基于 nnU-Net 的改进型注意力模块,用于分割 MRI 图像中的原发性中枢神经系统淋巴瘤(PCNSL)1。

IF 1.7 3区 医学 Q3 INSTRUMENTS & INSTRUMENTATION
Chen Zhao, Jianping Song, Yifan Yuan, Ying-Hua Chu, Yi-Cheng Hsu, Qiu Huang
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引用次数: 0

摘要

背景:原发性中枢神经系统淋巴瘤(PCNSL)的精确体积分割对于放疗前评估和监测肿瘤以及制定治疗计划至关重要。繁琐的人工分割会导致个体间和个体内的差异,而现有的自动分割方法则会因肿瘤的复杂性和多面性而导致 PCNSL 分割不足:针对脑部 MRI PCNSL 分割中存在的肿瘤体积小、弥散分布、同一轴上层间连续性差、容易过度分割等难题,我们提出了一种基于 nnUNet 的改进型注意力模块,用于自动分割:方法:我们在上海华山医院收集了 114 例患者的 T1 MRI 图像。方法:我们在上海华山医院收集了 114 张患者的 T1 MRI 图像,然后将这 114 张图像随机分成 5 个不同的训练集和测试集,进行 5 倍交叉验证。为了高效、准确地划分 PCNSL,我们提出了一种基于 nnU-Net 的改进型注意力模块,通过三维卷积、批量归一化和残差注意力(res-attention)来学习肿瘤区域信息。此外,我们还整合了不同扩张率的多尺度扩张卷积核,以扩大感受野。我们进一步使用注意力特征融合三维卷积(AFF3D)来融合多尺度扩张卷积核生成的特征图,以减少未充分分割:与现有方法相比,我们的注意力模块提高了区分弥漫型和边缘增强型肿瘤的能力;拓宽的感受野能更有效地捕捉各种尺度和形状的肿瘤特征,达到了0.9349的骰子相似系数(DSC):定量结果证明了所提出的方法在分割 PCNSL 方面的有效性。据我们所知,这是首次将注意力模块引入深度学习,用于基于脑磁共振成像(MRI)分割 PCNSL,从而促进放疗前 PCNSL 的定位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved attention module based on nnU-Net for segmenting primary central nervous system lymphoma (PCNSL) in MRI images1.

Background: Accurate volumetric segmentation of primary central nervous system lymphoma (PCNSL) is essential for assessing and monitoring the tumor before radiotherapy and the treatment planning. The tedious manual segmentation leads to interindividual and intraindividual differences, while existing automatic segmentation methods cause under-segmentation of PCNSL due to the complex and multifaceted nature of the tumor.

Objective: To address the challenges of small size, diffused distribution, poor inter-layer continuity on the same axis, and tendency for over-segmentation in brain MRI PCNSL segmentation, we propose an improved attention module based on nnUNet for automated segmentation.

Methods: We collected 114 T1 MRI images of patients in the Huashan Hospital, Shanghai. Then randomly split the total of 114 cases into 5 distinct training and test sets for a 5-fold cross-validation. To efficiently and accurately delineate the PCNSL, we proposed an improved attention module based on nnU-Net with 3D convolutions, batch normalization, and residual attention (res-attention) to learn the tumor region information. Additionally, multi-scale dilated convolution kernels with different dilation rates were integrated to broaden the receptive field. We further used attentional feature fusion with 3D convolutions (AFF3D) to fuse the feature maps generated by multi-scale dilated convolution kernels to reduce under-segmentation.

Results: Compared to existing methods, our attention module improves the ability to distinguish diffuse and edge enhanced types of tumors; and the broadened receptive field captures tumor features of various scales and shapes more effectively, achieving a 0.9349 Dice Similarity Coefficient (DSC).

Conclusions: Quantitative results demonstrate the effectiveness of the proposed method in segmenting the PCNSL. To our knowledge, this is the first study to introduce attention modules into deep learning for segmenting PCNSL based on brain magnetic resonance imaging (MRI), promoting the localization of PCNSL before radiotherapy.

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来源期刊
CiteScore
4.90
自引率
23.30%
发文量
150
审稿时长
3 months
期刊介绍: Research areas within the scope of the journal include: Interaction of x-rays with matter: x-ray phenomena, biological effects of radiation, radiation safety and optical constants X-ray sources: x-rays from synchrotrons, x-ray lasers, plasmas, and other sources, conventional or unconventional Optical elements: grazing incidence optics, multilayer mirrors, zone plates, gratings, other diffraction optics Optical instruments: interferometers, spectrometers, microscopes, telescopes, microprobes
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