Pinto Adriano, Mckinley Richard, Alves Victor, Wiest Roland, Silva Carlos A, Reyes Mauricio
CMEMS-UMinho Research Unit, University of Minho, Guimarães, Portugal.
Centro Algoritmi, University of Minho, Braga, Portugal.
Front Neurol. 2018 Dec 5;9:1060. doi: 10.3389/fneur.2018.01060. eCollection 2018.
In developed countries, the second leading cause of death is stroke, which has the ischemic stroke as the most common type. The preferred diagnosis procedure involves the acquisition of multi-modal Magnetic Resonance Imaging. Besides detecting and locating the stroke lesion, Magnetic Resonance Imaging captures blood flow dynamics that guides the physician in evaluating the risks and benefits of the reperfusion procedure. However, the decision process is an intricate task due to the variability of lesion size, shape, and location, as well as the complexity of the underlying cerebral hemodynamic process. Therefore, an automatic method that predicts the stroke lesion outcome, at a 3-month follow-up, would provide an important support to the physicians' decision process. In this work, we propose an automatic deep learning-based method for stroke lesion outcome prediction. Our main contribution resides in the combination of multi-modal Magnetic Resonance Imaging maps with non-imaging clinical meta-data: the thrombolysis in cerebral infarction scale, which categorizes the success of recanalization, achieved through mechanical thrombectomy. In our proposal, this clinical information is considered at two levels. First, at a population level by embedding the clinical information in a custom loss function used during training of our deep learning architecture. Second, at a patient-level through an extra input channel of the neural network used at testing time for a given patient case. By merging imaging with non-imaging clinical information, we aim to obtain a model aware of the principal and collateral blood flow dynamics for cases where there is no perfusion beyond the point of occlusion and for cases where the perfusion is complete after the occlusion point.
在发达国家,第二大致死原因是中风,其中缺血性中风是最常见的类型。首选的诊断程序包括获取多模态磁共振成像。磁共振成像除了能检测和定位中风病灶外,还能捕捉血流动力学信息,为医生评估再灌注程序的风险和益处提供指导。然而,由于病灶大小、形状和位置的变异性,以及潜在脑血流动力学过程的复杂性,决策过程是一项复杂的任务。因此,一种能在3个月随访时预测中风病灶结果的自动方法,将为医生的决策过程提供重要支持。在这项工作中,我们提出了一种基于深度学习的中风病灶结果预测自动方法。我们的主要贡献在于将多模态磁共振成像图谱与非成像临床元数据相结合:脑梗死溶栓量表,该量表对通过机械取栓实现的再通成功与否进行分类。在我们的方案中,这种临床信息在两个层面上被考虑。首先,在总体层面上,通过将临床信息嵌入到我们深度学习架构训练期间使用的自定义损失函数中。其次,在患者层面上,通过在测试给定患者病例时使用的神经网络的一个额外输入通道。通过将成像与非成像临床信息相结合,我们旨在获得一个了解主要和侧支血流动力学的模型,用于那些在闭塞点之外没有灌注的情况以及在闭塞点之后灌注完全的情况。