Introduction:
Brain tumor is among the major causes of morbidity and mortality rates worldwide. According to
National Brain Tumor Foundation (NBTS), the death rate has nearly increased by as much as 300% over last couple of
decades. Tumors can be categorized as benign (non-cancerous) and malignant (cancerous). The type of the brain tumor
significantly depends on various factors like the site of its occurrence, its shape, the age of the subject etc. On the other
hand, Computer Aided Detection (CAD) has been improving significantly in recent times. The concept, design and
implementation of these systems ascend from fairly simple ones to computationally intense ones. For efficient and
effective diagnosis and treatment plans in brain tumor studies, it is imperative that an abnormality is detected at an early
stage as it provides a little more time for medical professionals to respond. The early detection of diseases has
predominantly been possible because of medical imaging techniques developed from past many decades like CT, MRI,
PET, SPECT, FMRI etc. The detection of brain tumors however, has always been a challenging task because of the
complex structure of the brain, diverse tumor sizes and locations in the brain.
Method:
This paper proposes an algorithm that can detect the brain tumors in the presence of the Radio-Frequency (RF)
inhomoginiety. The algorithm utilizes the Mid Sagittal Plane as a landmark point across which the asymmetry between
the two brain hemispheres is estimated using various intensity and texture based parameters.
Result:
The results show the efficacy of the proposed method for the detection of the brain tumors with an acceptable
detection rate.
Conclusion:
In this paper, we have calculated three textural features from the two hemispheres of the brain viz: Contrast
(CON), Entropy (ENT) and Homogeneity (HOM) and three parameters viz: Root Mean Square Error (RMSE),
Correlation Co-efficient (CC), and Integral of Absolute Difference (IAD) from the intensity distribution profiles of the
two brain hemispheres to predict any presence of the pathology. First a Mid Sagittal Plane (MSP) is obtained on the
Magnetic Resonance Images that virtually divides brain into two bilaterally symmetric hemispheres. The block wise
texture asymmetry is estimated for these hemispheres using the above 6 parameters.