论文标题
部分可观测时空混沌系统的无模型预测
Deep Learning Based Detection of Enlarged Perivascular Spaces on Brain MRI
论文作者
论文摘要
背景和目的:深度学习已在许多神经影像应用中有效。但是,在许多情况下,捕获与小血管疾病有关的信息的成像序列数量不足以支持数据驱动的技术。此外,基于队列的研究可能并不总是具有用于准确病变检测的最佳或必需成像序列。因此,有必要确定哪些成像序列对于精确检测至关重要。这项研究介绍了一个新型的深度学习框架,以检测血管周间空间(EPVS),并旨在找到MRI序列的最佳组合,以进行深度学习的定量。材料和方法:我们实施了一种有效的轻型U-NET,该U-NET适用于EPVS检测,并全面研究了SWI,FLAIR,T1加权(T1W)和T2加权(T2W)MRI序列的不同信息组合。培训数据包括21名参与者,这些参与者是从MESA队列中随机选择的。参与者平均患有EPV 683个病变。对于T1W,T2W和Flair图像,MESA研究在带有西门子扫描仪的六个不同地点收集了3D各向同性MRI扫描。我们的培训数据包括来自所有这些站点和所有扫描仪模型的参与者,并且提出的模型被应用于整个大脑而不是选择性区域。结果:实验结果表明,T2W MRI对于准确的EPV检测最为重要,并且在深神经网络中掺入SWI,FLAIR和T1W MRI的准确性略有提高,并导致最高灵敏度和精度(敏感性= 0.82,精度= 0.83)。与手动阅读相比,所提出的方法以最少的时间成本获得了可比的精度。
BACKGROUND AND PURPOSE: 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 imaging sequences are crucial for precise detection. This study introduces a novel deep learning framework to detect enlarged perivascular spaces (ePVS) and aims to find the optimal combination of MRI sequences for deep learning-based quantification. MATERIALS AND METHODS: We implemented an effective lightweight U-Net adapted for ePVS detection and comprehensively investigated different combinations of information from SWI, FLAIR, T1-weighted (T1w), and T2-weighted (T2w) MRI sequences. The training data included 21 participants, which were randomly selected from the MESA cohort. Participants had ePVS 683 lesions on average. For T1w, T2w, and FLAIR images, the MESA study collected 3D isotropic MRI scans at six different sites with Siemens scanners. Our training data included participants from all these sites and all the scanner models, and the proposed model was applied to the whole brain instead of selective regions. RESULTS: The experimental results showed 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 had minor improvements in accuracy and resulted in the highest sensitivity and precision (sensitivity =0.82, precision =0.83). The proposed method achieved comparable accuracy at a minimal time cost compared to manual reading.