volume 27 issue 2 pages 125-137

Using an artificial intelligence algorithm to assess the bone mineral density of the vertebral bodies based on computed tomography data

Alexei V. Petraikin 1
Liya R. Abuladze 1
Mikhail Belyaev 2
J. A. Belaya 3
Yuriy Vasilev 1
Publication typeJournal Article
Publication date2023-05-13
scimago Q4
SJR0.117
CiteScore0.4
Impact factor
ISSN16070763, 24089516
Radiological and Ultrasound Technology
Radiology, Nuclear Medicine and imaging
Abstract

Goal: To develop a method for automated assessment of the volumetric bone mineral density (BMD) of the vertebral bodies using an artificial intelligence (AI) algorithm and a phantom modeling method.

Materials and Methods: Evaluation of the effectiveness of the AI algorithm designed to assess BMD of the vertebral bodies based on chest CT data. The test data set contains 100 patients aged over 50 y.o.; the ratio between the subjects with/without compression fractures (Сfr) is 48/52. The X-ray density (XRD) of vertebral bodies at T11-L3 was measured by experts and the AI algorithm for 83 patients (205 vertebrae). We used a recently developed QCT PK (Quantitative Computed Tomography Phantom Kalium) method to convert XRD into BMD followed by building calibration lines for seven 64-slice CT scanners. Images were taken from 1853 patients and then processed by the AI algorithm after the calibration. The male to female ratio was 718/1135.

Results: The experts and the AI algorithm reached a strong agreement when comparing the measurements of the XRD. The coefficient of determination was R2=0.945 for individual vertebrae (T11-L3) and 0.943 for patients (p=0.000). Once the subjects from the test sample had been separated into groups with/without Сfr, the XRD data yielded similar ROC AUC values for both the experts – 0.880, and the AI algorithm – 0.875. When calibrating CT scanners using a phantom containing BMD samples made of potassium hydrogen phosphate, the following averaged dependence formula BMD =0.77*HU-1.343 was obtained. Taking into account the American College Radiology criteria for osteoporosis, the cut-off value of BMD<80 mg/ml was 105.6HU; for osteopenia BMD<120 mg/ml was 157.6HU. During the opportunistic assessment of BMD in patients aged above 50 years using the AI algorithm, osteoporosis was detected in 31.72% of female and 18.66% of male subjects.

Conclusions: This paper demonstrates good comparability for the measurements of the vertebral bodies’ XRD performed by the AI morphometric algorithm and the experts. We presented a method and demonstrated great effectiveness of opportunistic assessment of vertebral bodies’ BMD based on computed tomography data using the AI algorithm and the phantom modeling.

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Artyukova Z. R. et al. Using an artificial intelligence algorithm to assess the bone mineral density of the vertebral bodies based on computed tomography data // Medical Visualization. 2023. Vol. 27. No. 2. pp. 125-137.
GOST all authors (up to 50) Copy
Artyukova Z. R., Kudryavtsev N. D., Petraikin A. V., Abuladze L. R., Smorchkova A. K., Akhmad E., Semenov D. S., Belyaev M., Belaya J. A., Vladzymyrskyy A., Vasilev Y. Using an artificial intelligence algorithm to assess the bone mineral density of the vertebral bodies based on computed tomography data // Medical Visualization. 2023. Vol. 27. No. 2. pp. 125-137.
RIS |
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RIS Copy
TY - JOUR
DO - 10.24835/1607-0763-1257
UR - https://medvis.vidar.ru/jour/article/view/1257
TI - Using an artificial intelligence algorithm to assess the bone mineral density of the vertebral bodies based on computed tomography data
T2 - Medical Visualization
AU - Artyukova, Z. R.
AU - Kudryavtsev, N D
AU - Petraikin, Alexei V.
AU - Abuladze, Liya R.
AU - Smorchkova, A. K.
AU - Akhmad, Ekaterina
AU - Semenov, Dmitriy S.
AU - Belyaev, Mikhail
AU - Belaya, J. A.
AU - Vladzymyrskyy, Anton
AU - Vasilev, Yuriy
PY - 2023
DA - 2023/05/13
PB - Vidar, Ltd
SP - 125-137
IS - 2
VL - 27
SN - 1607-0763
SN - 2408-9516
ER -
BibTex |
Cite this
BibTex (up to 50 authors) Copy
@article{2023_Artyukova,
author = {Z. R. Artyukova and N D Kudryavtsev and Alexei V. Petraikin and Liya R. Abuladze and A. K. Smorchkova and Ekaterina Akhmad and Dmitriy S. Semenov and Mikhail Belyaev and J. A. Belaya and Anton Vladzymyrskyy and Yuriy Vasilev},
title = {Using an artificial intelligence algorithm to assess the bone mineral density of the vertebral bodies based on computed tomography data},
journal = {Medical Visualization},
year = {2023},
volume = {27},
publisher = {Vidar, Ltd},
month = {may},
url = {https://medvis.vidar.ru/jour/article/view/1257},
number = {2},
pages = {125--137},
doi = {10.24835/1607-0763-1257}
}
MLA
Cite this
MLA Copy
Artyukova, Z. R., et al. “Using an artificial intelligence algorithm to assess the bone mineral density of the vertebral bodies based on computed tomography data.” Medical Visualization, vol. 27, no. 2, May. 2023, pp. 125-137. https://medvis.vidar.ru/jour/article/view/1257.