Confidence intervals for performance estimates in 3D medical image segmentation

07/20/2023
by   R. El Jurdi, et al.
0

Medical segmentation models are evaluated empirically. As such an evaluation is based on a limited set of example images, it is unavoidably noisy. Beyond a mean performance measure, reporting confidence intervals is thus crucial. However, this is rarely done in medical image segmentation. The width of the confidence interval depends on the test set size and on the spread of the performance measure (its standard-deviation across of the test set). For classification, many test images are needed to avoid wide confidence intervals. Segmentation, however, has not been studied, and it differs by the amount of information brought by a given test image. In this paper, we study the typical confidence intervals in medical image segmentation. We carry experiments on 3D image segmentation using the standard nnU-net framework, two datasets from the Medical Decathlon challenge and two performance measures: the Dice accuracy and the Hausdorff distance. We show that the parametric confidence intervals are reasonable approximations of the bootstrap estimates for varying test set sizes and spread of the performance metric. Importantly, we show that the test size needed to achieve a given precision is often much lower than for classification tasks. Typically, a 1 samples when the spread is low (standard-deviation around 3 segmentation tasks may lead to higher spreads and require over 1000 samples.

READ FULL TEXT
research
10/26/2022

How precise are performance estimates for typical medical image segmentation tasks?

An important issue in medical image processing is to be able to estimate...
research
06/22/2018

Towards safe deep learning: accurately quantifying biomarker uncertainty in neural network predictions

Automated medical image segmentation, specifically using deep learning, ...
research
01/07/2020

Differentially Private Confidence Intervals

Confidence intervals for the population mean of normally distributed dat...
research
03/17/2023

MedNeXt: Transformer-driven Scaling of ConvNets for Medical Image Segmentation

There has been exploding interest in embracing Transformer-based archite...
research
10/22/2022

Diversity-Promoting Ensemble for Medical Image Segmentation

Medical image segmentation is an actively studied task in medical imagin...
research
07/01/2022

Usable Region Estimate for Assessing Practical Usability of Medical Image Segmentation Models

We aim to quantitatively measure the practical usability of medical imag...
research
04/22/2022

Development of an algorithm for medical image segmentation of bone tissue in interaction with metallic implants

This preliminary study focuses on the development of a medical image seg...

Please sign up or login with your details

Forgot password? Click here to reset