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利用膝关节 CT 扫描进行骨质疏松症和低骨量的机会性筛查的机器学习方法。

Machine Learning for Opportunistic Screening for Osteoporosis and Osteopenia Using Knee CT Scans.

机构信息

Department of Orthopedic Surgery, Mayo Clinic, Jacksonville, FL, USA.

Centre for Augmented Intelligence, Mayo Clinic, Jacksonville, FL, USA.

出版信息

Can Assoc Radiol J. 2023 Nov;74(4):676-687. doi: 10.1177/08465371231164743. Epub 2023 Mar 24.

Abstract

PURPOSE

To predict whether a patient has osteoporosis/osteopenia using the attenuation of trabecular bone obtained from knee computed tomography (CT) scans.

METHODS

Retrospective analysis of 273 patients who underwent contemporaneous knee CT scans and dual-energy X-ray absorptiometry (DXA) within 1 year. Volumetric segmentation of the trabecular bone of the distal femur, proximal tibia, patella, and proximal fibula was performed to obtain the bone CT attenuation. The data was randomly split into training/validation (78%) and test (22%) datasets and the performance in the test dataset were evaluated. The predictive properties of the CT attenuation of each bone to predict osteoporosis/osteopenia were assessed. Multivariable support vector machines (SVM) and random forest classifiers (RF) were used to predict osteoporosis/osteopenia.

RESULTS

Patients with a mean age (range) of 67.9 (50-87) years, 85% female were evaluated. Seventy-seven (28.2%) of patients had normal bone mineral density (BMD), 140 (51.3%) had osteopenia, and 56 (20.5%) had osteoporosis. The proximal tibia had the best predictive ability of all bones and a CT attenuation threshold of 96.0 Hounsfield Units (HU) had a sensitivity of .791, specificity of .706, and area under the curve (AUC) of .748. The AUC for the SVM with cubic kernel classifier (AUC = .912) was better than the RF classifier (AUC = .683, < .001) and better than using the CT attenuation threshold of 96.0 HU at the proximal tibia (AUC = .748, = .025).

CONCLUSIONS

Opportunistic screening for osteoporosis/osteopenia can be performed using knee CT scans. Multivariable machine learning models are more predictive than the CT attenuation of a single bone.

摘要

目的

利用膝关节 CT 扫描获得的小梁骨衰减值预测患者是否患有骨质疏松症/骨量减少症。

方法

对 273 例在 1 年内同时接受膝关节 CT 扫描和双能 X 线吸收法(DXA)检查的患者进行回顾性分析。对股骨远端、胫骨近端、髌骨和腓骨近端的小梁骨进行容积分割,以获得骨 CT 衰减值。将数据随机分为训练/验证(78%)和测试(22%)数据集,并评估测试数据集的性能。评估每个骨的 CT 衰减值预测骨质疏松症/骨量减少症的预测性能。采用多变量支持向量机(SVM)和随机森林分类器(RF)预测骨质疏松症/骨量减少症。

结果

患者平均年龄(范围)为 67.9(50-87)岁,女性占 85%。77 例(28.2%)患者的骨矿物质密度(BMD)正常,140 例(51.3%)为骨量减少,56 例(20.5%)为骨质疏松症。胫骨近端在所有骨骼中具有最佳的预测能力,CT 衰减阈值为 96.0 亨氏单位(HU)时,灵敏度为 0.791,特异性为 0.706,曲线下面积(AUC)为 0.748。立方核分类器的 SVM 的 AUC(AUC=0.912)优于 RF 分类器(AUC=0.683,<.001),也优于胫骨近端 CT 衰减阈值 96.0 HU(AUC=0.748,<.001)。

结论

可以利用膝关节 CT 扫描进行骨质疏松症/骨量减少症的机会性筛查。多变量机器学习模型比单一骨骼的 CT 衰减值具有更好的预测能力。

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