MCU-Net: A framework towards uncertainty representations for decision support system patient referrals in healthcare contexts
Incorporating a human-in-the-loop system when deploying automated decision support is critical in healthcare contexts to create trust, as well as provide reliable performance on a patient-to-patient basis. Deep learning methods while having high performance, do not allow for this patient-centered approach due to the lack of uncertainty representation. Thus, we present a framework of uncertainty representation evaluated for medical image segmentation, using MCU-Net which combines a U-Net with Monte Carlo Dropout, evaluated with four different uncertainty metrics. The framework augments this by adding a human-in-the-loop aspect based on an uncertainty threshold for automated referral of uncertain cases to a medical professional. We demonstrate that MCU-Net combined with epistemic uncertainty and an uncertainty threshold tuned for this application maximizes automated performance on an individual patient level, yet refers truly uncertain cases. This is a step towards uncertainty representations when deploying machine learning based decision support in healthcare settings.
Aug-25-2020
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- California > San Diego County
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- Europe > United Kingdom
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- North America > United States
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- Research Report (0.50)
- Industry:
- Health & Medicine
- Diagnostic Medicine > Imaging (0.70)
- Therapeutic Area (0.70)
- Health & Medicine
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