[BibTeX] [RIS]
Towards Informative Uncertainty Measures for MRI Segmentation in Clinical Practice: Application to Multiple Sclerosis
Tipo de publicação: Proceedings
Citação:
Ano: 2023
Mês: June
Publisher: ISMRM & ISMRT 2023 Annual Meeting & Exhibition
Resumo: We approach the problem of quantifying the degree of reliability of supervised deep learning models used by clinicians for automatic multiple sclerosis lesion segmentation on MRI. In particular, we quantify the correspondence of various uncertainty measures to the errors that a deep learning model makes in overall segmentation or lesion detection. The evaluation is done both on in- and out-of- domain datasets (40 and 99 patients respectively), and provides insights about the measures that can point clinicians to potential errors of an automatic algorithm regardless of the distributional shift.
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Autores Molchanova, Nataliia
Vatsal, Raina
La Rosa, Francesco
Malinin, Andrey
Müller, Henning
Gales, Mark
Granziera, Cristina
Graziani, Mara
Bach Cuadra, Meritxell
Adicionado por: []
Total mark: 0
Anexos
  • Towards Informative Uncertaint...
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