AI-powered assessment of biomarkers for growth prediction of abdominal aortic aneurysms

Q3 Medicine
Arianna Forneris PhD , Richard Beddoes MSc , Mitchel Benovoy PhD , Peter Faris PhD , Randy D. Moore MD , Elena S. Di Martino PhD
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引用次数: 0

Abstract

Objective

The purpose of this study was to employ biomechanics-based biomarkers to locally characterize abdominal aortic aneurysm (AAA) tissue and investigate their relation to local aortic growth by means of an artificial intelligence model.

Methods

The study focused on a population of 36 patients with AAAs undergoing serial monitoring with electrocardiogram-gated multiphase computed tomography angiography acquisitions. The geometries of the aortic lumen and wall were reconstructed from the baseline scans and used for the baseline assessment of regional aortic weakness with three functional biomarkers, time-averaged wall-shear stress, in vivo principal strain, and intra-luminal thrombus thickness. The biomarkers were encoded as regional averages on axial and circumferential sections perpendicularly to the aortic centerline. Local diametric growth was obtained as difference in diameter between baseline and follow-up at the level of each axial section. An artificial intelligence model was developed to predict accelerated aneurysmal growth with the Extra Trees algorithm used as a binary classifier where the positive class represented regions that grew more than 2.5 mm/year. Additional clinical biomarkers, such as maximum aortic diameter at baseline, were also investigated as predictors of growth.

Results

The area under the curve for the constructed receiver operating characteristic curve for the Extra Trees classifier showed a very good performance in predicting relevant aortic growth (area under the curve = 0.92), with the three biomechanics-based functional biomarkers being objectively selected as the main predictors of growth.

Conclusions

The use of features based on the functional and local characterization of the aortic tissue resulted in a superior performance in terms of growth prediction when compared with models based on geometrical assessments. With rapid growth linked to increasing risk for patients with AAAs, the ability to access functional information related to tissue weakening and disease progression at baseline has the potential to support early clinical decisions and improve disease management.

Abstract Image

Abstract Image

Abstract Image

人工智能评估腹主动脉瘤生长预测的生物标志物
目的利用基于生物力学的生物标志物对腹主动脉瘤(AAA)组织进行局部表征,并通过人工智能模型研究其与局部主动脉瘤生长的关系。方法对36例AAAs患者进行心电图门控多相计算机断层扫描血管造影术采集的连续监测。根据基线扫描重建主动脉腔和主动脉壁的几何形状,并使用三种功能生物标志物,即时间平均壁剪切应力、体内主要应变和腔内血栓厚度,用于区域主动脉无力的基线评估。生物标志物被编码为垂直于主动脉中心线的轴向和周向切片的区域平均值。局部直径增长是作为基线和随访之间在每个轴向截面水平上的直径差异获得的。开发了一个人工智能模型来预测动脉瘤的加速生长,使用Extra Trees算法作为二元分类器,其中阳性类别代表生长超过2.5毫米/年的区域。还研究了其他临床生物标志物,如基线时的最大主动脉直径,作为生长的预测因子。结果Extra Trees分类器构建的受试者操作特征曲线的曲线下面积在预测相关主动脉生长方面表现出非常好的性能(曲线下面积=0.92),三种基于生物力学的功能生物标志物被客观地选择为生长的主要预测因子。结论与基于几何评估的模型相比,使用基于主动脉组织功能和局部特征的特征在生长预测方面具有更好的性能。随着AAAs患者的快速增长与风险增加有关,在基线时获取与组织弱化和疾病进展相关的功能信息的能力有可能支持早期临床决策并改善疾病管理。
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来源期刊
CiteScore
4.20
自引率
0.00%
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审稿时长
28 weeks
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