Multi-Class Neural Networks to Predict Lung Cancer

Lung Cancer is the leading cause of death among all the cancers’ in today’s world. The survival rate of the patients is 85% if the cancer can be diagnosed during Stage 1. Mining of the patient records can help in diagnosing cancer during Stage 1. Using a multi-class neural networks helps to identify the disease during its stage 1 itself. The implementation of multi-class neural networks has yielded an accuracy of 100%. The model created using the neural networks approach helps to identify lung cancer during Stage 1 itself, thus the survival rate of the patients can be increased. This model can serve as pre-diagnosis tool for the practitioners.

[1]  Qeethara Al-Shayea Artificial Neural Networks in Medical Diagnosis , 2024, International Journal of Research Publication and Reviews.

[2]  Anindya Halder,et al.  Semi-supervised fuzzy K-NN for cancer classification from microarray gene expression data , 2014, 2014 First International Conference on Automation, Control, Energy and Systems (ACES).

[3]  Marcel Dettling,et al.  BagBoosting for tumor classification with gene expression data , 2004, Bioinform..

[4]  Roslan Harun,et al.  Gene expression profiles predict survival of patients with advanced non-small cell lung cancers , 2011, 2011 Fourth International Conference on Modeling, Simulation and Applied Optimization.

[5]  He Miao,et al.  Hierarchical Clustering of Lung Cancer Related Genes , 2008, 2008 2nd International Conference on Bioinformatics and Biomedical Engineering.

[6]  Nello Cristianini,et al.  Support vector machine classification and validation of cancer tissue samples using microarray expression data , 2000, Bioinform..

[7]  Lulu Wang,et al.  Screening and Biosensor-Based Approaches for Lung Cancer Detection , 2017, Sensors.

[8]  P. Rajendiran,et al.  Using K-Means Clustering Technique to Study of Breast Cancer , 2014, 2014 World Congress on Computing and Communication Technologies.

[9]  Juliet Rani Rajan,et al.  A survey on mining techniques for early lung cancer diagnoses , 2013, 2013 International Conference on Green Computing, Communication and Conservation of Energy (ICGCE).

[10]  Wei Chen,et al.  A seed-based approach to identify risk disease sub-networks in human lung cancer , 2012, 2012 IEEE 6th International Conference on Systems Biology (ISB).

[11]  J. Soh,et al.  Hereditary Lung Cancer Syndrome Targets Never Smokers with Germline EGFR Gene T790M Mutations , 2014, Journal of thoracic oncology : official publication of the International Association for the Study of Lung Cancer.

[12]  Nitin K. Singh,et al.  Predicting tumor-suppressing genes in cancer via clustering the developmental stage gene expression profile , 2011, 2011 IEEE/NIH Life Science Systems and Applications Workshop (LiSSA).