Author:
Huang Shixin,Luo Jiawei,Ou Yangning,shen Wangjun,Pang Yu,Nie Xixi,Zhang Guo
Abstract
Abstract
Introduction
The automatic segmentation of the liver is a crucial step in obtaining quantitative biomarkers for accurate clinical diagnosis and computer-aided decision support systems. This task is challenging due to the frequent presence of noise and sampling artifacts in computerized tomography (CT) images, as well as the complex background, variable shapes, and blurry boundaries of the liver. Standard segmentation of medical images based on full-supervised convolutional networks demands accurate dense annotations. Such a learning framework is built on laborious manual annotation with strict requirements for expertise, leading to insufficient high-quality labels.
Methods
To overcome such limitation and exploit massive weakly labeled data, we relaxed the rigid labeling requirement and developed a semi-supervised double-cooperative network (SD- Net). SD-Net is trained to segment the complete liver volume from preoperative abdominal CT images by using limited labeled datasets and large-scale unlabeled datasets. Specifically, to enrich the diversity of unsupervised information, we construct SD-Net consisting of two collaborative network models. Within the supervised training module, we introduce an adaptive mask refinement approach. First, each of the two network models predicts the labeled dataset, after which adaptive mask refinement of the difference predictions is implemented to obtain more accurate liver segmentation results. In the unsupervised training module, a dynamic pseudo-label generation strategy is proposed. First each of the two models predicts unlabeled data and the better prediction is considered as pseudo-labeling before training.
Results and discussion
Based on the experimental findings, the proposed method achieves a dice score exceeding 94%, indicating its high level of accuracy and its suitability for everyday clinical use.
Funder
Foundation Sciences of The People's Hospital of Yubei District of Chongqing city
National Natural Science Foundation of China
Chongqing Basic Frontier Project
Chongqing Special Project on Technological Innovation and Applied Development
Chongqing Innovation Group Project
Sichuan Regional Innovation Cooperation Program
Science and Technology Research Program of Chongqing Municipal Education Commission
Sichuan Science and Technology Program
the Project of Southwest Medical University
the Project of Central Nervous System Drug Key Laboratory of Sichuan Province
Publisher
Springer Science and Business Media LLC
Reference58 articles.
1. Ahmad A, Syed S (2022) Lightweight deep learning models for resource constrained devices. J Comput Sci Technol 37(5):1434–1449
2. Ahmad A, Syed S, Zafar M (2018) Deep-stacked auto encoder for liver segmentation. Pattern Recogn Image Anal 28(5):965–974
3. Ahmad M, Ai D, Xie G, Qadri SF, Song H, Huang Y, Wang Y, Yang J (2019a) Deep belief network modeling for automatic liver segmentation. IEEE Access 7:20585–20595
4. Ahmad M, Ding Y, Qadri SF, Yang J (2019b) Convolutional-neural-network-based feature extraction for liver segmentation from CT images. In: Eleventh International Conference on Digital Image Processing (ICDIP 2019), SPIE, vol. 11179. p 1117934
5. Ansari MY, Yang Y, Balakrishnan S, Abinahed J, Al-Ansari A, Warfa M, Almokdad O, Barah A, Omer A, Singh AV et al (2022) A lightweight neural network with multiscale feature enhancement for liver ct segmentation. Sci Rep 12(1):14153
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