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Data Descriptor

Scots Pine Seedlings Growth Dynamics Data Reveals Properties for the Future Proof of Seed Coat Color Grading Conjecture

1
Mechanical Department, Voronezh State University of Forestry and Technologies named after G.F. Morozov, 8, Timiryazeva, Voronezh 394087, Russia
2
Faculty of Forestry, University of Belgrade, Kneza Višeslava 1, Belgrade 11030, Serbia
*
Author to whom correspondence should be addressed.
Data 2019, 4(3), 106; https://doi.org/10.3390/data4030106
Submission received: 1 July 2019 / Revised: 22 July 2019 / Accepted: 22 July 2019 / Published: 23 July 2019

Abstract

:
Seed coat color grading conjecture is also known as Pravdin’s conjecture. To verify the conjecture, we established a long-term field experiment. This data set included unique empirical data of Scots pine (Pinus sylvestris L.) container-grown seedlings produced from different seed color grades, outplanted on a post fire site in the Voronezh region, Russia. Variables were provided for 10 rows of 90 samples in each row. These data contribute to our understanding of seed germination and seedlings growth dynamics from size and color gradings of seeds. This structure is the future basis of the Forest Reproductive Material Library (FRMLib) and will be used for assisted migration and forest seed transfer.
Dataset: Dataset access at http://dx.doi.org/10.17632/fx4wx7hj86.2
Dataset License: CC BY NC 3.0

Graphical Abstract

1. Summary

The Pravdin’s conjecture is a significant difference in the “morphology of chromosomes in karyotypes of forest crops, depending on the geographical location and seed coat color” [1]. This hypothesis is the basis of the project “Development of forest seeds production with the specified characteristics” [2]. The project goal was the improvement of forest seed production for direct, both ground and aerial seeding [3,4], as well as storage, by devising a technology and designing technical means for qualitative and quantitative grading of seed.
Seed of the main forest-forming species, as an integral part of forest reproductive material (FRM) [5] is quite a valuable product, transferred by trade operations over long distances [6]. The quality of seed to a large extent determines the pace and final success of reforestation. An increase in the competitiveness of forest seed by improvement of quality attributes was one of the key steps in the development of the forest complex of Russia, set out in the Strategy [7]. This assumed active interaction of private forest users (and/or owners) with producers of forest seed that was consistent with the Russian forest legislation.
For Scots pine seeds, like the any plant species, field germination is the most important quality attribute. Field germination depends on internal factors like genetics and initial seed viability [8], and external factors like the years of crop formation, temperature conditions during germination [9] and can be improved by pre-sowing treatments like seed stratification, a proper substrate or soil preparation and the nursery cultural practice after the sowing [10,11]. The results of a field germination test conducted in a container nursery [8] differs from the results in the bareroot nursery, especially for seeds with low viability. It has been proven that the germination of coniferous seed is closely related to the temperature conditions [9] and that it is slower and more unstable [12] compared to the seeds of agricultural crops, requiring additional costs for heating greenhouses in nurseries. The aim of this study was to test whether seed grading on size and color improved the performance of Scots pine seedlings grown in a container.
At the operational level, the sorting of seeds based on size prior to sowing is usually performed by specialized equipment for seed processing (in the case of this study it was produced by BCC AB Corp., Sweden). The usual technology practice involves sorting seeds sequentially both geometrically and gravitationally, which are both quantitative features. However, the spectrometric properties of seeds [13,14,15] determined by provenance [16] and determining the seed viability [17] should not be neglected either.
In uniform growing conditions like in the forest nursery, the viability of the individual seed has a decisive role in the production of the targeted number of seedlings [18]. Spectrometric properties of seed (i.e., seed color) is one of the attributes which indicates seed viability and germination rate. As a result of this, spectrometric properties of seeds should be taken into account when designing machine vision devices [19,20,21,22,23] for forest pre-sowing seed processing, especially for use in aerial seeding [24]. Combined with the quantitative feature of seed size, spectrometric properties are a reliable indicator of a seedlings performance. Additionally, we can recommend the grading of Pinus sylvestris L. seed on two size classes [25].
The data set was used in papers [24,26] and preprints [27,28]. The results showed a significant statistical difference in seed germination and the seedlings growth between groups produced from seeds with a different size and coat color.

