Deep Learning Model of Diastolic Dysfunction Risk Stratifies the Progression of Early-Stage Aortic Stenosis.

IF 12.8 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS JACC. Cardiovascular imaging Pub Date : 2024-09-05 DOI:10.1016/j.jcmg.2024.07.017
Márton Tokodi, Rohan Shah, Ankush Jamthikar, Neil Craig, Yasmin Hamirani, Grace Casaclang-Verzosa, Rebecca T Hahn, Marc R Dweck, Philippe Pibarot, Naveena Yanamala, Partho P Sengupta
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Abstract

Background: The development and progression of aortic stenosis (AS) from aortic valve (AV) sclerosis is highly variable and difficult to predict.

Objectives: The authors investigated whether a previously validated echocardiography-based deep learning (DL) model assessing diastolic dysfunction (DD) could identify the latent risk associated with the development and progression of AS.

Methods: The authors evaluated 898 participants with AV sclerosis from the ARIC (Atherosclerosis Risk In Communities) cohort study and associated the DL-predicted probability of DD with 2 endpoints: 1) the new diagnosis of AS; and 2) the composite of subsequent mortality or AV interventions. Validation was performed in 2 additional cohorts: 1) in 50 patients with mild-to-moderate AS undergoing cardiac magnetic resonance (CMR) imaging and serial echocardiographic assessments; and 2) in 18 patients with AV sclerosis undergoing 18F-sodium fluoride (NaF) and 18F-fluorodeoxyglucose positron emission tomography (PET) combined with computed tomography (CT) to assess valvular inflammation and calcification.

Results: In the ARIC cohort, a higher DL-predicted probability of DD was associated with the development of AS (adjusted HR: 3.482 [95% CI: 2.061-5.884]; P < 0.001) and subsequent mortality or AV interventions (adjusted HR: 7.033 [95% CI: 3.036-16.290]; P < 0.001). The multivariable Cox model (incorporating the DL-predicted probability of DD) derived from the ARIC cohort efficiently predicted the progression of AS (C-index: 0.798 [95% CI: 0.648-0.948]) in the CMR cohort. Moreover, the predictions of this multivariable Cox model correlated positively with valvular 18F-NaF mean standardized uptake values in the PET/CT cohort (r = 0.62; P = 0.008).

Conclusions: Assessment of DD using DL can stratify the latent risk associated with the progression of early-stage AS.

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舒张功能障碍风险深度学习模型为早期主动脉瓣狭窄的进展分层
背景:主动脉瓣(AV)硬化引起的主动脉瓣狭窄(AS)的发展和进展变化很大且难以预测:作者研究了之前经过验证的基于超声心动图的舒张功能障碍(DD)评估深度学习(DL)模型能否识别与主动脉瓣狭窄的发展和进展相关的潜在风险:作者评估了来自 ARIC(社区动脉粥样硬化风险)队列研究的 898 名患有房室硬化症的参与者,并将 DL 预测的 DD 概率与 2 个终点相关联:1)强直性脊柱炎的新诊断;2)随后的死亡率或房室介入治疗的综合结果。在另外两个队列中进行了验证:1)50 名轻度至中度 AS 患者接受心脏磁共振(CMR)成像和连续超声心动图评估;2)18 名房室硬化患者接受 18F 氟化钠(NaF)和 18F 氟脱氧葡萄糖正电子发射断层扫描(PET)联合计算机断层扫描(CT)评估瓣膜炎症和钙化:在ARIC队列中,DD的DL预测概率越高,AS的发病率越高(调整后HR:3.482 [95% CI:2.061-5.884];P < 0.001),随后的死亡率或AV干预率也越高(调整后HR:7.033 [95% CI:3.036-16.290];P < 0.001)。来自 ARIC 队列的多变量 Cox 模型(包含 DL 预测的 DD 概率)可有效预测 CMR 队列中 AS 的进展(C 指数:0.798 [95% CI:0.648-0.948])。此外,这一多变量 Cox 模型的预测值与 PET/CT 队列中的瓣膜 18F-NaF 平均标准化摄取值呈正相关(r = 0.62;P = 0.008):结论:使用 DL 评估 DD 可以对与早期 AS 进展相关的潜在风险进行分层。
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来源期刊
JACC. Cardiovascular imaging
JACC. Cardiovascular imaging CARDIAC & CARDIOVASCULAR SYSTEMS-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
24.90
自引率
5.70%
发文量
330
审稿时长
4-8 weeks
期刊介绍: JACC: Cardiovascular Imaging, part of the prestigious Journal of the American College of Cardiology (JACC) family, offers readers a comprehensive perspective on all aspects of cardiovascular imaging. This specialist journal covers original clinical research on both non-invasive and invasive imaging techniques, including echocardiography, CT, CMR, nuclear, optical imaging, and cine-angiography. JACC. Cardiovascular imaging highlights advances in basic science and molecular imaging that are expected to significantly impact clinical practice in the next decade. This influence encompasses improvements in diagnostic performance, enhanced understanding of the pathogenetic basis of diseases, and advancements in therapy. In addition to cutting-edge research,the content of JACC: Cardiovascular Imaging emphasizes practical aspects for the practicing cardiologist, including advocacy and practice management.The journal also features state-of-the-art reviews, ensuring a well-rounded and insightful resource for professionals in the field of cardiovascular imaging.
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