Transforming clinical assessments: Explicitly articulating implicit clinical decision-making to train AI
At a glance
- Project leader : Lena Sauerzopf
- Deputy of project leader : Dr. Martina Spiess
- Project team : Celina Chavez, Dr. Elena Gavagnin, Benjamin Kühnis
- Project budget : CHF 18'000
- Project status : ongoing
- Funding partner : Internal (ZHAW digital / Digital Futures Fund)
- Contact person : Lena Sauerzopf
Description
We are currently creating an AI algorithm using modern computer vision methods to assess movement quality in people after stroke. Our project, as many others, depends on therapist’s manual movement quality rating to create the ground truth. While therapists are trained to reliably assess movement quality in person (3-dimensional, 3D), it is unclear if they can do so when rating is based on videos (2-dimensional, 2D). The aim of this nested DFF project is to assess the reliability of video-based observations when evaluating compensatory movements in the upper extremities and trunk during a drinking task performed by post-stroke clients. Therefore, we recruit 25 therapists to assess 7 anonymized video recordings of patients after stroke and let them rate compensatory movements on a scale. We will analyze intra-rater and inter-rater reliability to contribute to reliable ground truth in AI applications for clinical decision-making processes.
Publications
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Chavez Panduro, Celina Gabriela; Spiess, Martina; Gavagnin, Elena; Kühnis, Benjamin; Unger, Tim; Schönhammer, Josef; Sauerzopf, Lena,
2024.
In:
6. Kongress der Ergotherapie, Fribourg, Schweiz, 24.-25. Mai 2024.