Tetteh Giles, Navarro Fernando, Meier Raphael, Kaesmacher Johannes, Paetzold Johannes C, Kirschke Jan S, Zimmer Claus, Wiest Roland, Menze Bjoern H
Department of Computer Science, Technische Universität München, München, Germany.
Neuroradiology, Klinikum Rechts der Isar, Technische Universität München, München, Germany.
Front Neurol. 2023 Feb 21;14:1039693. doi: 10.3389/fneur.2023.1039693. eCollection 2023.
Collateral circulation results from specialized anastomotic channels which are capable of providing oxygenated blood to regions with compromised blood flow caused by arterial obstruction. The quality of collateral circulation has been established as a key factor in determining the likelihood of a favorable clinical outcome and goes a long way to determining the choice of a stroke care model. Though many imaging and grading methods exist for quantifying collateral blood flow, the actual grading is mostly done through manual inspection. This approach is associated with a number of challenges. First, it is time-consuming. Second, there is a high tendency for bias and inconsistency in the final grade assigned to a patient depending on the experience level of the clinician. We present a multi-stage deep learning approach to predict collateral flow grading in stroke patients based on radiomic features extracted from MR perfusion data. First, we formulate a region of interest detection task as a reinforcement learning problem and train a deep learning network to automatically detect the occluded region within the 3D MR perfusion volumes. Second, we extract radiomic features from the obtained region of interest through local image descriptors and denoising auto-encoders. Finally, we apply a convolutional neural network and other machine learning classifiers to the extracted radiomic features to automatically predict the collateral flow grading of the given patient volume as one of three severity classes - no flow (0), moderate flow (1), and good flow (2). Results from our experiments show an overall accuracy of 72% in the three-class prediction task. With an inter-observer agreement of 16% and a maximum intra-observer agreement of 74% in a similar experiment, our automated deep learning approach demonstrates a performance comparable to expert grading, is faster than visual inspection, and eliminates the problem of grading bias.
侧支循环由专门的吻合通道形成,这些通道能够为因动脉阻塞而血流受损的区域提供含氧血液。侧支循环的质量已被确认为决定临床预后良好可能性的关键因素,对中风护理模式的选择也有很大影响。尽管存在许多用于量化侧支血流的成像和分级方法,但实际分级大多通过人工检查完成。这种方法存在诸多挑战。首先,它耗时。其次,根据临床医生的经验水平,给患者最终分级时存在高度的偏差和不一致性倾向。我们提出一种多阶段深度学习方法,基于从磁共振灌注数据中提取的放射组学特征来预测中风患者的侧支血流分级。首先,我们将感兴趣区域检测任务表述为强化学习问题,并训练一个深度学习网络来自动检测三维磁共振灌注容积内的闭塞区域。其次,我们通过局部图像描述符和去噪自动编码器从获得的感兴趣区域中提取放射组学特征。最后,我们将卷积神经网络和其他机器学习分类器应用于提取的放射组学特征,以自动预测给定患者容积的侧支血流分级,分为三个严重程度等级之一——无血流(0)、中度血流(1)和良好血流(2)。我们实验的结果表明,在三类预测任务中的总体准确率为72%。在类似实验中,观察者间一致性为16%,观察者内最大一致性为74%,我们的自动化深度学习方法表现出与专家分级相当的性能,比目视检查更快,并且消除了分级偏差问题。