2. Data Description

The data set is available from the Mendeley Data Repository [29] and cover one file (Pinus sylvestris one-year data.xlsx) and three folders:
  • 30 Day Container-grown Seedlings (Photo 2017);
  • 50 Day Container-grown Seedlings (Photo 2017);
  • Seedlings in 10 rows (Photo Spring 2019).
Pinus sylvestris one-year data.xlsx file includes all information of the specific data. The file includes 10 Excel sheets (named 1, 2 … 10), sheet Meteorology 2018 and sheet Container seed germination Supplementary File.
Sheets 1, 2, …, 10 present data on seedling growth (see structure in Table 1) depending on the technological features of seed sorting (see Table 2).
Sheet Container seed germination includes 19 columns (see dataset structure on the light group in Table 3). For each color-size group there are six columns.
Sheet Meteorology 2018 includes five columns (see structure Table 4) adapted in http://pogoda-service.ru/climate_table.php:
  • Month;
  • Average temperature;
  • Temperature normal ratio;
  • Rainfall;
  • Rainfall normal ratio.

3. Methods

3.1. Study Microsite

The experimental microsite was located on the post fire non-uprooting site of the left-bank forestry training center of the Voronezh State University of Forestry and Technologies, located in the Voronezh region, Russian Federation (coordinates of the nodal point: N 51°49’40.3’ E 39°21’49.7’, altitude 100.8 m a.s.l). The microsite had a rectangular shape of 405 m2 and was divided into 10 rows made by the innovative plowing technique [30]. There were no large deviations from a normal in terms of temperatures during the experiment time, with average monthly temperature rising from May to July, and decreasing after the peak in July until the end of the experiment in September. As compared to the temperature, there were large deviations from the normal in terms of rainfall. In all months during the experiment time the rainfall was lower than normal, range from 62% of the normal in June to only 31% in August.

3.2. Seed Production (Collection and Processing)

Cones of Pinus sylvestris L. were collected in autumn of 2016, from selected trees in a natural forest located in the Pavlovsky district of the Voronezh region, Russian Federation (Latitude 50.462169; Longitude 40.096446, altitude 83 m a.s.l). Seeds were extracted from cones and further processed (pre-cleaning, extraction, de-winging) using the standard procedures and equipment (BCC AB, Landskrona, Sweden) at the Voronezh containerized forest nursery (Latitude 51.567094; Longitude 39.243006, altitude 105 m a.s.l). The original seedlot was placed in a storage facility in a glass bottle and kept at +5 ± 2 °С and humidity of 60%.
From the original seedlot, three random samples of 0.5 kg were extracted in May of 2017. The samples were kept for 24 hours at +20 ± 2 °C and humidity of 75%. From each sample, three seed coat color classes were separated by the use of standard photo-separator (Smart Grade LLC, Russia) with a significantly different degree of reflection in the wavelength range of 650 to 715 nm [14]. The organoleptic test [31] defined these color fractions as light (color class 1), brown (color class 2) and dark (color class 3). Additionally, these seeds could be classified in the Munsell [32] color system using the image processing Digital Color Guide Android software (DIC Corp., Tokyo, Japan). Three representative samples (Figure 1) were taken from each seed-color class.
At the end, seeds of each color class were graded by size using the sieve sorter (BCC AB Corp., Sweden) on two dimensional fractions of “small” seeds comprising of seeds whose width ranged from 2.51 to 3.25 mm and “large” seeds comprising seeds whose width exceeded 3.25 mm.

3.3. Seedlings Production

Seeds (N = 1800) of all color-size classes were sown by an automatic seeder (BCC AB Corp., Sweden) in 40-cell containers (BCC AB Corp., Sweden) filled with peat substrate. Each color group was sown in a total of five containers. Containers were installed in greenhouses with automatic maintenance of temperature and humidity. Determination of germination was performed for each container on the 30th and 50th day [33,34] from the seeding.
The resulting seedlings were removed from the container, transported in cardboard boxes and planted under the Kolesov sword in the row bottom on October 24, 2017. A total of 90 seedlings were planted in each of the ten rows (N = 900). Since the spring of 2018, each month during the first growing season in the field, a seedlings height from the root collar to the apical bud was measured with an accuracy of 1 mm (see Table 1). Although the seedlings diameter is usually recognized as the single most reliable quality attribute [35,36], the seedlings height is useful in forecasting their growth and survival in the field [37,38].
Finally, before the second growing season started on 28 March 2019, we measured the height and root collar diameter of each seedling. At the same time, each seedling was photographed in the plan, from a height of 1 m using the digital camera Canon Digital IXUS 100 IS 12.1 MPix (Canon Inc., Tokyo, Japan). These photographs will be further used to create an algorithm for the automation of the monitoring process using a drone.

