Robust Segmentation Models using an Uncertainty Slice Sampling Based Annotation Workflow

09/30/2021
by   Grzegorz Chlebus, et al.
2

Semantic segmentation neural networks require pixel-level annotations in large quantities to achieve a good performance. In the medical domain, such annotations are expensive, because they are time-consuming and require expert knowledge. Active learning optimizes the annotation effort by devising strategies to select cases for labeling that are most informative to the model. In this work, we propose an uncertainty slice sampling (USS) strategy for semantic segmentation of 3D medical volumes that selects 2D image slices for annotation and compare it with various other strategies. We demonstrate the efficiency of USS on a CT liver segmentation task using multi-site data. After five iterations, the training data resulting from USS consisted of 2410 slices (4 3730 (6 (RSS) sampling, respectively. Despite being trained on the smallest amount of data, the model based on the USS strategy evaluated on 234 test volumes significantly outperformed models trained according to other strategies and achieved a mean Dice index of 0.964, a relative volume error of 4.2 surface distance of 1.35 mm, and a Hausdorff distance of 23.4 mm. This was only slightly inferior to 0.967, 3.8 trained on all available data, but the robustness analysis using the 5th percentile of Dice and the 95th percentile of the remaining metrics demonstrated that USS resulted not only in the most robust model compared to other sampling schemes, but also outperformed the model trained on all data according to Dice (0.946 vs. 0.945) and mean surface distance (1.92 mm vs. 2.03 mm).

READ FULL TEXT

page 1

page 2

page 3

page 4

page 7

page 8

page 9

page 10

research
09/25/2022

Partial annotations for the segmentation of large structures with low annotation cost

Deep learning methods have been shown to be effective for the automatic ...
research
07/24/2023

Sparse annotation strategies for segmentation of short axis cardiac MRI

Short axis cardiac MRI segmentation is a well-researched topic, with exc...
research
07/21/2019

Automated Muscle Segmentation from Clinical CT using Bayesian U-Net for Personalization of a Musculoskeletal Model

We propose a method for automatic segmentation of individual muscles fro...
research
04/13/2021

All you need are a few pixels: semantic segmentation with PixelPick

A central challenge for the task of semantic segmentation is the prohibi...
research
01/25/2022

Unsupervised Domain Adaptation for Vestibular Schwannoma and Cochlea Segmentation via Semi-supervised Learning and Label Fusion

Automatic methods to segment the vestibular schwannoma (VS) tumors and t...
research
07/26/2023

Hybrid Representation-Enhanced Sampling for Bayesian Active Learning in Musculoskeletal Segmentation of Lower Extremities

Purpose: Obtaining manual annotations to train deep learning (DL) models...
research
09/12/2019

An Automatic Cardiac Segmentation Framework based on Multi-sequence MR Image

LGE CMR is an efficient technology for detecting infarcted myocardium. A...

Please sign up or login with your details

Forgot password? Click here to reset