Non-Small Cell Lung Cancer Classification from Histopathological Images using Feature Fusion and Deep CNN
Creators
- 1. is working as a lecturer in the Department of Computer Science and Engineering, Dhaka International University (DIU). Dhaka, Bangladesh.
- 2. is working as an academic researcher and a lecturer in the Department of Computer Science and Engineering, Dhaka International University, Dhaka.
- 3. is a researcher and faculty member of Dhaka International University in the Department of Computer Science and Engineering. Dhaka, Bangladesh.
- 4. is currently serving as an Associate Professor of Computer Science and Engineering Department, Dhaka International University, Dhaka, Bangladesh. She is a Research Fellow (PhD) in the department of Computer Science and Engineering, Jahangirnagar University, Dhaka, Bangladesh.
Contributors
- 1. Publisher
Description
Lung cancer is the overgrowth of cells in digestive organs. Identifying different types of lung cancer (squamous cell cancer, large cell carcinoma and adenocarcinoma) from lung histopathological images is outrageous works that shorten the chance of infected with lung cancer in the future. This research propounds an accurate diagnosis scheme using various neural network features and fusion of contourlet transform from lung histopathological image. This lesson has used several pre-train models (Alexnet, ResNet50, and VGG-16) in addition to divers scratch models while the pre-train Resnet50 model works better. The two reduction techniques (Principle Component Analysis (PCA) and Minimum Redundancy Maximum Relevance (MRMR)) have used to classify the type of lung cancer with the extraction of the most significant properties. In Convolution Neural Network (CNN) based lung cancer detection, the reduction approach PCA performs better. This proposed methodology is performed on ordinary datasets and establishes comparative better performance. The accuracy of this paper is 98.5%, sensitivity 96.50, specificity 97.00%, which is more effective than other approaches.
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Additional details
Related works
- Is cited by
- Journal article: 2249-8958 (ISSN)
Subjects
- ISSN
- 2249-8958
- Retrieval Number
- E9266069520/2020©BEIESP