Predictive Value of Deep Learning-derived CT Pectoralis Muscle and Adipose Measurements for Incident Heart Failure: Multi-Ethnic Study of Atherosclerosis.

IF 3.8 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Radiology. Cardiothoracic imaging Pub Date : 2023-10-05 eCollection Date: 2023-10-01 DOI:10.1148/ryct.230146
Quincy Hathaway, Hamza Ahmed Ibad, David A Bluemke, Farhad Pishgar, Arta Kasaiean, Joshua G Klein, Rebecca Cogswell, Matthew Allison, Matthew J Budoff, R Graham Barr, Wendy Post, Miriam A Bredella, João A C Lima, Shadpour Demehri
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Abstract

Purpose: To develop a deep learning algorithm capable of extracting pectoralis muscle and adipose measurements and to longitudinally investigate associations between these measurements and incident heart failure (HF) in participants from the Multi-Ethnic Study of Atherosclerosis (MESA).

Materials and methods: MESA is a prospective study of subclinical cardiovascular disease characteristics and risk factors for progression to clinically overt disease approved by institutional review boards of six participating centers (ClinicalTrials.gov identifier: NCT00005487). All participants with adequate imaging and clinical data from the fifth examination of MESA were included in this study. Hence, in this secondary analysis, manual segmentations of 600 chest CT examinations (between the years 2010 and 2012) were used to train and validate a convolutional neural network, which subsequently extracted pectoralis muscle and adipose (intermuscular adipose tissue (IMAT), perimuscular adipose tissue (PAT), extramyocellular lipids and subcutaneous adipose tissue) area measurements from 3031 CT examinations using individualized thresholds for adipose segmentation. Next, 1781 participants without baseline HF were longitudinally investigated for associations between baseline pectoralis muscle and adipose measurements and incident HF using crude and adjusted Cox proportional hazards models. The full models were adjusted for variables in categories of demographic (age, race, sex, income), clinical/laboratory (including physical activity, BMI, and smoking), CT (coronary artery calcium score), and cardiac MRI (left ventricular ejection fraction and mass (% of predicted)) data.

Results: In 1781 participants (median age, 68 (IQR,61, 75) years; 907 [51%] females), 41 incident HF events occurred over a median 6.5-year follow-up. IMAT predicted incident HF in unadjusted (hazard ratio [HR]:1.14; 95% CI: 1.03-1.26) and fully adjusted (HR:1.16, 95% CI: 1.03-1.31) models. PAT also predicted incident HF in crude (HR:1.19; 95% CI: 1.06-1.35) and fully adjusted (HR:1.25; 95% CI: 1.07-1.46) models.

Conclusion: The study demonstrates that fast and reliable deep learning-derived pectoralis muscle and adipose measurements are obtainable from conventional chest CT, which may be predictive of incident HF.©RSNA, 2023.

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深度学习衍生CT胸肌和脂肪测量对突发心力衰竭的预测价值:动脉粥样硬化的多民族研究。
目的:开发一种能够提取胸肌和脂肪测量值的深度学习算法,并纵向研究这些测量值与动脉粥样硬化多民族研究(MESA)参与者发生心力衰竭(HF)之间的关系。材料和方法:MESA是一项亚临床心血管疾病特征和六个参与中心的机构审查委员会批准的进展为临床显性疾病的风险因素(ClinicalTrials.gov标识符:NCT00005487)。所有从MESA第五次检查中获得足够影像学和临床数据的参与者都被纳入本研究。因此,在这项二次分析中,使用600次胸部CT检查的手动分割(2010年至2012年)来训练和验证卷积神经网络,该网络随后提取胸肌和脂肪(肌间脂肪组织(IMAT)、肌周脂肪组织(PAT),肌细胞外脂质和皮下脂肪组织)面积测量。接下来,使用粗略和调整后的Cox比例风险模型,对1781名没有基线HF的参与者进行了纵向调查,以了解基线胸肌和脂肪测量与HF事件之间的关联。根据人口统计学(年龄、种族、性别、收入)、临床/实验室(包括体力活动、BMI和吸烟)、CT(冠状动脉钙评分)和心脏MRI(左心室射血分数和质量(预测的%))数据的类别对完整模型进行了调整。结果:1781名参与者(中位年龄68岁(IQR,61,75);907[51%]女性),在平均6.5年的随访中发生41例HF事件。IMAT在未调整(危险比[HR]:1.14;95%CI:1.03-12.6)和完全调整(HR:1.16,95%CI:1.03-1.31)模型中预测了HF事件。PAT还预测了原油(HR:1.19;95%CI:1.06-1.35)和完全调整(HR:1.25;95%CI:1.07-1.46)模型中的HF事件。结论:该研究表明,通过常规胸部CT可以获得快速可靠的深度学习获得的胸肌和脂肪测量,这可能是HF事件的预测。©RSNA,2023。
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