Keyword-augmented and semi-automatic generation of FESS reports: a proof-of-concept study

Introduction Surgical reports are usually written after a procedure and must often be reproduced from memory. Thus, this is an error-prone, and time-consuming task which increases the workload of physicians. In this proof-of-concept study, we developed and evaluated a software tool using Artificial...

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Veröffentlicht in:International journal for computer assisted radiology and surgery 2023-05, Vol.18 (5), p.961-968
Hauptverfasser: Kunz, V., Wildfeuer, V., Bieck, R., Sorge, M., Zebralla, V., Dietz, A., Neumuth, T., Pirlich, M.
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Sprache:eng
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Zusammenfassung:Introduction Surgical reports are usually written after a procedure and must often be reproduced from memory. Thus, this is an error-prone, and time-consuming task which increases the workload of physicians. In this proof-of-concept study, we developed and evaluated a software tool using Artificial Intelligence (AI) for semi-automatic intraoperative generation of surgical reports for functional endoscopic sinus surgery (FESS). Materials and methods A vocabulary of keywords for developing a neural language model was created. With an encoder-decoder-architecture, artificially coherent sentence structures, as they would be expected in general operation reports, were generated. A first set of 48 conventional operation reports were used for model training. After training, the reports were generated again and compared to those before training. Established metrics were used to measure optimization of the model objectively. A cohort of 16 physicians corrected and evaluated three randomly selected, generated reports in four categories: “quality of the generated operation reports,” “time-saving,” “clinical benefits” and “comparison with the conventional reports.” The corrections of the generated reports were counted and categorized. Results Objective parameters showed improvement in performance after training the language model ( p  
ISSN:1861-6429
1861-6410
1861-6429
DOI:10.1007/s11548-022-02791-0