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De Lira Mota, Marcelo Augusto; Dunkley Jones, Tom; Sulaiman, Nursufiah; Edgar, Kirsty M; Yamaguchi, Tatsuhiko; Leng, Melanie J; Adloff, Markus; Greene, Sarah E; Norris, Richard D; Warren, Bridget; Duffy, Grace; Farrant, Jennifer; Murayama, Masafumi; Hall, Jonathan; Bendle, James A (2023): BIT Index, GDGT-derived OPTiMAL and BAYSPAR paleotemperatures for the Mossy Grove sediment core [dataset]. PANGAEA, https://doi.org/10.1594/PANGAEA.960406, In: De Lira Mota, MA et al. (2023): Micropaleontological and geochemical dataset of shallow-marine deposits in central Mississippi, US Gulf Coastal Plain [dataset bundled publication]. PANGAEA, https://doi.org/10.1594/PANGAEA.960394

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Abstract:
Samples were processed for GDGTs at the Birmingham Molecular Climatology Laboratory, University of Birmingham. Lipids were extracted from ~10-15 g of homogenized sediment by ultrasonic extraction using dichloromethane (DCM):methanol (3:1). The total lipid extract was fractionated by silica gel chromatography using n-hexane, n-hexane:DCM (2:1), DCM, and methanol to produce four separate fractions, the last of which contained the GDGTs. Procedural blanks were also analyzed to ensure the absence of laboratory contaminants. Samples were filtered using hexane:isopropanol (99:1) through a 0.4 µm PTFE filter (Alltech part 2395), before being dried under a continuous stream of N2. Samples were then sent to the University of Bristol for analysis by LC-APCI-MS. HPLC-APCI-MS analyses were conducted at the National Environmental Isotope Facility, Organic Geochemistry Unit, School of Chemistry, University of Bristol, with a ThermoFisher Scientific Accela Quantum Access triple quadrupole MS in selected ion monitoring (SIM) mode. Normal phase separation was achieved using two ultra-high performance silica columns (Acquity UPLC BEH HILIC columns, 50 mm × ID 2.1 mm × 1.7 µm, 130 Å; Waters) were fitted with a 2.1 mm × 5 mm guard cartridge after Hopmans et al. (2016). The HPLC pump was operated at a flow rate of 200 µL min-1. GDGT determinations were based on single injections. A 15 µL aliquot was injected via an autosampler, with analyte separation performed under a gradient elution. The initial solvent hexane:iso-propanol (IPA) (98.2:1.8 v/v) eluted isocratically for 25 min, followed by an increase in solvent polarity to 3.5 % IPA in 25 min, and then by a sharp increase to 10 % IPA in 30 min (Hopmans et al., 2016). A 45 min washout period was applied between injections, whereby the column was flushed by injecting 25 µL hexane:isopropanol (99:1 v/v). GDGT peaks were integrated manually using Xcalibur software. In-house generated standard solutions were measured daily to assess system performance. One peat standard was run in a sequence for every 10 samples and integrated in the same way as the unknowns. Selected ion monitoring (SIM) was used to monitor abundance of the [M+H] + ion of the different GDGTs instead of full-scan acquisition in order to improve the signal-to-noise ratio and therefore yield higher sensitivity and reproducibility. SIM parameters were set to detect the protonated molecules of isoprenoid and branched GDGTs using the m/z (Schoon et al., 2013). The majority of sediments were found to contain a full range of both isoprenoid and branched GDGTs. Sea surface temperature (SST) estimations from GDGT assemblages are show based on two methodologies: the BAYSPAR Bayesian regression model of Tierney and Tingley (2014, 2015) using the 'analogue' version for deep-time applications; and, the OPTiMAL Gaussian process model of Dunkley Jones et al. (2020). When plotting BAYSPAR SSTs we distinguish samples with BIT indices greater than and less than 0.4, as high BIT can be associated with a small warm bias (Weijers et al., 2006). For the OPTiMAL model we apply its own internal screening criteria that quantifies the extent that fossil GDGT assemblages are non-analogue relative to the modern calibration data, using the Dnearest criteria with a cut-off value of 0.5. All but one pre-NIE GDGT assemblages have Dnearest values that exceed 0.5, whereas eight samples above this level have values less than 0.5.Only OPTiMAL SST data that pass the Dnearest screening criteria are shown.
Funding:
Natural Environment Research Council (NERC), grant/award no. NE/P013112/1
Natural Environment Research Council (NERC), grant/award no. NE/P01903X/1
Coverage:
Latitude: 32.402000 * Longitude: -90.337000
Date/Time Start: 1991-08-19T00:00:00 * Date/Time End: 1991-09-05T00:00:00
Minimum DEPTH, sediment/rock: 16.8 m * Maximum DEPTH, sediment/rock: 149.7 m
Event(s):
Mossy_Grove_Core (MGC) * Latitude: 32.402000 * Longitude: -90.337000 * Date/Time Start: 1991-08-19T00:00:00 * Date/Time End: 1991-09-05T00:00:00 * Elevation: 106.4 m * Method/Device: Drilling/drill rig (DRILL)
Status:
Curation Level: Enhanced curation (CurationLevelC)
Size:
622 data points

