Transfer learning from T1-weighted to T2-weighted Magnetic resonance sequences for brain image segmentation

IF 8.4 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Imene Mecheter, Maysam Abbod, Habib Zaidi, Abbes Amira
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Abstract

Magnetic resonance (MR) imaging is a widely employed medical imaging technique that produces detailed anatomical images of the human body. The segmentation of MR images plays a crucial role in medical image analysis, as it enables accurate diagnosis, treatment planning, and monitoring of various diseases and conditions. Due to the lack of sufficient medical images, it is challenging to achieve an accurate segmentation, especially with the application of deep learning networks. The aim of this work is to study transfer learning from T1-weighted (T1-w) to T2-weighted (T2-w) MR sequences to enhance bone segmentation with minimal required computation resources. With the use of an excitation-based convolutional neural networks, four transfer learning mechanisms are proposed: transfer learning without fine tuning, open fine tuning, conservative fine tuning, and hybrid transfer learning. Moreover, a multi-parametric segmentation model is proposed using T2-w MR as an intensity-based augmentation technique. The novelty of this work emerges in the hybrid transfer learning approach that overcomes the overfitting issue and preserves the features of both modalities with minimal computation time and resources. The segmentation results are evaluated using 14 clinical 3D brain MR and CT images. The results reveal that hybrid transfer learning is superior for bone segmentation in terms of performance and computation time with DSCs of 0.5393 ± 0.0007. Although T2-w-based augmentation has no significant impact on the performance of T1-w MR segmentation, it helps in improving T2-w MR segmentation and developing a multi-sequences segmentation model.

Abstract Image

从 T1 加权磁共振序列到 T2 加权磁共振序列的转移学习用于脑图像分割
磁共振(MR)成像是一种广泛应用的医学成像技术,可生成人体的详细解剖图像。磁共振图像的分割在医学图像分析中起着至关重要的作用,因为它能对各种疾病和病症进行准确诊断、治疗规划和监测。由于缺乏足够的医学图像,要实现准确的分割具有挑战性,尤其是在应用深度学习网络的情况下。这项工作的目的是研究从 T1 加权(T1-w)到 T2 加权(T2-w)磁共振序列的转移学习,以最小的所需计算资源增强骨骼分割。利用基于激励的卷积神经网络,提出了四种转移学习机制:无微调转移学习、开放微调、保守微调和混合转移学习。此外,利用 T2-w MR 作为基于强度的增强技术,提出了一种多参数分割模型。这项工作的新颖之处在于混合转移学习方法,它克服了过拟合问题,并以最少的计算时间和资源保留了两种模式的特征。利用 14 幅临床三维脑部 MR 和 CT 图像对分割结果进行了评估。结果显示,混合迁移学习在性能和计算时间方面都优于骨骼分割,DSCs 为 0.5393 ± 0.0007。虽然基于 T2-w 的增强对 T1-w 磁共振分割的性能没有显著影响,但它有助于改善 T2-w 磁共振分割和开发多序列分割模型。
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来源期刊
CAAI Transactions on Intelligence Technology
CAAI Transactions on Intelligence Technology COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
11.00
自引率
3.90%
发文量
134
审稿时长
35 weeks
期刊介绍: CAAI Transactions on Intelligence Technology is a leading venue for original research on the theoretical and experimental aspects of artificial intelligence technology. We are a fully open access journal co-published by the Institution of Engineering and Technology (IET) and the Chinese Association for Artificial Intelligence (CAAI) providing research which is openly accessible to read and share worldwide.
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