität(DE)
- Sozialstiftung Bamberg(DE)