Deep Learning-enhanced Opportunistic Osteoporosis Screening in Ultralow-Voltage (80 kV) Chest CT: A Preliminary Study.

Authors

Li Y,Liu S,Zhang Y,Zhang M,Jiang C,Ni M,Jin D,Qian Z,Wang J,Pan X,Yuan H

Affiliations (3)

  • Department of Radiology, Peking University Third Hospital, 49 Huayuan N Rd, Haidian District, Beijing, China (Y.L., S.L., Y.Z., CC.J., M.N., D.J., J.W., X.P., H.Y.).
  • The Institute of Intelligent Diagnostics, Beijing United-Imaging Research Institute of Intelligent Imaging, Building 3-4F, 9 Yongteng N. Road, Beijing, China (M.Z., Z.Q.).
  • Department of Radiology, Peking University Third Hospital, 49 Huayuan N Rd, Haidian District, Beijing, China (Y.L., S.L., Y.Z., CC.J., M.N., D.J., J.W., X.P., H.Y.). Electronic address: [email protected].

Abstract

To explore the feasibility of deep learning (DL)-enhanced, fully automated bone mineral density (BMD) measurement using the ultralow-voltage 80 kV chest CT scans performed for lung cancer screening. This study involved 987 patients who underwent 80 kV chest and 120 kV lumbar CT from January to July 2024. Patients were collected from six CT scanners and divided into the training, validation, and test sets 1 and 2 (561: 177: 112: 137). Four convolutional neural networks (CNNs) were employed for automated segmentation (3D VB-Net and SCN), region of interest extraction (3D VB-Net), and BMD calculation (DenseNet and ResNet) of the target vertebrae (T12-L2). The BMD values of T12-L2 were obtained using 80 and 120 kV quantitative CT (QCT), the latter serving as the standard reference. Linear regression and Bland-Altman analyses were used to compare BMD values between 120 kV QCT and 80 kV CNNs, and between 120 kV QCT and 80 kV QCT. Receiver operating characteristic curve analysis was used to assess the diagnostic performance of the 80 kV CNNs and 80 kV QCT for osteoporosis and low BMD from normal BMD. Linear regression and Bland-ltman analyses revealed a stronger correlation (R<sup>2</sup>=0.991-0.998 and 0.990-0.991, P<0.001) and better agreement (mean error, -1.36 to 1.62 and 1.72 to 2.27 mg/cm<sup>3</sup>; 95% limits of agreement, -9.73 to 7.01 and -5.71 to 10.19mg/cm<sup>3</sup>) for BMD between 120 kV QCT and 80 kV CNNs than between 120 kV QCT and 80 kV QCT. The areas under the curve of the 80 kV CNNs and 80 kV QCT in detecting osteoporosis and low BMD were 0.997-1.000 and 0.997-0.998, and 0.998-1.000 and 0.997, respectively. The DL method could achieve fully automated BMD calculation for opportunistic osteoporosis screening with high accuracy using ultralow-voltage 80 kV chest CT performed for lung cancer screening.

Topics

Deep LearningOsteoporosisTomography, X-Ray ComputedRadiography, ThoracicJournal Article

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