Phytophthora members of the rhizosphere microbiota of Quercus ilex subsp. ballota

Sampling event
Последняя версия опубликовано Instituto de Recursos Naturales y Agrobiología de Sevilla (CSIC) нояб. 29, 2023 Instituto de Recursos Naturales y Agrobiología de Sevilla (CSIC)
Дата публикации:
29 ноября 2023 г.
Лицензия:
CC-BY 4.0

Скачайте последнюю версию данных этого ресурса в формате Darwin Core Archive (DwC-A) или метаданных ресурса в форматах EML или RTF:

Данные в формате DwC-A Скачать 472 Записи в English (38 KB) - Частота обновления: unknown
Метаданные в формате EML Скачать в English (24 KB)
Метаданные в формате RTF Скачать в English (18 KB)

Описание

The general objective of thE WP7 is to advance our understanding of the impacts of global change drivers - mainly climate change and exotic pathogens - on the above- and below-ground biodiversity of Mediterranean forests and silvopastoral agrosystems, and to use the resulting information to propose management tools aim to improve the resistance and resilience of these forests in scenarios of increasing abiotic and biotic stress. We will focus our research on forests and dehesas of evergreen Quercus species (Quercus suber and Quercus ilex) in Andalusia, due to their strategic ecological and economic importance and their current vulnerability status as a result of increasing aridity and the invasion of the aggressive exotic pathogen Phytophthora cinammomi.

Записи данных

Данные этого sampling event ресурса были опубликованы в виде Darwin Core Archive (DwC-A), который является стандартным форматом для обмена данными о биоразнообразии в виде набора из одной или нескольких таблиц. Основная таблица данных содержит 472 записей.

Также в наличии 1 таблиц с данными расширений. Записи расширений содержат дополнительную информацию об основной записи. Число записей в каждой таблице данных расширения показано ниже.

Event (core)
472
Occurrence 
1394

Данный экземпляр IPT архивирует данные и таким образом служит хранилищем данных. Данные и метаданные ресурсов доступны для скачивания в разделе Загрузки. В таблице версий перечислены другие версии ресурса, которые были доступны публично, что позволяет отслеживать изменения, внесенные в ресурс с течением времени.

Версии

В таблице ниже указаны только опубликованные версии ресурса, которые доступны для свободного скачивания.

Как оформить ссылку

Исследователи должны дать ссылку на эту работу следующим образом:

Gómez Aparicio L, Zamora Ballesteros C, Gil Martinez M, García Garrido S (2023). Phytophthora members of the rhizosphere microbiota of Quercus ilex subsp. ballota. Version 2.4. Instituto de Recursos Naturales y Agrobiología de Sevilla (CSIC). Samplingevent dataset. https://doi.org/10.15470/hcvbbv

Права

Исследователи должны соблюдать следующие права:

Публикующей организацией и владельцем прав на данную работу является Instituto de Recursos Naturales y Agrobiología de Sevilla (CSIC). Эта работа находится под лицензией Creative Commons Attribution (CC-BY 4.0).

Регистрация в GBIF

Этот ресурс был зарегистрирован в GBIF, ему был присвоен следующий UUID: 3cf6d773-e669-4535-b16a-1f7a3e23d281.  Instituto de Recursos Naturales y Agrobiología de Sevilla (CSIC) отвечает за публикацию этого ресурса, и зарегистрирован в GBIF как издатель данных при оподдержке GBIF Spain.

