提高小儿大脑图像的头骨剥离性能。

William Kelley, Nathan Ngo, Adrian V Dalca, Bruce Fischl, Lilla Zöllei, Malte Hoffmann
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摘要

颅骨切片是从大脑图像中去除背景和非大脑解剖特征。虽然有许多颅骨切片工具,但很少有针对儿科人群的。随着多机构儿科数据采集工作的出现,为了拓宽对围产期大脑发育的了解,必须开发强大且经过良好测试的工具,为相关数据处理做好准备。然而,发育中的大脑神经解剖变化范围广泛,再加上额外的挑战,如高运动水平以及图像中的肩部和胸部信号,使得许多成人专用工具不适合儿科头骨剥离。在现有的稳健、准确的头骨切片框架基础上,我们提出了发育合成条纹(d-SynthStrip),这是一种专为儿科图像定制的头骨切片模型。该框架将网络暴露于由标签图合成的高度可变图像中。我们的模型在扫描类型和年龄组别方面大大优于儿科基线模型。此外,我们的
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BOOSTING SKULL-STRIPPING PERFORMANCE FOR PEDIATRIC BRAIN IMAGES.

Skull-stripping is the removal of background and non-brain anatomical features from brain images. While many skull-stripping tools exist, few target pediatric populations. With the emergence of multi-institutional pediatric data acquisition efforts to broaden the understanding of perinatal brain development, it is essential to develop robust and well-tested tools ready for the relevant data processing. However, the broad range of neuroanatomical variation in the developing brain, combined with additional challenges such as high motion levels, as well as shoulder and chest signal in the images, leaves many adult-specific tools ill-suited for pediatric skull-stripping. Building on an existing framework for robust and accurate skull-stripping, we propose developmental SynthStrip (d-SynthStrip), a skull-stripping model tailored to pediatric images. This framework exposes networks to highly variable images synthesized from label maps. Our model substantially outperforms pediatric baselines across scan types and age cohorts. In addition, the <1-minute runtime of our tool compares favorably to the fastest baselines. We distribute our model at https://w3id.org/synthstrip.

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