MCU-Net: A framework towards uncertainty representations for decision
support system patient referrals in healthcare contexts
- URL: http://arxiv.org/abs/2007.03995v3
- Date: Tue, 25 Aug 2020 11:12:16 GMT
- Title: MCU-Net: A framework towards uncertainty representations for decision
support system patient referrals in healthcare contexts
- Authors: Nabeel Seedat
- Abstract summary: We present a framework of uncertainty representation evaluated for medical image segmentation, using MCU-Net.
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.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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.
Related papers
- Know Where You're Uncertain When Planning with Multimodal Foundation Models: A Formal Framework [54.40508478482667]
We present a comprehensive framework to disentangle, quantify, and mitigate uncertainty in perception and plan generation.
We propose methods tailored to the unique properties of perception and decision-making.
We show that our uncertainty disentanglement framework reduces variability by up to 40% and enhances task success rates by 5% compared to baselines.
arXiv Detail & Related papers (2024-11-03T17:32:00Z) - Which Client is Reliable?: A Reliable and Personalized Prompt-based Federated Learning for Medical Image Question Answering [51.26412822853409]
We present a novel personalized federated learning (pFL) method for medical visual question answering (VQA) models.
Our method introduces learnable prompts into a Transformer architecture to efficiently train it on diverse medical datasets without massive computational costs.
arXiv Detail & Related papers (2024-10-23T00:31:17Z) - Enhanced Uncertainty Estimation in Ultrasound Image Segmentation with MSU-Net [13.489622701621698]
We introduce MSU-Net, a novel multistage approach for training an ensemble of U-Nets to yield accurate ultrasound image segmentation maps.
We demonstrate substantial improvements, 18.1% over a single Monte Carlo U-Net, enhancing uncertainty evaluations, model transparency, and trustworthiness.
arXiv Detail & Related papers (2024-07-31T01:36:47Z) - Operationalizing Counterfactual Metrics: Incentives, Ranking, and
Information Asymmetry [62.53919624802853]
We analyze the incentive misalignments that arise from such average treated outcome metrics.
We show how counterfactual metrics can be modified to behave reasonably in patient-facing ranking systems.
arXiv Detail & Related papers (2023-05-24T00:24:38Z) - Beyond Voxel Prediction Uncertainty: Identifying brain lesions you can
trust [1.1199585259018459]
Deep neural networks have become the gold-standard approach for the automated segmentation of 3D medical images.
In this work, we propose to go beyond voxel-wise assessment using an innovative Graph Neural Network approach.
This network allows the fusion of three estimators of voxel uncertainty: entropy, variance, and model's confidence.
arXiv Detail & Related papers (2022-09-22T09:20:05Z) - Optimal discharge of patients from intensive care via a data-driven
policy learning framework [58.720142291102135]
It is important that the patient discharge task addresses the nuanced trade-off between decreasing a patient's length of stay and the risk of readmission or even death following the discharge decision.
This work introduces an end-to-end general framework for capturing this trade-off to recommend optimal discharge timing decisions.
A data-driven approach is used to derive a parsimonious, discrete state space representation that captures a patient's physiological condition.
arXiv Detail & Related papers (2021-12-17T04:39:33Z) - Distribution-Free Federated Learning with Conformal Predictions [0.0]
Federated learning aims to leverage separate institutional datasets while maintaining patient privacy.
Poor calibration and lack of interpretability may hamper widespread deployment of federated models into clinical practice.
We propose to address these challenges by incorporating an adaptive conformal framework into federated learning.
arXiv Detail & Related papers (2021-10-14T18:41:17Z) - Clinical Outcome Prediction from Admission Notes using Self-Supervised
Knowledge Integration [55.88616573143478]
Outcome prediction from clinical text can prevent doctors from overlooking possible risks.
Diagnoses at discharge, procedures performed, in-hospital mortality and length-of-stay prediction are four common outcome prediction targets.
We propose clinical outcome pre-training to integrate knowledge about patient outcomes from multiple public sources.
arXiv Detail & Related papers (2021-02-08T10:26:44Z) - Integrating uncertainty in deep neural networks for MRI based stroke
analysis [0.0]
We present a Bayesian Convolutional Neural Network (CNN) yielding a probability for a stroke lesion on 2D Magnetic Resonance (MR) images.
In a cohort of 511 patients, our CNN achieved an accuracy of 95.33% at the image-level representing a significant improvement of 2% over a non-Bayesian counterpart.
arXiv Detail & Related papers (2020-08-13T09:50:17Z) - An Uncertainty-based Human-in-the-loop System for Industrial Tool Wear
Analysis [68.8204255655161]
We show that uncertainty measures based on Monte-Carlo dropout in the context of a human-in-the-loop system increase the system's transparency and performance.
A simulation study demonstrates that the uncertainty-based human-in-the-loop system increases performance for different levels of human involvement.
arXiv Detail & Related papers (2020-07-14T15:47:37Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.