Prescreening and treatment of aortic dissection through an analysis of infinite-dimension data.
Peng QiuYixuan LiKai LiuJinbao QinKaichuang YeTao ChenXinwu LuPublished in: BioData mining (2021)
The degree of slumpness is introduced to depict aortic morphological changes comprehensively. The morphology-based prediction model is associated with an improvement in the predictive accuracy of the prescreening of AD. The dynamic model reveals that blood pressure and heart rate variations have a strong predictive power for adverse events, confirming this model's ability to improve AD management.