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aneeshppt.pptx

  1. Automated Detection and classification of Meningioma Tumor from MR Images using optimized Deep learning Models 1 Aneesh S Perumprath Dr. K.Martin Sagayam (Guide)
  2. INTRODUCTION  Among brain tumors, menignomas are the most common and aggressive, leading to a very short life expectancy in their highest grade. Thus, treatment planning is a key stage to improve the quality of life of oncological patients.  Magnetic resonance imaging (MRI) is a widely used imaging technique to assess these tumors, but the large amount of data produced by MRI prevents manual identification in a reasonable time, limiting the use of precise quantitative measurements in the clinical practice. So, automatic and reliable segmentation and classification methods are required; 2 1
  3. REASERCH FOCUSSING (SCOPE)  For better treatment & its planning ,my research is mainly focused on:  (a) an accurate detection procedure of Menignoma tumor’s with the help of a fully automatic state of art segmentation procedure to determine tumour grade and location.  (b) A precise & automatic classification and grade identification of the detected tumor with minimum labour for the clinical expert using deep learning algorithm. 3 1
  4. Problem Statement  In brain MRI, segmentation is a mandatory task which can be done manually by an expert with good accuracy but time-consuming. At the same time, fully accurate and automatic segmentation approaches are not yet authentic. Currently, clustering based methods can be effectively applied to brain image segmentation, there are two main problems to be solved which are:  The sensitivity to noise and intensity inhomogeneity artifact  The trapping into local minima and dependency on initial clustering centroids. For the purpose of obtaining satisfactory segmentation performance and dealing with the problems mentioned above, an effective segmentation approach need to be developed within the scope of this research. 4 1
  5. Problem Statement  Moreover, presently various automated approaches are presented for brain tumors detection and type classification.  In most of these approaches Support Vector Machine (SVM) and Neural Networks (NN) are the widely used for their good performance over the last few decades.  But recently, deep learning (DL) models set an exciting trend in machine learning as the DL architecture can efficiently represent complex relationships without requiring a huge number of nodes like in the shallow architectures.  For the above reasons, in this research we plan to develop an automatic brain tumor grade identification with the help of effective segmentation along with Deep learning model 5 1
  6. BLOCK DIAGRAM 1 6 Segmentation Kmeans clustering CNN with HHO
  7. SUBJECTS  14EC3030 BIOLOGICAL SIGNAL PROCESSING.  14EC3031 MEDICAL IMAGE PROCESSING.  14EC3034COMPUTER BASED MEDICAL INSTRUMENTATION.  14EC3026 TESTING AND TESTABILITY.  14EC3003 COMPUTATIONAL INTELLIGENCE AND OPTIMIZATION TECHNIQUES  ece-2019%20(1).pdf 1 7
  8. DISCUSSIONS & THANKS 1 8
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