A machine learning model for non-invasive detection of atherosclerotic coronary artery aneurysm.
Ali A Rostam-AlilouMarziyeh SafariHamid R JarrahAli ZolfagharianMahdi BodaghiPublished in: International journal of computer assisted radiology and surgery (2022)
The non-invasive diagnosis of the atherosclerotic CAAs, which is one of the vital factors in the accomplishment of endovascular surgeries, is important due to some clinical decisions. Although there is no accurate tool for managing this kind of diagnosis, an ML model that can decrease the probability of endovascular surgical failures, death risk, and post-operational complications is proposed in this study. The model is able to increase the clinical decision accuracy for low-risk selection of treatment options.