Deep learning based multi-shot breast diffusion MRI: Improving imaging quality and reduced distortion

IF 3.3 3区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Ning Chien , Yi-Hsuan Cho , Ming-Yang Wang , Li-Wei Tsai , Cheng-Ya Yeh , Chia-Wei Li , Patricia Lan , Xinzeng Wang , Kao-Lang Liu , Yeun-Chung Chang
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引用次数: 0

Abstract

Objective

To investigate the imaging performance of deep-learning reconstruction on multiplexed sensitivity encoding (MUSE DL) compared to single-shot diffusion-weighted imaging (SS-DWI) in the breast.

Materials and Methods

In this prospective, institutional review board-approved study, both single-shot (SS-DWI) and multi-shot MUSE DWI were performed on patients. MUSE DWI was processed using deep-learning reconstruction (MUSE DL). Quantitative analysis included calculating apparent diffusion coefficients (ADCs), signal-to-noise ratio (SNR) within fibroglandular tissue (FGT), adjacent pectoralis muscle, and breast tumors. The Hausdorff distance (HD) was used as a distortion index to compare breast contours between T2-weighted anatomical images, SS-DWI, and MUSE images. Subjective visual qualitative analysis was performed using Likert scale. Quantitative analyses were assessed using Friedman’s rank-based analysis with Bonferroni correction.

Results

Sixty-one female participants (mean age 49.07 years ± 11.0 [standard deviation]; age range 23–75 years) with 65 breast lesions were included in this study. All data were acquired using a 3 T MRI scanner. The MUSE DL yielded significant improvement in image quality compared with non-DL MUSE in both 2-shot and 4-shot settings (SNR enhancement FGT 2-shot DL 207.8 % [125.5–309.3],4- shot DL 175.1 % [102.2–223.5]). No significant difference was observed in the ADC between MUSE, MUSE DL, and SS-DWI in both benign (P = 0.154) and malignant tumors (P = 0.167). There was significantly less distortion in the 2- and 4-shot MUSE DL images (HD 3.11 mm, 2.58 mm) than in the SS-DWI images (4.15 mm, P < 0.001).

Conclusions

MUSE DL enhances SNR, minimizes image distortion, and preserves lesion diagnosis accuracy and ADC values.
基于深度学习的多镜头乳房扩散MRI:提高成像质量和减少失真
目的探讨基于多重灵敏度编码(MUSE DL)的深度学习重建与乳腺单次弥散加权成像(SS-DWI)的成像效果。材料和方法在这项经机构审查委员会批准的前瞻性研究中,对患者进行了单次(SS-DWI)和多次MUSE DWI。使用深度学习重建(MUSE DL)对MUSE DWI进行处理。定量分析包括计算表观扩散系数(adc)、纤维腺组织(FGT)、邻近胸肌和乳腺肿瘤内的信噪比(SNR)。采用Hausdorff距离(HD)作为失真指标,比较t2加权解剖图像、SS-DWI和MUSE图像之间的乳房轮廓。采用李克特量表进行主观视觉定性分析。定量分析采用Friedman 's rank-based analysis和Bonferroni correction进行评估。结果共纳入61例女性,平均年龄49.07岁±11.0[标准差],年龄23 ~ 75岁,65例乳腺病变。所有数据均通过3t MRI扫描仪获得。与非DL MUSE相比,MUSE DL在2发和4发设置下的图像质量都有显著改善(信噪比增强FGT 2发DL 207.8%[125.5-309.3],4发DL 175.1%[102.2-223.5])。MUSE、MUSE DL和SS-DWI在良性肿瘤(P = 0.154)和恶性肿瘤(P = 0.167)的ADC差异无统计学意义。与SS-DWI图像(4.15 mm, P < 0.001)相比,2次和4次MUSE DL图像(HD 3.11 mm, 2.58 mm)的畸变明显更少。结论smuse DL提高了图像的信噪比,降低了图像失真,保留了病变诊断的准确性和ADC值。
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来源期刊
CiteScore
6.70
自引率
3.00%
发文量
398
审稿时长
42 days
期刊介绍: European Journal of Radiology is an international journal which aims to communicate to its readers, state-of-the-art information on imaging developments in the form of high quality original research articles and timely reviews on current developments in the field. Its audience includes clinicians at all levels of training including radiology trainees, newly qualified imaging specialists and the experienced radiologist. Its aim is to inform efficient, appropriate and evidence-based imaging practice to the benefit of patients worldwide.
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