Healthcare Journal of Oregon
SEE OTHER BRANDS

News on health and wellness in Oregon

Truveta research published in Radiology Advances introduces new AI model to estimate body composition from chest radiographs

BELLEVUE, Wash., Oct. 29, 2025 (GLOBE NEWSWIRE) -- Truveta is proud to announce the publication of its latest peer-reviewed research in Radiology Advances: “XComposition: Multimodal Deep Learning Model to Measure Body Composition Using Chest Radiographs and Clinical Data.” This groundbreaking study demonstrates the power of artificial intelligence to estimate critical body composition measures—such as visceral and subcutaneous fat volumes—from a simple chest radiograph combined with commonly available clinical data. The deep learning model is available as a Python library for others to experiment with in Truveta’s GitHub.

Key findings

The research team developed a multimodal deep learning model that integrates chest radiographs (CXR) with four basic clinical variables (age, sex at birth, height, and weight) to estimate body composition typically measured by CT scans. The study analyzed data from more than 1,100 patients across a subset of Truveta member health systems in the US.

  • The multimodal model accurately estimated subcutaneous fat volume (Pearson’s R: 0.85) and visceral fat volume (Pearson’s R: 0.76).
  • A late fusion strategy—combining imaging and clinical data at the decision level—yielded the best results (p < 0.04 for subcutaneous fat volume).
  • The multimodal model outperformed imaging-only and clinical-only approaches across all key body composition metrics (p < 0.001 for subcutaneous fat volume).

Why it matters

Body composition is an important predictor of cardiovascular disease, diabetes, and cancer prognosis. Traditional methods to measure these metrics—such as MRI or CT—are expensive, resource-intensive, and not always accessible to patients. This study shows that a chest radiograph, one of the most common and widely available imaging tests, can serve as a low-cost, scalable tool for estimating body composition when combined with AI.

“Our work shows that we can unlock clinically meaningful insights from a chest X-ray—an exam that millions of people receive each year,” said Ehsan Alipour, MD, PhD, a machine learning post-doctoral researcher at Truveta and lead author of the study. “By combining imaging with just a few simple clinical variables, we created a powerful, accessible way to estimate body composition that could help improve screening, research, and ultimately patient care.”

About the study

This study leveraged Truveta Data, the most complete, timely, and representative dataset of de-identified electronic health records (EHR) in the US, contributed by a collective of leading health systems. Imaging data were linked with clinical variables across health systems, enabling the development and validation of this multimodal AI model.

The full paper is available in Radiology Advances.

About Truveta

Truveta is a real-world intelligence company transforming medical science with unprecedented data and predictive AI. We power breakthrough discoveries, accelerate regulatory-grade evidence, and unlock real-time insights from a dataset uniquely built with and owned by US health systems—united by a mission of Saving Lives with Data.

Truveta membership includes ProvidenceAdvocate HealthTrinity HealthTenet HealthcareNorthwell HealthAdventHealthBaptist Health of Northeast FloridaBaylor Scott & White HealthBon Secours Mercy HealthCommonSpirit HealthHawaii Pacific HealthHealthPartnersHenry Ford Health SystemHonorHealthInovaLehigh Valley Health NetworkMedStar HealthMemorial Hermann Health SystemMetroHealthNovant HealthOchsner HealthPremier HealthSaint Luke’s Health SystemSanford HealthSentara HealthcareTexas Health ResourcesTriHealthUnityPoint HealthVirtua Health, and WellSpan Health.

Attachments


Ellie Lampton
Truveta
2064092192
ellief@truveta.com

Legal Disclaimer:

EIN Presswire provides this news content "as is" without warranty of any kind. We do not accept any responsibility or liability for the accuracy, content, images, videos, licenses, completeness, legality, or reliability of the information contained in this article. If you have any complaints or copyright issues related to this article, kindly contact the author above.

Share us

on your social networks:
AGPs

Get the latest news on this topic.

SIGN UP FOR FREE TODAY

No Thanks

By signing to this email alert, you
agree to our Terms & Conditions