Department of Biomedical Engineering, Khalifa University of Science and Technology, Abu Dhabi, United Arab Emirates.
Department of Biomedical Engineering, Khalifa University of Science and Technology, Abu Dhabi, United Arab Emirates; Healthcare Engineering Innovation Center (HEIC), Khalifa University of Science and Technology, Abu Dhabi, United Arab Emirates.
Comput Biol Med. 2023 Sep;164:107302. doi: 10.1016/j.compbiomed.2023.107302. Epub 2023 Aug 1.
Automated demarcation of stoke lesions from monospectral magnetic resonance imaging scans is extremely useful for diverse research and clinical applications, including lesion-symptom mapping to explain deficits and predict recovery. There is a significant surge of interest in the development of supervised artificial intelligence (AI) methods for that purpose, including deep learning, with a performance comparable to trained experts. Such AI-based methods, however, require copious amounts of data. Thanks to the availability of large datasets, the development of AI-based methods for lesion segmentation has immensely accelerated in the last decade. One of these datasets is the Anatomical Tracings of Lesions After Stroke (ATLAS) dataset which includes T1-weighted images from hundreds of chronic stroke survivors with their manually traced lesions. This systematic review offers an appraisal of the impact of the ATLAS dataset in promoting the development of AI-based segmentation of stroke lesions. An examination of all published studies, that used the ATLAS dataset to both train and test their methods, highlighted an overall moderate performance (median Dice index = 59.40%) and a huge variability across studies in terms of data preprocessing, data augmentation, AI architecture, and the mode of operation (two-dimensional versus three-dimensional methods). Perhaps most importantly, almost all AI tools were borrowed from existing AI architectures in computer vision, as 90% of all selected studies relied on conventional convolutional neural network-based architectures. Overall, current research has not led to the development of robust AI architectures than can handle spatially heterogenous lesion patterns. This review also highlights the difficulty of gauging the performance of AI tools in the presence of uncertainties in the definition of the ground truth.
自动划分磁共振单谱成像扫描中的中风病灶对于各种研究和临床应用非常有用,包括病灶-症状映射以解释缺陷和预测恢复。出于该目的,包括深度学习在内的监督人工智能 (AI) 方法的发展引起了极大的兴趣,其性能可与训练有素的专家相媲美。然而,此类基于 AI 的方法需要大量的数据。由于大型数据集的可用性,基于 AI 的病灶分割方法在过去十年中得到了极大的加速发展。其中一个数据集是中风后病灶解剖追踪 (ATLAS) 数据集,其中包含数百名慢性中风幸存者的 T1 加权图像及其手动追踪的病灶。本系统评价评估了 ATLAS 数据集在促进基于 AI 的中风病灶分割方法的发展方面的影响。对所有使用 ATLAS 数据集进行训练和测试的已发表研究的检查突出显示了总体中等性能(中位数 Dice 指数 = 59.40%),并且在数据预处理、数据增强、AI 架构和操作模式方面,研究之间存在巨大的可变性(二维与三维方法)。也许最重要的是,几乎所有的 AI 工具都是从计算机视觉中的现有 AI 架构中借用的,因为 90%的选定研究都依赖于传统的基于卷积神经网络的架构。总体而言,目前的研究尚未开发出能够处理空间异质病灶模式的强大 AI 架构。该综述还强调了在存在对真实情况定义的不确定性的情况下,衡量 AI 工具性能的困难。