Characterization of adrenal glands on computed tomography with a 3D V-Net-based model

被引:0
|
作者
Chen, Yuanchong [1 ]
Zhang, Yaofeng [2 ]
Zhang, Xiaodong [1 ]
Wang, Xiaoying [1 ]
机构
[1] Peking Univ First Hosp, Dept Radiol, Beijing 100034, Peoples R China
[2] Beijing Smart Tree Med Technol Co Ltd, Beijing 100011, Peoples R China
来源
INSIGHTS INTO IMAGING | 2025年 / 16卷 / 01期
关键词
Adrenal gland; Computed tomography; Deep learning; Segmentation; Classification; FOLLOW-UP; MANAGEMENT; MASS;
D O I
10.1186/s13244-025-01898-7
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Objectives To evaluate the performance of a 3D V-Net-based segmentation model of adrenal lesions in characterizing adrenal glands as normal or abnormal. Methods A total of 1086 CT image series with focal adrenal lesions were retrospectively collected, annotated, and used for the training of the adrenal lesion segmentation model. The dice similarity coefficient (DSC) of the test set was used to evaluate the segmentation performance. The other cohort, consisting of 959 patients with pathologically confirmed adrenal lesions (external validation dataset 1), was included for validation of the classification performance of this model. Then, another consecutive cohort of patients with a history of malignancy (N = 479) was used for validation in the screening population (external validation dataset 2). Parameters of sensitivity, accuracy, etc., were used, and the performance of the model was compared to the radiology report in these validation scenes. Results The DSC of the test set of the segmentation model was 0.900 (0.810-0.965) (median (interquartile range)). The model showed sensitivities and accuracies of 99.7%, 98.3% and 87.2%, 62.2% in external validation datasets 1 and 2, respectively. It showed no significant difference comparing to radiology reports in external validation datasets 1 and lesion-containing groups of external validation datasets 2 (p = 1.000 and p > 0.05, respectively). Conclusion The 3D V-Net-based segmentation model of adrenal lesions can be used for the binary classification of adrenal glands. Critical relevance statement A 3D V-Net-based segmentation model of adrenal lesions can be used for the detection of abnormalities of adrenal glands, with a high accuracy in the pre-surgical scene as well as a high sensitivity in the screening scene.
引用
收藏
页数:9
相关论文
共 50 条
  • [31] 3D Tibia Reconstruction Using 2D Computed Tomography Images
    Iyoho, Anthony E.
    Young, Jonathan M.
    Volman, Vladislav
    Shelley, David A.
    Ng, Laurel J.
    Wang, Henry
    MILITARY MEDICINE, 2019, 184 (3-4) : 621 - 626
  • [32] A Unique Block-Based 3D U-Net Deep Learning Model for Brain Metastasis MRI Image Segmentation and Classification
    Zhou, Andrew
    2024 IEEE 3RD INTERNATIONAL CONFERENCE ON COMPUTING AND MACHINE INTELLIGENCE, ICMI 2024, 2024,
  • [33] Development of A CCD-based Optical Computed Tomography Scanner Used in 3D Gel Dosimetry
    Chang, Yuan-Jen
    Tseng, Hung-Li
    Chen, Chin-Hsing
    Tan, Sun-Yen
    Hsieh, Bor-Tsung
    Chang, Wei-Lun
    Huang, Wen-Tzeng
    MECHATRONICS AND APPLIED MECHANICS II, PTS 1 AND 2, 2013, 300-301 : 1632 - +
  • [34] Computed tomography image analyzer: 3D reconstruction and segmentation applying active contour models - 'snakes'
    Maksimovic, R
    Stankovic, S
    Milovanovic, D
    INTERNATIONAL JOURNAL OF MEDICAL INFORMATICS, 2000, 58 : 29 - 37
  • [35] Automatic 3D aortic annulus sizing by computed tomography in the planning of transcatheter aortic valve implantation
    Queiros, Sandro
    Dubois, Christophe
    Morais, Pedro
    Adriaenssens, Tom
    Fonseca, Jaime C.
    Vilaca, Joao L.
    D'hooge, Jan
    JOURNAL OF CARDIOVASCULAR COMPUTED TOMOGRAPHY, 2017, 11 (01) : 25 - 32
  • [36] On the relevance of denoising and artefact reduction in 3D segmentation and classification within complex computed tomography imagery
    Mouton, Andre
    Breckon, Toby P.
    JOURNAL OF X-RAY SCIENCE AND TECHNOLOGY, 2019, 27 (01) : 51 - 72
  • [37] Cinematic rendering – an alternative to volume rendering for 3D computed tomography imaging
    Dappa E.
    Higashigaito K.
    Fornaro J.
    Leschka S.
    Wildermuth S.
    Alkadhi H.
    Insights into Imaging, 2016, 7 (6) : 849 - 856
  • [38] 3D Reconstruction for Volume of Interest in Computed Tomography Laser Mammography Images
    Jalalian, A.
    Mashohor, S.
    Mahmud, R.
    Saripan, M. I.
    Ramli, A. R.
    Bahri, N.
    Suppiah, S. A. P.
    Karasfi, B.
    2015 IEEE STUDENT SYMPOSIUM IN BIOMEDICAL ENGINEERING & SCIENCES (ISSBES), 2015, : 16 - 20
  • [39] Making 3D Model of Atrioventricular Xenopericardial Bioprosthesis from X-ray Computed Tomography Data
    Ivashkov, D.
    Batranin, A.
    Stuchebrov, S.
    Klyshnikov, K.
    Ovcharenko, E.
    2016 11TH INTERNATIONAL FORUM ON STRATEGIC TECHNOLOGY (IFOST), PTS 1 AND 2, 2016,
  • [40] Pitfalls of Computed Tomography 3D Reconstruction Models in Cranial Nonmetric Analysis*
    Bertoglio, Barbara
    Corradin, Sofia
    Cappella, Annalisa
    Mazzarelli, Debora
    Biehler-Gomez, Lucie
    Messina, Carmelo
    Pozzi, Grazia
    Sconfienza, Luca Maria
    Sardanelli, Francesco
    Sforza, Chiarella
    De Angelis, Danilo
    Cattaneo, Cristina
    JOURNAL OF FORENSIC SCIENCES, 2020, 65 (06) : 2098 - 2107