Multiclass semantic segmentation and quantification of traumatic brain injury lesions on head CT using deep learning: an algorithm development and multicentre validation study

被引:97
作者
Monteiro, Miguel [1 ]
Newcombe, Virginia F. J. [2 ]
Mathieu, Francois [2 ]
Adatia, Krishma [2 ]
Kamnitsas, Konstantinos [1 ]
Ferrante, Enzo [3 ]
Das, Tilak [2 ]
Whitehouse, Daniel [2 ]
Rueckert, Daniel [1 ]
Menon, David K. [2 ]
Glocker, Ben [1 ]
机构
[1] Imperial Coll London, Dept Comp, Biomed Image Anal Grp, London, England
[2] Univ Cambridge, Div Anaesthesia, Dept Med, Cambridge, England
[3] Univ Nacl Litoral, CONICET, FICH, Sinc I, Santa Fe, Argentina
基金
英国医学研究理事会; 欧盟第七框架计划; 欧洲研究理事会;
关键词
CENTER-TBI; MRC CRASH; HEMORRHAGE; PROGRESSION; OUTCOMES; ADULTS; TRIAL; CARE;
D O I
10.1016/S2589-7500(20)30085-6
中图分类号
R-058 [];
学科分类号
摘要
Background CT is the most common imaging modality in traumatic brain injury (TBI). However, its conventional use requires expert clinical interpretation and does not provide detailed quantitative outputs, which may have prognostic importance. We aimed to use deep learning to reliably and efficiently quantify and detect different lesion types. Methods Patients were recruited between Dec 9, 2014, and Dec 17, 2017, in 60 centres across Europe. We trained and validated an initial convolutional neural network (CNN) on expert manual segmentations (dataset 1). This CNN was used to automatically segment a new dataset of scans, which we then corrected manually (dataset 2). From this dataset, we used a subset of scans to train a final CNN for multiclass, voxel-wise segmentation of lesion types. The performance of this CNN was evaluated on a test subset. Performance was measured for lesion volume quantification, lesion progression, and lesion detection and lesion volume classification. For lesion detection, external validation was done on an independent set of 500 patients from India. Findings 98 scans from one centre were included in dataset 1. Dataset 2 comprised 839 scans from 38 centres: 184 scans were used in the training subset and 655 in the test subset. Compared with manual reference, CNN-derived lesion volumes showed a mean difference of 0.86 mL (95% CI -5.23 to 6.94) for intraparenchymal haemorrhage, 1.83 mL (-12.01 to 15.66) for extra-axial haemorrhage, 2.09 mL (-9.38 to 13.56) for perilesional oedema, and 0.07 mL (-1.00 to 1.13) for intraventricular haemorrhage. Interpretation We show the ability of a CNN to separately segment, quantify, and detect multiclass haemorrhagic lesions and perilesional oedema. These volumetric lesion estimates allow clinically relevant quantification of lesion burden and progression, with potential applications for personalised treatment strategies and clinical research in TBI. Copyright (C) 2020 The Author(s). Published by Elsevier Ltd.
引用
收藏
页码:E314 / E322
页数:9
相关论文
共 31 条
[1]   A Review of the Effectiveness of Neuroimaging Modalities for the Detection of Traumatic Brain Injury [J].
Amyot, Franck ;
Arciniegas, David B. ;
Brazaitis, Michael P. ;
Curley, Kenneth C. ;
Diaz-Arrastia, Ramon ;
Gandjbakhche, Amir ;
Herscovitch, Peter ;
Hinds, Sidney R., II ;
Manley, Geoffrey T. ;
Pacifico, Anthony ;
Razumovsky, Alexander ;
Riley, Jason ;
Salzer, Wanda ;
Shih, Robert ;
Smirniotopoulos, James G. ;
Stocker, Derek .
JOURNAL OF NEUROTRAUMA, 2015, 32 (22) :1693-1721
[2]  
[Anonymous], [No title captured]
[3]   Semi-automated method for brain hematoma and edema quantification using computed tomography [J].
Bardera, A. ;
Boada, I. ;
Feixas, M. ;
Remollo, S. ;
Blasco, G. ;
Silva, Y. ;
Pedraza, S. .
COMPUTERIZED MEDICAL IMAGING AND GRAPHICS, 2009, 33 (04) :304-311
[4]   An integrated method for hemorrhage segmentation from brain CT Imaging [J].
Bhadauria, H. S. ;
Singh, Annapurna ;
Dewal, M. L. .
COMPUTERS & ELECTRICAL ENGINEERING, 2013, 39 (05) :1527-1536
[5]   Guidelines for the Management of Severe Traumatic Brain Injury, Fourth Edition [J].
Carney, Nancy ;
Totten, Annette M. ;
O'Reilly, Cindy ;
Ullman, Jamie S. ;
Hawryluk, Gregory W. J. ;
Bell, Michael J. ;
Bratton, Susan L. ;
Chesnut, Randall ;
Harris, Odette A. ;
Kissoon, Niranjan ;
Rubiano, Andres M. ;
Shutter, Lori ;
Tasker, Robert C. ;
Vavilala, Monica S. ;
Wilberger, Jack ;
Wright, David W. ;
Ghajar, Jamshid .
NEUROSURGERY, 2017, 80 (01) :6-15
[6]  
CENTER-TBI, ETH APPR
[7]   Deep learning algorithms for detection of critical findings in head CT scans: a retrospective study [J].
Chilamkurthy, Sasank ;
Ghosh, Rohit ;
Tanamala, Swetha ;
Biviji, Mustafa ;
Campeau, Norbert G. ;
Venugopal, Vasantha Kumar ;
Mahajan, Vidur ;
Rao, Pooja ;
Warier, Prashant .
LANCET, 2018, 392 (10162) :2388-2396
[8]   The use of confidence or fiducial limits illustrated in the case of the binomial. [J].
Clopper, CJ ;
Pearson, ES .
BIOMETRIKA, 1934, 26 :404-413
[9]   Estimating the global incidence of traumatic brain injury [J].
Dewan, Michael C. ;
Rattani, Abbas ;
Gupta, Saksham ;
Baticulon, Ronnie E. ;
Hung, Ya-Ching ;
Punchak, Maria ;
Agrawal, Amit ;
Adeleye, Amos O. ;
Shrime, Mark G. ;
Rubiano, Andres M. ;
Rosenfeld, Jeffrey V. ;
Park, Kee B. .
JOURNAL OF NEUROSURGERY, 2019, 130 (04) :1080-1097
[10]  
Edwards P, 2005, LANCET, V365, P1957