Classification of peripheral blood cell images using deep learning
Abstract
Diagnosis and Identification of cells and disease infected cells are and important
part of in medical science that bears huge significance even today. There are health
implications can often be identified my observing the morphological changes of cells
as well as the quantity of cells. The traditional methods of counting blood and
chemically identifying diseases can be expensive and/or time consuming to the extent
that only certain medical centres can perform the task at hand, or take days to
receive a report of. However, we believe Deep Learning with Convolutional Neural
Networks (CNNs) can take over most of this tedious process. In this work, we
aim towards creating a custom CNN model that can quickly classify different kinds
of peripheral blood cells such as the 7 different white blood cell types (basophils,
erythroblasts, ig, eosinophils, lymphocytes, monocytes, neutrophils) and platelets.
Such a model can be used in blood cell counts which can be used to identify cases
like leukemia. Moreover, such a method can be extended into other fields such as
red blood cell detection or even infected cell detection, which includes identifying
diseases from Sickle Cell Anemia to cells affected by Covid19. Our custom CNN
model has performed exceptionally well, achieving accuracies as high as 99.1% and
98.9% in training and validation respectively, which is significantly higher than using
pre-trained models such as DenseNet or NasNet. In more ways than one, we show
how our model is better suited for the task at hand.