新生儿 VINNA:通过潜在增强功能实现定向独立性。

Imaging neuroscience (Cambridge, Mass.) Pub Date : 2024-05-30 eCollection Date: 2024-05-01 DOI:10.1162/imag_a_00180
Leonie Henschel, David Kügler, Lilla Zöllei, Martin Reuter
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引用次数: 0

摘要

为了更好地了解和检测发育和疾病过程中的变化,尤其是考虑到新生儿成像研究的增加,对新生儿大脑图像进行稳健、快速和准确的分割是非常必要的。然而,地面实况数据集的可用性有限、缺乏标准化的采集协议以及扫描仪中头部定位的巨大差异都给方法开发带来了挑战。目前已有一些用于新生儿脑部磁共振成像(MRI)分割的自动图像分析管道,但它们通常依赖于耗时的非线性空间配准程序,并需要重新采样到通用分辨率,这就会因插值和向下采样而导致信息丢失。如果不进行配准和图像重采样,就必须以不同的方式处理头部位置和体素分辨率的变化。在深度学习中,外部增强(如旋转、平移和缩放)传统上用于人为扩展空间变化的表示,从而增加训练数据集的大小和鲁棒性。然而,图像空间中的这些变换仍然需要重新采样,从而降低了标签插值的准确性。最近,我们通过体素大小独立神经网络框架(VINN)引入了分辨率独立的概念。在这里,我们扩展了这一概念,通过四自由度(4-DOF)变换模块将所有刚性变换移入网络架构,从而实现了深度学习的分辨率感知内部增强(VINNA)。在这项工作中,我们展示了 VINNA:(i) 明显优于最先进的外部增强方法;(ii) 有效解决了新生儿数据集中特别存在的头部变化问题;(iii) 在一系列分辨率(0.5-1.0 毫米)范围内保持了较高的分割精度。此外,4-DOF 变换模块和内部增强技术是一种强大的通用方法,可以在不需要图像或标签插值的情况下实现空间增强。新生儿的具体网络应用将作为 VINNA4neonates 公开发布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VINNA for neonates: Orientation independence through latent augmentations.

A robust, fast, and accurate segmentation of neonatal brain images is highly desired to better understand and detect changes during development and disease, specifically considering the rise in imaging studies for this cohort. Yet, the limited availability of ground truth datasets, lack of standardized acquisition protocols, and wide variations of head positioning in the scanner pose challenges for method development. A few automated image analysis pipelines exist for newborn brain Magnetic Resonance Image (MRI) segmentation, but they often rely on time-consuming non-linear spatial registration procedures and require resampling to a common resolution, subject to loss of information due to interpolation and down-sampling. Without registration and image resampling, variations with respect to head positions and voxel resolutions have to be addressed differently. In deep learning, external augmentations such as rotation, translation, and scaling are traditionally used to artificially expand the representation of spatial variability, which subsequently increases both the training dataset size and robustness. However, these transformations in the image space still require resampling, reducing accuracy specifically in the context of label interpolation. We recently introduced the concept of resolution-independence with the Voxel-size Independent Neural Network framework, VINN. Here, we extend this concept by additionally shifting all rigid-transforms into the network architecture with a four degree of freedom (4-DOF) transform module, enabling resolution-aware internal augmentations (VINNA) for deep learning. In this work, we show that VINNA (i) significantly outperforms state-of-the-art external augmentation approaches, (ii) effectively addresses the head variations present specifically in newborn datasets, and (iii) retains high segmentation accuracy across a range of resolutions (0.5-1.0 mm). Furthermore, the 4-DOF transform module together with internal augmentations is a powerful, general approach to implement spatial augmentation without requiring image or label interpolation. The specific network application to newborns will be made publicly available as VINNA4neonates.

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