Department of Neurology, Medical University of Graz, Austria; BioTechMed-Graz, Austria.
Department of Neurology, Medical University of Graz, Austria.
Neuroimage. 2024 Sep;298:120767. doi: 10.1016/j.neuroimage.2024.120767. Epub 2024 Aug 3.
Hippocampal atrophy (tissue loss) has become a fundamental outcome parameter in clinical trials on Alzheimer's disease. To accurately estimate hippocampus volume and track its volume loss, a robust and reliable segmentation is essential. Manual hippocampus segmentation is considered the gold standard but is extensive, time-consuming, and prone to rater bias. Therefore, it is often replaced by automated programs like FreeSurfer, one of the most commonly used tools in clinical research. Recently, deep learning-based methods have also been successfully applied to hippocampus segmentation. The basis of all approaches are clinically used T1-weighted whole-brain MR images with approximately 1 mm isotropic resolution. However, such T1 images show low contrast-to-noise ratios (CNRs), particularly for many hippocampal substructures, limiting delineation reliability. To overcome these limitations, high-resolution T2-weighted scans are suggested for better visualization and delineation, as they show higher CNRs and usually allow for higher resolutions. Unfortunately, such time-consuming T2-weighted sequences are not feasible in a clinical routine. We propose an automated hippocampus segmentation pipeline leveraging deep learning with T2-weighted MR images for enhanced hippocampus segmentation of clinical T1-weighted images based on a series of 3D convolutional neural networks and a specifically acquired multi-contrast dataset. This dataset consists of corresponding pairs of T1- and high-resolution T2-weighted images, with the T2 images only used to create more accurate manual ground truth annotations and to train the segmentation network. The T2-based ground truth labels were also used to evaluate all experiments by comparing the masks visually and by various quantitative measures. We compared our approach with four established state-of-the-art hippocampus segmentation algorithms (FreeSurfer, ASHS, HippoDeep, HippMapp3r) and demonstrated a superior segmentation performance. Moreover, we found that the automated segmentation of T1-weighted images benefits from the T2-based ground truth data. In conclusion, this work showed the beneficial use of high-resolution, T2-based ground truth data for training an automated, deep learning-based hippocampus segmentation and provides the basis for a reliable estimation of hippocampal atrophy in clinical studies.
海马体萎缩(组织损失)已成为阿尔茨海默病临床试验中的基本结果参数。为了准确估计海马体体积并跟踪其体积损失,稳健可靠的分割至关重要。手动海马体分割被认为是金标准,但它广泛、耗时且容易受到评估者偏差的影响。因此,它经常被像 FreeSurfer 这样的自动化程序所取代,FreeSurfer 是临床研究中最常用的工具之一。最近,基于深度学习的方法也已成功应用于海马体分割。所有方法的基础都是临床使用的具有约 1 毫米各向同性分辨率的 T1 加权全脑 MR 图像。然而,这种 T1 图像的对比度噪声比(CNR)较低,特别是对于许多海马亚结构,限制了描绘的可靠性。为了克服这些限制,建议使用高分辨率 T2 加权扫描以进行更好的可视化和描绘,因为它们具有更高的 CNR 并且通常允许更高的分辨率。不幸的是,这种耗时的 T2 加权序列在临床常规中不可行。我们提出了一种基于深度学习的自动化海马体分割管道,该管道利用 T2 加权 MR 图像进行深度学习,以便基于一系列 3D 卷积神经网络和专门获取的多对比度数据集来增强对临床 T1 加权图像的海马体分割。该数据集由 T1 加权和高分辨率 T2 加权图像的对应图像对组成,仅使用 T2 图像来创建更准确的手动地面真实注释并训练分割网络。还通过视觉比较和各种定量度量来比较掩模,使用基于 T2 的地面真实标签来评估所有实验。我们将我们的方法与四种现有的先进海马体分割算法(FreeSurfer、ASHS、HippoDeep、HippMapp3r)进行了比较,并证明了优越的分割性能。此外,我们发现 T1 加权图像的自动分割受益于基于 T2 的地面真实数据。总之,这项工作表明,高分辨率、基于 T2 的地面真实数据可用于训练自动化、基于深度学习的海马体分割,为在临床研究中可靠估计海马体萎缩提供了基础。