Occurrences from a study of a changing Lutz spruce (Picea x Lutzii) hybrid zone on the Kenai Peninsula, Alaska

オカレンス(観察データと標本)
最新バージョン United States Fish and Wildlife Service により出版 2月 13, 2023 United States Fish and Wildlife Service
公開日:
2023年2月13日
ライセンス:
CC0 1.0

DwC-A形式のリソース データまたは EML / RTF 形式のリソース メタデータの最新バージョンをダウンロード:

DwC ファイルとしてのデータ ダウンロード 409 レコード English で (22 KB) - 更新頻度: unknown
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RTF ファイルとしてのメタデータ ダウンロード English で (21 KB)

説明

We investigated the genetic makeup of Lutz spruce, a natural hybrid between white and Sitka spruce on the Kenai Peninsula, Alaska.

データ レコード

この オカレンス(観察データと標本) リソース内のデータは、1 つまたは複数のデータ テーブルとして生物多様性データを共有するための標準化された形式であるダーウィン コア アーカイブ (DwC-A) として公開されています。 コア データ テーブルには、409 レコードが含まれています。

この IPT はデータをアーカイブし、データ リポジトリとして機能します。データとリソースのメタデータは、 ダウンロード セクションからダウンロードできます。 バージョン テーブルから公開可能な他のバージョンを閲覧でき、リソースに加えられた変更を知ることができます。

バージョン

次の表は、公にアクセス可能な公開バージョンのリソースのみ表示しています。

引用方法

研究者はこの研究内容を以下のように引用する必要があります。:

Morton J, Wolf D, Bowser M, Takebayashi N, Magness D (2023): Occurrences from a study of a changing Lutz spruce (Picea x Lutzii) hybrid zone on the Kenai Peninsula, Alaska. v1.5. United States Fish and Wildlife Service. Dataset/Occurrence. https://bison.usgs.gov/ipt/resource?r=2015_kenai_spruce_genetics_study&v=1.5

権利

研究者は権利に関する下記ステートメントを尊重する必要があります。:

パブリッシャーとライセンス保持者権利者は United States Fish and Wildlife Service。 To the extent possible under law, the publisher has waived all rights to these data and has dedicated them to the Public Domain (CC0 1.0). Users may copy, modify, distribute and use the work, including for commercial purposes, without restriction.

GBIF登録

このリソースをはGBIF と登録されており GBIF UUID: 6b4d1874-734a-4907-b21f-57cf9b99c148が割り当てられています。   GBIF-US によって承認されたデータ パブリッシャーとして GBIF に登録されているUnited States Fish and Wildlife Service が、このリソースをパブリッシュしました。

キーワード

Alaska; amplicon sequencing; climate change; climate envelope model; hybridization; Kenai Peninsula; Lutz; microsatellite; migration; mitochondria capture; nad5; Picea glauca; Picea X Lutzii; Picea sitchensis; range expansion; trnT-trnL

連絡先

John Morton
  • 論文著者
  • 最初のデータ採集者
Supervisory Biologist
USFWS Kenai National Wildlife Refuge
PO Box 2139
99669 Soldotna
Alaska
US
Diana Wolf
  • 論文著者
  • 最初のデータ採集者
Associate Professor of Biology
Department of Biology and Wildlife, Institute of Arctic Biology, University of Alaska, Fairbanks
Fairbanks
Alaska
US
Matthew Bowser
  • メタデータ提供者
  • 論文著者
  • 最初のデータ採集者
  • 連絡先
Fish and Wildlife Biologist
USFS Kenai National Wildlife Refuge
PO Box 2139
99669 Soldotna
Alaska
US
Naoki Takebayashi
  • 論文著者
  • 最初のデータ採集者
Associate Professor
Department of Biology and Wildlife, Institute of Arctic Biology, University of Alaska, Fairbanks
Fairbanks
99669 Alaska
Alaska
US
Dawn Magness
  • 論文著者
  • 最初のデータ採集者
Landscape Ecologist
USFWS Kenai National Wildlife Refuge
PO Box 2139
99669 Soldotna
Alaska

地理的範囲

The intended extend was the Kenai Peninsula.

