Journal article
Fully automated IVUS image segmentation with efficient deep-learning-assisted annotation
Computers in biology and medicine, Vol.199, 111312
12/2025
DOI: 10.1016/j.compbiomed.2025.111312
PMCID: PMC12668224
PMID: 41248587
Abstract
Intravascular ultrasound (IVUS) image segmentation plays a critical role in the diagnosis, treatment planning, and monitoring of coronary artery disease. Although deep learning (DL) methods have achieved state-of-the-art (SOTA) results in various medical image segmentation tasks, effectively delivering clinically acceptable results remains challenging due to the limited availability of large annotated datasets. In this paper, we report an efficient deep learning framework for fully automated IVUS image segmentation that combines active learning and interaction of model outputs to dramatically reduce annotation effort both in image selection and annotation querying from human experts. We propose a two-branch network that integrates a spatial and channel-wise probability attention module into the segmentation network to segment lumen and plaque areas and simultaneously predict potential segmentation errors. With the introduction of segmentation quality assessment (SQA), we can quantify the quality of achieved segmentation on unannotated images and provide meaningful visual cues for human experts, assisting them to concentrate on the most relevant image samples, judiciously determine the most ‘valuable’ images for annotation and effectively employ adjudicated segmentations as the next-batch training annotations. The model performance is thus incrementally boosted via fine-tuning on the newly annotated datasets. We have evaluated our methods on a set of coronary IVUS data from 266 subjects and 38,771 cross-sectional frames by 5-fold cross-validation, demonstrating that our approach achieves SOTA segmentation performance using no more than 10% of training data and significantly reduces the annotation effort.
•We have proposed a novel deep-learning-assisted annotation framework for fully automated IVUS image segmentation.•We have proposed a unified two-branch network that integrates image segmentation and quality control.•Our approach achieves SOTA segmentation performance using no more than 10% of training data and significantly reduces the annotation effort.
Details
- Title: Subtitle
- Fully automated IVUS image segmentation with efficient deep-learning-assisted annotation
- Creators
- Lichun Zhang - University of IowaZhi Chen - University of IowaHonghai Zhang - University of IowaFahim A. Zaman - University of IowaAndreas Wahle - University of IowaXiaodong Wu - University of IowaColeen A. McNamara - University of VirginiaAngela M. Taylor - University of VirginiaMilan Sonka - Iowa Institute for Biomedical Imaging, The University of Iowa, USA
- Resource Type
- Journal article
- Publication Details
- Computers in biology and medicine, Vol.199, 111312
- DOI
- 10.1016/j.compbiomed.2025.111312
- PMID
- 41248587
- PMCID
- PMC12668224
- NLM abbreviation
- Comput Biol Med
- ISSN
- 0010-4825
- eISSN
- 1879-0534
- Publisher
- Elsevier Ltd
- Grant note
- R01-EB004640 / NIH NIBIB, United States R01-HL148109 / NHLBI, United States (http://dx.doi.org/10.13039/100000050) University of Virginia, United States (http://dx.doi.org/10.13039/100008457)
- Language
- English
- Date published
- 12/2025
- Academic Unit
- Roy J. Carver Department of Biomedical Engineering; Electrical and Computer Engineering; Iowa Technology Institute; Radiation Oncology; The Iowa Institute for Biomedical Imaging; Fraternal Order of Eagles Diabetes Research Center; Injury Prevention Research Center; Ophthalmology and Visual Sciences
- Record Identifier
- 9985033763002771
Metrics
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