Cargando…

Feasibility of Bone Mineral Density and Bone Microarchitecture Assessment Using Deep Learning With a Convolutional Neural Network

We evaluated the feasibility of using deep learning with a convolutional neural network for predicting bone mineral density (BMD) and bone microarchitecture from conventional computed tomography (CT) images acquired by multivendor scanners. METHODS: We enrolled 402 patients who underwent noncontrast...

Descripción completa

Detalles Bibliográficos
Autores principales: Yoshida, Kazuki, Tanabe, Yuki, Nishiyama, Hikaru, Matsuda, Takuya, Toritani, Hidetaka, Kitamura, Takuya, Sakai, Shinichiro, Watamori, Kunihiko, Takao, Masaki, Kimura, Eizen, Kido, Teruhito
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Lippincott Williams & Wilkins 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10184800/
https://www.ncbi.nlm.nih.gov/pubmed/37185012
http://dx.doi.org/10.1097/RCT.0000000000001437
_version_ 1785042212553228288
author Yoshida, Kazuki
Tanabe, Yuki
Nishiyama, Hikaru
Matsuda, Takuya
Toritani, Hidetaka
Kitamura, Takuya
Sakai, Shinichiro
Watamori, Kunihiko
Takao, Masaki
Kimura, Eizen
Kido, Teruhito
author_facet Yoshida, Kazuki
Tanabe, Yuki
Nishiyama, Hikaru
Matsuda, Takuya
Toritani, Hidetaka
Kitamura, Takuya
Sakai, Shinichiro
Watamori, Kunihiko
Takao, Masaki
Kimura, Eizen
Kido, Teruhito
author_sort Yoshida, Kazuki
collection PubMed
description We evaluated the feasibility of using deep learning with a convolutional neural network for predicting bone mineral density (BMD) and bone microarchitecture from conventional computed tomography (CT) images acquired by multivendor scanners. METHODS: We enrolled 402 patients who underwent noncontrast CT examinations, including L1–L4 vertebrae, and dual-energy x-ray absorptiometry (DXA) examination. Among these, 280 patients (3360 sagittal vertebral images), 70 patients (280 sagittal vertebral images), and 52 patients (208 sagittal vertebral images) were assigned to the training data set for deep learning model development, the validation, and the test data set, respectively. Bone mineral density and the trabecular bone score (TBS), an index of bone microarchitecture, were assessed by DXA. BMD(DL) and TBS(DL) were predicted by deep learning with a convolutional neural network (ResNet50). Pearson correlation tests assessed the correlation between BMD(DL) and BMD, and TBS(DL) and TBS. The diagnostic performance of BMD(DL) for osteopenia/osteoporosis and that of TBS(DL) for bone microarchitecture impairment were evaluated using receiver operating characteristic curve analysis. RESULTS: BMD(DL) and BMD correlated strongly (r = 0.81, P < 0.01), whereas TBS(DL) and TBS correlated moderately (r = 0.54, P < 0.01). The sensitivity and specificity of BMD(DL) for identifying osteopenia or osteoporosis were 93% and 90%, and 100% and 94%, respectively. The sensitivity and specificity of TBS(DL) for identifying patients with bone microarchitecture impairment were 73% for all values. CONCLUSIONS: The BMD(DL) and TBS(DL) derived from conventional CT images could identify patients who should undergo DXA, which could be a gatekeeper tool for detecting latent osteoporosis/osteopenia or bone microarchitecture impairment.
format Online
Article
Text
id pubmed-10184800
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Lippincott Williams & Wilkins
record_format MEDLINE/PubMed
spelling pubmed-101848002023-05-16 Feasibility of Bone Mineral Density and Bone Microarchitecture Assessment Using Deep Learning With a Convolutional Neural Network Yoshida, Kazuki Tanabe, Yuki Nishiyama, Hikaru Matsuda, Takuya Toritani, Hidetaka Kitamura, Takuya Sakai, Shinichiro Watamori, Kunihiko Takao, Masaki Kimura, Eizen Kido, Teruhito J Comput Assist Tomogr Musculoskeletal Imaging We evaluated the feasibility of using deep learning with a convolutional neural network for predicting bone mineral density (BMD) and bone microarchitecture from conventional computed tomography (CT) images acquired by multivendor scanners. METHODS: We enrolled 402 patients who underwent noncontrast CT examinations, including L1–L4 vertebrae, and dual-energy x-ray absorptiometry (DXA) examination. Among these, 280 patients (3360 sagittal vertebral images), 70 patients (280 sagittal vertebral images), and 52 patients (208 sagittal vertebral images) were assigned to the training data set for deep learning model development, the validation, and the test data set, respectively. Bone mineral density and the trabecular bone