Literature DB >> 32060712

Prediction of bone mineral density from computed tomography: application of deep learning with a convolutional neural network.

Koichiro Yasaka1, Hiroyuki Akai2, Akira Kunimatsu2, Shigeru Kiryu3, Osamu Abe4.   

Abstract

OBJECTIVES: To investigate whether a deep learning model can predict the bone mineral density (BMD) of lumbar vertebrae from unenhanced abdominal computed tomography (CT) images.
METHODS: In this Institutional Review Board-approved retrospective study, patients who received both unenhanced CT examinations and dual-energy X-ray absorptiometry (DXA) of the lumbar vertebrae, in two institutions (1 and 2), were included. Supervised deep learning was employed to obtain a convolutional neural network (CNN) model using axial CT images, including the lumbar vertebrae as input data and BMD values obtained with DXA as reference data. For this purpose, 1665 CT images from 183 patients in institution 1, which were augmented to 99,900 (= 1665 × 60) images (noise adding, parallel shift and rotation were performed), were used. Internal (by using data of 45 other patients in institution 1) and external validations (by using data of 50 patients in institution 2) were performed to evaluate the performance of the trained CNN model. Correlations and diagnostic performances were evaluated with Pearson's correlation coefficient (r) and area under the receiver operating characteristic curve (AUC), respectively.
RESULTS: The estimated BMD values, according to the CNN model (BMDCNN), were significantly correlated with the BMD values obtained with DXA (r = 0.852 (p < 0.001) and 0.840 (p < 0.001) for the internal and external validation datasets, respectively). Using BMDCNN, osteoporosis was diagnosed with AUCs of 0.965 and 0.970 for the internal and external validation datasets, respectively.
CONCLUSIONS: Using deep learning, the BMD of lumbar vertebrae could be predicted from unenhanced abdominal CT images. KEY POINTS: • By applying a deep learning technique, the bone mineral density (BMD) of lumbar vertebrae can be estimated from unenhanced abdominal CT images. • A strong correlation was observed between the estimated BMD and the BMD obtained with DXA. • By using the estimated BMD, osteoporosis could be diagnosed with high performance.

Entities:  

Keywords:  Artificial intelligence; Bone mineral density; Deep learning; Multidetector computed tomography; Osteoporosis

Year:  2020        PMID: 32060712     DOI: 10.1007/s00330-020-06677-0

Source DB:  PubMed          Journal:  Eur Radiol        ISSN: 0938-7994            Impact factor:   5.315


  10 in total

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2.  Opportunistic osteoporosis screening using chest CT with artificial intelligence.

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Journal:  Osteoporos Int       Date:  2022-08-06       Impact factor: 5.071

3.  Evolution in fracture risk assessment: artificial versus augmented intelligence.

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8.  A deep-learning method using computed tomography scout images for estimating patient body weight.

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9.  Shape Prediction of Nasal Bones by Digital 2D-Photogrammetry of the Nose Based on Convolution and Back-Propagation Neural Network.

Authors:  Ho Nguyen Anh Tuan; Nguyen Dao Xuan Hai; Nguyen Truong Thinh
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10.  Correlation of CT Values and Bone Mineral Density in Elderly Chinese Patients with Proximal Humeral Fractures.

Authors:  Xi Zhang; Chun-Xia Zhu; Jin-Quan He; Yong-Cheng Hu; Jie Sun
Journal:  Orthop Surg       Date:  2021-10-24       Impact factor: 2.071

  10 in total

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