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DOI: 10.1055/s-0044-1801602
Tackling the implementation hurdle: User-centric validation of a machine-learning decision support tool for the screening of mild bleeding disorders
Authors
Introduction: Due to the existing data infrastructure, the medical laboratory is an ideal candidate to pioneer machine-learning algorithms (MLA) in medicine. In contrast to radiology, however, very few MLAs have been implemented yet. Recently, we developed an easy-to-use MLA for the screening of inherited mild bleeding disorders (MBDs) before surgery, for which there is no sensible diagnostic tool available. This study aimed to overcome the implementation hurdle by performing a user-centric validation of a MLA for the screening for MBD.
Method: Using detailed data from two prospective cohort studies of patients referred with suspected MBD (n=555; n=217), we trained, externally validated, and implemented a diagnostic MLA (https://toradi-hit.dbmr.unibe.ch/mbdcheck/). To assess user-friendliness, we developed a survey platform comprising a demographic questionnaire, four case vignettes, and the system usability scale (SUS), a validated questionnaire for software applications. The survey was sent out to surgeons, anesthesiologists, and hematologists, and various background data were collected.
Results: The final model included the following predictors and performance in the external validation was better than any other diagnostic tool (AUROC: 0.86; 95% CI: 0.81, 0.90): (1) sex, (2) activated partial thromboplastin time, (3) PFA-200 closure time with an epinephrine collagen cartridge, and (4) a simplified bleeding history based on the ISTH bleeding assessment tool (ISTH BAT). Thirty-three surgeons, 29 anesthesiologists, and 24 hematologists participated in the survey; most physicians had 10-14 years of experience in their respective fields (29.0%). The median time needed to fill out the tool was 72 seconds (interquartile range [IQR]: 49.0, 79.5). The median SUS score was 82.5 (IQR: 72.5, 90,>80=Software with excellent usability).
Conclusion: Using the screening of MBD as a case study, we developed and implemented a user-friendly MLA that performed well in external validation. This experience can serve as a starting point for ML applications in a wide range of clinical problems.
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Artikel online veröffentlicht:
13. Februar 2025
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