Equilibrium Optimization Algorithm with Deep Learning Enabled Prostate Cancer Detection on MRI Images.
Eunmok YangK ShankarSachin KumarChangho SeoInkyu MoonPublished in: Biomedicines (2023)
The enlargement of the prostate gland in the reproductive system of males is considered a form of prostate cancer (PrC). The survival rate is considerably improved with earlier diagnosis of cancer; thus, timely intervention should be administered. In this study, a new automatic approach combining several deep learning (DL) techniques was introduced to detect PrC from MRI and ultrasound (US) images. Furthermore, the presented method describes why a certain decision was made given the input MRI or US images. Many pretrained custom-developed layers were added to the pretrained model and employed in the dataset. The study presents an Equilibrium Optimization Algorithm with Deep Learning-based Prostate Cancer Detection and Classification (EOADL-PCDC) technique on MRIs. The main goal of the EOADL-PCDC method lies in the detection and classification of PrC. To achieve this, the EOADL-PCDC technique applies image preprocessing to improve the image quality. In addition, the EOADL-PCDC technique follows the CapsNet (capsule network) model for the feature extraction model. The EOA is based on hyperparameter tuning used to increase the efficiency of CapsNet. The EOADL-PCDC algorithm makes use of the stacked bidirectional long short-term memory (SBiLSTM) model for prostate cancer classification. A comprehensive set of simulations of the EOADL-PCDC algorithm was tested on the benchmark MRI dataset. The experimental outcome revealed the superior performance of the EOADL-PCDC approach over existing methods in terms of different metrics.
Keyphrases
- deep learning
- prostate cancer
- convolutional neural network
- artificial intelligence
- radical prostatectomy
- machine learning
- magnetic resonance imaging
- contrast enhanced
- image quality
- computed tomography
- molecular dynamics
- diffusion weighted imaging
- loop mediated isothermal amplification
- real time pcr
- label free
- molecular dynamics simulations
- single cell
- squamous cell
- dual energy
- childhood cancer