3.4. Dataset Statistical Analysis (Possible Application)

The one-way ANOVA can be used to test differences between mean values of seed germination, seedlings height and root collar diameter from different seed size and color classes. Descriptive statistics included number of samples, mean value, standard deviation, variance, minimum value, and maximum value. Mean values could be separated using Tukey’s HSD test for unequal number of samples, with a significance level of alpha = 0.05. For example, based on the data set [29], it could be assumed that the average height of seedlings from light seeds was significantly greater than from light seeds (p = 3.32 × 10−6). At the same time, the seed germination on the container with a dark color of the seed coat was higher than that of seeds with a light coat color (p = 0.000013). It is possible to use the standard chart (Box and Whisker Plot) to visualize the indicators and estimate the variability of the mean values.

4. User Notes

In the future, for the final validation of the Pravdin’s conjecture, it is necessary to conduct research on the genetic control of seed color and its variability on the population and individual level, by use of molecular markers. Moreover, it is necessary to develop a database (Figure 1), which will set the basis for the development of the Forest Reproductive Material Library (FRMLib). To expand this library, we plan to conduct research on the "seed coat color—seedling growth" relation on other forest tree species.
Further use of this empirical dataset implies validation at the second and subsequent growing seasons. Future research will be focused on the correlation between seed coat color and a number of morphological and performance attributes of seedlings, i.e., color of needles, seedlings height, root collar diameter, seedlings crown area, etc. A repeated taking of photographs of seedlings in the plan at the end of each growing season will provide an input for automation of the reforestation success monitoring process by use of a drone.
At the same time, this study raises new questions which requires further research. For example; does the nature of distribution of seed germination parameters remain constant for seeds collected at different years and of a different origin? Does the position of a particular container in the greenhouse have an effect on seed germination? Does technology of seed grading on color reduce the genetic diversity of seedlings?

Supplementary Materials

The following are available online at https://www.mdpi.com/2306-5729/4/3/106/s1.

Author Contributions

Conceptualization, A.N. and V.I.; methodology, A.N. and V.I.; validation, A.N., V.I. and T.N.; field measurements, E.P.; formal analysis, T.N.; investigation, A.N. and E.P.; resources, A.N., E.P. and T.N.; relationship data model T.N.; data curation, A.N. and T.N.; writing—original draft preparation, A.N. and V.I.; writing—review and editing, A.N., V.I. and T.N.

Funding

This research received no external funding.

Acknowledgments

The authors acknowledge the rector of the University of Belgrade Ivanka Popović and rector of Voronezh State University of Forestry and Technologies (VSUFT) Michael Drapaluyk for the possibility of establishing scientific collaborations. The authors special gratitude is offered to the Vice-Dean for Science and International Cooperation Faculty of Forestry University of Belgrade Mirjana Šijačić-Nikolić and Vice-rector for science and innovation of VSUFT Svetlana Morkovina for scientific support and valuable comments in methodological aspects.

Conflicts of Interest

The authors declare no conflicts of interest.

