Measurement of breast artery calcification using an artificial intelligence detection model and its association with major adverse cardiovascular events.

PLOS digital health Pub Date : 2024-12-23 eCollection Date: 2024-12-01 DOI:10.1371/journal.pdig.0000698
Suzanne J Rose, Josette Hartnett, Zachary J Estep, Daniyal Ameen, Shweta Karki, Edward Schuster, Rebecca B Newman, David H Hsi
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Abstract

Breast artery calcification (BAC) obtained from standard mammographic images is currently under evaluation to stratify risk of major adverse cardiovascular events in women. Measuring BAC using artificial intelligence (AI) technology, we aimed to determine the relationship between BAC and coronary artery calcification (CAC) severity with Major Adverse Cardiac Events (MACE). This retrospective study included women who underwent chest computed tomography (CT) within one year of mammography. T-test assessed the associations between MACE and variables of interest (BAC versus MACE, CAC versus MACE). Risk differences were calculated to capture the difference in observed risk and reference groups. Chi-square tests and/or Fisher's exact tests were performed to assess age and ASCVD risk with MACE and to assess BAC and CAC association with atherosclerotic cardiovascular disease (ASCVD) risk as a secondary outcome. A logistic regression model was conducted to measure the odds ratio between explanatory variables (BAC and CAC) and the outcome variables (MACE). Out of the 99 patients included in the analysis, 49 patients (49.49%) were BAC positive, with 37 patients (37.37%) CAC positive, and 26 patients (26.26%) had MACE. One unit increase in BAC score resulted in a 6% increased odds of having a moderate to high ASCVD risk >7.5% (p = 0.01) and 2% increased odds of having MACE (p = 0.005). The odds of having a moderate-high ASCVD risk score in BAC positive patients was higher (OR = 4.27, 95% CI 1.58-11.56) than CAC positive (OR = 4.05, 95% CI 1.36-12.06) patients. In this study population, the presence of BAC is associated with MACE and useful in corroborating ASCVD risk. Our results provide evidence to support the potential utilization of AI generated BAC measurements from standard of care mammograms in addition to the widely adopted ASCVD and CAC scores, to identify and risk-stratify women who are at increased risk of CVD and may benefit from targeted prevention measures.

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使用人工智能检测模型测量乳房动脉钙化及其与主要不良心血管事件的关联。
目前正在评估从标准乳房x线摄影图像获得的乳腺动脉钙化(BAC),以对女性主要不良心血管事件的风险进行分层。使用人工智能(AI)技术测量BAC,我们旨在确定BAC与冠状动脉钙化(CAC)严重程度和主要不良心脏事件(MACE)之间的关系。这项回顾性研究包括在一年内接受胸部计算机断层扫描(CT)的妇女。t检验评估MACE与相关变量(BAC与MACE、CAC与MACE)之间的相关性。计算风险差异以捕捉观察到的风险组和参照组之间的差异。采用卡方检验和/或Fisher精确检验来评估MACE患者的年龄和ASCVD风险,并评估BAC和CAC与动脉粥样硬化性心血管疾病(ASCVD)风险作为次要结局的相关性。采用logistic回归模型测量解释变量(BAC和CAC)与结果变量(MACE)之间的比值比。纳入分析的99例患者中,49例(49.49%)BAC阳性,37例(37.37%)CAC阳性,26例(26.26%)MACE。BAC评分每增加一个单位,患ASCVD中度至高度风险的几率增加6%,至7.5% (p = 0.01),患MACE的几率增加2% (p = 0.005)。BAC阳性患者中-高ASCVD风险评分的几率(OR = 4.27, 95% CI 1.58-11.56)高于CAC阳性患者(OR = 4.05, 95% CI 1.36-12.06)。在本研究人群中,BAC的存在与MACE相关,有助于证实ASCVD风险。我们的研究结果提供了证据,支持人工智能生成的BAC测量的潜在应用,这些测量来自标准护理乳房x线照片,以及广泛采用的ASCVD和CAC评分,以识别和风险分层CVD风险增加的女性,并可能从有针对性的预防措施中受益。
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