Beyond pixel: Superpixel-based MRI segmentation through traditional machine learning and graph convolutional network

被引:0
|
作者
Khatun, Zakia [1 ,2 ]
Jonsson Jr, Halldor [3 ]
Tsirilaki, Mariella [4 ]
Maffulli, Nicola [5 ,6 ,7 ]
Oliva, Francesco [8 ]
Daval, Pauline [9 ]
Tortorella, Francesco [1 ]
Gargiulo, Paolo [2 ,10 ]
机构
[1] Univ Salerno, Dept Informat & Elect Engn & Appl Math, Salerno, Italy
[2] Reykjavik Univ, Inst Biomed & Neural Engn, Dept Engn, Reykjavik, Iceland
[3] Landspitali Univ Hosp, Dept Orthopaed, Reykjavik, Iceland
[4] Landspitali Univ Hosp, Dept Radiol, Reykjavik, Iceland
[5] Univ Roma La Sapienza, Univ Hosp St Andrea, Fac Med & Psychol, Dept Trauma & Orthopaed Surg, Rome, Italy
[6] Keele Univ, Fac Med & Hlth Sci, Sch Pharm & Bioengn, Stoke on Trent ST4 7QB, England
[7] Queen Mary Univ London, Mile End Hosp, Ctr Sports & Exercise Med, Barts & London Sch Med & Dent, London, England
[8] San Raffaele Roma Open Univ, Dept Human Sci & Promot Qual Life, Rome, Italy
[9] Univ Aix Marseille, Biomed Dept, Ecole Polytech, Marseille, France
[10] Landspitali Univ Hosp, Dept Sci, Reykjavik, Iceland
关键词
Magnetic resonance imaging; Superpixel; Graph convolutional network; Segmentation via node classification; Achilles tendon; IMAGES;
D O I
10.1016/j.cmpb.2024.108398
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Background and Objective: Tendon segmentation is crucial for studying tendon-related pathologies like tendinopathy, tendinosis, etc. This step further enables detailed analysis of specific tendon regions using automated or semi-automated methods. This study specifically aims at the segmentation of Achilles tendon, the largest tendon in the human body. Methods: This study proposes a comprehensive end-to-end tendon segmentation module composed of a preliminary superpixel-based coarse segmentation preceding the final segmentation task. The final segmentation results are obtained through two distinct approaches. In the first approach, the coarsely generated superpixels are subjected to classification using Random Forest (RF) and Support Vector Machine (SVM) classifiers to classify whether each superpixel belongs to a tendon class or not (resulting in tendon segmentation). In the second approach, the arrangements of superpixels are converted to graphs instead of being treated as conventional image grids. This classification process uses a graph-based convolutional network (GCN) to determine whether each superpixel corresponds to a tendon class or not. Results: All experiments are conducted on a custom-made ankle MRI dataset. The dataset comprises 76 subjects and is divided into two sets: one for training (Dataset 1, trained and evaluated using leave-one-group- out cross-validation) and the other as unseen test data (Dataset 2). Using our first approach, the final test AUC (Area Under the ROC Curve) scores using RF and SVM classifiers on the test data (Dataset 2) are 0.992 and 0.987, respectively, with sensitivities of 0.904 and 0.966. On the other hand, using our second approach (GCN-based node classification), the AUC score for the test set is 0.933 with a sensitivity of 0.899. Conclusions: Our proposed pipeline demonstrates the efficacy of employing superpixel generation as a coarse segmentation technique for the final tendon segmentation. Whether utilizing RF, SVM-based superpixel classification, or GCN-based classification for tendon segmentation, our system consistently achieves commendable AUC scores, especially the non-graph-based approach. Given the limited dataset, our graph-based method did not perform as well as non-graph-based superpixel classifications; however, the results obtained provide valuable insights into how well the models can distinguish between tendons and non-tendons. This opens up opportunities for further exploration and improvement.
