2.5D and 3D segmentation of brain metastases with deep learning on multinational MRI data

被引:21
作者
Ottesen, Jon Andre [1 ,2 ]
Yi, Darvin [3 ]
Tong, Elizabeth [4 ]
Iv, Michael [4 ]
Latysheva, Anna [5 ]
Saxhaug, Cathrine [5 ]
Jacobsen, Kari Dolven [6 ]
Helland, Aslaug [6 ]
Emblem, Kyrre Eeg [7 ]
Rubin, Daniel L. [8 ]
Bjornerud, Atle [1 ,2 ]
Zaharchuk, Greg [4 ]
Grovik, Endre [9 ,10 ]
机构
[1] Oslo Univ Hosp, Dept Phys & Computat Radiol, Div Radiol & Nucl Med, CRAI, Oslo, Norway
[2] Univ Oslo, Fac Math & Nat Sci, Dept Phys, Oslo, Norway
[3] Univ Illinois, Dept Ophthalmol, Chicago, IL USA
[4] Stanford Univ, Dept Radiol, Stanford, CA USA
[5] Oslo Univ Hosp, Div Radiol & Nucl Med, Oslo, Norway
[6] Oslo Univ Hosp, Dept Oncol, Oslo, Norway
[7] Oslo Univ Hosp, Dept Phys & Computat Radiol, Div Radiol & Nucl Med, Oslo, Norway
[8] Stanford Univ, Dept Biomed Data Sci, Stanford, CA USA
[9] More & Romsdal Hosp Trust, Alesund Hosp, Dept Radiol, Alesund, Norway
[10] Norwegian Univ Sci & Technol, Dept Phys, Trondheim, Norway
基金
欧洲研究理事会;
关键词
segmentation; brain metastases; deep learning; MRI; 2; 5D; 3D;
D O I
10.3389/fninf.2022.1056068
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
IntroductionManagement of patients with brain metastases is often based on manual lesion detection and segmentation by an expert reader. This is a time- and labor-intensive process, and to that end, this work proposes an end-to-end deep learning segmentation network for a varying number of available MRI available sequences. MethodsWe adapt and evaluate a 2.5D and a 3D convolution neural network trained and tested on a retrospective multinational study from two independent centers, in addition, nnU-Net was adapted as a comparative benchmark. Segmentation and detection performance was evaluated by: (1) the dice similarity coefficient, (2) a per-metastases and the average detection sensitivity, and (3) the number of false positives. ResultsThe 2.5D and 3D models achieved similar results, albeit the 2.5D model had better detection rate, whereas the 3D model had fewer false positive predictions, and nnU-Net had fewest false positives, but with the lowest detection rate. On MRI data from center 1, the 2.5D, 3D, and nnU-Net detected 79%, 71%, and 65% of all metastases; had an average per patient sensitivity of 0.88, 0.84, and 0.76; and had on average 6.2, 3.2, and 1.7 false positive predictions per patient, respectively. For center 2, the 2.5D, 3D, and nnU-Net detected 88%, 86%, and 78% of all metastases; had an average per patient sensitivity of 0.92, 0.91, and 0.85; and had on average 1.0, 0.4, and 0.1 false positive predictions per patient, respectively. Discussion/ConclusionOur results show that deep learning can yield highly accurate segmentations of brain metastases with few false positives in multinational data, but the accuracy degrades for metastases with an area smaller than 0.4 cm(2).
引用
收藏
页数:12
相关论文
共 49 条
[1]  
Abraham N, 2019, I S BIOMED IMAGING, P683, DOI 10.1109/ISBI.2019.8759329
[2]   A survey of MRI-based medical image analysis for brain tumor studies [J].
Bauer, Stefan ;
Wiest, Roland ;
Nolte, Lutz-P ;
Reyes, Mauricio .
PHYSICS IN MEDICINE AND BIOLOGY, 2013, 58 (13) :R97-R129
[3]   Intra- and Interobserver Variability of Linear and Volumetric Measurements of Brain Metastases Using Contrast-Enhanced Magnetic Resonance Imaging [J].
Bauknecht, Hans-Christian ;
Romano, Valentina C. ;
Rogalla, Patrik ;
Klingebiel, Randolf ;
Wolf, Claudia ;
Bornemann, Lars ;
Hamm, Bernd ;
Hein, Patrick A. .
INVESTIGATIVE RADIOLOGY, 2010, 45 (01) :49-56
[4]   Deep convolutional neural networks for automated segmentation of brain metastases trained on clinical data [J].
Bousabarah, Khaled ;
Ruge, Maximilian ;
Brand, Julia-Sarita ;
Hoevels, Mauritius ;
Ruess, Daniel ;
Borggrefe, Jan ;
Hokamp, Nils Grosse ;
Visser-Vandewalle, Veerle ;
Maintz, David ;
Treuer, Harald ;
Kocher, Martin .
RADIATION ONCOLOGY, 2020, 15 (01)
[5]   Automatic detection and segmentation of multiple brain metastases on magnetic resonance image using asymmetric UNet architecture [J].
Cao, Yufeng ;
Vassantachart, April ;
Ye, Jason C. ;
Yu, Cheng ;
Ruan, Dan ;
Sheng, Ke ;
Lao, Yi ;
Shen, Zhilei Liu ;
Balik, Salim ;
Bian, Shelly ;
Zada, Gabriel ;
Shiu, Almon ;
Chang, Eric L. ;
Yang, Wensha .
PHYSICS IN MEDICINE AND BIOLOGY, 2021, 66 (01)
[6]   Automatic detection and segmentation of brain metastases on multimodal MR images with a deep convolutional neural network [J].
Charron, Odelin ;
Lallement, Alex ;
Jarnet, Delphine ;
Noblet, Vincent ;
Clavier, Jean-Baptiste ;
Meyer, Philippe .
COMPUTERS IN BIOLOGY AND MEDICINE, 2018, 95 :43-54
[7]   Deep Learning-Based Computer-Aided Detection System for Automated Treatment Response Assessment of Brain Metastases on 3D MRI [J].
Cho, Jungheum ;
Kim, Young Jae ;
Sunwoo, Leonard ;
Lee, Gi Pyo ;
Nguyen, Toan Quang ;
Cho, Se Jin ;
Baik, Sung Hyun ;
Bae, Yun Jung ;
Choi, Byung Se ;
Jung, Cheolkyu ;
Sohn, Chul-Ho ;
Han, Jung-Ho ;
Kim, Chae-Yong ;
Kim, Kwang Gi ;
Kim, Jae Hyoung .
FRONTIERS IN ONCOLOGY, 2021, 11
[8]  
Consortium M, 2022, MONAI MED OP NETW
[9]   The Cityscapes Dataset for Semantic Urban Scene Understanding [J].
Cordts, Marius ;
Omran, Mohamed ;
Ramos, Sebastian ;
Rehfeld, Timo ;
Enzweiler, Markus ;
Benenson, Rodrigo ;
Franke, Uwe ;
Roth, Stefan ;
Schiele, Bernt .
2016 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2016, :3213-3223
[10]   Automated Brain Metastases Detection Framework for T1-Weighted Contrast-Enhanced 3D MRI [J].
Dikici, Engin ;
Ryu, John L. ;
Demirer, Mutlu ;
Bigelow, Matthew ;
White, Richard D. ;
Slone, Wayne ;
Erdal, Barbaros Selnur ;
Prevedello, Luciano M. .
IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2020, 24 (10) :2883-2893