Myeloma is a type of blood cancer that affects the
plasma cells in the bone marrow, which produces antibodies
that help the immune system to fight against outside
aggression. Myeloma results in production of abnormal antibodies thereby weaking the function of the immune system.
Out of the different types of blood cancers, the proposed
research provides a robust mechanism for Multiple
Myeloma (MM) prediction using 85 Microscopic blood
images that were captured from bone marrow aspiration of
patients suffering from the disease. The proposed work
eradicates the probability of errors in the manual process of
feature extraction by employing Convolutional Neural
Network (CNN) for it and this is followed by training the
model with Artificial Neural Networks (ANN), Support
Vector Machine (SVM), Random Forest algorithms for
classification. Along with SVM and Random Forest we used
Random Search Optimizer for finding the suitable set of
hyper parameters for better results. The overall accuracy
was recorded to be 95%, for CNN-ANN model. Thus, the
model can be used effectively for determining the Multiple
Myeloma from the cell images.

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