Deep-learning-based ensemble method for fully automated detection of renal masses on magnetic resonance images

被引:2
|
作者
Anush, Agarwal [1 ]
Rohini, Gaikar [1 ]
Nicola, Schieda [2 ]
WalaaEldin, Elfaal Mohamed [2 ]
Eranga, Ukwatta [1 ]
机构
[1] Univ Guelph, Sch Engn, Guelph, ON, Canada
[2] Univ Ottawa, Dept Radiol, Ottawa, ON, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
computer aided detection; deep learning; renal masses; magnetic resonance imaging; U-Net; CT TEXTURE ANALYSIS; CELL CARCINOMA; DIAGNOSTIC-ACCURACY; DIFFERENTIATION; ANGIOMYOLIPOMA; NETWORKS; TUMORS; CYST; FAT;
D O I
10.1117/1.JMI.10.2.024501
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
Purpose: Accurate detection of small renal masses (SRM) is a fundamental step for automated classification of benign and malignant or indolent and aggressive renal tumors. Magnetic resonance image (MRI) may outperform computed tomography (CT) for SRM subtype differentiation due to improved tissue characterization, but is less explored compared to CT. The objective of this study is to autonomously detect SRM on contrast-enhanced magnetic resonance images (CE-MRI). Approach: In this paper, we described a novel, fully automated methodology for accurate detection and localization of SRM on CE-MRI. We first determine the kidney boundaries using a U-Net convolutional neural network. We then search for SRM within the localized kidney regions using a mixture-of-experts ensemble model based on the U-Net architecture. Our dataset contained CE-MRI scans of 118 patients with different solid kidney tumor subtypes including renal cell carcinomas, oncocytomas, and fat-poor renal angiomyolipoma. We evaluated the proposed model on the entire CE-MRI dataset using 5-fold cross validation. Results: The developed algorithm reported a Dice similarity coefficient of 91.20 +/- 5.41% (mean +/- standard deviation) for kidney segmentation from 118 volumes consisting of 25,025 slices. Our proposed ensemble model for SRM detection yielded a recall and precision of 86.2% and 83.3% on the entire CE-MRI dataset, respectively. Conclusions: We described a deep-learning-based method for fully automated SRM detection using CE-MR images, which has not been studied previously. The results are clinically important as SRM localization is a pre-step for fully automated diagnosis of SRM subtypes. (C) 2023 Society of Photo-Optical Instrumentation Engineers (SPIE)
引用
收藏
页数:18
相关论文
共 50 条
  • [21] Automated Detection of Spinal Schwannomas Utilizing Deep Learning Based on Object Detection From Magnetic Resonance Imaging
    Ito, Sadayuki
    Ando, Kei
    Kobayashi, Kazuyoshi
    Nakashima, Hiroaki
    Oda, Masahiro
    Machino, Masaaki
    Kanbara, Shunsuke
    Inoue, Taro
    Yamaguchi, Hidetoshi
    Koshimizu, Hiroyuki
    Mori, Kensaku
    Ishiguro, Naoki
    Imagama, Shiro
    SPINE, 2021, 46 (02) : 95 - 100
  • [22] Automated Detection and Diagnosis of Spinal Schwannomas and Meningiomas Using Deep Learning and Magnetic Resonance Imaging
    Ito, Sadayuki
    Nakashima, Hiroaki
    Segi, Naoki
    Ouchida, Jun
    Oda, Masahiro
    Yamauchi, Ippei
    Oishi, Ryotaro
    Miyairi, Yuichi
    Mori, Kensaku
    Imagama, Shiro
    JOURNAL OF CLINICAL MEDICINE, 2023, 12 (15)
  • [23] Review on deep learning fetal brain segmentation from Magnetic Resonance images
    Ciceri, Tommaso
    Squarcina, Letizia
    Giubergia, Alice
    Bertoldo, Alessandra
    Brambilla, Paolo
    Peruzzo, Denis
    ARTIFICIAL INTELLIGENCE IN MEDICINE, 2023, 143
  • [24] Noise dependent training for deep parallel ensemble denoising in magnetic resonance images
    Aetesam, Hazique
    Maji, Suman Kumar
    BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2021, 66
  • [25] Deep-learning-based out-of-distribution data detection in visual inspection images
    Lindgren, Erik
    Zach, Christopher
    NDE 4.0, PREDICTIVE MAINTENANCE, COMMUNICATION, AND ENERGY SYSTEMS, 2023, 12489
  • [26] Deep learning techniques for the fully automated detection and segmentation of brain MRI
    Tamer, Ahmed
    Youssef, Ahmed
    Ibrahim, Mohammed
    Abd-El Aziz, Mostafa
    Hesham, Youssef
    Mohammed, Zeyad
    Eissa, M. M.
    Ahmed, Soha
    Khoriba, Ghada
    5TH INTERNATIONAL CONFERENCE ON COMPUTING AND INFORMATICS (ICCI 2022), 2022, : 310 - 315
  • [27] Deep-learning-based segmentation of perivascular spaces on T2-Weighted 3T magnetic resonance images
    Cai, Die
    Pan, Minmin
    Liu, Chenyuan
    He, Wenjie
    Ge, Xinting
    Lin, Jiaying
    Li, Rui
    Liu, Mengting
    Xia, Jun
    FRONTIERS IN AGING NEUROSCIENCE, 2024, 16
  • [28] A Deep Learning-Based Approach for the Detection and Localization of Prostate Cancer in T2 Magnetic Resonance Images
    Alkadi, Ruba
    Taher, Fatma
    El-baz, Ayman
    Werghi, Naoufel
    JOURNAL OF DIGITAL IMAGING, 2019, 32 (05) : 793 - 807
  • [29] A Deep-Learning-Based Multiple Defect Detection Method for Tunnel Lining Damages
    Dong, Yanan
    Wang, Jing
    Wang, Zhengfang
    Zhang, Xiao
    Gao, Yuan
    Sui, Qingmei
    Jiang, Peng
    IEEE ACCESS, 2019, 7 : 182643 - 182657
  • [30] A Cost-Driven Method for Deep-Learning-Based Hardware Trojan Detection
    Dong, Chen
    Yao, Yinan
    Xu, Yi
    Liu, Ximeng
    Wang, Yan
    Zhang, Hao
    Xu, Li
    SENSORS, 2023, 23 (12)