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This book comprises select peer-reviewed proceedings of the medical
challenge - C-NMC challenge: Classification of normal versus
malignant cells in B-ALL white blood cancer microscopic images. The
challenge was run as part of the IEEE International Symposium on
Biomedical Imaging (IEEE ISBI) 2019 held at Venice, Italy in April
2019. Cell classification via image processing has recently gained
interest from the point of view of building computer-assisted
diagnostic tools for blood disorders such as leukaemia. In order to
arrive at a conclusive decision on disease diagnosis and degree of
progression, it is very important to identify malignant cells with
high accuracy. Computer-assisted tools can be very helpful in
automating the process of cell segmentation and identification
because morphologically both cell types appear similar. This
particular challenge was run on a curated data set of more than
14000 cell images of very high quality. More than 200 international
teams participated in the challenge. This book covers various
solutions using machine learning and deep learning approaches. The
book will prove useful for academics, researchers, and
professionals interested in building low-cost automated diagnostic
tools for cancer diagnosis and treatment.
This book comprises select peer-reviewed proceedings of the medical
challenge - C-NMC challenge: Classification of normal versus
malignant cells in B-ALL white blood cancer microscopic images. The
challenge was run as part of the IEEE International Symposium on
Biomedical Imaging (IEEE ISBI) 2019 held at Venice, Italy in April
2019. Cell classification via image processing has recently gained
interest from the point of view of building computer-assisted
diagnostic tools for blood disorders such as leukaemia. In order to
arrive at a conclusive decision on disease diagnosis and degree of
progression, it is very important to identify malignant cells with
high accuracy. Computer-assisted tools can be very helpful in
automating the process of cell segmentation and identification
because morphologically both cell types appear similar. This
particular challenge was run on a curated data set of more than
14000 cell images of very high quality. More than 200 international
teams participated in the challenge. This book covers various
solutions using machine learning and deep learning approaches. The
book will prove useful for academics, researchers, and
professionals interested in building low-cost automated diagnostic
tools for cancer diagnosis and treatment.
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