ACP-ESM: A novel framework for classification of anticancer peptides
using protein-oriented transformer approach
- URL: http://arxiv.org/abs/2401.02124v1
- Date: Thu, 4 Jan 2024 08:19:27 GMT
- Title: ACP-ESM: A novel framework for classification of anticancer peptides
using protein-oriented transformer approach
- Authors: Zeynep Hilal Kilimci, Mustafa Yalcin
- Abstract summary: Anticancer peptides (ACPs) are molecules that have gained significant attention in the field of cancer research and therapy.
ACPs are short chains of amino acids, the building blocks of proteins, and they possess the ability to selectively target and kill cancer cells.
ACPs are being investigated as potential candidates for cancer therapy.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Anticancer peptides (ACPs) are a class of molecules that have gained
significant attention in the field of cancer research and therapy. ACPs are
short chains of amino acids, the building blocks of proteins, and they possess
the ability to selectively target and kill cancer cells. One of the key
advantages of ACPs is their ability to selectively target cancer cells while
sparing healthy cells to a greater extent. This selectivity is often attributed
to differences in the surface properties of cancer cells compared to normal
cells. That is why ACPs are being investigated as potential candidates for
cancer therapy. ACPs may be used alone or in combination with other treatment
modalities like chemotherapy and radiation therapy. While ACPs hold promise as
a novel approach to cancer treatment, there are challenges to overcome,
including optimizing their stability, improving selectivity, and enhancing
their delivery to cancer cells, continuous increasing in number of peptide
sequences, developing a reliable and precise prediction model. In this work, we
propose an efficient transformer-based framework to identify anticancer
peptides for by performing accurate a reliable and precise prediction model.
For this purpose, four different transformer models, namely ESM, ProtBert,
BioBERT, and SciBERT are employed to detect anticancer peptides from amino acid
sequences. To demonstrate the contribution of the proposed framework, extensive
experiments are carried on widely-used datasets in the literature, two versions
of AntiCp2, cACP-DeepGram, ACP-740. Experiment results show the usage of
proposed model enhances classification accuracy when compared to the
state-of-the-art studies. The proposed framework, ESM, exhibits 96.45 of
accuracy for AntiCp2 dataset, 97.66 of accuracy for cACP-DeepGram dataset, and
88.51 of accuracy for ACP-740 dataset, thence determining new state-of-the-art.
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