Publication | Closed Access
Evaluations of deep convolutional neural networks for automatic identification of malaria infected cells
235
Citations
13
References
2017
Year
Unknown Venue
Convolutional Neural NetworkMedical Image SegmentationEngineeringMachine LearningMalariaDigital PathologyPathologyDisease DetectionImage ClassificationWhole Slide ImagesImage AnalysisData ScienceAutomatic IdentificationMachine Learning ModelAutomated Malaria DiagnosisMedical Image ComputingDeep LearningDeep Learning MethodsDeep Neural NetworksBioimage AnalysisMedicineCell Detection
This paper studied automatic identification of malaria infected cells using deep learning methods. We used whole slide images of thin blood stains to compile an dataset of malaria-infected red blood cells and non-infected cells, as labeled by a group of four pathologists. We evaluated three types of well-known convolutional neural networks, including the LeNet, AlexNet and GoogLeNet. Simulation results showed that all these deep convolution neural networks achieved classification accuracies of over 95%, higher than the accuracy of about 92% attainable by using the support vector machine method. Moreover, the deep learning methods have the advantage of being able to automatically learn the features from the input data, thereby requiring minimal inputs from human experts for automated malaria diagnosis.
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