Automated Detection and Characterization of Colon Cancer with Deep Convolutional Neural Networks.
Md Imran HasanMd Shahin AliMd Habibur RahmanMd Khairul IslamPublished in: Journal of healthcare engineering (2022)
Colon cancer is a momentous reason for illness and death in people. The conclusive diagnosis of colon cancer is made through histological examination. Convolutional neural networks are being used to analyze colon cancer via digital image processing with the introduction of whole-slide imaging. Accurate categorization of colon cancers is necessary for capable analysis. Our objective is to promote a system for detecting and classifying colon adenocarcinomas by applying a deep convolutional neural network (DCNN) model with some preprocessing techniques on digital histopathology images. It is a leading cause of cancer-related death, despite the fact that both traditional and modern methods are capable of comparing images that may encompass cancer regions of various sorts after looking at a significant number of colon cancer images. The fundamental problem for colon histopathologists is differentiating benign from malignant illnesses to having some complicated factors. A cancer diagnosis can be automated through artificial intelligence (AI), enabling us to appraise more patients in less time and at a decreased cost. Modern deep learning (MDL) and digital image processing (DIP) approaches are used to accomplish this. The results indicate that the proposed structure can accurately analyze cancer tissues to a maximum of 99.80%. By implementing this approach, medical practitioners will establish an automated and reliable system for detecting various forms of colon cancer. Moreover, CAD systems will be built in the near future to extract numerous aspects from colonoscopic images for use as a preprocessing module for colon cancer diagnosis.
Keyphrases
- deep learning
- convolutional neural network
- artificial intelligence
- machine learning
- papillary thyroid
- big data
- squamous cell
- high resolution
- gene expression
- primary care
- magnetic resonance imaging
- end stage renal disease
- coronary artery disease
- childhood cancer
- oxidative stress
- lymph node metastasis
- magnetic resonance
- single cell
- patient reported outcomes
- patient reported