Comparative analysis of efficient deep learning models for breast cancer identification using relevant genes
Abstract
Cancer remains a formidable global health challenge, with early detection critical
in improving patient outcomes. In this context, applying deep learning techniques
to relevant gene analysis has emerged as a promising avenue for enhancing cancer
detection and diagnosis. This study presents an investigation into utilizing dimensionality
reduction methods and deep learning techniques to analyze gene sequences
with the primary aim of detecting breast cancer. Various dimensionality reduction
techniques reduce the amplitude by selecting a subset of relevant characteristics or
variables from a larger collection of available features. The selected relevant features
are then transformed into meaningful representations obtained using SDAE (Stacked
Denoising Autoencoder) which are used to familiarize the data with different noise
and outliers. Various expert learning architectures have been studied to evaluate
the effectiveness of compact functions resulting from SDAE transforms. In addition,
we apply discrete classification algorithms such as SVM, ANN, and SVM-RBF to
distinguish between cancer and normal samples. The primary objective is cancer
detection, encompassing the identification of breast cancer in its early stages, the
recurrence of cancer, and the pathological response based on the genetic data. The
study contributes to the growing body of knowledge in bioinformatics and medical
research. It holds the potential to translate its findings into practical clinical applications,
thereby advancing our ability to combat this devastating disease. This
work represents a significant step towards realizing more effective and precise cancer
diagnostics, offering hope for improved patient care and outcomes in the fight
against cancer.