Sep 5, 2025
ASBMR
Abstract
OSTEO
Cost-Effectiveness of Opportunistic Osteoporosis Screening Using Chest Radiographs With Deep Learning in the United States_ASBMR2025
Mickael Hiligsmann, Maastricht University, Netherlands, Stuart L. Silverman, Clinical Professor of Medicine, Cedars-Sinai Medical Center and Jean-Yves L. Reginster, College of Sciences, King Saud University, Saudi Arabia
Scientific Information:
Osteoporosis is frequently underdiagnosed due to the limitations of traditional screening methods, resulting in missed opportunities for early intervention. Recent advancements in deep learning models using chest radiographs show promise for opportunistic osteoporosis screening, particularly in middle-aged and older individuals. By enabling automated screening in clinical settings, these models could help reduce the burden of osteoporotic fractures. This study aims to assess the cost-effectiveness of this approach in US women aged 50 and older, providing valuable insights for decision-makers on its potential implementation. An economic model, incorporating both a decision tree and a microsimulation Markov model, estimated the cost per quality-adjusted life year (QALY) gained ($2024) for screening via chest radiographs with deep learning, followed by treatment, versus no screening and treatment. The patient pathways were based on the sensitivity and specificity of Al-enhanced radiographs. Real-world medication persistence, along with realistic assumptions for the probability of DXA examination following screening detection and treatment initiation rates, were incorporated. Women with osteoporosis were stratified into high risk (receiving alendronate monotherapy for five years) and very high risk (receiving an 18-month anabolic treatment with abaloparatide followed by five years of alendronate). Parameter uncertainty was analyzed through sensitivity analyses. The opportunistic screening strategy led to improved health outcomes, generating an additional 1.5 QALYs per 1,000 women screened and preventing 2.8 fractures, though it resulted in higher treatment costs. The cost per QALY gained for opportunistic screening was estimated at $72,085, which remains below the US cost-effectiveness threshold of $100,000 per QALY, indicating its cost-effectiveness. The cost-effectiveness remained favorable as long as Al tool costs were under $62 per patient. Further improvements in cost- effectiveness could be achieved by optimizing follow-up care, treatment initiation, and medication adherence. Specifically, reducing medication non-persistence by 50% improved the ICER to $28,663, and achieving full medication adherence further reduced it to $16,414. In conclusion, this study underscores the cost- effectiveness and public health significance of Al-driven screening, demonstrating its potential to improve early detection and address unmet diagnostic needs in osteoporosis care.
Title:
Cost-Effectiveness of Opportunistic Osteoporosis Screening Using Chest Radiographs With Deep Learning in the United States
Submitter's E-mail Address:
m.hiligsmann@maastrichtuniversity.nl
Category 1:
Clinical: Osteoporosis – Assessment
Category 2:
Clinical: Osteoporosis - Treatment
CareerLevel:
Senior Investigator
Copyright Transfer Agreement:
I agree to the COPYRIGHT TRANSFER AGREEMENT as shown above and have obtained written permission from all other contributors to execute this Agreement on their behalf
Pre-Meeting Symposium:
I do NOT want to submit my abstract to any Pre-Meeting symposium.
Keywords:
Cost-effectiveness, Opportunistic screening and Osteoporosis
Preferred Presentation Format:
Oral or Poster Presentation
Submitted to pre-print journal or server:
No
Recording Permission:
I confirm that if my abstract is selected for an oral presentation, ASBMR has permission to record my presentation for educational purposes and for viewing by ASBMR members and paid annual meeting registrants.
Funding from an organization with a proprietary or financial interest:
Yes
Funding from the National Institutes of Health (NIH) or other government agency:
No
IRB Approval: NotApplicable
IACUC Approval:
NotApplicable
HIPPA Compliant:
NotApplicable
Copyright Permission(s): Yes
Opportunity for Debate:
Yes
IRB Approval:
NotApplicable
Payment Agreement:
Yes
Off-Label Uses and Limitations of Data:
Yes
Approve of media/medical journalists capturing photography during presentation:
Yes
Principal Investigator
Mickael Hiligsmann
Email: m.hiligsmann@maastrichtuniversity.nl -- Will not be published
Maastricht University
Netherlands
Any relevant financial relationships? Yes
Organization Name
Relationship
Angelini Pharma
Grant/Research Support
radiomics.bio
Grant/Research Support
Signed on 04/14/2025 by Mickael Hiligsmann
Presenting Author
Stuart L. Silverman
Email: stuarts@bhillsra.com -- Will not be published
Clinical Professor of Medicine, Cedars-Sinai Medical Center
USA
Any relevant financial relationships? Yes
Organization Name
Relationship
Promedius
Consultant
Amgen
Consultant
Consultant
Radius Health
Signed on 04/14/2025 by Stuart Silverman
Author
Jean-Yves L. Reginster
Email: jyreginster@ulg.ac.be -- Will not be published
College of Sciences, King Saud University
Saudi Arabia
Any relevant financial relationships? Yes
Organization Name
Promedius
Promedius
Relationship
Grant/Research Support
Consultant
Signed on 04/14/2025 by Jean-Yves Reginster
Sponsor
Stuart L. Silverman
Email: stuarts@bhillsra.com -- Will not be published
Clinical Professor of Medicine, Cedars-Sinai Medical Center
USA
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Sponsor's Response: Has not responded
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