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
  • [1] Ensemble U-net-based method for fully automated detection and segmentation of renal masses on computed tomography images
    Fatemeh, Zabihollahy
    Nicola, Schieda
    Satheesh, Krishna
    Eranga, Ukwatta
    MEDICAL PHYSICS, 2020, 47 (09) : 4032 - 4044
  • [2] A Deep-Learning-Based, Fully Automated Program to Segment and Quantify Major Spinal Components on Axial Lumbar Spine Magnetic Resonance Images
    Shen, Haotian
    Huang, Jiawei
    Zheng, Qiangqiang
    Zhu, Zhiwei
    Lv, Xiaoqiang
    Liu, Yong
    Wang, Yue
    PHYSICAL THERAPY, 2021, 101 (06):
  • [3] A Deep-Learning-Based, Fully Automated Program to Segment and Quantify Major Spinal Components on Axial Lumbar Spine Magnetic Resonance Images
    Shen, Haotian
    Huang, Jiawei
    Zheng, Qiangqiang
    Zhu, Zhiwei
    Lv, Xiaoqiang
    Liu, Yong
    Wang, Yue
    PHYSICAL THERAPY & REHABILITATION JOURNAL, 2021, 101 (06)
  • [4] Fully Automated Deep Learning-Based Renal Mass Detection on Multi-Parametric MRI
    Gaikar, Rohini
    Azad, Azar
    Schieda, Nicola
    Ukwatta, Eranga
    IEEE ACCESS, 2024, 12 : 112714 - 112728
  • [5] Deep-learning-based nanowire detection in AFM images for automated nanomanipulation
    Bai, Huitian
    Wu, Sen
    NANOTECHNOLOGY AND PRECISION ENGINEERING, 2021, 4 (01)
  • [6] Deep-Learning-Based Segmentation of Extraocular Muscles from Magnetic Resonance Images
    Qureshi, Amad
    Lim, Seongjin
    Suh, Soh Youn
    Mutawak, Bassam
    Chitnis, Parag V.
    Demer, Joseph L.
    Wei, Qi
    BIOENGINEERING-BASEL, 2023, 10 (06):
  • [7] Automated detection of knee cystic lesions on magnetic resonance imaging using deep learning
    Xiongfeng, Tang
    Yingzhi, Li
    Xianyue, Shen
    Meng, He
    Bo, Chen
    Deming, Guo
    Yanguo, Qin
    FRONTIERS IN MEDICINE, 2022, 9
  • [8] A deep learning-based method for the detection and segmentation of breast masses in ultrasound images
    Li, Wanqing
    Ye, Xianjun
    Chen, Xuemin
    Jiang, Xianxian
    Yang, Yidong
    PHYSICS IN MEDICINE AND BIOLOGY, 2024, 69 (15)
  • [9] Deep-Learning-Based Thickness Detection Method of Ice Covering
    Pi, Xinyu
    Zhang, Guoyong
    He, Lifu
    Feng, Wenqing
    Luo, Jing
    Ouyang, Yi
    2021 11TH INTERNATIONAL CONFERENCE ON POWER AND ENERGY SYSTEMS (ICPES 2021), 2021, : 526 - 530
  • [10] Deep Learning-Based Automated Detection of Arterial Vessel Wall and Plaque on Magnetic Resonance Vessel Wall Images
    Xu, Wenjing
    Yang, Xiong
    Li, Yikang
    Jiang, Guihua
    Jia, Sen
    Gong, Zhenhuan
    Mao, Yufei
    Zhang, Shuheng
    Teng, Yanqun
    Zhu, Jiayu
    He, Qiang
    Wan, Liwen
    Liang, Dong
    Li, Ye
    Hu, Zhanli
    Zheng, Hairong
    Liu, Xin
    Zhang, Na
    FRONTIERS IN NEUROSCIENCE, 2022, 16