Optimizing hip MRI: enhancing image quality and elevating inter-observer consistency using deep learning-powered reconstruction.

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING BMC Medical Imaging Pub Date : 2025-01-13 DOI:10.1186/s12880-025-01554-y
Yimeng Kang, Wenjing Li, Qingqing Lv, Qiuying Tao, Jieping Sun, Jinghan Dang, Xiaoyu Niu, Zijun Liu, Shujian Li, Zanxia Zhang, Kaiyu Wang, Baohong Wen, Jingliang Cheng, Yong Zhang, Weijian Wang
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Abstract

Background: Conventional hip joint MRI scans necessitate lengthy scan durations, posing challenges for patient comfort and clinical efficiency. Previously, accelerated imaging techniques were constrained by a trade-off between noise and resolution. Leveraging deep learning-based reconstruction (DLR) holds the potential to mitigate scan time without compromising image quality.

Methods: We enrolled a cohort of sixty patients who underwent DL-MRI, conventional MRI, and No-DL MRI examinations to evaluate image quality. Key metrics considered in the assessment included scan duration, overall image quality, quantitative assessments of Relative Signal-to-Noise Ratio (rSNR), Relative Contrast-to-Noise Ratio (rCNR), and diagnostic efficacy. Two experienced radiologists independently assessed image quality using a 5-point scale (5 indicating the highest quality). To gauge interobserver agreement for the assessed pathologies across image sets, we employed weighted kappa statistics. Additionally, the Wilcoxon signed rank test was employed to compare image quality and quantitative rSNR and rCNR measurements.

Results: Scan time was significantly reduced with DL-MRI and represented an approximate 66.5% reduction. DL-MRI consistently exhibited superior image quality in both coronal T2WI and axial T2WI when compared to both conventional MRI (p < 0.01) and No-DL-MRI (p < 0.01). Interobserver agreement was robust, with kappa values exceeding 0.735. For rSNR data, coronal fat-saturated(FS) T2WI and axial FS T2WI in DL-MRI consistently outperformed No-DL-MRI, with statistical significance (p < 0.01) observed in all cases. Similarly, rCNR data revealed significant improvements (p < 0.01) in coronal FS T2WI of DL-MRI when compared to No-DL-MRI. Importantly, our findings indicated that DL-MRI demonstrated diagnostic performance comparable to conventional MRI.

Conclusion: Integrating deep learning-based reconstruction methods into standard clinical workflows has the potential to the promise of accelerating image acquisition, enhancing image clarity, and increasing patient throughput, thereby optimizing diagnostic efficiency.

Trial registration: Retrospectively registered.

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优化髋关节MRI:利用深度学习重建增强图像质量和提高观察者之间的一致性。
背景:传统的髋关节MRI扫描需要较长的扫描时间,对患者的舒适度和临床效率提出了挑战。以前,加速成像技术受到噪声和分辨率之间权衡的限制。利用基于深度学习的重建(DLR)有可能在不影响图像质量的情况下缩短扫描时间。方法:我们招募了60名患者,他们接受了DL-MRI、常规MRI和No-DL MRI检查,以评估图像质量。评估中考虑的关键指标包括扫描时间、整体图像质量、相对信噪比(rSNR)、相对对比噪声比(rCNR)的定量评估和诊断效果。两名经验丰富的放射科医生使用5分制独立评估图像质量(5表示最高质量)。为了衡量跨图像集评估病理的观察者间一致性,我们采用加权kappa统计。此外,采用Wilcoxon符号秩检验比较图像质量和定量rSNR和rCNR测量值。结果:DL-MRI扫描时间明显缩短,约减少66.5%。与传统MRI相比,DL-MRI在冠状位T2WI和轴位T2WI上均表现出更高的图像质量(p结论:将基于深度学习的重建方法整合到标准临床工作流程中,有可能加速图像采集,提高图像清晰度,提高患者吞吐量,从而优化诊断效率。试验注册:回顾性注册。
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来源期刊
BMC Medical Imaging
BMC Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
3.70%
发文量
198
审稿时长
27 weeks
期刊介绍: BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.
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