Sarcopenia Assessment Using Fully Automated Deep Learning Predicts Cardiac Allograft Survival in Heart Transplant Recipients.

IF 8.4 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Frederick M Lang, Jianfei Liu, Kevin J Clerkin, Elissa A Driggin, Andrew J Einstein, Gabriel T Sayer, Koji Takeda, Nir Uriel, Ronald M Summers, Veli K Topkara
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引用次数: 0

Abstract

Background: Sarcopenia is associated with adverse outcomes in patients with end-stage heart failure. Muscle mass can be quantified via manual segmentation of computed tomography images, but this approach is time-consuming and subject to interobserver variability. We sought to determine whether fully automated assessment of radiographic sarcopenia by deep learning would predict heart transplantation outcomes.

Methods: This retrospective study included 164 adult patients who underwent heart transplantation between January 2013 and December 2022. A deep learning-based tool was utilized to automatically calculate cross-sectional skeletal muscle area at the T11, T12, and L1 levels on chest computed tomography. Radiographic sarcopenia was defined as skeletal muscle index (skeletal muscle area divided by height squared) in the lowest sex-specific quartile.

Results: The study population had a mean age of 53±14 years and was predominantly male (75%) with a nonischemic cause (73%). Mean skeletal muscle index was 28.3±7.6 cm2/m2 for females versus 33.1±8.1 cm2/m2 for males (P<0.001). Cardiac allograft survival was significantly lower in heart transplant recipients with versus without radiographic sarcopenia at T11 (90% versus 98% at 1 year, 83% versus 97% at 3 years, log-rank P=0.02). After multivariable adjustment, radiographic sarcopenia at T11 was associated with an increased risk of cardiac allograft loss or death (hazard ratio, 3.86 [95% CI, 1.35-11.0]; P=0.01). Patients with radiographic sarcopenia also had a significantly increased hospital length of stay (28 [interquartile range, 19-33] versus 20 [interquartile range, 16-31] days; P=0.046).

Conclusions: Fully automated quantification of radiographic sarcopenia using pretransplant chest computed tomography successfully predicts cardiac allograft survival. By avoiding interobserver variability and accelerating computation, this approach has the potential to improve candidate selection and outcomes in heart transplantation.

使用全自动深度学习评估心肌减少症预测心脏移植受者的同种异体移植存活。
背景:骨骼肌减少症与终末期心力衰竭患者的不良结局相关。肌肉质量可以通过计算机断层扫描图像的人工分割来量化,但这种方法很耗时,而且受制于观察者之间的可变性。我们试图确定通过深度学习对x线摄影肌肉减少症的全自动评估是否可以预测心脏移植的结果。方法:本回顾性研究纳入了2013年1月至2022年12月期间接受心脏移植的164例成年患者。利用基于深度学习的工具自动计算胸部计算机断层扫描T11、T12和L1水平的横断面骨骼肌面积。x线骨骼肌减少症被定义为骨骼肌指数(骨骼肌面积除以高度的平方)在最低的性别特异性四分位数。结果:研究人群平均年龄为53±14岁,主要为男性(75%),非缺血性病因(73%)。女性平均骨骼肌指数为28.3±7.6 cm2/m2,男性为33.1±8.1 cm2/m2 (PP=0.02)。多变量校正后,T11时x线片上的肌肉减少与异体心脏移植丢失或死亡的风险增加相关(风险比为3.86 [95% CI, 1.35-11.0]; P=0.01)。x线摄影下的肌肉减少症患者的住院时间也显著增加(28[四分位数范围,19-33]天和20[四分位数范围,16-31]天;P=0.046)。结论:利用移植前胸部计算机断层扫描对x线摄影肌肉减少症进行全自动量化,可成功预测同种异体心脏移植的存活。通过避免观察者之间的差异和加速计算,这种方法有可能改善心脏移植的候选人选择和结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Circulation: Heart Failure
Circulation: Heart Failure 医学-心血管系统
CiteScore
12.90
自引率
3.10%
发文量
271
审稿时长
6-12 weeks
期刊介绍: Circulation: Heart Failure focuses on content related to heart failure, mechanical circulatory support, and heart transplant science and medicine. It considers studies conducted in humans or analyses of human data, as well as preclinical studies with direct clinical correlation or relevance. While primarily a clinical journal, it may publish novel basic and preclinical studies that significantly advance the field of heart failure.
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