Publication | Open Access
Identification of Anemia and Its Severity Level in a Peripheral Blood Smear Using 3-Tier Deep Neural Network
30
Citations
50
References
2022
Year
Convolutional Neural NetworkMedical Image SegmentationEngineeringMachine LearningDiagnosisTier Deep ConvolutionalDisease DetectionBiomedical EngineeringBiomedical Artificial IntelligenceImage ClassificationImage AnalysisPattern RecognitionHematologySeverity LevelPredictive BiomarkersBlood Cell ElementsLaboratory MedicineRadiologyMachine VisionMedical ImagingAnemia Severity LevelComputational PathologyDeep LearningMedical Image ComputingComputer VisionBioimage AnalysisBiomedical ImagingInnovative DiagnosticsComputer-aided DiagnosisMedicineBlood TransfusionCell Detection
The automatic detection of blood cell elements for identifying morphological deformities is still a challenging research domain. It has a pivotal role in cognition and detecting the severity level of disease. Using a simple microscope, manual disease detection, and morphological disorders in blood cells is mostly time-consuming and erroneous. Due to the overlapped structure of RBCs, pathologists face challenges in differentiating between normal and abnormal cell shape and size precisely. Currently, convolutional neural network-based algorithms are effective tools for addressing this issue. Existing techniques fail to provide effective anemia detection, and severity level prediction due to RBCs’ dense and overlapped structure, non-availability of standard datasets related to blood diseases, and severity level detection techniques. This work proposed a three tier deep convolutional fused network (3-TierDCFNet) to extract optimum morphological features and identify anemic images to predict the severity of anemia. The proposed model comprises two modules: Module-I classifies the input image into two classes, i.e., Healthy and Anemic, while Module-II detects the anemia severity level and categorizes it into Mild or Chronic. After each tier’s training, a validation function is employed to reduce the inappropriate feature selection. To authenticate the proposed model for healthy, anemic RBC classification and anemia severity level detection, a state-of-the-art anemic and healthy RBC dataset was developed in collaboration with Shaukat Khanum Hospital and Research Center (SKMCH&RC), Pakistan. To evaluate the proposed model, the training, validation, and test accuracies were computed along with recall, F1-Score, and specificity. The global results reveal that the proposed model achieved 91.37%, 88.85%, and 86.06% training, validation, and test accuracies with 98.95%, 98.12%, and 98.12% recall F1-Score and specificity, respectively.
| Year | Citations | |
|---|---|---|
Page 1
Page 1