Description
Cancer is the most deadly and dreaded disease ever encountered by
mankind and tumor size plays a crucial role in
determining the severity and treatment for the same. Therefore it
becomes imperative to estimate the dimensions of the
associated tumor with paramount accuracy and precision so as to
enable radiologists and doctors, in general, to effectively
prescribe a treatment post diagnosis. Current estimation approaches
of tumor size involve the manual click and drag
measurements by radiologists which are functional but prone to a lot
of manual errors and redundancies. To improve the overall
accuracy and efficiency of the process, we propose our Deep learning
solution that uses DICOM scan images to determine the
dimensions of the tumor. Furthermore, our solution provides a 3D
representation of the tumor for clear perception and
comprehension and also provides treatment suggestions that aid
doctors throughout the treatment. Our pipeline consists of two
models namely, CNN model for detection performs with an accuracy of
97.6% and a ResUNet model to segment tumor out of the
brain image with accuracy of 91.54%