Department of Radiology, Boston Medical Center, Boston University School of Medicine, Boston Massachusetts, United States; Department of Radiology, Nihon University School of Dentistry at Matsudo, Chiba, Japan.
Department of Radiology, Boston Medical Center, Boston University School of Medicine, Boston Massachusetts, United States; Department of Radiology, Jichi Medical University School of Medicine, Shimotsuke, Tochigi, Japan.
Eur J Radiol. 2019 Jul;116:212-218. doi: 10.1016/j.ejrad.2019.05.009. Epub 2019 May 8.
To investigate the use of texture analysis for the detection of osteoporosis on noncontrast head CTs, and to explore optimal sampling regions within the craniofacial bones.
In this IRB-approved, retrospective study, the clivus, bilateral sphenoid triangles and mandibular condyles were manually segmented on each noncontrast head CT, and 41 textures features were extracted from 29 patients with normal bone density (NBD); and 29 patients with osteoporosis. Basic descriptive statistics including a false discovery rate correction were performed to evaluate for differences in texture features between the cohorts.
Sixteen texture features demonstrated significant differences (P < 0.01) between NBD and osteoporosis in the clivus including 4 histogram features, 2 gray-level co-occurrence matrix features, 8 gray-level run-length features and 2 Law's features. Nineteen texture features including 9 histogram features, 1 GLCM features, 2 GLRL features, 5 Law's features and 2 GLGM features demonstrated statistically significant differences in both sides of the sphenoid triangles. A total 24 texture features demonstrated statistically significant differences between normal BMD and osteoporosis in the left sphenoid and a total of 31 texture features in the left condyle. Furthermore, a total of 22 texture features including 6 histogram features, 3 GLCM features, 9 GLRL features, 2 Law's features and 2 GLGM features demonstrated statistically significant differences in both sides of the mandibular condyles.
The results of this investigation suggest that specific texture analysis features derived from regions of interest placed within multiple sites within the skull base and maxillofacial bones can distinguish between patients with normal bone mineral density compared to those with osteoporosis. This study demonstrates the potential utility of a texture analysis for identification of osteoporosis on head CT, which may help identify patients who have not undergone screening with traditional DXA.
研究非对比头部 CT 上的纹理分析在骨质疏松检测中的应用,并探讨颅面骨内最佳采样区域。
本研究为经过机构审查委员会批准的回顾性研究,对每位非对比头部 CT 的斜坡、双侧蝶骨三角和下颌骨髁进行手动分割,并从 29 例骨密度正常(NBD)患者和 29 例骨质疏松症患者中提取 41 种纹理特征。进行基本描述性统计分析,包括假发现率校正,以评估两组间纹理特征的差异。
在斜坡中,16 种纹理特征在 NBD 和骨质疏松组间有显著差异(P < 0.01),包括 4 种直方图特征、2 种灰度共生矩阵特征、8 种灰度游程长度特征和 2 种 Laws 特征。在蝶骨三角的两侧,有 19 种纹理特征,包括 9 种直方图特征、1 种 GLCM 特征、2 种 GLRL 特征、5 种 Laws 特征和 2 种 GLGM 特征,有统计学显著差异。在左侧蝶骨中,共有 24 种纹理特征在正常 BMD 和骨质疏松症之间有统计学显著差异,在左侧髁突中共有 31 种纹理特征。此外,在左侧下颌骨髁突中,共有 22 种纹理特征,包括 6 种直方图特征、3 种 GLCM 特征、9 种 GLRL 特征、2 种 Laws 特征和 2 种 GLGM 特征,在两侧之间有统计学显著差异。
本研究结果表明,从颅底和颌面骨多个部位的感兴趣区域中提取的特定纹理分析特征,可区分正常骨密度患者和骨质疏松症患者。本研究表明,纹理分析在头部 CT 上识别骨质疏松症具有潜在的应用价值,可能有助于识别未接受传统 DXA 筛查的患者。