A Deep Neural Network Approach for Cancer Types Classification Using Gene Selection
Keywords:
Deep Learning, Artificial intelligence Neural Network, Autoencoder, K-Nearest Neighbor, Deep Recurrent Neural NetworkAbstract
Florence Omada Ocheme, Hakeem Adewale Sulaimon and Adamu Abubakar Isah
Cancer classification research is one of the significant areas of exploration in the clinical field. Exact forecasting of various tumor types is an extraordinary challenge and giving an exact forecast will have incredible worth in giving better treatment to the patients. In recent years, many analysis-based investigations have led to the revelation of information on disease subtypes, that has generated high throughput innovations Lately, researchers have attempted to dissect a lot of microarray information for getting significant data that can be utilized in malignancy grouping. To accomplish this objective, one can utilize K-Nearest Neighbor, Neural Networks, Decision Tree, Support Vector a that would provide approaches needed to break down microarray information towards the choice of best separating quality called biomarker. These machine learning methodologies had the inherent ability to represent the time varying behavior of the underlying biological network that allows for a better representation of spatiotemporal input-output dependencies. Therefore, the exploitation of time series data regarding deep learning has to have become a valuable strategy for deciphering stochastic processes, such as gene expression and classification. Therefore, in this study, another intriguing strategy is introduced to improve the performance of neural networks utilizing deep autoencoder neural networks. This was accomplished through the choice of the first, relevant data, which was being extracted with a Deep Neural Network hidden layer used to train an autoencoder for the classification of the cancer malignancy based on the second stack autoencoder network. The outcome from the proposed experiment was evaluated with the current techniques. Overall, the proposed deep autoencoder accomplished classification accuracy of 99.2% as against the current Modified KNN and SVM which obtained 96.1% and 98.1% respectively.
Downloads
Published
Issue
Section
How to Cite
Similar Articles
- 1. Anthony I. G. Ekedegwa, Evans Ashiegwuike, Abdullahi Mohammed S. B, Seasonal Short-Term Load Forecasting (STLF) using combined Social Spider Optimisation (SSO) and African Vulture Optimisation Algorithm (AVOA) in Artificial Neural Networks (ANN) , Communication In Physical Sciences: Vol. 12 No. 3 (2025): VOLUME 12 ISSUE 3
- Robinson Ogochukwu Isichei, The Intersection of Artificial Intelligence, Music, and Religion: An Extensive Review Highlighting Contemporary and Emerging Perspectives , Communication In Physical Sciences: Vol. 9 No. 4 (2023): VOLUME 9 ISSUE 4
- Nweze Rosemary Chika Nweze, Confidence Ifeoma Odoh, Nneka Maryann Okafor, Prediction of Infectious Diseases using Machine Learning: A Case Study of Tuberculosis in Nigeria , Communication In Physical Sciences: Vol. 13 No. 5 (2026): VOLUME 13 ISSUE 5
- David Adetunji Ademilua, Advances and Emerging Trends in Cloud Computing: A Comprehensive Review of Technologies, Architectures, and Applications , Communication In Physical Sciences: Vol. 7 No. 4 (2021): VOLUME 7 ISSUE 4
- Emurode Williams, Lawrence Abakah, Aniedi Ojo, Chidinma Jonah, AI-Driven Analysis of Information Processing Capacity and Financial Stability in Delegated Asset , Communication In Physical Sciences: Vol. 9 No. 4 (2023): VOLUME 9 ISSUE 4
- Robinson Ogochukwu , Comprehensive Review of Artificial Intelligence Contributions to Understanding Music, Religion, and Influencing Future and Emerging Global Trends Robinson Ogochukwu Isichei , Communication In Physical Sciences: Vol. 9 No. 4 (2023): VOLUME 9 ISSUE 4
- Moses Oluwasegun Odewale, Moses Olagoke Odejobi, Olanrewaju Oluwaseun Ajayi, Advanced RF Optimization Techniques for Enhancing Coverage, Throughput, and Quality of Service in LTE and 5G Networks , Communication In Physical Sciences: Vol. 8 No. 4 (2022): VOLUME 8 ISSUE 4
- Forward Nsama, Strategic Development of AI-Driven Supply Chain Resilience Frameworks for Critical U.S. Sectors , Communication In Physical Sciences: Vol. 12 No. 5 (2025): VOLUME 12 ISSUE 5
- Taiwo Toyosola Ositimehin, AI-Driven Human Resource Management and Its Role in Sustainable Human Capital Development , Communication In Physical Sciences: Vol. 11 No. 4 (2024): VOLUME 11 ISSUE 4
- Olatunde Ayeomon, Raymond Sugar Ebere Amougou, Jude Okwuchukwu Ogene, Risk-Based Audit Engagement Planning: Incorporation of Predictive Analytics , Communication In Physical Sciences: Vol. 8 No. 4 (2022): VOLUME 8 ISSUE 4
You may also start an advanced similarity search for this article.



