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An efficient and accurate method for robust inter‐dataset brain extraction and comparisons with 9 other methods

机译:具有9种其他方法的高效和准确的数据集大脑提取和比较的高效准确方法

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摘要

Abstract Brain extraction is an important first step in many magnetic resonance neuroimaging studies. Due to variability in brain morphology and in the appearance of the brain due to differences in scanner acquisition parameters, the development of a generally applicable brain extraction algorithm has proven challenging. Learning‐based brain extraction algorithms in particular perform well when the target and training images are sufficiently similar, but often perform worse when this condition is not met. In this study, we propose a new patch‐based multi‐atlas segmentation method for brain extraction which is specifically developed for accurate and robust processing across datasets. Using a diverse collection of labeled images from 5 different datasets, extensive comparisons were made with 9 other commonly used brain extraction methods, both before and after applying error correction (a machine learning method for automatically correcting segmentation errors) to each method. The proposed method performed equal to or better than the other methods in each of two segmentation scenarios: a challenging inter‐dataset segmentation scenario in which no dataset‐specific atlases were used (mean Dice coefficient 98.57%, volumetric correlation 0.994 across datasets following error correction), and an intra‐dataset segmentation scenario in which only dataset‐specific atlases were used (mean Dice coefficient 99.02%, volumetric correlation 0.998 across datasets following error correction). Furthermore, combined with error correction, the proposed method runs in less than one‐tenth of the time required by the other top‐performing methods in the challenging inter‐dataset comparisons. Validation on an independent multi‐centre dataset also confirmed the excellent performance of the proposed method.
机译:摘要脑提取是许多磁共振神经影像研究中的重要第一步。由于脑形态的可变性以及由于扫描仪采集参数的差异,大脑的出现,普遍适用的脑提取算法的开发已经证明了具有挑战性。当目标和训练图像足够相似时,基于学习的大脑提取算法尤其表现良好,但是当不满足这种情况时通常会更差。在这项研究中,我们提出了一种新的基于补丁的多拟标准分割方法,用于脑提取,专门用于跨数据集的准确和鲁棒处理。使用从5个不同的数据集中标记图像的各种标记图像,使用纠错之前和之后的其他常用脑提取方法进行了广泛的比较(机器学习方法,用于自动纠正分段错误)到每个方法。所提出的方法比两个分割场景中的每一个中的其他方法等于或更好地执行:一个具有挑战性的数据集分段场景,其中没有使用数据集特定的地图集(平均骰子系数98.57%,在误差校正后的数据集中的体积相关0.994。 )和数据集特定于数据集的帧内集分割方案(仅使用特定于数据集的地点99.02%,在误差校正之后的数据集中的平均骰子系数99.02%,体积相关0.998)。此外,结合纠错,所提出的方法在挑战间数据集比较中的其他顶部执行方法所需的时间不到十分之一。在独立的多中心数据集上验证还确认了该方法的出色性能。

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