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Cancer has been a plague in our society since the dawn of recorded history. The radical surgical resection represents the only chance for cure but, unfortunately it is possible in only 15 % of patients. Even at experienced centers the 5 year survival rates for the most favorable patients who undergo resection and adjuvant therapy are less than 20 %. In this paper, a methodology is proposed for identifying the bone cancer affected part. The methodology involves scanned images captured at various locations of the human body which are collected from different diagnostic labs. Based on region growing algorithm, the segmentation is carried out to analyze the tumor part through which the intensity of cancer and the stage at which the tumor relies is empirically calculated.
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- A Novel Methodology to Detect Bone Cancer Stage Using Mean Intensity of MRI Imagery and Region Growing Algorithm
K. E. Balachandrudu
C. Kishor Kumar Reddy
G. V. S. Raju
P. R. Anisha
- Springer Singapore