References

  1. Pravdin, L.F. The Main Regularities of the Geographical Variability of Scots Pine (Pinus sylvestris L.) [in Russian—Osnovnye Zakonomernosti Geograficheskoy Izmenchivosti Sosny Obyknovennoy (Pinus silvestris L.)]. In Fundamentals of Forest Science and Forestry; Forestry Publication: Moscow, Russia, 1960; pp. 245–250. (in Russian) [Google Scholar]
  2. Research Gates: Development of Forest Seeds Production with the Specified Characteristics. Available online: https://www.researchgate.net/project/Development-of-forest-seeds-production-with-the-specified-characteristics (accessed on 20 June 2019).
  3. Grossnickle, S.C.; Ivetić, V. Direct Seeding in Reforestation—A Field Performance Review. Reforesta 2017, 4, 94–142. [Google Scholar] [CrossRef]
  4. Novikov, A.I.; Ersson, B.T. Aerial seeding of forests in Russia: A selected literature analysis. IOP Conf. Ser. Earth Environ. Sci. 2019, 226, 012051. [Google Scholar] [CrossRef]
  5. Ivetić, V.; Novikov, A.I. The role of forest reproductive material quality in forest restoration. For. Eng. J. 2019, 9, 56–65. [Google Scholar] [CrossRef]
  6. Jansen, S.; Konrad, H.; Geburek, T. Crossing borders—European forest reproductive material moving in trade. J. Environ. Manage. 2019, 233, 308–320. [Google Scholar] [CrossRef] [PubMed]
  7. Strategy of Development of a Forest Complex of the Russian Federation till 2030. Available online: http://static.government.ru/media/files/cA4eYSe0MObgNpm5hSavTdIxID77KCTL.pdf (accessed on 30 September 2018).
  8. Bradbeer, J.W. Seed Dormancy and Germination; Springer US: Boston, MA, USA, 1988. [Google Scholar] [CrossRef]
  9. Liu, Y.; El-Kassaby, Y.A. Timing of seed germination correlated with temperature-based environmental conditions during seed development in conifers. Seed Sci. Res. 2014, 25, 29–45. [Google Scholar] [CrossRef]
  10. Volzhanina, E.M.; Lazareva, S.M. Sowing qualities of Korean pine seeds. Forest J. 2002, 54–58. (in Russian). [Google Scholar]
  11. Mukassabi, T.A.; Polwart, A.; Coleshaw, T.; Thomas, P.A. Does Scots pine seed colour affect its germination? Seed Sci. Technol. 2012, 40, 155–162. [Google Scholar] [CrossRef]
  12. Downie, B.; Bergsten, U.; Wang, B.S.P.; Bewley, J.D. Conifer seed germination is faster after membrane tube invigoration than after prechilling or osmotic priming. Seed Sci. Res. 1993, 3. [Google Scholar] [CrossRef]
  13. Novikov, A.I.; Ivetić, V.; Drapalyuk, M.V.; Sokolov, S.V.; Dornyak, O.R. VIS-NIR wave spectrometric features of acorns (Quercus robur L.) for machine grading. IOP Conf. Ser. Earth Environ. Sci. (under review).
  14. Novikov, A.I. Visible wave spectrometric features of scots pine seeds: the basis for designing a rapid analyzer. IOP Conf. Ser. Earth Environ. Sci. 2019, 226, 012064. [Google Scholar] [CrossRef]
  15. Novikov, A.I.; Saushkin, V.V. Infrared range spectroscopy: the study of the pine seed coat parameters. For. Eng. J. 2018, 8, 30–37 . (in Russian). [Google Scholar] [CrossRef]
  16. Tigabu, M.; Oden, P.C.; Lindgren, D. Identification of seed sources and parents of Pinus sylvestris L using visible-near infrared reflectance spectra and multivariate analysis. Trees-Structure Funct. 2005, 19, 468–476. [Google Scholar] [CrossRef]
  17. Novikov, A.I. Forest seeds rapid analysis: The choice of the effective quality indicator. In Proceedings of the Ecological and Biological Bases of Increasing Productivity and Sustainability of Natural and Artificially Renewed Forest Ecosystems, Voronezh, Russia, 4–6 October 2018; Voronezh State University of Forestry and Technologies named after G.F. Morozov: Voronezh, Russia, 2018; pp. 559–567. (in Russian). [Google Scholar]
  18. Tigabu, M.; Daneshvar, A.; Jingjing, R.; Wu, P.; Ma, X.; Odén, P.C. Multivariate Discriminant Analysis of Single Seed Near Infrared Spectra for Sorting Dead-Filled and Viable Seeds of Three Pine Species: Does One Model Fit All Species? Forests 2019, 10, 469. [Google Scholar] [CrossRef]
  19. Albekov, A.U.; Drapalyuk, M.V.; Morkovina, S.S.; Novikov, A.I.; Vovchenko, N.G.; Sokolov, S.V.; Novikova, T.P. Seed Sorting Device. RU Patent 2 687 509, 14 May 2019. [Google Scholar]
