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Plass, M; Kargl, M; Nitsche, P; Jungwirth, E; Holzinger, A; Muller, H.
Understanding and Explaining Diagnostic Paths: Towards Augmented Decision Making.
IEEE Comput Graph Appl. 2022; PP:
Doi: 10.1109/MCG.2022.3197957
Web of Science
PubMed
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- Führende Autor*innen der Med Uni Graz
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Müller Heimo
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Plass Markus
- Co-Autor*innen der Med Uni Graz
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Holzinger Andreas
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Jungwirth Emilian Rudolf
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Kargl Michaela
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Nitsche Patrick
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- Abstract:
- The process of finding a diagnosis in the medical domain relies on implicit knowledge and the experience of a human expert. In this paper, we report on the observation of human decision making, shown by the example of pathology. By tracking the diagnostic steps, individual building blocks are identified, which not only contribute to a diagnostic finding, but can also be used in the future to train and develop artificial intelligence (AI) algorithms. This work also provides insights into the interaction of human experts regarding the observation time of so-called 'hot spots', the magnification used for specific findings, and the overall observation and decision path followed. The documentation scheme yields a standardized examination procedure which shows the concept the pathologist is actually looking for as well as the possible features of findings that can be identified. This contribution indicates how important visualization is for human-centered AI, and specifically for enabling human oversight with respect to AI implementation in high-stake areas such as medicine.