座標(緯度経度) 南 西 [59.6, -151.8], 北 東 [60.8, -149.3]

生物分類学的範囲

説明がありません

Genus Picea

時間的範囲

開始日 / 終了日 2015-07-13 / 2015-09-29

プロジェクトデータ

説明がありません

タイトル Occurrences from a study of a changing Lutz spruce (Picea x Lutzii) hybrid zone on the Kenai Peninsula, Alaska

プロジェクトに携わる要員:

収集方法

Initially, we were primarily interested in confirming the taxonomy of the spruce that occurred on the southern Kenai Peninsula prior to deforestation due to spruce bark beetle and wildfire. We acquired two Landsat TM images from USGS Earth Explorer website (http://earthexplorer.usgs.gov/), dated 12 September 1986 (Landsat 5) and 25 September 2014 (Landsat 8). We used ENVI to pre-process the imagery to normalize the data (Radiometric Calibration Tool to calculate reflectance) and remove atmospheric effects (Dark Subtraction). We imported the pre-processed multi-spectral image into ERDAS Imagine. We conducted an unsupervised classification for each time-step and then visually identified the classes that related to spruce forests. Pixels that were spruce forest in 1986 but not in 2014 were classified as deforested. We converted the deforested pixels into a shapefile and dissolved “donut holes” ≤ 0.4 ha. Polygons were buffered and joined to adjacent polygons, excluding the 2014 Funny River Fire. Our focal area for genetics sampling was a 37 790 ha union of major fire polygons south of Tustumena Lake on the southern Kenai Peninsula (1994 Windy Point Fire, 1996 Crooked Creek Fire, 2005 Fox Creek Fire, and 2007 Caribou Hills Fire). Within this area, our sample frame became the centroids of the 250 m pixels from the Alaska eMODIS product, selecting every 12th pixel in both north-to-south and east-to-west axes, making a grid of 58 points spaced at 3 km intervals. This grid ensured we had a representative sample of spruce growing on the southern Kenai Peninsula. We collected spruce needles for genetic analysis from a total of 446 spruce seedlings and adult trees from 56 sites within the sample frame. Two additional sites outside the sample frame were intended to serve as reference populations for parental genomes: white spruce at Silver Lake Trail on the western peninsula and Sitka spruce at Lost Lake Trail on the eastern peninsula. Needles were frozen and stored at −80 ◦C until DNA was extracted.

Study Extent Our study area was the Kenai Peninsula.

Method step description:

  1. DNA was extracted from two spruce needles per individual using the Gentra PureGene Tissue Kit. Prior to extraction, needles were dried for 24 h in a lyophilizer, and ground to a fine powder in a bead beater. We screened 24 microsatellite primer pairs, selecting those that reliably amplified and produced the most scorable bands. Thirteen microsatellite loci, using 12 primer pairs, were amplified from all individuals. One locus proved too difficult to score, so analyses are based on 12 loci from 11 primer pairs (Table 1). All forward primers had an addedM13 tail (CACGACGTTGTAAAAC), which allowed priming of a third, universal M13 primer that was fluorescently labeled, and used for visualization of PCR products. We performed microsatellite polymerase chain reaction (PCR) amplification in 10 μL volume reactions containing 4 ng genomic DNA, 1 U of Kapa3G Plant DNA polymerase, KAPA Plant PCR Buffer, 0.3 μMof each locus-specific primer, and 0.15 μMof the fluorescently labeled M13 primer. PCR amplification conditions were: 1 cycle of 95 ◦C for 3 min; 10 cycles of 98 ◦C for 20 s, a locus-specific annealing temperature (Table 1) for 30 s, and 72 ◦C for 30 s; 28 cycles of 98 ◦C for 20 s, 55 C for 15 s, and 72 ◦C for 30 s; a final extension of 72 ◦C for 15 min. PCR products were sized on an ABI 3730xl genetic analyzer at the Cornell University Institute of Biotechnology. In the genus Picea, mitochondria are maternally inherited, while plastid are paternally inherited. To determine which parental species mitochondrial and plastid genomes were inherited from, we sequenced DNA from one mitochondrial locus (nad5a) and one plastid locus (the trnT-L intergenic space) using the Illumina miSeq. PCR primers were developed by aligning GenBank sequences from all spruce species on the Kenai Peninsula (P. glauca, P. mariana, and P. sitchensis) to ensure that the region amplified encompassed regions where the species differed. We used Primer3plus to identify good priming sites that did not vary between species, and that were less than 500 bp apart, ensuring overlap between the 300 bp forward and reverse miSeq sequence reads. Primers contained iTru tails that allowed the addition of Illumina adapters containing P5 and P7 sequencing primer sites and Adapeterama II indices used to demultiplex individual samples after sequencing. The trnT-L PCR amplifications were carried out in one reaction per sample that included both locus-specific primers, and the indexed iTru primers. However, a single PCR reaction produced too much primer-dimer with nad5a primers, so we did two reactions per sample. The first reaction used the tailed locus-specific primers, and the second used the index primers. Samples were cleaned with Solid Phase Reversible Immobilization (SPRI) beads to remove primers and primer dimer prior to the second PCR reaction. After the second PCR, all samples were pooled, cleaned with SPRI beads, and sent to the University of Alaska Core lab for sequencing on the Illumina miSeq. Locus-specific primer sequences for trnT-L (including iTru tails) were iTru_trnT_3f: 5'-ACA CTC TTT CCC TAC ACG ACG CTC TTC CGA TCT AGC TAA GCA GGC TCA ATG GA-3' and iTru_trnT_3r: 5'-GTG ACT GGA GTT CAG ACG TGT GCT CTT CCG ATC TTA CTC CCC TTC TCT CGC CAT-3' and primers for nad5a were iTru_nad5_1f: 5'-ACA CTC TTT CCC TAC ACG ACG CTC TTC CGA TCT GAA GGA AGA AGG GGC CCA AG -3' and iTru_nad5_1r: 5'-GTG ACT GGA GTT CAG ACG TGT GCT CTT CCG ATC TCG AGC TCT GTT ACC CTT GCA-3'. PCR for trnT-L was carried out in 10 μL volume with 4 ng genomic DNA, 5 μL KAPA HiFi Readymix, and 0.3 μM of each primer (4 primers total). PCR amplification conditions were: 1 cycle of 95 ◦C for 3 min; 25 cycles of 98 ◦C for 20 s, 57 ◦C for 15 s, and 72 ◦C for 15 s; 8 cycles of 98 ◦C for 20 s, 60 C for 15 s, and 72 ◦C for 15 s; a final extension of 72 ◦C for 1 min. The first PCR for nad5a was carried out in 10 μL volume with 4 ng genomic DNA, 5 μL KAPA HiFi Readymix, and 0.3 μM of each primer. PCR amplification conditions were: 1 cycle of 95 ◦C for 3 min; 30 cycles of 98 ◦C for 20 s, 57 ◦C for 15 s, 72 ◦C for 15 s, and a final extension of 72 ◦C for 1min. Cleaned PCR products were used as templates in the second PCR with the same conditions, but only 8 cycles, and an annealing temperature of 60 ◦C.
  2. Microsatellite peaks were scored in STRand 2.2.30, and binned in MSatAllele 1.05. Peaks and bins were manually checked and corrected as necessary. The fraction of ancestry from each parental species for each individual was estimated from microsatellite data using the admixture model in the Bayesian clustering software STRUCTURE 2.3.4. Allele frequencies were assumed to be uncorrelated among clusters, and no prior population information was used in clustering. It was assumed that null alleles could be present, but PCR reactions that produced no peaks were assumed to be missing data. Dirichlet parameters (α) for degree of admixture were estimated and different clusters were allowed to have different values (POPALPHAS = 1), allowing for asymmetric admixture. The burnin for the Markov Chain was set to 100 000 steps, and we collected data from 100 000 subsequent steps. To identify the value of K (the number of ancestral populations or clusters) with the highest probability of explaining the data, we compared the mean likelihood of models with different values of K, ranging from K = 1 to 10. Each model was repeated 10 times. The best value of K was chosen as the smallest value of K where the mean log likelihood of the model plateaued, as suggested by the STRUCTUREmanual. We also evaluated K using delta K method. Results were visualized with DISTRUCT and PHYLOGEOVIZ. DNA sequence data from trnT-L and nad5a DNA was analyzed using the SeekDeep pipeline version 2.6.2, intended for analysis of targeted amplicon sequencing, where high-throughput sequencing is used with targeted genes amplified by PCRs. The reads of amplicons shorter than 150 bp were discarded at the filtering step of SeekDeep. Similarly, we discarded reads of amplicons longer than 478 and 550 bp for trnT-L and nad5a, respectively, on the assumption that these were off-target sequences. We used additional arguments “——converge——leaveOutSinglets” for the Qluster step, “——converge——illumina——pop-noErrors—— collapseLowFreqOneOffs” for the processClusters step. The option “——converge” causes the clustering to iterate until there is no more collapsing. These extra options remove the singlet clusters and unreliable and/or low-frequency one-off haplotypes. The extra clean-up options for the processClusters step were recommended for the cases where no PCR replicates are available to help correct for PCR noise. After haplotypes of all individuals were determined, we used fastq_masker of FASTX-Toolkit version 0.0.14 to convert bases with Phred Quality Score less than 20 to ambiguous nucleotides (N). Each sequence read was assigned to a haplotype in SeekDeep, and haplotypes were assigned to White, Black or Sitka spruce based on their match to Gen- Bank sequences. Spatially explicit maps of sampling sites were created using R (version 4.2.2) and packages maps (3.4.1), mapdata (2.3.1), and plotrix (3.8.2).

追加のメタデータ

代替識別子 6b4d1874-734a-4907-b21f-57cf9b99c148
https://bison.usgs.gov/ipt/resource?r=2015_kenai_spruce_genetics_study