E-ISSN 2577-5669
 

Research Article 


Application of Convolutional Neural Network for Cancer Disease Diagnosis – A Deep Learning based Approach

S. Sivanantham*, Dr. Hema Kumar M, A. K. Velmurugan, Dr.K.Deepa, Akshaya V5.

Abstract
Human are vulnerable to the terrible disease named cancer, which is a major factor in the high mortality rate. There
are currently lesser DLTs (Deep learning techniques) or MLTs (machine learning techniques) for identifying cancer,
despite advances in cancer treatment approaches. The proposed work performs a comparative study which compares
the some significant DLTs like RFs (Random Forests), LSTMs (Long Short Term Memories), CNNs (Convolutional Neural
Networks) and BPNNs (Back Propagation Neural Networks). These techniques are used here in this work for
classification problem. The techniques are made to classify the medical records into benignand cancerous. Three
pathological datasets are used to evaluate the above said techniques. CNNs provide the best performance of 0.97
accuracy and it is even good at its values of precisions, recalls and F1 scores.

Key words: Application, Neural, Deep, Learning


 
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How to Cite this Article
Pubmed Style

S. Sivanantham, Dr. Hema Kumar M , A. K. Velmurugan , Dr.K.Deepa , Akshaya V. Application of Convolutional Neural Network for Cancer Disease Diagnosis – A Deep Learning based Approach. J Complement Med Res. 2023; 14(1): 69-75. doi:10.5455/jcmr.2023.14.01.14


Web Style

S. Sivanantham, Dr. Hema Kumar M , A. K. Velmurugan , Dr.K.Deepa , Akshaya V. Application of Convolutional Neural Network for Cancer Disease Diagnosis – A Deep Learning based Approach. https://www.jocmr.com/?mno=141892 [Access: May 26, 2023]. doi:10.5455/jcmr.2023.14.01.14


AMA (American Medical Association) Style

S. Sivanantham, Dr. Hema Kumar M , A. K. Velmurugan , Dr.K.Deepa , Akshaya V. Application of Convolutional Neural Network for Cancer Disease Diagnosis – A Deep Learning based Approach. J Complement Med Res. 2023; 14(1): 69-75. doi:10.5455/jcmr.2023.14.01.14



Vancouver/ICMJE Style

S. Sivanantham, Dr. Hema Kumar M , A. K. Velmurugan , Dr.K.Deepa , Akshaya V. Application of Convolutional Neural Network for Cancer Disease Diagnosis – A Deep Learning based Approach. J Complement Med Res. (2023), [cited May 26, 2023]; 14(1): 69-75. doi:10.5455/jcmr.2023.14.01.14



Harvard Style

S. Sivanantham, Dr. Hema Kumar M , A. K. Velmurugan , Dr.K.Deepa , Akshaya V (2023) Application of Convolutional Neural Network for Cancer Disease Diagnosis – A Deep Learning based Approach. J Complement Med Res, 14 (1), 69-75. doi:10.5455/jcmr.2023.14.01.14



Turabian Style

S. Sivanantham, Dr. Hema Kumar M , A. K. Velmurugan , Dr.K.Deepa , Akshaya V. 2023. Application of Convolutional Neural Network for Cancer Disease Diagnosis – A Deep Learning based Approach. Journal of Complementary Medicine Research, 14 (1), 69-75. doi:10.5455/jcmr.2023.14.01.14



Chicago Style

S. Sivanantham, Dr. Hema Kumar M , A. K. Velmurugan , Dr.K.Deepa , Akshaya V. "Application of Convolutional Neural Network for Cancer Disease Diagnosis – A Deep Learning based Approach." Journal of Complementary Medicine Research 14 (2023), 69-75. doi:10.5455/jcmr.2023.14.01.14



MLA (The Modern Language Association) Style

S. Sivanantham, Dr. Hema Kumar M , A. K. Velmurugan , Dr.K.Deepa , Akshaya V. "Application of Convolutional Neural Network for Cancer Disease Diagnosis – A Deep Learning based Approach." Journal of Complementary Medicine Research 14.1 (2023), 69-75. Print. doi:10.5455/jcmr.2023.14.01.14



APA (American Psychological Association) Style

S. Sivanantham, Dr. Hema Kumar M , A. K. Velmurugan , Dr.K.Deepa , Akshaya V (2023) Application of Convolutional Neural Network for Cancer Disease Diagnosis – A Deep Learning based Approach. Journal of Complementary Medicine Research, 14 (1), 69-75. doi:10.5455/jcmr.2023.14.01.14