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Predicting Future Disease Activity and Treatment Responders for Multiple Sclerosis Patients Using a Bag-of-Lesions Brain Representation

机译:使用病变袋大脑表示法预测多发性硬化症患者的未来疾病活动和治疗反应者

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The growth of lesions and the development of new lesions in MRI are markers of new disease activity in Multiple Sclerosis (MS) patients. Successfully predicting future lesion activity could lead to a better understanding of disease worsening, as well as prediction of treatment efficacy. We introduce the first, fully automatic, probabilistic framework for the prediction of future lesion activity in relapsing-remitting MS patients, based only on baseline multi-modal MRI, and use it to successfully identify responders to two different treatments. We develop a new Bag-of-Lesions (BoL) representation for patient images based on a variety of features extracted from lesions. A probabilistic codebook of lesion types is created by clustering features using Gaussian mixture models. Patients are represented as a probabilistic histogram of lesion-types. A Random Forest classifier is trained to automatically predict future MS activity up to two years ahead based on the patient's baseline BoL representation. The framework is trained and tested on a large, proprietary, multi-centre, multi-modal clinical trial dataset consisting of 1048 patients. Testing based on 50-fold cross validation shows that our framework compares favourably to several other classifiers. Automated identification of responders in two different treated groups of patients leads to sensitivity of 82% and 84% and specificity of 92% and 94% respectively, showing that this is a very promising approach towards personalized treatment for MS patients.
机译:MRI中病变的生长和新病变的发展是多发性硬化症(MS)患者新疾病活动的标志。成功地预测未来的病变活动可能会导致对疾病恶化的更好理解以及治疗效果的预测。我们仅基于基线多模态MRI引入了第一个全自动的概率框架,用于预测复发缓解型MS患者的未来病灶活动,并使用它成功地识别出对两种不同治疗方法的反应者。我们基于从病变中提取的多种特征,为患者图像开发了一种新的病灶(BoL)表示形式。通过使用高斯混合模型对要素进行聚类来创建病灶类型的概率代码簿。患者以病变类型的概率直方图表示。经过训练的随机森林分类器可以根据患者的基线BoL表示自动预测未来两年的MS活动。该框架在包含1048名患者的大型,专有,多中心,多模式临床试验数据集上进行了培训和测试。基于50倍交叉验证的测试表明,我们的框架与其他几个分类器相比具有优势。在两个不同治疗组的患者中自动识别应答者,分别导致敏感性分别为82%和84%,特异性为92%和94%,这表明这是针对MS患者进行个性化治疗的非常有前途的方法。

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