Hybrid Representation-Enhanced Sampling for Bayesian Active Learning in
Musculoskeletal Segmentation of Lower Extremities
- URL: http://arxiv.org/abs/2307.13986v2
- Date: Wed, 20 Dec 2023 14:24:17 GMT
- Title: Hybrid Representation-Enhanced Sampling for Bayesian Active Learning in
Musculoskeletal Segmentation of Lower Extremities
- Authors: Ganping Li, Yoshito Otake, Mazen Soufi, Masashi Taniguchi, Masahide
Yagi, Noriaki Ichihashi, Keisuke Uemura, Masaki Takao, Nobuhiko Sugano,
Yoshinobu Sato
- Abstract summary: This study introduces a hybrid representation-enhanced sampling strategy that integrates both density and diversity criteria.
Experiments are performed on two lower extremity (LE) datasets of MRI and CT images.
- Score: 0.9287179270753105
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Purpose: Manual annotations for training deep learning (DL) models in
auto-segmentation are time-intensive. This study introduces a hybrid
representation-enhanced sampling strategy that integrates both density and
diversity criteria within an uncertainty-based Bayesian active learning (BAL)
framework to reduce annotation efforts by selecting the most informative
training samples. Methods: The experiments are performed on two lower extremity
(LE) datasets of MRI and CT images, focusing on the segmentation of the femur,
pelvis, sacrum, quadriceps femoris, hamstrings, adductors, sartorius, and
iliopsoas, utilizing a U-net-based BAL framework. Our method selects uncertain
samples with high density and diversity for manual revision, optimizing for
maximal similarity to unlabeled instances and minimal similarity to existing
training data. We assess the accuracy and efficiency using Dice and a proposed
metric called reduced annotation cost (RAC), respectively. We further evaluate
the impact of various acquisition rules on BAL performance and design an
ablation study for effectiveness estimation. Results: In MRI and CT datasets,
our method was superior or comparable to existing ones, achieving a 0.8\% Dice
and 1.0\% RAC increase in CT (statistically significant), and a 0.8\% Dice and
1.1\% RAC increase in MRI (not statistically significant) in volume-wise
acquisition. Our ablation study indicates that combining density and diversity
criteria enhances the efficiency of BAL in musculoskeletal segmentation
compared to using either criterion alone. Conclusion: Our sampling method is
proven efficient in reducing annotation costs in image segmentation tasks. The
combination of the proposed method and our BAL framework provides a
semi-automatic way for efficient annotation of medical image datasets.
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