D eepAFP : An effective computational framework for identifying antifungal peptides based on deep learning

Fungal infections have become a significant global health issue, affecting millions worldwide. Antifungal peptides (AFPs) have emerged as a promising alternative to conventional antifungal drugs due to their low toxicity and low propensity for inducing resistance. In this study, we developed a deep...

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Veröffentlicht in:Protein science 2023-10, Vol.32 (10)
Hauptverfasser: Yao, Lantian, Zhang, Yuntian, Li, Wenshuo, Chung, Chia‐Ru, Guan, Jiahui, Zhang, Wenyang, Chiang, Ying‐Chih, Lee, Tzong‐Yi
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container_issue 10
container_start_page
container_title Protein science
container_volume 32
creator Yao, Lantian
Zhang, Yuntian
Li, Wenshuo
Chung, Chia‐Ru
Guan, Jiahui
Zhang, Wenyang
Chiang, Ying‐Chih
Lee, Tzong‐Yi
description Fungal infections have become a significant global health issue, affecting millions worldwide. Antifungal peptides (AFPs) have emerged as a promising alternative to conventional antifungal drugs due to their low toxicity and low propensity for inducing resistance. In this study, we developed a deep learning‐based framework called DeepAFP to efficiently identify AFPs. DeepAFP fully leverages and mines composition information, evolutionary information, and physicochemical properties of peptides by employing combined kernels from multiple branches of convolutional neural network with bi‐directional long short‐term memory layers. In addition, DeepAFP integrates a transfer learning strategy to obtain efficient representations of peptides for improving model performance. DeepAFP demonstrates strong predictive ability on carefully curated datasets, yielding an accuracy of 93.29% and an F1‐score of 93.45% on the DeepAFP‐Main dataset. The experimental results show that DeepAFP outperforms existing AFP prediction tools, achieving state‐of‐the‐art performance. Finally, we provide a downloadable AFP prediction tool to meet the demands of large‐scale prediction and facilitate the usage of our framework by the public or other researchers. Our framework can accurately identify AFPs in a short time without requiring significant human and material resources, and hence can accelerate the development of AFPs as well as contribute to the treatment of fungal infections. Furthermore, our method can provide new perspectives for other biological sequence analysis tasks.
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title D eepAFP : An effective computational framework for identifying antifungal peptides based on deep learning
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