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Elevated Coronary Artery Calcium Quantified by a Validated Deep Learning Model From Lung Cancer Radiotherapy Planning Scans Predicts Mortality

机译:通过肺癌放射疗法计划扫描量量化的冠状动脉钙升高预测死亡率

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PURPOSE Coronary artery calcium (CAC) quantified on computed tomography (CT) scans is a robust predictor of atherosclerotic coronary disease; however, the feasibility and relevance of quantitating CAC from lung cancer radiotherapy planning CT scans is unknown. We used a previously validated deep learning (DL) model to assess whether CAC is a predictor of all-cause mortality and major adverse cardiac events (MACEs). METHODS Retrospective analysis of non-contrast-enhanced radiotherapy planning CT scans from 428 patients with locally advanced lung cancer is performed. The DL-CAC algorithm was previously trained on 1,636 cardiac-gated CT scans and tested on four clinical trial cohorts. Plaques ≥ 1 cubic millimeter were measured to generate an Agatston-like DL-CAC score and grouped as DL-CAC = 0 (very low risk) and DL-CAC ≥ 1 (elevated risk). Cox and Fine and Gray regressions were adjusted for lung cancer and cardiovascular factors. RESULTS The median follow-up was 18.1 months. The majority (61.4%) had a DL-CAC ≥ 1. There was an increased risk of all-cause mortality with DL-CAC ≥ 1 versus DL-CAC = 0 (adjusted hazard ratio, 1.51; 95% Cl, 1.01 to 2.26; P= .04), with 2-year estimates of 56.2% versus 45.4%, respectively. There was a trend toward increased risk of major adverse cardiac events with DL-CAC ≥ 1 versus DL-CAC = 0 (hazard ratio, 1.80; 95% Cl, 0.87 to 3.74; P= .11), with 2-year estimates of 7.3% versus 1.2%, respectively. CONCLUSION In this proof-of-concept study, CAC was effectively measured from routinely acquired radiotherapy planning CT scans using an automated model. Elevated CAC, as predicted by the DL model, was associated with an increased risk of mortality, suggesting a potential benefit for automated cardiac risk screening before cancer therapy begins.
机译:在计算机断层扫描(CT)扫描中量化的目的冠状动脉钙(CAC)是动脉粥样硬化冠状动脉疾病的强大预测指标。但是,尚不清楚肺癌放射疗法计划CAC的可行性和相关性CT扫描尚不清楚。我们使用先前验证的深度学习(DL)模型来评估CAC是否是全因死亡率和重大不良心脏事件(MACES)的预测指标。方法对428例局部晚期肺癌患者的非对比增强放射疗法计划CT扫描进行回顾性分析。 DL-CAC算法先前接受过1,636次心脏门控CT扫描的培训,并在四个临床试验队列中进行了测试。测量斑块≥1立方毫米以产生类似Agatston的DL-CAC评分,并将DL-CAC = 0(风险非常低)和DL-CAC≥1(升高风险)分组。针对肺癌和心血管因素调整了Cox,细和灰色回归。结果中位随访时间为18.1个月。大多数(61.4%)的DL-CAC≥1。全因死亡率的风险增加,而DL-CAC≥1对DL-CAC = 0(调整后危险比,1.51; 95%Cl,1.01至2.26 ; p = .04),分别为56.2%和45.4%的2年估计。有趋势增加了大型心脏事件的风险增加,而DL-CAC≥1对DL-CAC = 0(危险比,1.80; 95%Cl,0.87至3.74; P = .11),2年估计为2年分别为7.3%和1.2%。结论在这项概念验证研究中,CAC是通过使用自动模型的常规获得的放疗计划CT扫描来有效测量的。如DL模型所预测的那样,升高的CAC与死亡率的增加有关,这表明在癌症治疗开始之前,自动心脏风险筛查具有潜在的好处。

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