Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

An Improved LNN–ACO Framework with Optimal Feature Selection for Breast Tumor Detection

View through CrossRef
Conventional image processing approaches, such as segmentation and feature extraction, may not perform effectively across different histopathological images due to highly variable structures. In addition, histopathological images are high-dimensional with gigapixel slides. However, the dynamic nature of cellular structures, temporal changes, and variations in nuclear size and shape present substantial challenges in terms of complex structure and staining variability. In addition, training deep CNN models from scratch may lead to overfitting. To address these issues, this study combines Liquid Neural Networks (LNN) with Ant Colony Optimization (ACO) (LNN-ACO) for breast tumor detection, reducing redundant features and fine-tuning model parameters, leading to a more discriminative feature space. Experimentation with the BreakHis dataset showed that the proposed LNN-ACO model achieved 93.75% accuracy, outperforming other techniques.
Title: An Improved LNN–ACO Framework with Optimal Feature Selection for Breast Tumor Detection
Description:
Conventional image processing approaches, such as segmentation and feature extraction, may not perform effectively across different histopathological images due to highly variable structures.
In addition, histopathological images are high-dimensional with gigapixel slides.
However, the dynamic nature of cellular structures, temporal changes, and variations in nuclear size and shape present substantial challenges in terms of complex structure and staining variability.
In addition, training deep CNN models from scratch may lead to overfitting.
To address these issues, this study combines Liquid Neural Networks (LNN) with Ant Colony Optimization (ACO) (LNN-ACO) for breast tumor detection, reducing redundant features and fine-tuning model parameters, leading to a more discriminative feature space.
Experimentation with the BreakHis dataset showed that the proposed LNN-ACO model achieved 93.
75% accuracy, outperforming other techniques.

Related Results

Desmoid-Type Fibromatosis of The Breast: A Case Series
Desmoid-Type Fibromatosis of The Breast: A Case Series
Abstract IntroductionDesmoid-type fibromatosis (DTF), also called aggressive fibromatosis, is a rare, benign, locally aggressive condition. Mammary DTF originates from fibroblasts ...
Breast Carcinoma within Fibroadenoma: A Systematic Review
Breast Carcinoma within Fibroadenoma: A Systematic Review
Abstract Introduction Fibroadenoma is the most common benign breast lesion; however, it carries a potential risk of malignant transformation. This systematic review provides an ove...
Complex Collision Tumors: A Systematic Review
Complex Collision Tumors: A Systematic Review
Abstract Introduction: A collision tumor consists of two distinct neoplastic components located within the same organ, separated by stromal tissue, without histological intermixing...
Analisis Perbandingan Algoritma ACO-TS dan ACO-SMARTER Dalam Menyelesaikan Traveling Salesman Problem
Analisis Perbandingan Algoritma ACO-TS dan ACO-SMARTER Dalam Menyelesaikan Traveling Salesman Problem
The research conducted is the Comparative Analysis of the ACO-TS and ACO-SMARTER Algorithms in Solving the Traveling Salesman Problem where the problem to be solved is the travelin...
Giant Sacrococcygeal Teratoma in Infant: Systematic Review
Giant Sacrococcygeal Teratoma in Infant: Systematic Review
Abstract Introduction Sacrococcygeal teratoma (SCT) is a rare embryonal tumor that occurs in the sacrococcygeal region, with an incidence of about 1 in 35,000 to 40,000 live births...
Fetal cardiotocography monitoring using Legendre neural networks
Fetal cardiotocography monitoring using Legendre neural networks
Abstract A new technique for electronic fetal monitoring (EFM) using an efficient structure of neural networks based on the Legendre series is presented in this pape...
Presence and evolution of a new psychoactive tryptamines branch
Presence and evolution of a new psychoactive tryptamines branch
IntroductionNew psychoactive substances (NPS) are substances that have recently appeared on the market and are not under international control. NPS use is experiencing an unprecede...

Back to Top