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首页> 外文期刊>Computer methods in biomechanics and biomedical engineering >Deep learning of brain lesion patterns and user-defined clinical and MRI features for predicting conversion to multiple sclerosis from clinically isolated syndrome
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Deep learning of brain lesion patterns and user-defined clinical and MRI features for predicting conversion to multiple sclerosis from clinically isolated syndrome

机译:大脑病变模式的深入学习和用户定义的临床和MRI特征,用于预测临床上综合征的多发性硬化的转化

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摘要

Multiple sclerosis (MS) is a neurological disease with an early course that is characterised by attacks of clinical worsening, separated by variable periods of remission. The ability to predict the risk of attacks in a given time frame can be used to identify patients who are likely to benefit from more proactive treatment. We aim to determine whether deep learning can extract latent MS lesion features that, when combined with user-defined radiological and clinical measurements, can predict conversion to MS (defined with criteria that include new T2 lesions, new T1 gadolinium enhancing lesions and/or new clinical relapse) in patients with early MS symptoms (clinically isolated syndrome), a prodromal stage of MS, more accurately than imaging biomarkers that have been used in clinical studies to evaluate overall disease state, such as lesion volume and brain volume. More specifically, we use convolutional neural networks to extract latent MS lesion patterns that are associated with conversion to definite MS (based on the McDonald 2005 criteria) using lesion masks segmented from baseline MR images. The main challenges are that lesion masks are generally sparse and the number of training samples is small relative to the dimensionality of the images. To cope with sparse voxel data, we propose utilising the Euclidean distance transform (EDT) for increasing information density by populating each voxel with a value indicating distance to the closest lesion boundary. To reduce the risk of overfitting resulting from high image dimensionality, we use a synergistic combination of downsampling, unsupervised pretraining and regularisation during training. A detailed analysis of the impact of EDT and unsupervised pretraining is presented. In contrast to our previous work, which only used automatically learned image features for prediction, we incorporate three user-defined magnetic resonance imaging (MRI) measurements and eight user-defined clinical measurements into the prediction model. In total, the baseline user-defined measurements consist of 11 features. Using the baseline MRI scans and all available measurements from 140 subjects in a sevenfold cross-validation procedure, we demonstrate that our model can achieve an average accuracy rate of 75.0% (SD = 11.3%) in predicting disease activity that is indicative of radiological or clinical conversion to definite MS within two years, which is higher than the 65.0% (SD = 14.6%) that is attained with lesion volume alone. More significantly, our model also outperformed a random forest using all available user-defined measurements (67.9%, SD = 10.6%), thereby demonstrating the potential benefit of automatic extraction of latent lesion features by deep learning.
机译:多发性硬化症(MS)是一种神经系统疾病,早期疗程,其特征在于临床恶化,通过可变缓解阶段分离。预测给定时间帧中的攻击风险的能力可用于识别可能从更积极的治疗中受益的患者。我们的目标是确定深度学习是否可以提取潜伏的MS病变特征,当与用户定义的放射学和临床测量结合时,可以预测对MS的转化(定义有包含新的T2病变的标准,新的T1钆增强病变和/或新的T1钆增强病变临床复发)在早期MS症状(临床上综合征),MS的前阶段,比已经用于临床研究的成像生物标志物更精确地评​​估整体疾病状态,例如病变体积和脑体积。更具体地,我们使用卷积神经网络来提取与从基线MR图像分段的病变掩模的转换(基于MCDONALD 2005标准)相关联的潜在MS病变模式。主要挑战是病变面罩通常是稀疏的,并且训练样本的数量相对于图像的维度小很小。为了应对稀疏体素数据,我们提出利用欧几里德距离变换(EDT)来增加信息密度,通过向最近的病变边界的值填充每个体素来增加每个体素。为了降低高图像维度导致的过度装饰的风险,我们使用训练期间的减速采样,无监督预测和正规的协同组合。提出了对EDT和无监督预先估修的影响的详细分析。与我们之前的工作相比,仅使用自动学习的预测图像特征,我们将三个用户定义的磁共振成像(MRI)测量和八个用户定义的临床测量结合到预测模型中。总共,基线用户定义的测量由11个功能组成。使用基线MRI扫描和所有可用的测量从140个受试者中的七倍交叉验证程序,我们证明我们的模型可以在预测指示放射学或的疾病活动中实现75.0%(SD = 11.3%)的平均精度率。两年内临床转化为明确的MS,其高于单独使用病变体积获得的65.0%(SD = 14.6%)。更重要的是,我们的模型也使用所有可用的用户定义测量(67.9%,SD = 10.6%)优于随机林,从而展示了深入学习自动提取潜伏病变特征的潜在益处。

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  • 作者单位

    Department of Electrical and Computer Engineering University of British Columbia Vancouver Canada Division of Neurology University of British Columbia Vancouver Canada MS/MRI Research Group University of British Columbia Vancouver Canada;

    Department of Radiology University of British Columbia Vancouver Canada MS/MRI Research Group University of British Columbia Vancouver Canada;

    Department of Radiology University of British Columbia Vancouver Canada MS/MRI Research Group University of British Columbia Vancouver Canada;

    Division of Neurology University of Calgary Calgary Canada;

    Division of Neurology University of British Columbia Vancouver Canada;

    Division of Neurology University of British Columbia Vancouver Canada MS/MRI Research Group University of British Columbia Vancouver Canada;

    Biomedical Engineering Program University of British Columbia Vancouver Canada Department of Radiology University of British Columbia Vancouver Canada MS/MRI Research Group University of British Columbia Vancouver Canada;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Multiple sclerosis; deep learning; clinically isolated syndrome; user-defined measurements; clinical prediction; MRI;

    机译:多发性硬化症;深度学习;临床上孤立的综合征;用户定义的测量;临床预测;MRI.;

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