Department of Radiology, Perelman School of Medicine, University of Pennsylvania, 1 Founders Building, 3400 Spruce St, Philadelphia, PA 19104, United States of America; Department of Bioengineering, School of Engineering and Applied Sciences, University of Pennsylvania, 210 South 33(rd) St, Philadelphia, PA 19104, United States of America.
Department of Radiology, Perelman School of Medicine, University of Pennsylvania, 1 Founders Building, 3400 Spruce St, Philadelphia, PA 19104, United States of America.
Bone. 2023 Jun;171:116743. doi: 10.1016/j.bone.2023.116743. Epub 2023 Mar 21.
Assessment of cortical bone porosity and geometry by imaging in vivo can provide useful information about bone quality that is independent of bone mineral density (BMD). Ultrashort echo time (UTE) MRI techniques of measuring cortical bone porosity and geometry have been extensively validated in preclinical studies and have recently been shown to detect impaired bone quality in vivo in patients with osteoporosis. However, these techniques rely on laborious image segmentation, which is clinically impractical. Additionally, UTE MRI porosity techniques typically require long scan times or external calibration samples and elaborate physics processing, which limit their translatability. To this end, the UTE MRI-derived Suppression Ratio has been proposed as a simple-to-calculate, reference-free biomarker of porosity which can be acquired in clinically feasible acquisition times.
To explore whether a deep learning method can automate cortical bone segmentation and the corresponding analysis of cortical bone imaging biomarkers, and to investigate the Suppression Ratio as a fast, simple, and reference-free biomarker of cortical bone porosity.
In this retrospective study, a deep learning 2D U-Net was trained to segment the tibial cortex from 48 individual image sets comprised of 46 slices each, corresponding to 2208 training slices. Network performance was validated through an external test dataset comprised of 28 scans from 3 groups: (1) 10 healthy, young participants, (2) 9 postmenopausal, non-osteoporotic women, and (3) 9 postmenopausal, osteoporotic women. The accuracy of automated porosity and geometry quantifications were assessed with the coefficient of determination and the intraclass correlation coefficient (ICC). Furthermore, automated MRI biomarkers were compared between groups and to dual energy X-ray absorptiometry (DXA)- and peripheral quantitative CT (pQCT)-derived BMD. Additionally, the Suppression Ratio was compared to UTE porosity techniques based on calibration samples.
The deep learning model provided accurate labeling (Dice score 0.93, intersection-over-union 0.88) and similar results to manual segmentation in quantifying cortical porosity (R ≥ 0.97, ICC ≥ 0.98) and geometry (R ≥ 0.82, ICC ≥ 0.75) parameters in vivo. Furthermore, the Suppression Ratio was validated compared to established porosity protocols (R ≥ 0.78). Automated parameters detected age- and osteoporosis-related impairments in cortical bone porosity (P ≤ .002) and geometry (P values ranging from <0.001 to 0.08). Finally, automated porosity markers showed strong, inverse Pearson's correlations with BMD measured by pQCT (|R| ≥ 0.88) and DXA (|R| ≥ 0.76) in postmenopausal women, confirming that lower mineral density corresponds to greater porosity.
This study demonstrated feasibility of a simple, automated, and ionizing-radiation-free protocol for quantifying cortical bone porosity and geometry in vivo from UTE MRI and deep learning.
通过体内成像评估皮质骨的孔隙率和几何形状可以提供与骨密度(BMD)无关的有用的骨质量信息。超短回波时间(UTE)MRI 技术在临床前研究中已广泛验证了皮质骨孔隙率和几何形状的测量,并最近表明可在骨质疏松症患者体内检测到受损的骨质量。但是,这些技术依赖于繁琐的图像分割,这在临床上是不切实际的。此外,UTE MRI 孔隙率技术通常需要较长的扫描时间或外部校准样本和复杂的物理处理,这限制了它们的可翻译性。为此,已提出 UTE MRI 衍生的抑制比作为一种简单计算,无需参考的孔隙率生物标志物,可以在临床可行的采集时间内获得。
探索深度学习方法是否可以自动分割皮质骨以及对皮质骨成像生物标志物进行相应的分析,并研究抑制比作为一种快速,简单且无需参考的皮质骨孔隙率的生物标志物。
在这项回顾性研究中,训练了一种深度学习的 2D U-Net 以从由 46 个切片组成的 48 个图像集中分割胫骨皮质,对应于 2208 个训练切片。通过由 3 组组成的外部测试数据集验证了网络性能:(1)10 名健康,年轻的参与者;(2)9 名绝经后,非骨质疏松的女性;(3)9 名绝经后,骨质疏松的女性。通过决定系数和组内相关系数(ICC)评估了自动孔隙率和几何形态定量的准确性。此外,还将自动 MRI 生物标志物与双能 X 射线吸收法(DXA)和外周定量 CT(pQCT)衍生的 BMD 进行了比较。此外,还将抑制比与基于校准样本的 UTE 孔隙率技术进行了比较。
深度学习模型提供了准确的标记(Dice 得分 0.93,交并比 0.88),并且在体内定量皮质孔隙率(R≥0.97,ICC≥0.98)和几何形状(R≥0.82,ICC≥0.75)方面与手动分割具有相似的结果。此外,与既定的孔隙率方案相比,抑制比得到了验证(R≥0.78)。自动参数检测到皮质骨孔隙率(P≤0.002)和几何形状(P 值范围从<0.001 到 0.08)与年龄和骨质疏松症相关的损害。最后,在绝经后妇女中,自动孔隙率标记与通过 pQCT(| R |≥0.88)和 DXA(| R |≥0.76)测量的 BMD 之间存在很强的皮尔逊相关,这证实了较低的矿物质密度对应于更大的孔隙率。
这项研究证明了从 UTE MRI 和深度学习中对皮质骨孔隙率和几何形状进行简单,自动和非电离辐射定量的可行性。