Anticancer Peptides Classification using Kernel Sparse Representation Classifier
Ehtisham Fazal, Muhammad Sohail Ibrahim, Seongyong Park and, Imran Naseem, Abdul Wahab

TL;DR
This paper introduces a novel kernel sparse representation classifier for anticancer peptides that improves prediction accuracy by embedding amino acid composition features, employing efficient algorithms, and balancing datasets, outperforming existing methods.
Contribution
It presents a new classification approach combining kernel SRC with CKSAAP features, matching pursuit, KPCA, and SMOTE, which enhances anticancer peptide prediction accuracy.
Findings
Outperforms existing ACP classification methods.
Achieves highest sensitivity and balanced accuracy.
Effective handling of non-linearity and data imbalance.
Abstract
Cancer is one of the most challenging diseases because of its complexity, variability, and diversity of causes. It has been one of the major research topics over the past decades, yet it is still poorly understood. To this end, multifaceted therapeutic frameworks are indispensable. \emph{Anticancer peptides} (ACPs) are the most promising treatment option, but their large-scale identification and synthesis require reliable prediction methods, which is still a problem. In this paper, we present an intuitive classification strategy that differs from the traditional \emph{black box} method and is based on the well-known statistical theory of \emph{sparse-representation classification} (SRC). Specifically, we create over-complete dictionary matrices by embedding the \emph{composition of the K-spaced amino acid pairs} (CKSAAP). Unlike the traditional SRC frameworks, we use an efficient…
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Taxonomy
TopicsMachine Learning in Bioinformatics · Computational Drug Discovery Methods · Chemical Synthesis and Analysis
