Publication | Open Access
Classification of Thyroid Carcinoma in Whole Slide Images Using Cascaded CNN
18
Citations
17
References
2021
Year
Convolutional Neural NetworkEngineeringMachine LearningDigital PathologyPathologyCnn ArchitectureImage ClassificationWhole Slide ImagesImage AnalysisPattern RecognitionRadiation OncologyRadiologyHealth SciencesDermoscopic ImageThyroid CarcinomaMedical ImagingComputational PathologyMedical Image ComputingDeep LearningComputer VisionCategorizationThyroid Disease
The objective of this research is to build a “Whole Slide Images” classification system using Convolutional Neural Network (CNN). This system is capable of classifying Thyroid tumors into three types: Follicular adenoma, follicular carcinoma, and papillary carcinoma. Furthermore, the cascaded CNN technique is additionally employed to classify the classified follicular carcinoma into four subclasses: follicular carcinoma, papillary follicular variant, well-differentiated follicular carcinoma, and Poorly-differentiated follicular carcinoma. Results of the proposed CNN architecture showed effective classification of Thyroid carcinoma in the whole slide images with an overall accuracy of 94.69%. In the first classification stage, the images are classified into either one of three main types with an overall accuracy of 98.74%, while in the second classification stage, using the cascaded CNN, accuracy was 95.90% for further sub-classification into four sub-classes. Our cascaded CNN outperformed the accuracy of other studies due to splitting classification process of the thyroid into two stages which reduces the number of classes in each stage.
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