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CT-derived body composition with deep learning predicts cardiovascular events

Fully automated and normalized body composition analysis of abdominal CT has promise to augment traditional cardiovascular risk prediction models

Date:
August 31, 2022
Source:
American Roentgen Ray Society
Summary:
A fully automated and normalized body composition analysis of abdominal CT has promise to augment traditional cardiovascular risk prediction models.
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According to ARRS' American Journal of Roentgenology (AJR), fully automated and normalized body composition analysis of abdominal CT has promise to augment traditional cardiovascular risk prediction models.

"Visceral fat area from fully automated and normalized analysis of abdominal CT examinations predicts subsequent myocardial infarction or stroke in Black and White patients, independent of traditional weight metrics, and should be considered as an adjunct to BMI in risk models," wrote first author Kirti Magudia, MD, PhD, currently from the department of radiology at Duke University School of Medicine.

Dr. Magudia and colleagues' retrospective study numbered 9,752 outpatients (5,519 women, 4,233 men; 890 self-reported Black, 8,862 self-reported White; mean age, 53.2 years) who underwent routine abdominal CT at Brigham and Women's Hospital or Massachusetts General Hospital from January-December 2012, sans a major cardiovascular or oncologic diagnosis within 3 months of examination. Fully automated deep learning body composition analysis was performed at the L3 vertebral level to determinate three body composition areas: skeletal muscle area, visceral fat area, and subcutaneous fat area. Subsequent myocardial infarction or stroke was established via electronic health records.

Ultimately, after normalization for age, sex, and race, visceral fat area derived from routine CT was associated with risk of myocardial infarction (HR 1.31 [1.03-1.67], p=.04 for overall effect) and stroke (HR 1.46 [1.07-2.00], p=.04 for overall effect) in multivariable models in Black and White patients; normalized weight, BMI, skeletal muscle area, and subcutaneous fat area were not.

Noting that their large study demonstrates a pipeline for body composition analysis and age-, sex-, and race-specific reference values to add prognostic utility to clinical practice, "we anticipate that fully automated body composition analysis using machine learning could be widely adopted to harness latent value from routine imaging studies," the authors of this AJR article concluded.


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Materials provided by American Roentgen Ray Society. Note: Content may be edited for style and length.


Journal Reference:

  1. Kirti Magudia, Christopher P. Bridge, Camden P. Bay, Subrina Farah, Ana Babic, Florian J. Fintelmann, Lauren K. Brais, Katherine P. Andriole, Brian M. Wolpin, Michael H. Rosenthal. Utility of Normalized Body Composition Areas, Derived From Outpatient Abdominal CT Using a Fully Automated Deep Learning Method, for Predicting Subsequent Cardiovascular Events. American Journal of Roentgenology, 2022; DOI: 10.2214/AJR.22.27977

Cite This Page:

American Roentgen Ray Society. "CT-derived body composition with deep learning predicts cardiovascular events." ScienceDaily. ScienceDaily, 31 August 2022. <www.sciencedaily.com/releases/2022/08/220831131201.htm>.
American Roentgen Ray Society. (2022, August 31). CT-derived body composition with deep learning predicts cardiovascular events. ScienceDaily. Retrieved July 14, 2024 from www.sciencedaily.com/releases/2022/08/220831131201.htm
American Roentgen Ray Society. "CT-derived body composition with deep learning predicts cardiovascular events." ScienceDaily. www.sciencedaily.com/releases/2022/08/220831131201.htm (accessed July 14, 2024).

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