Ключевые слова

Samplingevent; Biodiversity; Edafic Biodiversity

Контакты

Lorena Gómez Aparicio
  • Originator
  • Point Of Contact
  • Principal Investigator
Instituto de Recursos Naturales y Agrobiología de Sevilla (IRNAS)
Av. Reina Mercedes, 10. Sevilla
41012 Sevilla
Sevilla
ES
954624711
Cristina Zamora Ballesteros
  • Originator
postdoctoral researcher
Forest Genetics, Faculty of Environment and Natural Resources, Albert-Ludwigs-Universität Freiburg
Freiburg
DE
Marta Gil Martinez
  • Originator
University of Copenhagen
Copenhagen
DK
Sara García Garrido
  • Originator
management technician
Instituto de Recursos Naturales y Agrobiología de Sevilla (IRNAS)
Av. Reina Mercedes, 10. Sevilla
41012 Sevilla
Sevilla
ES
954624711

Географический охват

Huelva (Spain), Sevilla (Spain) and Córdoba (Spain)

Ограничивающие координаты Юг Запад [-90, -180], Север Восток [90, 180]

Таксономический охват

N/A

Kingdom Fungi
Phylum Pseudofungi
Class Oomycetes
Order Peronosporales
Family Peronosporaceae

Данные проекта

The general objective of thE WP7 is to advance our understanding of the impacts of global change drivers - mainly climate change and exotic pathogens - on the above- and below-ground biodiversity of Mediterranean forests and silvopastoral agrosystems, and to use the resulting information to propose management tools aim to improve the resistance and resilience of these forests in scenarios of increasing abiotic and biotic stress.

Название Sustainability for Mediterranean Hotspots in Andalusia integrating LifeWatch ERIC (SUMHAL). Working package 7: Improving sustainability of Mediterranean forests and silvopastoral agrosystems under climate change
Идентификатор LIFEWATCH-2019-09-CSIC-4, POPE 2014-2020
Финансирование This study was funded by MICINN through European Regional Development Fund [SUMHAL, LIFEWATCH-2019-09-CSIC-13, POPE 2014-2020] and by the Spanish Ministry of Economy, Industry and Competitiveness [AGL2015-66048-C2-1-R; RTI2018-098015-B-I00]. To be referred from 2023 onwards as SUMHAL, LIFEWATCH-2019-09-CSIC-4, POPE 2014-2020.
Описание района исследования We will focus our research on forests and dehesas of evergreen Quercus species (Quercus suber and Quercus ilex) in Andalusia, due to their strategic ecological and economic importance and their current vulnerability status as a result of increasing aridity and the invasion of the aggressive exotic pathogen Phytophthora cinammomi.
Описание плана выполнения исследований Soil at 5 to 20 cm depth attached to the secondary roots of every tree (Quercus ilex subsp. ballota) was collected, transported on ice and frozen at -80 ºC until processed. The DNA from each sample was extracted using DNeasy Power Soil Pro kit (QIAGEN) according to the manufacturer’s instructions. V3-V4 16S rRNA and ITS2 regions from Bacteria and Fungi kingdoms, respectively, were amplified. Likewise, in order to study the presence of Phytophthora species, amplicon libraries using the Phytophthora-specific primers that amplify ITS1 region were created using a nested PCR approach. The libraries were sequenced with Illumina MiSeq platform using 2 x 275 bp paired-end reads.

Методы сбора

The Illumina paired-end raw sequences were processed using the freely available bioinformatics software QIIME 2 version 2022.2.0 (Bolyen et al., 2019). The sequences from each target (bacteria, fungi or Phytophthora spp.) and each sequencing run were processed equally but separately throughout the analysis. The sequences were trimmed by implementing cutadapt (Martin, 2011) in QIIME 2 with q2-cutadapt plugin and trim-paired command. Chimeric sequences were identified and deleted after quality filtering and de-noising using the Divisive Amplicon Denoising Algorithm 2 (DADA2) pipeline implemented in QIIME 2 with q2-dada2 plugin and denoise-paired command (Callahan et al., 2016). The resulting amplicon sequence variants (ASVs) identified were curated using mumu by removing taxonomically redundant and erroneous ASVs. This involved constructing a database of the ASV sequences using makeblastdb application from the BLAST v.2.9.0 software suite, from which match lists were created using the blastn algorithm (query coverage: 80; percent identity cutoff: 84). These match lists and the ASV feature tables were input into the mumu algorithm to produce curated ASV tables. Singletons were excluded from the analysis.

