Department of Oral and Maxillofacial Radiology, Hiroshima University Hospital, 1-2-3 Kasumi, Minami-ku, Hiroshima, 734-8553, Japan.
Department of Oral and Maxillofacial Radiology, Matsumoto Dental University, Nagano, Japan.
Oral Radiol. 2019 May;35(2):143-151. doi: 10.1007/s11282-018-0330-3. Epub 2018 Apr 25.
Patients undergoing osteoporosis treatment benefit greatly from early detection. We previously developed a computer-aided diagnosis (CAD) system to identify osteoporosis using panoramic radiographs. However, the region of interest (ROI) was relatively small, and the method to select suitable ROIs was labor-intensive. This study aimed to expand the ROI and perform semi-automatized extraction of ROIs. The diagnostic performance and operating time were also assessed.
We used panoramic radiographs and skeletal bone mineral density data of 200 postmenopausal women. Using the reference point that we defined by averaging 100 panoramic images as the lower mandibular border under the mental foramen, a 400 × 100-pixel ROI was automatically extracted and divided into four 100 × 100-pixel blocks. Valid blocks were analyzed using program 1, which examined each block separately, and program 2, which divided the blocks into smaller segments and performed scans/analyses across blocks. Diagnostic performance was evaluated using another set of 100 panoramic images.
Most ROIs (97.0%) were correctly extracted. The operation time decreased to 51.4% for program 1 and to 69.3% for program 2. The sensitivity, specificity, and accuracy for identifying osteoporosis were 84.0, 68.0, and 72.0% for program 1 and 92.0, 62.7, and 70.0% for program 2, respectively. Compared with the previous conventional system, program 2 recorded a slightly higher sensitivity, although it occasionally also elicited false positives.
Patients at risk for osteoporosis can be identified more rapidly using this new CAD system, which may contribute to earlier detection and intervention and improved medical care.
接受骨质疏松治疗的患者通过早期发现可从中获益良多。我们之前开发了一种计算机辅助诊断(CAD)系统,通过全景 X 光片来识别骨质疏松症。然而,感兴趣区域(ROI)相对较小,选择合适 ROI 的方法也很繁琐。本研究旨在扩大 ROI 并执行 ROI 的半自动提取。还评估了诊断性能和操作时间。
我们使用了 200 名绝经后女性的全景 X 光片和骨骼骨密度数据。使用我们通过平均 100 张全景图像定义的参考点(即颏孔下的下颌下缘),自动提取 400×100 像素的 ROI,并将其分为四个 100×100 像素的块。使用程序 1 分析有效块,程序 1 分别检查每个块,使用程序 2 分析较小的块并跨块进行扫描/分析。使用另一组 100 张全景图像评估诊断性能。
大多数 ROI(97.0%)都被正确提取。程序 1 的操作时间减少到 51.4%,程序 2 的操作时间减少到 69.3%。程序 1 识别骨质疏松症的灵敏度、特异性和准确性分别为 84.0%、68.0%和 72.0%,程序 2 分别为 92.0%、62.7%和 70.0%。与之前的常规系统相比,程序 2 记录的灵敏度略高,尽管偶尔也会产生假阳性。
使用这个新的 CAD 系统可以更快地识别出患有骨质疏松症的高危患者,这可能有助于更早地发现和干预,并改善医疗服务。