  20. Albekov, A.U.; Drapalyuk, M.V.; Morkovina, S.S.; Vovchenko, N.G.; Novikov, A.I.; Sokolov, S.V.; Novikova, T.P. Device for Seeds Sorting. RU Patent 2 682 854, 21 March 2019. [Google Scholar]
  21. Albekov, A.U.; Drapalyuk, M.V.; Morkovina, S.S.; Vovchenko, N.G.; Novikov, A.I.; Sokolov, S.V.; Novikova, T.P. Express Analyzer of Seed Quality. RU Patent 2 675 056, 14 December 2018. [Google Scholar]
  22. Novikov, A.I. Rapid Analysis of Forest Seeds: Biophysical Methods [in Russian—Ekspress-Analiz Lesnyh Semyan Biofizicheskimi Metodami]; VSUFT: Voronezh, Russia, 2018; pp. 1–128. [Google Scholar]
  23. Drapalyuk, M.V.; Novikov, A.I. Analysis of operational mechanized technologies of seed separation under artificial forest restoration. For. Eng. J. 2018, 8, 207–220. (in Russian). [Google Scholar] [CrossRef]
  24. Novikov, A.I. Technology of Scotch Pine Seeds Grading on a Quantitative Attribute: Some Results of Approbation [in Russian]. Izvestia Sankt-Peterburgskoj Lesotehniceskoj Akademii. (in press).
  25. Novikov, A.I.; Ivetić, V. The effect of seed size grading on seed use efficiency and height of one-year-old container-grown Scots pine (Pinus sylvestris L) seedlings. Reforesta 2018, 6, 100–109. [Google Scholar] [CrossRef]
  26. Novikov, A.I.; Ivetić, V. The effect of seed coat color grading on height of one-year-old container-grown Scots pine seedlings planted on post-fire site. IOP Conf. Ser. Earth Environ. Sci. 2019, 226, 012043. [Google Scholar] [CrossRef]
  27. Novikov, A.I. Analysis of sowing qualities and juvenile stages of development of Pinus sylvestris L. at the seeds separation by various characteristics. Conifer. Boreal Zone. (under review).
  28. Novikov, A.I.; Ivetić, V.; Drapalyuk, M.V. Grading of Scots Pine Seed on a Qualitative Attribute. J. For. Sci. (under review).
  29. Novikov, A.I.; Ivetić, V.; Novikova, T.P.; Petrishchev, E. One-year-old Scots pine seedlings from seeds sorted by size and coat color (empirical data) [Dataset]. Mendeley Data 2019, 2. [Google Scholar] [CrossRef]
  30. Zimarin, S.; Novikov, A.; Meshcheryakova, A.; Borodin, N. Forestry Innovation in New Disk Cutter for Soil Preparation on Non-Uprooting Site. In Proceedings of the 33rd International Business Information Management Association Conference (IBIMA), Granada, Spain, 10–11 April 2019; pp. 3120–3129. [Google Scholar]
  31. Bondartsev, A.S. Color Scale (Manual for Biologists in Scientific and Applied Research); USSR Academy of Sciences: Moscow-Leningrad, Russia, 1954. [Google Scholar]
  32. Cleland, T.M. Practical Description of the Munsell Color System, with Suggestions for its Use; Munsell Color Co.: Boston, MA, USA, 1921. [Google Scholar]
  33. Pimenov, A.V. Biodiversity of Scots pine (Pinus sylvestris L.) in Contrasting Ecotopes of the South of Siberia. Ph.D. Thesis, Sukachev Forest Institute of the Siberian Branch of the Russian Academy of Sciences, Krasnoyarsk, Russia, 2015. (in Russian). [Google Scholar]
  34. Mañas, P.; Castro, E.; de las Heras, J. Quality of maritime pine (Pinus pinaster Ait) seedlings using waste materials as nursery growing media. New For. 2009, 37, 295–311. [Google Scholar] [CrossRef]
  35. Mason, E.G. A model of the juvenile growth and survival of Pinus radiata D. Don; adding the effects of initial seedling diameter and plant handling. New For. 2001, 22, 133–158. [Google Scholar] [CrossRef]
  36. Ivetić, V.; Grossnickle, S.; Škorić, M. Forecasting the field performance of Austrian pine seedlings using morphological attributes. iForest—Biogeosci. For. 2017, 10, 99–107. [Google Scholar] [CrossRef] [Green Version]
  37. Ivetić, V.; Devetaković, J.; Maksimović, Z. Initial height and diameter are equally related to survival and growth of hardwood seedlings in first year after field planting. Reforesta 2016, 2, 6–21. [Google Scholar] [CrossRef]
  38. Karlman, L.; Fries, A.; Martinsson, O.; Westin, J. Juvenile growth of provenances and open pollinated families of four Russian larch species (Larix Mill.) in Swedish field tests. Silvae Genet. 2011, 60, 165–177. [Google Scholar] [CrossRef] [Green Version]
