Publication | Open Access
Thyroid Nodule Classification for Physician Decision Support Using Machine Learning-Evaluated Geometric and Morphological Features
38
Citations
21
References
2020
Year
EngineeringMachine LearningThyroid Imaging ReportingDigital PathologyDiagnosisPathologyMorphological FeaturesDiagnostic ImagingImage AnalysisPattern RecognitionBiostatisticsRadiologyMedical ImagingHistopathologyUltrasoundMedical Image ComputingThyroid Nodule ClassificationRadiomicsThyroid NodulesData ClassificationComputer-aided DiagnosisMedicineMedical Image AnalysisHealth Informatics
The classification of thyroid nodules using ultrasound (US) imaging is done using the Thyroid Imaging Reporting and Data System (TIRADS) guidelines that classify nodules based on visual and textural characteristics. These are composition, shape, size, echogenicity, calcifications, margins, and vascularity. This work aims to reduce subjectivity in the current diagnostic process by using geometric and morphological (G-M) features that represent the visual characteristics of thyroid nodules to provide physicians with decision support. A total of 27 G-M features were extracted from images obtained from an open-access US thyroid nodule image database. 11 significant features in accordance with TIRADS were selected from this global feature set. Each feature was labeled (0 = benign and 1 = malignant) and the performance of the selected features was evaluated using machine learning (ML). G-M features together with ML resulted in the classification of thyroid nodules with a high accuracy, sensitivity and specificity. The results obtained here were compared against state-of the-art methods and perform significantly well in comparison. Furthermore, this method can act as a computer aided diagnostic (CAD) system for physicians by providing them with a validation of the TIRADS visual characteristics used for the classification of thyroid nodules in US images.
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