Publication | Open Access
AUTOMATED DIAGNOSIS OF BRAIN TUMOURS ASTROCYTOMAS USING PROBABILISTIC NEURAL NETWORK CLUSTERING AND SUPPORT VECTOR MACHINES
48
Citations
25
References
2005
Year
Pediatric Brain TumorsEngineeringDigital PathologyBrain Astrocytomas MalignancyDiagnosisPathologyGliomaUnsupervised Machine LearningDiagnostic ImagingNeuro-oncologyImage AnalysisData MiningPattern RecognitionNeurologyNeuropathologyNuclear MedicineRadiologyMedical ImagingVisual DiagnosisHistopathologyNuclear FeaturesNeuroimagingMedical Image ComputingDiagnostic NeuroradiologyRadiomicsComputer-aided Diagnosis SystemComputer-aided DiagnosisNeuroscienceMedicineMedical Image Analysis
A computer-aided diagnosis system was developed for assisting brain astrocytomas malignancy grading. Microscopy images from 140 astrocytic biopsies were digitized and cell nuclei were automatically segmented using a Probabilistic Neural Network pixel-based clustering algorithm. A decision tree classification scheme was constructed to discriminate low, intermediate and high-grade tumours by analyzing nuclear features extracted from segmented nuclei with a Support Vector Machine classifier. Nuclei were segmented with an average accuracy of 86.5%. Low, intermediate, and high-grade tumours were identified with 95%, 88.3%, and 91% accuracies respectively. The proposed algorithm could be used as a second opinion tool for the histopathologists.
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