Deep learning has been demonstrated effective in many neuroimaging applications. However, in many scenarios the number of imaging sequences capturing information related to small vessel disease lesions is insufficient to support data-driven techniques. Additionally, cohort-based studies may not always have the optimal or essential imaging sequences for accurate lesion detection. Therefore, it is necessary to determine which of these imaging sequences are essential for accurate detection. In this study we aimed to find the optimal combination of magnetic resonance imaging (MRI) sequences for deep learning-based detection of enlarged perivascular spaces (ePVS). To this end, we implemented an effective light-weight U-Net adapted for ePVS detection and comprehensively investigated different combinations of information from susceptibility weighted imaging (SWI), fluid-attenuated inversion recovery (FLAIR), T1-weighted (T1w) and T2-weighted (T2w) MRI sequences. We conclude that T2w MRI is the most important for accurate ePVS detection, and the incorporation of SWI, FLAIR and T1w MRI in the deep neural network could make insignificant improvements in accuracy.
翻译:在许多神经成像应用中,深层学习证明是有效的,然而,在许多情景中,收集与小容器疾病损伤有关的信息的成像序列数量不足以支持数据驱动技术。此外,基于组群的研究不一定总能具备精确损害检测所需的最佳或基本成像序列。因此,有必要确定这些成像序列中哪些是准确检测所必需的。在这项研究中,我们的目标是找到磁共振成像序列的最佳组合,以便深入学习探测扩大的穿透空间(ePVS)的成像序列。为此,我们实施了一种有效的轻重量U-Net,用于对电子光学成像系统进行检测,并全面调查敏感加权成像(SWI)、液加压反转录(FLAIR)、T1加权(T1w)和T2-加权(T2w) MRI序列等信息的不同组合。我们的结论是,T2w MRI对于精确的ePVS检测最为重要,而将SWI、FLAIR和T1湿MRI纳入深神经网络的精确性改进可能微不足道。