Bone Marrow Cytomorphology Cell Detection using InceptionResNetV2

05/09/2023
by   Raisa Fairooz Meem, et al.
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Critical clinical decision points in haematology are influenced by the requirement of bone marrow cytology for a haematological diagnosis. Bone marrow cytology, however, is restricted to reference facilities with expertise, and linked to inter-observer variability which requires a long time to process that could result in a delayed or inaccurate diagnosis, leaving an unmet need for cutting-edge supporting technologies. This paper presents a novel transfer learning model for Bone Marrow Cell Detection to provide a solution to all the difficulties faced for the task along with considerable accuracy. The proposed model achieved 96.19% accuracy which can be used in the future for analysis of other medical images in this domain.

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