Abstract

Identification and characterization of plant protein–protein interactions (PPIs) are critical in elucidating the functions of proteins and molecular mechanisms in a plant cell. Although experimentally validated plant PPIs data have become increasingly available in diverse plant species, the high-throughput techniques are usually expensive and labor-intensive. With the incredibly valuable plant PPIs data accumulating in public databases, it is progressively important to propose computational approaches to facilitate the identification of possible PPIs. In this article, we propose an effective framework for predicting plant PPIs by combining the position-specific scoring matrix (PSSM), local optimal-oriented pattern (LOOP), and ensemble rotation forest (ROF) model. Specifically, the plant protein sequence is firstly transformed into the PSSM, in which the protein evolutionary information is perfectly preserved. Then, the local textural descriptor LOOP is employed to extract texture variation features from PSSM. Finally, the ROF classifier is adopted to infer the potential plant PPIs. The performance of CPIELA is evaluated via cross-validation on three plant PPIs datasets: Arabidopsis thaliana, Zea mays, and Oryza sativa. The experimental results demonstrate that the CPIELA method achieved the high average prediction accuracies of 98.63%, 98.09%, and 94.02%, respectively. To further verify the high performance of CPIELA, we also compared it with the other state-of-the-art methods on three gold standard datasets. The experimental results illustrate that CPIELA is efficient and reliable for predicting plant PPIs. It is anticipated that the CPIELA approach could become a useful tool for facilitating the identification of possible plant PPIs.

Highlights

  • Plant protein–protein interactions (PPIs) participate in almost all aspects of cellular processes such as homeostasis control, signal transduction, organ formation, and plant defense (Morsy et al, 2008; Yuan et al, 2008; Fukao, 2012; Sheth and Thaker, 2014; Cheng et al, 2021)

  • Protein–protein interactions are involved in almost all aspects of plant cellular processes

  • Identifying plant PPIs is an important step toward understanding the molecular mechanisms and biological systems

Read more

Summary

Introduction

Plant protein–protein interactions (PPIs) participate in almost all aspects of cellular processes such as homeostasis control, signal transduction, organ formation, and plant defense (Morsy et al, 2008; Yuan et al, 2008; Fukao, 2012; Sheth and Thaker, 2014; Cheng et al, 2021). Several innovative high-throughput techniques, such as the yeast two-hybrid (Y2H) (Causier and Davies, 2002), bimolecular fluorescence complementation (BiFC) (BrachaDrori et al, 2010), affinity purification coupled to mass spectrometry (AP-MS) (Puig et al, 2001), and protein microarrays (Hultschig et al, 2006), have been designed to detect plant PPIs. the aforementioned high throughput biological experiments have some unavoidable technical limitations (Yuan-Ke et al, 2019). The techniques employed to detect plant PPIs are expensive and time-consuming, limiting the wide application of these approaches. Most experimental techniques are often associated with high levels of a false-positive rate

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call