Automatic Segmentation of Vestibular Schwannoma From MRI Using Two Cascaded Deep Learning Networks

被引:0
|
作者
Haeussler, Sophia Marie [1 ]
Betz, Christian S. [1 ]
Della Seta, Marta [2 ,3 ]
Eggert, Dennis [1 ]
Schlaefer, Alexander [4 ]
Bhattacharya, Debayan [1 ,4 ]
机构
[1] Univ Med Ctr Hamburg Eppendorf, Dept Otorhinolaryngol, Martinistr 52, D-20246 Hamburg, Germany
[2] Berlin Humboldt Univ Berlin, Inst Radiol, Berlin Inst Hlth, Charite Universitatsmedizin Berlin, Berlin, Germany
[3] Berlin Inst Hlth, Berlin, Germany
[4] Hamburg Univ Technol, Inst Med Technol & Intelligent Syst, Hamburg, Germany
关键词
artificial intelligence; machine learning; MRI; vestibular schwannoma;
D O I
10.1002/lary.31979
中图分类号
R-3 [医学研究方法]; R3 [基础医学];
学科分类号
1001 ;
摘要
ObjectiveAutomatic segmentation and detection of vestibular schwannoma (VS) in MRI by deep learning is an upcoming topic. However, deep learning faces generalization challenges due to tumor variability even though measurements and segmentation of VS are essential for growth monitoring and treatment planning. Therefore, we introduce a novel model combining two Convolutional Neural Network (CNN) models for the detection of VS by deep learning aiming to improve performance of automatic segmentation.MethodsDeep learning techniques have been employed for automatic VS tumor segmentation, including 2D, 2.5D, and 3D UNet-like architectures, which is a specific CNN designed to improve automatic segmentation for medical imaging. Specifically, we introduce a sequential connection where the first UNet's predicted segmentation map is passed to a second complementary network for refinement. Additionally, spatial attention mechanisms are utilized to further guide refinement in the second network.ResultsWe conducted experiments on both public and private datasets containing contrast-enhanced T1 and high-resolution T2-weighted magnetic resonance imaging (MRI). Across the public dataset, we observed consistent improvements in Dice scores for all variants of 2D, 2.5D, and 3D CNN methods, with a notable enhancement of 8.86% for the 2D UNet variant on T1. In our private dataset, a 3.75% improvement was reported for 2D T1. Moreover, we found that T1 images generally outperformed T2 in VS segmentation.ConclusionWe demonstrate that sequential connection of UNets combined with spatial attention mechanisms enhances VS segmentation performance across state-of-the-art 2D, 2.5D, and 3D deep learning methods.Level of Evidence3 Laryngoscope, 2024
引用
收藏
页码:1301 / 1308
页数:8
相关论文
共 50 条
  • [31] Deep Convolutional Neural Networks Using U-Net for Automatic Brain Tumor Segmentation in Multimodal MRI Volumes
    Kermi, Adel
    Mahmoudi, Issam
    Khadir, Mohamed Tarek
    BRAINLESION: GLIOMA, MULTIPLE SCLEROSIS, STROKE AND TRAUMATIC BRAIN INJURIES, BRAINLES 2018, PT II, 2019, 11384 : 37 - 48
  • [32] A Deep Learning Approach for Automatic Segmentation during Daily MRI-Linac Radiotherapy of Glioblastoma
    Breto, Adrian L.
    Cullison, Kaylie
    Zacharaki, Evangelia I.
    Wallaengen, Veronica
    Maziero, Danilo
    Jones, Kolton
    Valderrama, Alessandro
    de la Fuente, Macarena I.
    Meshman, Jessica
    Azzam, Gregory A.
    Ford, John C.
    Stoyanova, Radka
    Mellon, Eric A.
    CANCERS, 2023, 15 (21)
  • [33] Automatic Segmentation of the Prostate on CT Images Using Deep Neural Networks (DNN)
    Liu, Chang
    Gardner, Stephen J.
    Wen, Ning
    Elshaikh, Mohamed A.
    Siddiqui, Farzan
    Movsas, Benjamin
    Chetty, Indrin J.
    INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2019, 104 (04): : 924 - 932
  • [34] Deep Learning-Based Automatic Segmentation for Reconstructing Vertebral Anatomy of Healthy Adolescents and Patients With Adolescent Idiopathic Scoliosis (AIS) Using MRI Data
    Antico, M.
    Little, J. P.
    Jennings, H.
    Askin, G.
    Labrom, R. D.
    Fontanarosa, D.
    Pivonka, P.
    IEEE ACCESS, 2021, 9 : 86811 - 86823
  • [35] Splenomegaly Segmentation on Multi-Modal MRI Using Deep Convolutional Networks
    Huo, Yuankai
    Xu, Zhoubing
    Bao, Shunxing
    Bermudez, Camilo
    Moon, Hyeonsoo
    Parvathaneni, Prasanna
    Moyo, Tamara K.
    Savona, Michael R.
    Assad, Albert
    Abramson, Richard G.
    Landman, Bennett A.
    IEEE TRANSACTIONS ON MEDICAL IMAGING, 2019, 38 (05) : 1185 - 1196
  • [36] Automatic Hyperparameter Tuning in Deep Convolutional Neural Networks Using Asynchronous Reinforcement Learning
    Neary, Patrick L.
    2018 IEEE INTERNATIONAL CONFERENCE ON COGNITIVE COMPUTING (ICCC), 2018, : 73 - 77
  • [37] TransONet: Automatic Segmentation of Vasculature in Computed Tomographic Angiograms Using Deep Learning
    Rajeoni, Alireza Bagheri
    Pederson, Breanna
    Firooz, Ali
    Abdollahi, Hamed
    Smith, Andrew K.
    Clair, Daniel G.
    Lessner, Susan M.
    Valafar, Homayoun
    2023 INTERNATIONAL CONFERENCE ON COMPUTATIONAL SCIENCE AND COMPUTATIONAL INTELLIGENCE, CSCI 2023, 2023, : 1312 - 1317
  • [38] Automatic Masseter Muscle Accurate Segmentation from CBCT Using Deep Learning-Based Model
    Jiang, Yiran
    Shang, Fangxin
    Peng, Jiale
    Liang, Jie
    Fan, Yi
    Yang, Zhongpeng
    Qi, Yuhan
    Yang, Yehui
    Xu, Tianmin
    Jiang, Ruoping
    JOURNAL OF CLINICAL MEDICINE, 2023, 12 (01)
  • [39] A deep cascaded segmentation of obstructive sleep apnea-relevant organs from sagittal spine MRI
    Ivanovska, Tatyana
    Daboul, Amro
    Kalentev, Oleksandr
    Hosten, Norbert
    Biffar, Reiner
    Voelzke, Henry
    Woergoetter, Florentin
    INTERNATIONAL JOURNAL OF COMPUTER ASSISTED RADIOLOGY AND SURGERY, 2021, 16 (04) : 579 - 588
  • [40] RENAL CYST DETECTION IN ABDOMINAL MRI IMAGES USING DEEP LEARNING SEGMENTATION
    Sowmiya, S.
    Snehalatha, U.
    Murugan, Jayanth
    BIOMEDICAL ENGINEERING-APPLICATIONS BASIS COMMUNICATIONS, 2023, 35 (05):