2023
DOI: 10.3389/fdgth.2023.1249258
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Assessing optimal methods for transferring machine learning models to low-volume and imbalanced clinical datasets: experiences from predicting outcomes of Danish trauma patients

Andreas Skov Millarch,
Alexander Bonde,
Mikkel Bonde
et al.

Abstract: IntroductionAccurately predicting patient outcomes is crucial for improving healthcare delivery, but large-scale risk prediction models are often developed and tested on specific datasets where clinical parameters and outcomes may not fully reflect local clinical settings. Where this is the case, whether to opt for de-novo training of prediction models on local datasets, direct porting of externally trained models, or a transfer learning approach is not well studied, and constitutes the focus of this study. Us… Show more

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Cited by 3 publications
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“…In the research and practice of ECG signal classification, addressing the challenge of imbalanced datasets is an important issue. To enhance the model's ability to recognize minority classes, this study employs various strategies [19][20][21], including but not limited to:…”
Section: Strategies For Handling Imbalanced Datasetsmentioning
confidence: 99%
“…In the research and practice of ECG signal classification, addressing the challenge of imbalanced datasets is an important issue. To enhance the model's ability to recognize minority classes, this study employs various strategies [19][20][21], including but not limited to:…”
Section: Strategies For Handling Imbalanced Datasetsmentioning
confidence: 99%