Definition of the effector landscape across 13 phytoplasma proteomes with LEAPH and EffectorComb

Author:

Calia Giulia123,Cestaro Alessandro24,Schuler Hannes15,Janik Katrin6,Donati Claudio2ORCID,Moser Mirko2,Bottini Silvia3ORCID

Affiliation:

1. Faculty of Agricultural, Environmental and Food Sciences, Free University of Bolzano , 39100  Bolzano , Italy

2. Research and Innovation Centre, Fondazione Edmund Mach , 38010  San Michele all’Adige , Italy

3. INRAE, Institut Sophia Agrobiotech, Université Côte d’Azur, CNRS , 06903  Sophia-Antipolis , France

4. Institute of Biomembranes, Bioenergetics and Molecular Biotechnologies (IBIOM), National Research Council (CNR) , 70126  Bari , Italy

5. Competence Centre for Plant Health, Free University of Bolzano , 39100  Bolzano , Italy

6. Institute for Plant Health, Molecular Biology and Microbiology, Laimburg Research Centre , 47141  Pfatten-Vadena , Italy

Abstract

Abstract ‘Candidatus Phytoplasma’ genus, a group of fastidious phloem-restricted bacteria, can infect a wide variety of both ornamental and agro-economically important plants. Phytoplasmas secrete effector proteins responsible for the symptoms associated with the disease. Identifying and characterizing these proteins is of prime importance for expanding our knowledge of the molecular bases of the disease. We faced the challenge of identifying phytoplasma's effectors by developing LEAPH, a machine learning ensemble predictor composed of four models. LEAPH was trained on 479 proteins from 53 phytoplasma species, described by 30 features. LEAPH achieved 97.49% accuracy, 95.26% precision and 98.37% recall, ensuring a low false-positive rate and outperforming available state-of-the-art methods. The application of LEAPH to 13 phytoplasma proteomes yields a comprehensive landscape of 2089 putative pathogenicity proteins. We identified three classes according to different secretion models: ‘classical’, ‘classical-like’ and ‘non-classical’. Importantly, LEAPH identified 15 out of 17 known experimentally validated effectors belonging to the three classes. Furthermore, to help the selection of novel candidates for biological validation, we applied the Self-Organizing Maps algorithm and developed a Shiny app called EffectorComb. LEAPH and the EffectorComb app can be used to boost the characterization of putative effectors at both computational and experimental levels, and can be employed in other phytopathological models.

Funder

National Research Agency

Province of Bozen-Bolzano

Austrian Science Fund FWF

ELIXIR-IT

Publisher

Oxford University Press (OUP)

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