Охват исследования Soil at 5 to 20 cm depth attached to the secondary roots of every tree (Quercus ilex subsp. ballota) was collected, transported on ice and frozen at -80 ºC until processed. The DNA from each sample was extracted using DNeasy Power Soil Pro kit (QIAGEN) according to the manufacturer’s instructions. V3-V4 16S rRNA and ITS2 regions from Bacteria and Fungi kingdoms, respectively, were amplified. Likewise, in order to study the presence of Phytophthora species, amplicon libraries using the Phytophthora-specific primers that amplify ITS1 region were created using a nested PCR approach. The libraries were sequenced with Illumina MiSeq platform using 2 x 275 bp paired-end reads.

Описание этапа методики:

  1. The taxonomic assignment to the ASVs identified in the analysis of Phytohthora species was performed by generating a reference database from a combination of sequences from five different sources: the UNITE dynamic database v.8.3 (consisting of 58,440 eukaryotic sequences), reference sequences from phytophthoradb (http://www.phytophthoradb.org/; 340 sequences), reference sequences from Phytopthora-id (http://Phytophthora-id.org; 270 sequences), 174 sequences of Phytophthora spp. from the database generated in Riddell et al. (2019), and 39,701 sequences from Genbank matching the search "oomycota 'internal transcribed spacer'". In the latter case, the taxonomy for the Genbank accessions was obtained using the taxonomizr package (v 0.10.2) in R v 4.2.2. Finally, the reference sequence database, namely the combined fasta file (98,925 sequences), and the associated taxonomy description file were imported into QIIME 2 and used together with the qiime feature-classifier plugin and the classify-consensus-blast command. As a first step, the sequences of the potential Phytophthora ASVs were aligned against the custom reference database using strict homology parameters (query coverage: 90; percent identity cutoff: 99) to ensure that successful matches belong to a Phytophthora species. The unaligned ASVs were submitted to a second step with relaxed parameters (query coverage: 75; percent identity cutoff: 65). The third step consisted of comparing the unassigned ASVs from the second step to the entire NCBI non-redundant protein database (release-255) using default parameters. In the fourth step, the low confidence ASVs assigned in the second and third steps were concatenated, aligned with MAFFT, and used to construct a maximum likelihood (ML) phylogenetic tree using RAxML (v 8.2.12; Stamatakis, 2014). The tree was inferred employed a general time reversible substitution model with a computational work–around (GTRCAT) without rate heterogeneity with a correction for ascertainment bias. Statistical support was calculated by applying bootstrap runs in an automated approach (autoMRE), where RaxML executes a maximum of 1000 BS replicate searches, although convergence may occur earlier. The best-scoring ML tree of the search analysis was then visualized using the software FIGTREE version 1.4.4 (Rambaut, 2018).

