Publication | Open Access
Automated stent coverage analysis in intravascular OCT (IVOCT) image volumes using a support vector machine and mesh growing
35
Citations
36
References
2019
Year
EngineeringMachine LearningMachine Learning ToolDiagnosisSurgeryBiomedical EngineeringImage VolumesUncovered StrutsSupport Vector MachineClassification MethodImage AnalysisData SciencePattern RecognitionVascular SurgeryMesh GrowingBiostatisticsRadiologyCardiovascular ImagingVascular ImageMedical ImagingVascular-stent Tissue CoverageDeep LearningMedical Image ComputingStent Coverage AnalysisDigital Subtraction AngiographyActive LearningComputer-aided DiagnosisClassifier SystemMedicineMedical Image AnalysisHealth Informatics
Absence of vascular-stent tissue coverage by IVOCT is a biomarker for potential stent-related thrombosis. We developed highly-automated algorithms to classify covered and uncovered struts and quantitatively evaluate stent apposition. We trained a machine learning model on 7,125 images, and included an active learning, relabeling step to improve noisy labels. We obtained uncovered strut classification sensitivity/specificity (94%/90%) comparable to analyst inter-and-intra-observer variability and AUC (0.97), and tissue coverage thickness measurement arguably better than the commercial product. By comparing classification models from regular and relabeled data sets, we observed robustness of the support vector machine to noisy data. A graph-based algorithm detected clusters of uncovered struts thought to pose a greater risk than isolated uncovered struts. The software enables highly-automated, objective, repeatable, comprehensive stent analysis.
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