CORA: A Pathology Synthesis Driven Foundation Model for Coronary CT Angiography Analysis and MACE Risk Assessment

arXiv cs.CV / 3/27/2026

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Key Points

  • CORAは冠動脈CT血管造影(CCTA)を対象にした、病理に焦点を当てた3Dビジョン系の基盤モデルで、自己教師あり学習で表現を獲得します。
  • 従来のラベルなし事前学習が全体解剖学統計に偏りがちで、局所的なプラーク病変を捉えにくいという課題に対し、解剖ガイド付きの病変合成エンジンで学習を病理側に寄せます。
  • 12,801件のラベルなし3D CCTAで学習し、9施設のマルチセンターデータで、プラーク特性・狭窄検出・冠動脈セグメンテーション等の複数タスクでSOTAの3D基盤モデルより最大29%の性能向上を報告しています。
  • 画像エンコーダと大規模言語モデルを結合してマルチモーダル化することで、30日MACEリスク層別化を改善したとしています。

Abstract

Coronary artery disease, the leading cause of cardiovascular mortality worldwide, can be assessed non-invasively by coronary computed tomography angiography (CCTA). Despite progress in automated CCTA analysis using deep learning, clinical translation is constrained by the scarcity of expert-annotated datasets. Furthermore, widely adopted label-free pretraining strategies, such as masked image modeling, are intrinsically biased toward global anatomical statistics, frequently failing to capture the spatially localized pathological features of coronary plaques. Here, we introduce CORA, a 3D vision foundation model for comprehensive cardiovascular risk assessment. CORA learns directly from volumetric CCTA via a pathology-centric, synthesis-driven self-supervised framework. By utilizing an anatomy-guided lesion synthesis engine, the model is explicitly trained to detect simulated vascular abnormalities, biasing representation learning toward clinically relevant disease features rather than dominant background anatomy. We trained CORA on a large-scale cohort of 12,801 unlabeled CCTA volumes and comprehensively evaluated the model across multi-center datasets from nine independent hospitals. Across diagnostic and anatomical tasks, including plaque characterization, stenosis detection, and coronary artery segmentation, CORA consistently outperformed the state-of-the-art 3D vision foundation models, achieving up to a 29\% performance gain. Crucially, by coupling the imaging encoder with a large language model, we extended CORA into a multimodal framework that significantly improved 30-day major adverse cardiac event (MACE) risk stratification. Our results establish CORA as a scalable and extensible foundation for unified anatomical assessment and cardiovascular risk prediction.
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