Achar Suraj, Hwang Dosik, Finkenstaedt Tim, Malis Vadim, Bae Won C
Department of Family Medicine, University of California-San Diego, La Jolla, CA 92093, USA.
Department of Electrical and Electronic Engineering, Yonsei University, Seoul 03722, Republic of Korea.
Sensors (Basel). 2023 Sep 21;23(18):8001. doi: 10.3390/s23188001.
Isthmic spondylolysis results in fracture of pars interarticularis of the lumbar spine, found in as many as half of adolescent athletes with persistent low back pain. While computed tomography (CT) is the gold standard for the diagnosis of spondylolysis, the use of ionizing radiation near reproductive organs in young subjects is undesirable. While magnetic resonance imaging (MRI) is preferable, it has lowered sensitivity for detecting the condition. Recently, it has been shown that ultrashort echo time (UTE) MRI can provide markedly improved bone contrast compared to conventional MRI. To take UTE MRI further, we developed supervised deep learning tools to generate (1) CT-like images and (2) saliency maps of fracture probability from UTE MRI, using ex vivo preparation of cadaveric spines. We further compared quantitative metrics of the contrast-to-noise ratio (CNR), mean squared error (MSE), peak signal-to-noise ratio (PSNR), and structural similarity index (SSIM) between UTE MRI (inverted to make the appearance similar to CT) and CT and between CT-like images and CT. Qualitative results demonstrated the feasibility of successfully generating CT-like images from UTE MRI to provide easier interpretability for bone fractures thanks to improved image contrast and CNR. Quantitatively, the mean CNR of bone against defect-filled tissue was 35, 97, and 146 for UTE MRI, CT-like, and CT images, respectively, being significantly higher for CT-like than UTE MRI images. For the image similarity metrics using the CT image as the reference, CT-like images provided a significantly lower mean MSE (0.038 vs. 0.0528), higher mean PSNR (28.6 vs. 16.5), and higher SSIM (0.73 vs. 0.68) compared to UTE MRI images. Additionally, the saliency maps enabled quick detection of the location with probable pars fracture by providing visual cues to the reader. This proof-of-concept study is limited to the data from ex vivo samples, and additional work in human subjects with spondylolysis would be necessary to refine the models for clinical use. Nonetheless, this study shows that the utilization of UTE MRI and deep learning tools could be highly useful for the evaluation of isthmic spondylolysis.
峡部裂导致腰椎椎弓根峡部骨折,在多达一半的持续性腰痛青少年运动员中可见。虽然计算机断层扫描(CT)是诊断峡部裂的金标准,但在年轻受试者的生殖器官附近使用电离辐射是不可取的。虽然磁共振成像(MRI)更可取,但它检测这种情况的灵敏度较低。最近的研究表明,与传统MRI相比,超短回波时间(UTE)MRI能显著改善骨对比度。为了进一步推进UTE MRI技术,我们开发了监督深度学习工具,利用尸体脊柱的体外标本,从UTE MRI生成(1)类似CT的图像和(2)骨折概率的显著性图。我们还比较了UTE MRI(反转后使其外观类似于CT)与CT之间以及类似CT的图像与CT之间的对比度噪声比(CNR)、均方误差(MSE)、峰值信噪比(PSNR)和结构相似性指数(SSIM)等定量指标。定性结果表明,由于图像对比度和CNR的改善,从UTE MRI成功生成类似CT的图像以更易于解释骨折情况是可行的。定量分析显示,对于UTE MRI、类似CT的图像和CT图像,骨与充满缺损组织之间的平均CNR分别为35、97和146,类似CT的图像显著高于UTE MRI图像。以CT图像为参考的图像相似性指标显示,与UTE MRI图像相比,类似CT的图像平均MSE显著更低(0.038对0.0528),平均PSNR更高(28.6对16.5),SSIM更高(0.73对0.68)。此外,显著性图通过为读者提供视觉线索,能够快速检测出可能存在椎弓根骨折的位置。这项概念验证研究仅限于体外样本数据,为完善临床应用模型,有必要对患有峡部裂的人体受试者开展更多研究。尽管如此,这项研究表明,UTE MRI和深度学习工具的应用对于峡部裂的评估可能非常有用。