Библиографические ссылки

  1. Abarenkov, K., Zirk, A., Piirmann, T., Pöhönen, R., Ivanov, F., Nilsson, R.H., Kõljalg, U., 2021. UNITE QIIME release for Fungi. Version 10.05.2021. [WWW Document]. UNITE Community. URL https://doi.plutof.ut.ee/doi/10.15156/BIO/1264708 (accessed 1.17.23) https://doi.org/10.15470/hcvbbv
  2. Bokulich, N.A., Kaehler, B.D., Rideout, J.R., Dillon, M., Bolyen, E., Knight, R., Huttley, G.A., Gregory Caporaso, J., 2018. Optimizing taxonomic classification of marker-gene amplicon sequences with QIIME 2’s q2-feature-classifier plugin. Microbiome 6, 90. https://doi.org/10.1186/s40168-018-0470-z
  3. Bolyen, E., Rideout, J.R., Dillon, M.R., Bokulich, N.A., Abnet, C.C., Al-Ghalith, G.A., Alexander, H., Alm, E.J., Arumugam, M., Asnicar, F., Bai, Y., Bisanz, J.E., Bittinger, K., Brejnrod, A., Brislawn, C.J., Brown, C.T., Callahan, B.J., Caraballo-Rodríguez, A.M., Chase, J., Cope, E.K., Da Silva, R., Diener, C., Dorrestein, P.C., Douglas, G.M., Durall, D.M., Duvallet, C., Edwardson, C.F., Ernst, M., Estaki, M., Fouquier, J., Gauglitz, J.M., Gibbons, S.M., Gibson, D.L., Gonzalez, A., Gorlick, K., Guo, J., Hillmann, B., Holmes, S., Holste, H., Huttenhower, C., Huttley, G.A., Janssen, S., Jarmusch, A.K., Jiang, L., Kaehler, B.D., Kang, K.B., Keefe, C.R., Keim, P., Kelley, S.T., Knights, D., Koester, I., Kosciolek, T., Kreps, J., Langille, M.G.I., Lee, J., Ley, R., Liu, Y.-X., Loftfield, E., Lozupone, C., Maher, M., Marotz, C., Martin, B.D., McDonald, D., McIver, L.J., Melnik, A.V., Metcalf, J.L., Morgan, S.C., Morton, J.T., Naimey, A.T., Navas-Molina, J.A., Nothias, L.F., Orchanian, S.B., Pearson, T., Peoples, S.L., Petras, D., Preuss, M.L., Pruesse, E., Rasmussen, L.B., Rivers, A., Robeson, M.S., Rosenthal, P., Segata, N., Shaffer, M., Shiffer, A., Sinha, R., Song, S.J., Spear, J.R., Swafford, A.D., Thompson, L.R., Torres, P.J., Trinh, P., Tripathi, A., Turnbaugh, P.J., Ul-Hasan, S., van der Hooft, J.J.J., Vargas, F., Vázquez-Baeza, Y., Vogtmann, E., von Hippel, M., Walters, W., Wan, Y., Wang, M., Warren, J., Weber, K.C., Williamson, C.H.D., Willis, A.D., Xu, Z.Z., Zaneveld, J.R., Zhang, Y., Zhu, Q., Knight, R., Caporaso, J.G., 2019. Reproducible, interactive, scalable and extensible microbiome data science using QIIME 2. Nat Biotechnol 37, 852–857. https://doi.org/10.1038/s41587-019-0209-9
  4. Callahan, B.J., McMurdie, P.J., Rosen, M.J., Han, A.W., Johnson, A.J.A., Holmes, S.P., 2016. DADA2: High-resolution sample inference from Illumina amplicon data. Nat Methods 13, 581–583. https://doi.org/10.1038/nmeth.3869
  5. Martin, M., 2011. Cutadapt removes adapter sequences from high-throughput sequencing reads. EMBnet.journal 17, 10–12. https://doi.org/10.14806/ej.17.1.200
  6. Quast, C., Pruesse, E., Yilmaz, P., Gerken, J., Schweer, T., Yarza, P., Peplies, J., Glöckner, F.O., 2013. The SILVA ribosomal RNA gene database project: improved data processing and web-based tools. Nucleic Acids Research 41, D590–D596. https://doi.org/10.1093/nar/gks1219
  7. Rambaut, A., 2018. FigTree.
  8. Riddell, C.E., Frederickson-Matika, D., Armstrong, A.C., Elliot, M., Forster, J., Hedley, P.E., Morris, J., Thorpe, P., Cooke, D.E.L., Pritchard, L., Sharp, P.M., Green, S., 2019. Metabarcoding reveals a high diversity of woody host-associated Phytophthora spp. In soils at public gardens and amenity woodlands in Britain. PeerJ 7, e6931. https://doi.org/10.7717/PEERJ.6931/SUPP-3
  9. Stamatakis, A., 2014. RAxML version 8: a tool for phylogenetic analysis and post-analysis of large phylogenies. Bioinformatics 30, 1312–1313. https://doi.org/10.1093/bioinformatics/btu033

Дополнительные метаданные

Альтернативные идентификаторы 10.15470/hcvbbv
3cf6d773-e669-4535-b16a-1f7a3e23d281
https://ipt.gbif.es/resource?r=irnas-phytophthora