引用
收藏
页数:14
相关论文
共 50 条
  • [41] LUNAR :Drug Screening for Novel Coronavirus Based on Representation Learning Graph Convolutional Network
    Zhou, Deshan
    Peng, Shaoliang
    Wei, Dong-Qing
    Zhong, Wu
    Dou, Yutao
    Xie, Xiaolan
    IEEE-ACM TRANSACTIONS ON COMPUTATIONAL BIOLOGY AND BIOINFORMATICS, 2021, 18 (04) : 1290 - 1298
  • [42] SleepGCN: A transition rule learning model based on Graph Convolutional Network for sleep staging
    Wang, Xuhui
    Zhu, Yuanyuan
    COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2024, 257
  • [43] PKGCN: prior knowledge enhanced graph convolutional network for graph-based semi-supervised learning
    Shaowei Yu
    Xuebing Yang
    Wensheng Zhang
    International Journal of Machine Learning and Cybernetics, 2019, 10 : 3115 - 3127
  • [44] PKGCN: prior knowledge enhanced graph convolutional network for graph-based semi-supervised learning
    Yu, Shaowei
    Yang, Xuebing
    Zhang, Wensheng
    INTERNATIONAL JOURNAL OF MACHINE LEARNING AND CYBERNETICS, 2019, 10 (11) : 3115 - 3127
  • [45] Soft Sensor for Anaerobic Digestion of Kitchen Waste with Semi-Supervised Extreme Learning Machine-based Graph Convolutional Network
    Gai, Ming-hui
    Yan, Peng-fei
    Wang, Yu-hong
    2022 41ST CHINESE CONTROL CONFERENCE (CCC), 2022, : 5586 - 5591
  • [46] Attention-based stackable graph convolutional network for multi-view learning
    Xu, Zhiyong
    Chen, Weibin
    Zou, Ying
    Fang, Zihan
    Wang, Shiping
    NEURAL NETWORKS, 2024, 180
  • [47] Convolutional neural network-based segmentation can help in assessing the substantia nigra in neuromelanin MRI
    Alice Le Berre
    Koji Kamagata
    Yujiro Otsuka
    Christina Andica
    Taku Hatano
    Laetitia Saccenti
    Takashi Ogawa
    Haruka Takeshige-Amano
    Akihiko Wada
    Michimasa Suzuki
    Akifumi Hagiwara
    Ryusuke Irie
    Masaaki Hori
    Genko Oyama
    Yashushi Shimo
    Atsushi Umemura
    Nobutaka Hattori
    Shigeki Aoki
    Neuroradiology, 2019, 61 : 1387 - 1395
  • [48] Convolutional neural network-based segmentation can help in assessing the substantia nigra in neuromelanin MRI
    Le Berre, Alice
    Kamagata, Koji
    Otsuka, Yujiro
    Andica, Christina
    Hatano, Taku
    Saccenti, Laetitia
    Ogawa, Takashi
    Takeshige-Amano, Haruka
    Wada, Akihiko
    Suzuki, Michimasa
    Hagiwara, Akifumi
    Irie, Ryusuke
    Hori, Masaaki
    Oyama, Genko
    Shimo, Yashushi
    Umemura, Atsushi
    Hattori, Nobutaka
    Aoki, Shigeki
    NEURORADIOLOGY, 2019, 61 (12) : 1387 - 1395
  • [49] Extracting topological features to identify at-risk students using machine learning and graph convolutional network models
    Albreiki, Balqis
    Habuza, Tetiana
    Zaki, Nazar
    INTERNATIONAL JOURNAL OF EDUCATIONAL TECHNOLOGY IN HIGHER EDUCATION, 2023, 20 (01)
  • [50] Extracting topological features to identify at-risk students using machine learning and graph convolutional network models
    Balqis Albreiki
    Tetiana Habuza
    Nazar Zaki
    International Journal of Educational Technology in Higher Education, 20