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基于大型多机构数据集训练的自动新生儿 nnU-Net 脑 MRI 提取器。

Automated neonatal nnU-Net brain MRI extractor trained on a large multi-institutional dataset.

机构信息

Department of Radiology, University of California San Francisco, San Francisco, CA, USA.

Division of Neuroradiology, Department of Radiology, Duke University Medical Center, Durham, NC, 27710, USA.

出版信息

Sci Rep. 2024 Feb 26;14(1):4583. doi: 10.1038/s41598-024-54436-8.

Abstract

Brain extraction, or skull-stripping, is an essential data preprocessing step for machine learning approaches to brain MRI analysis. Currently, there are limited extraction algorithms for the neonatal brain. We aim to adapt an established deep learning algorithm for the automatic segmentation of neonatal brains from MRI, trained on a large multi-institutional dataset for improved generalizability across image acquisition parameters. Our model, ANUBEX (automated neonatal nnU-Net brain MRI extractor), was designed using nnU-Net and was trained on a subset of participants (N = 433) enrolled in the High-dose Erythropoietin for Asphyxia and Encephalopathy (HEAL) study. We compared the performance of our model to five publicly available models (BET, BSE, CABINET, iBEATv2, ROBEX) across conventional and machine learning methods, tested on two public datasets (NIH and dHCP). We found that our model had a significantly higher Dice score on the aggregate of both data sets and comparable or significantly higher Dice scores on the NIH (low-resolution) and dHCP (high-resolution) datasets independently. ANUBEX performs similarly when trained on sequence-agnostic or motion-degraded MRI, but slightly worse on preterm brains. In conclusion, we created an automatic deep learning-based neonatal brain extraction algorithm that demonstrates accurate performance with both high- and low-resolution MRIs with fast computation time.

摘要

脑提取,或颅骨剥离,是机器学习方法分析脑 MRI 的必要数据预处理步骤。目前,针对新生儿大脑的提取算法有限。我们旨在针对从 MRI 中自动分割新生儿大脑的既定深度学习算法进行适配,该算法在大型多机构数据集上进行了训练,以提高在不同图像采集参数下的通用性。我们的模型 ANUBEX(自动新生儿 nnU-Net 脑 MRI 提取器)使用 nnU-Net 设计,并在参加 High-dose Erythropoietin for Asphyxia and Encephalopathy(HEAL)研究的一部分参与者(N = 433)中进行了训练。我们比较了我们的模型与五个公开可用模型(BET、BSE、CABINET、iBEATv2、ROBEX)在常规和机器学习方法上的性能,在两个公共数据集(NIH 和 dHCP)上进行了测试。我们发现,我们的模型在两个数据集的总和上的 Dice 评分明显更高,在 NIH(低分辨率)和 dHCP(高分辨率)数据集上的 Dice 评分也具有可比性或明显更高。在对无序列或运动退化 MRI 进行训练时,ANUBEX 的性能相似,但在早产儿大脑上的性能略差。总之,我们创建了一种基于深度学习的自动新生儿脑提取算法,它在具有快速计算时间的高分辨率和低分辨率 MRI 上都具有准确的性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/34f8/10894871/9fa9945731f4/41598_2024_54436_Fig1_HTML.jpg

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