Recent advances in the longitudinal segmentation of multiple sclerosis lesions on magnetic resonance imaging: a review

被引:0
作者
Marcos Diaz-Hurtado
Eloy Martínez-Heras
Elisabeth Solana
Jordi Casas-Roma
Sara Llufriu
Baris Kanber
Ferran Prados
机构
[1] E-Health Center,Center of Neuroimmunology, Laboratory of Advanced Imaging in Neuroimmunological Diseases, Hospital Clinic Barcelona
[2] Universitat Oberta de Catalunya,Centre for Medical Image Computing, Department of Medical Physics and Biomedical Engineering
[3] Institut d’Investigacions Biomèdiques August Pi I Sunyer (IDIBAPS),National Institute for Health Research Biomedical Research Centre
[4] Universitat de Barcelona,Queen Square MS Centre, Department of Neuroinflammation, Faculty of Brain Sciences
[5] University College London,undefined
[6] University College London,undefined
[7] UCL Institute of Neurology,undefined
[8] University College London,undefined
来源
Neuroradiology | 2022年 / 64卷
关键词
Multiple sclerosis; MRI; Longitudinal; Lesion segmentation; Review;
D O I
暂无
中图分类号
学科分类号
摘要
Multiple sclerosis (MS) is a chronic autoimmune disease characterized by demyelinating lesions that are often visible on magnetic resonance imaging (MRI). Segmentation of these lesions can provide imaging biomarkers of disease burden that can help monitor disease progression and the imaging response to treatment. Manual delineation of MRI lesions is tedious and prone to subjective bias, while automated lesion segmentation methods offer objectivity and speed, the latter being particularly important when analysing large datasets. Lesion segmentation can be broadly categorised into two groups: cross-sectional methods, which use imaging data acquired at a single time-point to characterise MRI lesions; and longitudinal methods, which use imaging data from the same subject acquired at two or more different time-points to characterise lesions over time. The main objective of longitudinal segmentation approaches is to more accurately detect the presence of new MS lesions and the growth or remission of existing lesions, which may be effective biomarkers of disease progression and treatment response. This paper reviews articles on longitudinal MS lesion segmentation methods published over the past 10 years. These are divided into traditional machine learning methods and deep learning techniques. PubMed articles using longitudinal information and comparing fully automatic two time point segmentations in any step of the process were selected. Nineteen articles were reviewed. There is an increasing number of deep learning techniques for longitudinal MS lesion segmentation that are promising to help better understand disease progression.
引用
收藏
页码:2103 / 2117
页数:14
相关论文
共 143 条
[21]  
de Leener B(2002)Linear combination of transformations ACM Trans Graph 21 380-155
[22]  
Badji A(2002)The problem of functional localization in the human brain Nat Rev Neurosci 3 243-2373
[23]  
Carass A(2002)Fast robust automated brain extraction Hum Brain Mapp 17 143-1634
[24]  
Roy S(2012)BEaST: brain extraction based on nonlocal segmentation technique Neuroimage 59 2362-4964
[25]  
Jog A(2011)Robust brain extraction across datassets and comparison with publicly available methods IEEE Trans Med Imaging 30 1617-656
[26]  
Cerri S(2019)Automated brain extraction of multisequence MRI using artificial neural networks Hum Brain Mapp 40 4952-420
[27]  
Puonti O(2003)Automatic change detection in multimodal serial MRI: application to multiple sclerosis lesion evolution Neuroimage 20 643-582
[28]  
Meier DS(2018)Objective evaluation of multiple sclerosis lesion segmentation using a data management and processing infrastructure Sci Rep 8 13650-457
[29]  
Ganiler O(2016)Validation of white-matter lesion change detection methods on a novel publicly available MRI image Database Neuroinformatics 14 403-156
[30]  
Oliver A(2008)Stereotaxic white matter atlas based on diffusion tensor imaging in an ICBM template Neuroimage 40 570-1503