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Multiple instance learning framework can facilitate explainability in murmur detection.

Maurice RohrBenedikt MüllerSebastian DillGökhan GüneyChristoph Hoog Antink
Published in: PLOS digital health (2024)
To the best of our knowledge, we are the first to demonstrate the usefulness of MIL in PCG classification. Also, we showcase how the explainability of the model can be analyzed quantitatively, thus avoiding confirmation bias inherent to many post-hoc methods. Finally, our overall results demonstrate the merit of employing MIL combined with handcrafted features for the generation of explainable features as well as for a competitive classification performance.
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