基于 T1Gd 和 FLAIR 图像的多类高级别胶质瘤自动分割技术

Q1 Medicine
Areen K. Al-Bashir , Abeer N. Al Obeid , Mohammad A. Al-Abed , Imad S. Athamneh , Maysoon A-R. Banihani , Rabah M. Al Abdi
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引用次数: 0

摘要

胶质瘤是最常见的原发性恶性脑肿瘤。使用磁共振成像(MRI)分割胶质瘤区域对于制定治疗计划至关重要。然而,胶质瘤区域的分割通常基于四种磁共振成像模式,即 T1、T2、T1Gd 和 FLAIR。获取这四种模式会增加患者在扫描仪内的时间,并延长分割过程的处理时间。然而,在某些情况下,由于核磁共振成像扫描仪的可用时间有限或患者不合作,并不能获取所有这些模式。因此,我们采用了基于 U-Net 的全卷积神经网络进行自动分割,以回答一个紧迫的问题:较少的 MRI 模式是否会限制分割的准确性?研究人员在 100 例高级别胶质瘤(HGG)病例上对所提出的方法进行了两次训练、验证和测试,一次使用所有 MRI 序列,第二次仅使用 FLAIR 和 T1Gd。测试集的结果显示,在使用 FLAIR 和 T1Gd 的所有 MRI 序列上,基线 U-Net 模型的平均 Dice 得分分别为 0.9166 和 0.9190。为了检验 U-Net 在 FLAIR 和 T1Gd 模式上的性能改进情况,我们使用了预先训练好的 VGG16、VGG19 和 ResNet50 作为改进的 U-Net 编码器,仅基于 T1Gd 和 FLAIR 模式进行自动胶质瘤分割,并与基线 U-Net 进行了比较。对提出的模型进行了训练、验证,并在 259 个高级别胶质瘤(HGG)病例上进行了测试。结果表明,所提出的基线 U-Net 模型和预先训练的 VGG16、VGG19 或 ResNet50 作为改进的 U-Net 编码器的集合的平均 Dice 分数分别为 0.9395、0.9360、0.9359 和 0.9356。研究结果还与其他基于四种核磁共振成像模式的研究进行了比较。研究结果表明,FLAIR 和 T1Gd 对分割过程的贡献最大。所提出的基线 U-Net 在分割 HGG 亚肿瘤结构方面具有足够的鲁棒性,与其他最先进的作品相比具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated multi-class high-grade glioma segmentation based on T1Gd and FLAIR images

Glioma is the most prevalent primary malignant brain tumor. Segmentation of glioma regions using magnetic resonance imaging (MRI) is essential for treatment planning. However, segmentation of glioma regions is usually based on four MRI modalities, which are T1, T2, T1Gd, and FLAIR. Acquiring these four modalities will increase patients' time inside the scanner and drive up the segmentation process's processing time. Nevertheless, not all these modalities are acquired in some cases due to the limited available time on the MRI scanner or uncooperative patients. Therefore, U-Net-based fully convolutional neural networks were employed for automated segmentation to answer the urgent question: does a smaller number of MRI modalities limit the segmentation accuracy? The proposed approach was trained, validated, and tested on 100 high-grade glioma (HGG) cases twice, once with all MRI sequences and second with only FLAIR and T1Gd. The results on the test set showed that the baseline U-Net model gave a mean Dice score of 0.9166 and 0.9190 on all MRI sequences using FLAIR and T1Gd, respectively. To check for possible performance improvement of the U-Net on FLAIR and T1Gd modalities, an ensemble of pre-trained VGG16, VGG19, and ResNet50 as modified U-Net encoders were employed for automated glioma segmentation based on T1Gd and FLAIR modalities only and compared with the baseline U-Net. The proposed models were trained, validated, and tested on 259 high-grade gliomas (HGG) cases. The results showed that the proposed baseline U-Net model and the ensemble of pre-trained VGG16, VGG19, or ResNet50 as modified U-Net encoders have a mean Dice score of 0.9395, 0.9360, 0.9359, and 0.9356, respectively. The results were also compared to other studies based on four MRI modalities. The work indicates that FLAIR and T1Gd are the most prominent contributors to the segmentation process. The proposed baseline U-Net is robust enough for segmenting HGG sub-tumoral structures and competitive with other state-of-the-art works.

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来源期刊
Informatics in Medicine Unlocked
Informatics in Medicine Unlocked Medicine-Health Informatics
CiteScore
9.50
自引率
0.00%
发文量
282
审稿时长
39 days
期刊介绍: Informatics in Medicine Unlocked (IMU) is an international gold open access journal covering a broad spectrum of topics within medical informatics, including (but not limited to) papers focusing on imaging, pathology, teledermatology, public health, ophthalmological, nursing and translational medicine informatics. The full papers that are published in the journal are accessible to all who visit the website.
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