Research Article |
Feed Forward Neural Network based Brain Tumor Diagnosis in Magnetic Resonance Images
Author(s): M. P. Gaikwad1, R. B. Dhumale2, N. R. Dhumale3, P. B. Mane4, A. M. Umbrajkaar5 and A. N. Sarwade6
Published In : International Journal of Electrical and Electronics Research (IJEER) Volume 10, Issue 4, Special Issue on Complexity-BDA-ML
Publisher : FOREX Publication
Published : 30 October 2022
e-ISSN : 2347-470X
Page(s) : 915-920
Abstract
In the realm of medicine, value, resource use and final care are determined by good technological advancement. However, there are crucial components that must be present for a disease to be diagnosed. The monitoring of illness progression traditionally relies primarily on a subjective human judgment and is neither precise nor timely. One important aspect that utilizes data at various disease progression phases is to maintain routine disease surveillance. The Feed Forward Neural Network based Brain Tumor Diagnosis in Magnetic Resonance Images is provided in this paper as an automatic brain cancer diagnosis and grade classification method. It is highly helpful to have accurate information about the disease in order to classify it and make decisions. The suggested brain tumor diagnosis system can diagnose the condition and provide a reliable foundation for appropriate regulation, as opposed to manual approaches. Finally, the evaluated outcomes of the suggested model investigate numerous Magnetic Resonance Images of healthy and disease and demonstrate that, the proposed method has the highest accuracy.
Keywords: Brain tumor diagnosis
, feed forward neural network
, magnetic resonance images
, grade classification
.
M. P. Gaikwad, Department of Computer Engineering, Sri Satya Sai University of Technology & Medical Sciences, Sehore (M.P)
R. B. Dhumale*, AISSMS Institute of Information Technology, Pune, India; Email: rbd.scoe@gmail.com
N. R. Dhumale, Sinhgad College of Engineering, Pune, India
P. B. Mane, Dr. D. Y. Patil, Institute of Engineering, Management & Research, Akurdi, Pune
A. M. Umbrajkaar, AISSMS Institute of Information Technology, Pune, India
A. N. Sarwade, Sinhgad College of Engineering, Pune, India
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M. P. Gaikwad, R. B. Dhumale, N. R. Dhumale, P. B. Mane, A. M. Umbrajkaar and A. N. Sarwade (2022), Feed Forward Neural Network based Brain Tumor Diagnosis in Magnetic Resonance Images. IJEER 10(4), 915-920. DOI: 10.37391/IJEER.100427.