Publication | Closed Access
Deep Metric Learning for Identification of Mitotic Patterns of HEp-2 Cell Images
12
Citations
19
References
2019
Year
Unknown Venue
Hep-2 Cell ImagesDeep Metric LearningEngineeringMachine LearningDigital PathologyPathologyMitotic Staining PatternsImage ClassificationImage AnalysisPattern RecognitionBiostatisticsCell DivisionHistopathologyMedical Image ComputingDeep LearningMitotic PatternsCell BiologyMicroscope Image ProcessingBioimage AnalysisComputational BiologyBiomedical ImagingMitotic TypeMicroscopy ImagesCellular StructureSystems BiologyMedicineCell Detection
Automatic identification of mitotic type staining patterns in microscopy images is an important and challenging task, in computer-aided diagnosis (CAD) of autoimmune diseases. Such patterns are manifested on a HEp-2 based cell substrate and captured via Indirect immunoflourescence (IIF) based microscopy imaging technique. The present study proposes a deep metric learning methodology, in order to identify the mitotic staining patterns which are rather rare, among several other interphase patterns present in majority. Hence, the problem is framed as a mitotic v/s non-mitotic/interphase pattern classification problem. Here, the implemented network maps the input images into a latent space, in order to compare the distances between the samples, for class declaration, via a triplet-loss based framework. The framework yields good classification performance as max. 0.85 Matthews correlation coefficient in one case, with less false positive cases, when validated over a public dataset.
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