Automated lesion segmentation with BIANCA: Impact of population-level features, classification algorithm and locally adaptive thresholding

被引:30
作者
Sundaresan, Vaanathi [1 ,2 ,3 ]
Zamboni, Giovanna [1 ,4 ]
Le Heron, Campbell [5 ,7 ]
Rothwell, Peter M. [4 ]
Husain, Masud [5 ,6 ,8 ]
Battaglini, Marco [9 ]
De Stefano, Nicola [9 ]
Jenkinson, Mark [1 ]
Griffanti, Ludovica [1 ]
机构
[1] Univ Oxford, Oxford Ctr Funct MRI Brain, Nuffield Dept Clin Neurosci, Wellcome Ctr Integrat Neuroimaging, Oxford, England
[2] Univ Oxford, Oxford Nottingham Ctr Doctoral Training Biomed Im, Oxford, England
[3] Univ Oxford, Somerville Coll, Oxford India Ctr Sustainable Dev, Oxford, England
[4] Univ Oxford, Nuffield Dept Clin Neurosci, Ctr Prevent Stroke & Dementia, Oxford, England
[5] Univ Oxford, Nuffield Dept Clin Neurosci, Oxford, England
[6] Univ Oxford, Dept Expt Psychol, Oxford, England
[7] New Zealand Brain Res Inst, Christchurch 8011, New Zealand
[8] Univ Oxford, Wellcome Ctr Integrat Neurolmaging, Oxford, England
[9] Univ Siena, Dept Med Surg & Neurosci, Siena, Italy
基金
英国工程与自然科学研究理事会; 英国惠康基金; 英国医学研究理事会; 欧盟地平线“2020”;
关键词
White matter hyperintensities; Structural MRI; Lesion probability map; Thresholding; Machine learning; Lesion segmentation; WHITE-MATTER HYPERINTENSITIES; TRANSIENT ISCHEMIC ATTACK; SMALL VESSEL DISEASE; RISK-FACTORS; PROGRESSION; MORTALITY; RATES; MRI;
D O I
10.1016/j.neuroimage.2019.116056
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
White matter hyperintensities (WMH) or white matter lesions exhibit high variability in their characteristics both at population- and subject-level, making their detection a challenging task. Population-level factors such as age, vascular risk factors and neurodegenerative diseases affect lesion load and spatial distribution. At the individual level, WMH vary in contrast, amount and distribution in different white matter regions. In this work, we aimed to improve BIANCA, the FSL tool for WMH segmentation, in order to better deal with these sources of variability. We worked on two stages of BIANCA by improving the lesion probability map estimation (classification stage) and making the lesion probability map thresholding stage automated and adaptive to local lesion probabilities. Firstly, in order to take into account the effect of population-level factors, we included population-level lesion probabilities, modelled with respect to a parametric factor (e.g. age), in the classification stage. Secondly, we tested BIANCA performance when using four alternative classifiers commonly used in the literature with respect to K-nearest neighbour algorithm (currently used for lesion probability map estimation in BIANCA). Finally, we propose LOCally Adaptive Threshold Estimation (LOCATE), a supervised method for determining optimal local thresholds to apply to the estimated lesion probability map, as an alternative option to global thresholding (i.e. applying the same threshold to the entire lesion probability map). For these experiments we used data from a neurodegenerative cohort, a vascular cohort and the cohorts available publicly as a part of a segmentation challenge. We observed that including population-level parametric lesion probabilities with respect to age and using alternative machine learning techniques provided negligible improvement. However, LOCATE provided a substantial improvement in the lesion segmentation performance, when compared to the global thresholding. It allowed to detect more deep lesions and provided better segmentation of periventricular lesion boundaries, despite the differences in the lesion spatial distribution and load across datasets. We further validated LOCATE on a cohort of CADASIL (Cerebral autosomal dominant arteriopathy with subcortical infarcts and leukoencephalopathy) patients, a genetic form of cerebral small vessel disease, and healthy controls, showing that LOCATE adapts well to wide variations in lesion load and spatial distribution.
引用
收藏
页数:18
相关论文
共 41 条
[1]   Probabilistic segmentation of white lesions in MR imaging [J].
Anbeek, P ;
Vincken, KL ;
van Osch, MJP ;
Bisschops, RHC ;
van der Grond, J .
NEUROIMAGE, 2004, 21 (03) :1037-1044
[2]   Multi-dimensional Gated Recurrent Units for the Segmentation of Biomedical 3D-Data [J].
Andermatt, Simon ;
Pezold, Simon ;
Cattin, Philippe .
DEEP LEARNING AND DATA LABELING FOR MEDICAL APPLICATIONS, 2016, 10008 :142-151
[3]  
Anderson JW, 2007, CONTEMP MATH, V432, P1
[4]  
[Anonymous], MACH LEARN MACH LEARN
[5]  
[Anonymous], 2017, WMH SEGMENTATION CHA
[6]   The overlap between vascular disease and Alzheimer's disease - lessons from pathology [J].
Attems, Johannes ;
Jellinger, Kurt A. .
BMC MEDICINE, 2014, 12
[7]   CADASIL [J].
Chabriat, Hugues ;
Joutel, Anne ;
Dichgans, Martin ;
Tournier-Lasserve, Elizabeth ;
Bousser, Marie-Germaine .
LANCET NEUROLOGY, 2009, 8 (07) :643-653
[8]   The cognitive profiles of CADASIL and sporadic small vessel disease [J].
Charlton, R. A. ;
Morris, R. G. ;
Nitkunan, A. ;
Markus, H. S. .
NEUROLOGY, 2006, 66 (10) :1523-1526
[9]   White matter lesion extension to automatic brain tissue segmentation on MRI [J].
de Boer, Renske ;
Vrooman, Henri A. ;
van der Lijn, Fedde ;
Vernooij, Meike W. ;
Ikram, M. Arfan ;
van der Lugt, Aad ;
Breteler, Monique M. B. ;
Niessen, Wiro J. .
NEUROIMAGE, 2009, 45 (04) :1151-1161
[10]   Different types of white matter hyperintensities in CADASIL: Insights from 7-Tesla MRI [J].
De Guio, Francois ;
Vignaud, Alexandre ;
Chabriat, Hugues ;
Jouvent, Eric .
JOURNAL OF CEREBRAL BLOOD FLOW AND METABOLISM, 2018, 38 (09) :1654-1663