Figure 1. Relationship data model for image and variable collections. This structure is the future basis of the Forest Reproductive Material Library (FRMLib) and will be used for assisted migration and transfer of Forest Reproductive Material (FRM).
Figure 1. Relationship data model for image and variable collections. This structure is the future basis of the Forest Reproductive Material Library (FRMLib) and will be used for assisted migration and transfer of Forest Reproductive Material (FRM).
Data 04 00106 g001
Table 1. The table format of the growth dataset of Scots pine seedlings.
Table 1. The table format of the growth dataset of Scots pine seedlings.
Height in First Measurements Date (cm)Height in Second Measurements Date (cm)Height in Third Measurements Date (cm)Height in Fourth Measurements Date (cm)Height in Growth Season Finally Measurements Date (cm)Root Collar Diameter (RCD) in Growth Season Finally Measurements Date (mm)
data 1data 1data 1data 1data 1data 1
data 2data 2data 2data 2data 2data 2
Data finallyData finallyData finallyData finallyData finallyData finally
NNNNNN
Survival, %Survival, %Survival, %Survival, %Survival, %Survival, %
MeanMeanMeanMeanMeanMean
Average deviationAverage deviationAverage deviationAverage deviationAverage deviationAverage deviation
VarianceVarianceVarianceVarianceVarianceVariance
Standard deviationStandard deviationStandard deviationStandard deviationStandard deviationStandard deviation
Coefficient of variationCoefficient of variationCoefficient of variationCoefficient of variationCoefficient of variationCoefficient of variation
Oscillation factorOscillation factorOscillation factorOscillation factorOscillation factorOscillation factor
AsymmetryAsymmetryAsymmetryAsymmetryAsymmetryAsymmetry
KurtosisKurtosisKurtosisKurtosisKurtosisKurtosis
Table 2. The technological features of Scots pine seed sorting.
Table 2. The technological features of Scots pine seed sorting.
Excel Sheet NumberSeed Coat Color Group: Light (Wavelength of 650–715 nm and Reflectance 70–85%), Brown (650–715 nm and 50–65%) and Dark (650–715 nm and 35–45%)Seed Size Group: Small (2.51 to 3.25 mm) and Large ( > 3.25 mm)Number of Seeds
1 (bulk)non-gradednon-graded200
21 (light)non-graded200
32 (brown)non-graded200
43 (dark)non-graded200
51 (light)small200
61 (light)large200
72 (brown)small200
82 (brown) large200
93 (dark)small200
103 (dark)large200
Table 3. The table format of the germination (%) dataset of Scots pine seeds.
Table 3. The table format of the germination (%) dataset of Scots pine seeds.
Container NumberLight Seeds (Day 30)Light Large Seeds (Day 30)Light Small Seeds (Day 30)Light Seeds (Day 50)Light Large Seeds (Day 50)Light Small Seeds (Day 50)
1data 1data 1data 1data 1data 1data 1
2data 2data 2data 2data 2data 2data 2
Number finallyData finallyData finallyData finallyData finallyData finallyData finally
Table 4. The table format of the meteorological dataset of growth season 2018.
Table 4. The table format of the meteorological dataset of growth season 2018.
MonthAverage Temperature, Grad CTemperature Normal Ratio, Grad CRainfall (mm)Rainfall Normal Ratio (mm)
data 1data 1data 1data 1data 1
data 2data 2data 2data 2data 2
Data finallyData finallyData finallyData finallyData finally

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MDPI and ACS Style

Novikov, A.; Ivetić, V.; Novikova, T.; Petrishchev, E. Scots Pine Seedlings Growth Dynamics Data Reveals Properties for the Future Proof of Seed Coat Color Grading Conjecture. Data 2019, 4, 106. https://doi.org/10.3390/data4030106

AMA Style

Novikov A, Ivetić V, Novikova T, Petrishchev E. Scots Pine Seedlings Growth Dynamics Data Reveals Properties for the Future Proof of Seed Coat Color Grading Conjecture. Data. 2019; 4(3):106. https://doi.org/10.3390/data4030106

Chicago/Turabian Style

Novikov, Arthur, Vladan Ivetić, Tatyana Novikova, and Evgeniy Petrishchev. 2019. "Scots Pine Seedlings Growth Dynamics Data Reveals Properties for the Future Proof of Seed Coat Color Grading Conjecture" Data 4, no. 3: 106. https://doi.org/10.3390/data4030106

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