Abstract:
Brain tumors are a leading cause of mortality in India, with over 28,000 cases reported annually, resulting in more than 24,000
deaths per year as per the International Association of Cancer Registries. Early detection, segmentation, and accurate classification are
crucial in effective tumor analysis, and various algorithms have been developed to achieve this. This study proposes a new approach
for the detection and classification of Meningioma and Sarcoma brain tumors using both single slices of MRI and CT, as well as
input-level fused images of MRI & CT. Our approach involves the implementation of the PrinciResNet16 model for classification
of brain tumors. This model is based on Principal Component Analysis (PCA) and ResNet techniques. We report that our approach
significantly improves the accuracy, sensitivity, and specificity parameters to 99%, 95%, and 95%, respectively, based on a dataset of
600 fused slices and 1000 single slices obtained from reputable sources. Our findings hold promise for better brain tumour detection
and therapy, which are a significant cause of mortality globally.