Data

Download dataset as tab-delimited text — use the following character encoding:


Sample ID

Depth sed [m]

Age [Ma]

Age [ka BP]

BIT

D_nearest
(SST, OPTiMAL (GDGT-based pala...)

SST [°C]
(SST, OPTiMAL (GDGT-based pala...)

SST std dev [±]
(SST, OPTiMAL (GDGT-based pala...)

SST [°C]
(SST, from BAYSPAR (5th Percen...)
10 
SST [°C]
(SST, from BAYSPAR (95th Perce...)
MGC_5516.833.05330500.3711.35620.9717.82021.17135.733
MGC_5516.833.05330500.5011.08821.2327.31319.84133.855
MGC_5918.033.09330900.7200.43025.4155.160
MGC_6720.433.18331800.6741.50220.4148.01922.97638.170
MGC_7121.633.23332300.7270.98823.2947.26024.67040.612
MGC_7522.933.27332700.6360.81325.7576.02322.18036.965
MGC_7924.133.31333100.6640.43625.9154.99222.97637.944
MGC_8325.333.36333600.7051.24621.6697.85321.45035.957
MGC_8726.533.40334000.3980.66423.5834.70822.01636.802
MGC_9127.733.44334400.5100.51824.2065.66023.35238.629
MGC_9529.033.49334900.5500.85324.2236.63323.48138.811
MGC_9930.233.53335300.4541.62319.0758.39823.77739.096
MGC_10331.433.58335800.6030.30425.1064.86223.16738.424
MGC_10732.633.62336200.6120.28325.1384.79421.01735.463
MGC_11133.833.65336500.5810.44624.2285.37822.83037.812
MGC_11535.133.67336700.5520.84422.8366.78224.06939.639
MGC_11936.333.68336800.5561.34421.0367.97823.08638.211
MGC_12337.533.70337000.5090.69122.9916.28724.52840.169
MGC_13139.933.73337300.4830.79225.7165.86222.15336.983
MGC_13541.133.75337500.5270.86122.6086.86824.16539.852
MGC_13942.433.76337600.6421.06621.0787.53621.36935.841
MGC_14343.633.78337800.4471.39617.1878.16524.35139.960
MGC_14744.833.80338000.4081.36021.5087.82623.40338.547
MGC_15146.033.81338100.5181.35221.4847.81523.15838.305
MGC_15547.233.83338300.5881.12022.0537.31223.29138.437
MGC_159.548.633.85338500.5180.43424.1305.31320.93735.414
MGC_16349.733.86338600.4941.39121.3857.80523.82739.303
MGC_16750.933.88338800.3950.97621.5926.92823.25138.429
MGC_17152.133.90339000.3591.05522.6487.11122.86837.679
MGC_17553.333.91339100.4410.51423.5895.61522.30537.181
MGC_17954.633.93339300.5220.31025.2714.85321.82136.564
MGC_18757.033.96339600.2550.58823.6205.88222.10836.875
MGC_19158.233.98339800.4681.37621.4077.78121.74236.470
MGC_199.560.834.01340100.6140.57525.8345.38421.46835.947
MGC_20361.934.03340300.3850.40624.4265.22820.93635.318
MGC_20763.134.04340400.4671.35621.0907.92721.68736.272
