TY - JOUR
T1 - Deep Learning-Assisted Quantitative Measurement of Thoracolumbar Fracture Features on Lateral Radiographs
AU - Yuh, Woon Tak
AU - Khil, Eun Kyung
AU - Yoon, Yu Sung
AU - Kim, Burnyoung
AU - Yoon, Hongjun
AU - Lim, Jihe
AU - Lee, Kyoung Yeon
AU - Yoo, Yeong Seo
AU - An, Kyeong Deuk
N1 - Publisher Copyright:
© 2024 by the Korean Spinal Neurosurgery Society.
PY - 2024/3
Y1 - 2024/3
N2 - Objective: This study aimed to develop and validate a deep learning (DL) algorithm for the quantitative measurement of thoracolumbar (TL) fracture features, and to evaluate its efficacy across varying levels of clinical expertise. Methods: Using the pretrained Mask Region-Based Convolutional Neural Networks model, originally developed for vertebral body segmentation and fracture detection, we fine-tuned the model and added a new module for measuring fracture metrics—compression rate (CR), Cobb angle (CA), Gardner angle (GA), and sagittal index (SI)—from lumbar spine lateral radiographs. These metrics were derived from six-point labeling by 3 radiologists, forming the ground truth (GT). Training utilized 1, 000 nonfractured and 318 fractured radiographs, while validations employed 213 internal and 200 external fractured radiographs. The accuracy of the DL algorithm in quantifying fracture features was evaluated against GT using the intraclass correlation coefficient. Additionally, 4 readers with varying expertise levels, including trainees and an attending spine surgeon, performed measurements with and without DL assistance, and their results were compared to GT and the DL model. Results: The DL algorithm demonstrated good to excellent agreement with GT for CR, CA, GA, and SI in both internal (0. 860, 0. 944, 0. 932, and 0. 779, respectively) and external (0. 836, 0. 940, 0. 916, and 0. 815, respectively) validations. DL-assisted measurements significantly improved most measurement values, particularly for trainees. Conclusion: The DL algorithm was validated as an accurate tool for quantifying TL fracture features using radiographs. DL-assisted measurement is expected to expedite the diagnostic process and enhance reliability, particularly benefiting less experienced clinicians.
AB - Objective: This study aimed to develop and validate a deep learning (DL) algorithm for the quantitative measurement of thoracolumbar (TL) fracture features, and to evaluate its efficacy across varying levels of clinical expertise. Methods: Using the pretrained Mask Region-Based Convolutional Neural Networks model, originally developed for vertebral body segmentation and fracture detection, we fine-tuned the model and added a new module for measuring fracture metrics—compression rate (CR), Cobb angle (CA), Gardner angle (GA), and sagittal index (SI)—from lumbar spine lateral radiographs. These metrics were derived from six-point labeling by 3 radiologists, forming the ground truth (GT). Training utilized 1, 000 nonfractured and 318 fractured radiographs, while validations employed 213 internal and 200 external fractured radiographs. The accuracy of the DL algorithm in quantifying fracture features was evaluated against GT using the intraclass correlation coefficient. Additionally, 4 readers with varying expertise levels, including trainees and an attending spine surgeon, performed measurements with and without DL assistance, and their results were compared to GT and the DL model. Results: The DL algorithm demonstrated good to excellent agreement with GT for CR, CA, GA, and SI in both internal (0. 860, 0. 944, 0. 932, and 0. 779, respectively) and external (0. 836, 0. 940, 0. 916, and 0. 815, respectively) validations. DL-assisted measurements significantly improved most measurement values, particularly for trainees. Conclusion: The DL algorithm was validated as an accurate tool for quantifying TL fracture features using radiographs. DL-assisted measurement is expected to expedite the diagnostic process and enhance reliability, particularly benefiting less experienced clinicians.
KW - Artificial intelligence
KW - Deep learning
KW - Radiography
KW - Spinal curvatures
KW - Spinal fractures
KW - Spinal injuries
UR - http://www.scopus.com/inward/record.url?scp=85188993480&partnerID=8YFLogxK
U2 - 10.14245/ns.2347366.683
DO - 10.14245/ns.2347366.683
M3 - Article
AN - SCOPUS:85188993480
SN - 2586-6583
VL - 21
SP - 30
EP - 43
JO - Neurospine
JF - Neurospine
IS - 1
ER -