使用堆叠深度学习从婴儿和2岁以下儿童的脑磁共振成像中估计年龄的基于规则的工作流程自动化。

IF 2.5 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Akihiko Wada, Yuya Saito, Shohei Fujita, Ryusuke Irie, Toshiaki Akashi, Katsuhiro Sano, Shinpei Kato, Yutaka Ikenouchi, Akifumi Hagiwara, Kanako Sato, Nobuo Tomizawa, Yayoi Hayakawa, Junko Kikuta, Koji Kamagata, Michimasa Suzuki, Masaaki Hori, Atsushi Nakanishi, Shigeki Aoki
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引用次数: 3

摘要

目的:白质髓鞘相关MR信号变化有助于评估婴儿和儿童的正常发育。基于规则的t1加权图像(t1wi)和t2加权图像(t2wi)信号变化的髓鞘形成评估工作流程已广泛应用于放射学。本研究旨在使用堆叠深度学习模型模拟基于规则的工作流程,并评估年龄估计的准确性。方法:年龄估计系统包括两个堆叠神经网络:一个目标网络-从全脑提取5张髓鞘相关图像,一个分别从提取的T1和t2wi中提取年龄估计网络。使用两种MRI系统构建了119名2岁以下儿童的数据集。采用四重交叉验证法。测量校正后足月出生年龄的相关系数(CC)、平均绝对误差(MAE)和均方根误差(RMSE),以及平均差值和95%一致性的上下限。使用从不同MR图像获取的数据集评估泛化性能。对斯特奇-韦伯综合征(SWS)病例进行年龄估计。结果:估计年龄与校正实足年龄有很强的相关性(MAE: 0.98个月;RMSE: 1.27个月;CC: 0.99)。平均差和标准差(SD)分别为-0.15和1.26,95%一致性的上限和下限分别为2.33和-2.63个月。在泛化性能方面,在外部数据集上的性能值MAE为1.85个月,RMSE为2.59个月,CC为0.93。在13例SWS病例中,有7例超过95%的一致性界限,并且基于髓鞘形成加速的年龄估计在12个月以下表现出比例偏差(P = 0.03)。结论:堆叠深度学习模型自动化了放射学中基于规则的工作流程,并在婴儿和2岁以下儿童中实现了高度准确的年龄估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Automation of a Rule-based Workflow to Estimate Age from Brain MR Imaging of Infants and Children Up to 2 Years Old Using Stacked Deep Learning.

Automation of a Rule-based Workflow to Estimate Age from Brain MR Imaging of Infants and Children Up to 2 Years Old Using Stacked Deep Learning.

Automation of a Rule-based Workflow to Estimate Age from Brain MR Imaging of Infants and Children Up to 2 Years Old Using Stacked Deep Learning.

Automation of a Rule-based Workflow to Estimate Age from Brain MR Imaging of Infants and Children Up to 2 Years Old Using Stacked Deep Learning.

Purpose: Myelination-related MR signal changes in white matter are helpful for assessing normal development in infants and children. A rule-based myelination evaluation workflow regarding signal changes on T1-weighted images (T1WIs) and T2-weighted images (T2WIs) has been widely used in radiology. This study aimed to simulate a rule-based workflow using a stacked deep learning model and evaluate age estimation accuracy.

Methods: The age estimation system involved two stacked neural networks: a target network-to extract five myelination-related images from the whole brain, and an age estimation network from extracted T1- and T2WIs separately. A dataset was constructed from 119 children aged below 2 years with two MRI systems. A four-fold cross-validation method was adopted. The correlation coefficient (CC), mean absolute error (MAE), and root mean squared error (RMSE) of the corrected chronological age of full-term birth, as well as the mean difference and the upper and lower limits of 95% agreement, were measured. Generalization performance was assessed using datasets acquired from different MR images. Age estimation was performed in Sturge-Weber syndrome (SWS) cases.

Results: There was a strong correlation between estimated age and corrected chronological age (MAE: 0.98 months; RMSE: 1.27 months; and CC: 0.99). The mean difference and standard deviation (SD) were -0.15 and 1.26, respectively, and the upper and lower limits of 95% agreement were 2.33 and -2.63 months. Regarding generalization performance, the performance values on the external dataset were MAE of 1.85 months, RMSE of 2.59 months, and CC of 0.93. Among 13 SWS cases, 7 exceeded the limits of 95% agreement, and a proportional bias of age estimation based on myelination acceleration was exhibited below 12 months of age (P = 0.03).

Conclusion: Stacked deep learning models automated the rule-based workflow in radiology and achieved highly accurate age estimation in infants and children up to 2 years of age.

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来源期刊
Magnetic Resonance in Medical Sciences
Magnetic Resonance in Medical Sciences RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
5.80
自引率
20.00%
发文量
71
审稿时长
>12 weeks
期刊介绍: Magnetic Resonance in Medical Sciences (MRMS or Magn Reson Med Sci) is an international journal pursuing the publication of original articles contributing to the progress of magnetic resonance in the field of biomedical sciences including technical developments and clinical applications. MRMS is an official journal of the Japanese Society for Magnetic Resonance in Medicine (JSMRM).
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