Performance of Radiomics derived morphological features for prediction of aneurysm rupture status

被引:33
作者
Ludwig, Calvin Gerald [1 ]
Lauric, Alexandra [1 ]
Malek, Justin A. [1 ]
Mulligan, Ryan [1 ]
Malek, Adel M. [1 ]
机构
[1] Tufts Med Ctr, Dept Neurosurg, Boston, MA 02111 USA
关键词
aneurysm; stroke; angiography; subarachnoid; UNRUPTURED INTRACRANIAL ANEURYSMS; WALL SHEAR-STRESS; BOTTLENECK FACTOR; NATURAL-HISTORY; ASPECT RATIO; RISK; ASSOCIATION;
D O I
10.1136/neurintsurg-2020-016808
中图分类号
R445 [影像诊断学];
学科分类号
100207 ;
摘要
Background Morphological differences between ruptured and unruptured cerebral aneurysms represent a focus of neuroimaging researchfor understanding the mechanisms of aneurysmal rupture. We evaluated the performance of Radiomics derived morphological features, recently proposed for rupture status classification, against automatically measured shape and size features previously established in the literature. Methods 353 aneurysms (123 ruptured) from three-dimensional rotational catheter angiography (3DRA) datasets were analyzed. Based on a literature review, 13 Radiomics and 13 established morphological descriptors were automatically extracted per aneurysm, and evaluated for rupture status prediction using univariate and multivariate statistical analysis, yielding an area under the curve (AUC) metric of the receiver operating characteristic. Results Validation of overlapping descriptors for size/volume using both methods were highly correlated (p<0.0001, R (2)=0.99). Univariate analysis selected AspectRatio (p<0.0001, AUC=0.75), Non-sphericity Index (p<0.0001, AUC=0.75), Height/Width (p<0.0001, AUC=0.73), and SizeRatio (p<0.0001, AUC=0.73) as best among established descriptors, and Elongation (p<0.0001, AUC=0.71) and Flatness (p<0.0001, AUC=0.72) among Radiomics features. Radiomics Elongation correlated best with established Height/Width (R (2)=0.52), whereas Radiomics Flatness correlated best with Ellipticity Index (R (2)=0.54). Radiomics Sphericity correlated best with Undulation Index (R (2)=0.65). Best Radiomics performers, Elongation and Flatness, were highly correlated descriptors (p<0.0001, R (2)=0.75). In multivariate analysis, established descriptors (Height/Width, SizeRatio, Ellipticity Index; AUC=0.79) outperformed Radiomics features (Elongation, Maximum3Ddiameter; AUC=0.75). Conclusion Although recently introduced Radiomics analysis for aneurysm shape and size evaluation has the advantage of being an efficient operator independent methodology, it currently offers inferior rupture status discriminant performance compared with established descriptors. Future research is needed to extend the current Radiomics feature set to better capture aneurysm shape information.
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页码:755 / +
页数:8
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