MGC_21164.334.06340600.3840.83122.7356.80123.60838.895
MGC_21966.834.09340900.5410.83322.8106.76222.03636.676
MGC_22769.234.13341300.4161.20520.1177.65022.39737.219
MGC_23571.634.16341600.5560.48824.6155.52122.36837.131
MGC_24374.134.19341900.4821.19921.0557.56520.94535.438
MGC_25176.534.23342300.8062.71115.7788.67521.44135.985
MGC_26781.434.29342900.4761.08421.0277.57322.66737.679
MGC_27583.834.33343300.4711.52321.1857.95122.54737.500
MGC_28386.334.36343600.4661.32421.3987.73821.26135.693
MGC_29188.734.42344200.4711.29921.5887.77825.63641.643
MGC_29991.134.53345300.4261.78519.4708.35624.75840.437
MGC_30793.634.65346500.3111.05421.1847.17922.84337.851
MGC_31596.034.76347600.3960.62723.4426.03723.00638.193
MGC_32398.534.88348800.0522.16114.6108.64123.71438.989
MGC_331100.934.99349900.4350.83722.6536.78123.92939.473
MGC_335102.135.05350500.4441.33822.2017.69125.87942.238
MGC_339103.335.11351100.3831.34720.8997.82023.78539.201
MGC_343104.535.17351700.4221.56912.6188.32024.65740.362
MGC_347105.835.22352200.4122.02118.1048.49121.71336.377
MGC_351107.035.28352800.3531.32821.3957.74422.57137.573
MGC_359109.435.40354000.3940.79322.7726.64523.26238.594
MGC_407124.136.11361100.8408.37316.3768.68225.36041.445
MGC_411125.336.17361700.6980.56524.9765.69421.75936.586
MGC_415126.536.23362300.4301.42421.1477.86321.61336.191
MGC_419127.736.29362900.4360.42524.8075.28923.44838.690
MGC_423128.936.35363500.5171.23821.2277.81022.74937.729
MGC_427130.136.41364100.4690.79625.4895.97322.94738.065
MGC_431131.436.47364700.3600.65823.6856.21724.40339.979
MGC_435132.636.53365300.3611.60918.7788.41724.56040.314
MGC_439133.836.59365900.4270.57324.2945.86223.00638.072
MGC_443135.036.65366500.4390.87524.6265.94223.89439.293
MGC_447136.236.71367100.4830.72223.3656.45624.98740.815
MGC_451137.536.77367700.3801.12721.8826.72023.18438.324
MGC_459139.936.90369000.4160.69224.9436.02823.26038.423
MGC_463141.136.96369600.4860.71623.5926.43326.14542.597
MGC_467142.337.03370300.4490.76822.9396.56324.14639.572
MGC_471143.637.09370900.3931.20321.7317.70125.51641.674
MGC_475144.837.16371600.4501.23821.9347.69424.99540.894
MGC_479146.037.22372200.4221.42221.2187.84222.69337.729
MGC_483147.237.29372900.3661.01422.0597.37428.30645.905
MGC_487148.437.35373500.3050.81722.9916.80023.18138.224
MGC_491149.737.42374200.3390.88124.3026.63520.69935.034