Publication | Closed Access
Fully automated endocardial contour detection in time sequences of echocardiograms by active appearance motion models
10
Citations
3
References
2002
Year
Unknown Venue
EngineeringBiometricsBorder Detection TechniqueDiagnostic ImagingImage Sequence AnalysisTime SequencesImage AnalysisPattern RecognitionBiostatisticsPublic HealthCardiologyRadiologyCardiovascular ImagingMachine VisionMedical ImagingMedical Image ComputingComputer VisionSingle-frame Aam SegmentationEndocardial Contour DetectionComputer-aided DiagnosisTime-continuous SegmentationMedical Image AnalysisImage SegmentationMotion Analysis
A novel fully automated border detection technique for phase-normalized echocardiographic image sequences is developed: Active Appearance-Motion Models (AAMM). AAMM finds shape and appearance eigenvariations of the heart over the full cardiac cycle from a set of examples, capturing typical motion patterns. AAMM segments sequences by adjusting eigenvariation coefficients to minimize model-to-target differences. This results in a time-continuous segmentation. The method was applied on 4-chamber sequences from 129 unselected patients, split randomly into training (TRN, n=65) and test set (TST, n=64). In all sequences, an independent expert manually drew endocardial contours (MAN). On TST, fully automated AAMM succeeded in 97% of cases (AUTO) and performed well (average contour distance 3.3 mm, area regression AUTO=0.91 *MAN+1.7 cm/sup 2/, r=0.87). Results outperformed single-frame AAM segmentation and human interobserver variabilities.
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