患者特异性肺动脉树数字孪生:用于提取肺栓塞生物标志物 / A Patient-Specific Pulmonary Arterial Tree Digital Twin to Extract Pulmonary Embolism Biomarkers
1️⃣ 一句话总结
本研究开发了一种自动化流程,通过构建患者肺动脉树的数字孪生模型,自动提取肺栓塞的影像生物标志物(如血管堵塞程度、严重程度评分等),从而快速、精准地提供血栓负荷和空间分布信息,有望简化临床风险分层并辅助治疗决策。
Pulmonary embolism, the obstruction of a pulmonary artery by a blood clot, is one of the leading causes of acute cardiovascular syndrome. In clinical practice, therapeutic decisions after diagnosis via computed tomography pulmonary angiography rely on risk stratification, which categorizes 30-day mortality risk into three categories. This stratification depends on the right-to-left ventricular diameter ratio and blood levels of two cardiac enzymes. However, blood biomarkers are not always available in emergency settings, and manual calculation of established severity scores - such as Qanadli and Mastora - is time-consuming and rarely performed in clinical routine practice. This study introduces an automated pipeline that models a directed graph representation of the pulmonary arterial tree, labeling its hierarchical structure and characterizing pulmonary embolism. The pipeline derives image-based biomarkers, including local artery-level features (morphological information, hierarchical position, clot volume, and resulting obstruction) and global patient-level biomarkers such as automatically calculated severity scores (Qanadli and Mastora) and the total embolic volume distribution by lobes and hierarchical levels. Using artificial-intelligence-generated binary masks of arteries, emboli, lungs, and lobes, it creates a patient digital twin of the arterial structure. Validation of the pipeline through comparison to an existing pipeline, anatomical expectations, and manual severity score calculations demonstrates the pipeline's ability to automatically generate anatomically accurate digital twins and severity scores with strong agreement. This supports the potential of these image-derived biomarkers to automatically provide rapid, precise information on thrombotic burden and spatial clot distribution.
患者特异性肺动脉树数字孪生:用于提取肺栓塞生物标志物 / A Patient-Specific Pulmonary Arterial Tree Digital Twin to Extract Pulmonary Embolism Biomarkers
本研究开发了一种自动化流程,通过构建患者肺动脉树的数字孪生模型,自动提取肺栓塞的影像生物标志物(如血管堵塞程度、严重程度评分等),从而快速、精准地提供血栓负荷和空间分布信息,有望简化临床风险分层并辅助治疗决策。
源自 arXiv: 2605.28217