Nov 14, 2024
ACR
Abstract
OSTEO
Artificial Intelligence Classifier for Osteoporosis Detection from Chest Radiographs: Performance Evaluation and Literature Comparison with Quantitative Ultrasound
Miso Jang, MD, PhDa,b,c; Gaeun Lee, MSc; Minjun Kim,BSc; Sung Jin Bae, MD, PhDc; Seung Hun Lee, MD, PhDd; Juhee Yoon, MDf; Jung-Min Koh, MD, PhDd; Namkug Kim, PhDa,h
AFFILIATIONS:
aDepartment of Convergence Medicine, University of Ulsan College of Medicine, Asan Medical Center, Seoul, Republic of Korea
bDepartment of Health Screening and Promotion Center, Seoul Chuk hospital, Seoul, Republic of Korea
cPromedius.Inc.
dDepartment of Health Screening and Promotion Center, Asan Medical Center, University of Ulsan College of Medicine, Seoul, Republic of Korea
eDivision of Endocrinology and Metabolism, Asan Medical Center, University of Ulsan College of Medicine, Seoul, Republic of Korea
fDivision of Cardiology, Department of Internal Medicine, Kangbuk Samsung Hospital, Sungkyunkwan University School of Medicine, Seoul, South Korea
gDivision of Cardiology, Department of Internal Medicine, Veterants health service medical center, Seoul, South Korea
hDepartment of Radiology, University of Ulsan College of Medicine, Asan Medical Center, Seoul, Republic of Korea
Background
Osteoporosis is a common condition that often goes unnoticed until it results in fractures, significantly increasing mortality rates. Recent advancements in deep learning have demonstrated the ability to detect low bone density using simple radiographs, including chest X-rays (CXR).`osteoporosis screening in real-world settings.
The initial model, OsPor-Screen(Jang et al. 2022), was validated exclusively using CXRs from the Health screening dataset, which mainly included images from relatively healthy individuals. This limitation restricted its applicability in actual clinical settings. To overcome this, we developed and implemented a robust model specifically for osteoporosis screening in diverse, real-world environments. The new model was validated across various healthcare facilities, representing different stages of the healthcare delivery system and distinct medical settings. Furthermore, we aimed to compare the performance of our model with that of osteoporosis screening using quantitative ultrasound (QUS).
Methods
The CXR:OSTEO was validated with five datasets. Asan Medical Center (AMC), which is a tertiary hospital, internal test dataset was a part of the training dataset and AMC external dataset was an external dataset from the same hospital. Seoul Chuk Hospital (SCH) specializes in spine and joint care. Veteran Health System Medical Center (VHSMC) provides comprehensive medical and specialized care to veterans and their families. Gradient Health (GH), a leading provider of global medical imaging datasets, offers access to an extensive and diverse collection of 5 million de-identified medical images.
The Advanced model, CXR:OSTEO goes further than the OsPor-Screen, which predicts osteoporosis in a single CXR image, to predict osteoporosis in multiple regions of a CXR image. To comprehensively evaluate the screening performance for the two validation datasets, the accuracy, sensitivity, specificity, and area under the ROC curve (AUC) were calculated.
Results
Across more than seven different CXR machines and two different DXA manufacturers in various populations, CXR:OSTEO showed excellent performances in the internal and four external datasets. The AUC was near 0.95 in the internal dataset and was over 0.81 in the global region. For osteoporosis screening guidelines in USPSTF, performance of QUS is 0.77 in women and 0.80 in men.(“Osteoporosis to Prevent Fractures: Screening” 2018) Another study(Adami et al. 2024) also reported that the maximum performance of QUS in a dataset of 200 patients was an AUC of 0.81.
Conclusion
We developed the CXR-OSTEO model to screen for osteoporosis using chest X-rays and validated it with four external test datasets. These results support that screening for osteoporosis using CXR:OTSEO is the most effective method in the real clinical setting.

Figure 1. Scheme of OSTEO:CXR
Table 1. Demographic characteristics of the datasets

Table 2. The performance metrics of CXR:OSTEO in the internal and external validation datasets

Reference
“Osteoporosis to Prevent Fractures: Screening.” 2018. US Preventive Services Taskforce. June 26, 2018. https://www.uspreventiveservicestaskforce.org/uspstf/recommendation/osteoporosis-screening.