score (TBS), an index of bone microarchitecture, were assessed by DXA. BMD(DL) and TBS(DL) were predicted by deep learning with a convolutional neural network (ResNet50). Pearson correlation tests assessed the correlation between BMD(DL) and BMD, and TBS(DL) and TBS. The diagnostic performance of BMD(DL) for osteopenia/osteoporosis and that of TBS(DL) for bone microarchitecture impairment were evaluated using receiver operating characteristic curve analysis. RESULTS: BMD(DL) and BMD correlated strongly (r = 0.81, P < 0.01), whereas TBS(DL) and TBS correlated moderately (r = 0.54, P < 0.01). The sensitivity and specificity of BMD(DL) for identifying osteopenia or osteoporosis were 93% and 90%, and 100% and 94%, respectively. The sensitivity and specificity of TBS(DL) for identifying patients with bone microarchitecture impairment were 73% for all values. CONCLUSIONS: The BMD(DL) and TBS(DL) derived from conventional CT images could identify patients who should undergo DXA, which could be a gatekeeper tool for detecting latent osteoporosis/osteopenia or bone microarchitecture impairment. Lippincott Williams & Wilkins 2023 2023-04-07 /pmc/articles/PMC10184800/ /pubmed/37185012 http://dx.doi.org/10.1097/RCT.0000000000001437 Text en Copyright © 2023 The Author(s). Published by Wolters Kluwer Health, Inc. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution-Non Commercial-No Derivatives License 4.0 (CCBY-NC-ND) (https://creativecommons.org/licenses/by-nc-nd/4.0/) , where it is permissible to download and share the work provided it is properly cited. The work cannot be changed in any way or used commercially without permission from the journal.
spellingShingle Musculoskeletal Imaging
Yoshida, Kazuki
Tanabe, Yuki
Nishiyama, Hikaru
Matsuda, Takuya
Toritani, Hidetaka
Kitamura, Takuya
Sakai, Shinichiro
Watamori, Kunihiko
Takao, Masaki
Kimura, Eizen
Kido, Teruhito
Feasibility of Bone Mineral Density and Bone Microarchitecture Assessment Using Deep Learning With a Convolutional Neural Network
title Feasibility of Bone Mineral Density and Bone Microarchitecture Assessment Using Deep Learning With a Convolutional Neural Network
title_full Feasibility of Bone Mineral Density and Bone Microarchitecture Assessment Using Deep Learning With a Convolutional Neural Network
title_fullStr Feasibility of Bone Mineral Density and Bone Microarchitecture Assessment Using Deep Learning With a Convolutional Neural Network
title_full_unstemmed Feasibility of Bone Mineral Density and Bone Microarchitecture Assessment Using Deep Learning With a Convolutional Neural Network
title_short Feasibility of Bone Mineral Density and Bone Microarchitecture Assessment Using Deep Learning With a Convolutional Neural Network
title_sort feasibility of bone mineral density and bone microarchitecture assessment using deep learning with a convolutional neural network
topic Musculoskeletal Imaging
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10184800/
https://www.ncbi.nlm.nih.gov/pubmed/37185012
http://dx.doi.org/10.1097/RCT.0000000000001437
work_keys_str_mv AT yoshidakazuki feasibilityofbonemineraldensityandbonemicroarchitectureassessmentusingdeeplearningwithaconvolutionalneuralnetwork
AT tanabeyuki feasibilityofbonemineraldensityandbonemicroarchitectureassessmentusingdeeplearningwithaconvolutionalneuralnetwork
AT nishiyamahikaru feasibilityofbonemineraldensityandbonemicroarchitectureassessmentusingdeeplearningwithaconvolutionalneuralnetwork
AT matsudatakuya feasibilityofbonemineraldensityandbonemicroarchitectureassessmentusingdeeplearningwithaconvolutionalneuralnetwork
AT toritanihidetaka feasibilityofbonemineraldensityandbonemicroarchitectureassessmentusingdeeplearningwithaconvolutionalneuralnetwork
AT kitamuratakuya feasibilityofbonemineraldensityandbonemicroarchitectureassessmentusingdeeplearningwithaconvolutionalneuralnetwork
AT sakaishinichiro feasibilityofbonemineraldensityandbonemicroarchitectureassessmentusingdeeplearningwithaconvolutionalneuralnetwork
AT watamorikunihiko feasibilityofbonemineraldensityandbonemicroarchitectureassessmentusingdeeplearningwithaconvolutionalneuralnetwork
AT takaomasaki feasibilityofbonemineraldensityandbonemicroarchitectureassessmentusingdeeplearningwithaconvolutionalneuralnetwork
AT kimuraeizen feasibilityofbonemineraldensityandbonemicroarchitectureassessmentusingdeeplearningwithaconvolutionalneuralnetwork
AT kidoteruhito feasibilityofbonemineraldensityandbonemicroarchitectureassessmentusingdeeplearningwithaconvolutionalneuralnetwork