• <tr id="yyy80"></tr>
  • <sup id="yyy80"></sup>
  • <tfoot id="yyy80"><noscript id="yyy80"></noscript></tfoot>
  • 99热精品在线国产_美女午夜性视频免费_国产精品国产高清国产av_av欧美777_自拍偷自拍亚洲精品老妇_亚洲熟女精品中文字幕_www日本黄色视频网_国产精品野战在线观看 ?

    Genomic prediction using composite training sets is an effective method for exploiting germplasm conserved in rice gene banks

    2022-08-16 09:25:32SngHeHongynLiuJunhuiZhnYunMengYmeiWngFengWngGuoyouYe
    The Crop Journal 2022年4期

    Sng He, Hongyn Liu, Junhui Zhn, Yun Meng, Ymei Wng, Feng Wng, Guoyou Ye,b,

    a CAAS-IRRI Joint Laboratory for Genomics-Assisted Germplasm Enhancement, Agricultural Genomics Institute in Shenzhen, Chinese Academy of Agricultural Sciences,Shenzhen 518120, Guangdong, China

    b Rice Breeding Innovations Platform, International Rice Research Institute, DAPO Box 7777, Metro Manila, Philippines

    c Guangdong Provincial Key Laboratory of New Technology in Rice Breeding, Rice Research Institute, Guangdong Academy of Agricultural Sciences, Guangzhou 510640, Guangdong,China

    d Hainan Key Laboratory for Sustainable Utilization of Tropical Bioresource, College of Tropical Crops, Hainan University, Haikou 570228, Hainan, China

    Keywords:Genomic prediction Composite training set Rice germplasm Gene bank Reliability criterion

    A B S T R A C T Germplasm conserved in gene banks is underutilized, owing mainly to the cost of characterization.Genomic prediction can be applied to predict the genetic merit of germplasm. Germplasm utilization could be greatly accelerated if prediction accuracy were sufficiently high with a training population of practical size.Large-scale resequencing projects in rice have generated high quality genome-wide variation information for many diverse accessions, making it possible to investigate the potential of genomic prediction in rice germplasm management and exploitation. We phenotyped six traits in nearly 2000 indica (XI) and japonica (GJ) accessions from the Rice 3K project and investigated different scenarios for forming training populations. A composite core training set was considered in two levels which targets used for prediction of subpopulations within subspecies or prediction across subspecies. Composite training sets incorporating 400 or 200 accessions from either subpopulation of XI or GJ showed satisfactory prediction accuracy. A composite training set of 600 XI and GJ accessions showed sufficiently high prediction accuracy for both XI and GJ subspecies. Comparable or even higher prediction accuracy was observed for the composite training set than for the corresponding homogeneous training sets comprising accessions only of specific subpopulations of XI or GJ(within-subspecies level)or pure XI or GJ accessions (across-subspecies level) that were included in the composite training set. Validation using an independent population of 281 rice cultivars supported the predictive ability of the composite training set. Reliability, which reflects the robustness of a training set, was markedly higher for the composite training set than for the corresponding homogeneous training sets. A core training set formed from diverse accessions could accurately predict the genetic merit of rice germplasm.

    1. Introduction

    In rice, a staple food for over half of the human population [1],production and selection gain have rocketed in recent decades,thanks to the Green Revolution [2-4]. However, these gains have been accompanied by a narrowing of genetic diversity, impeding long-term selection gain in rice breeding. Rice gene banks around the world conserve abundant rice germplasm, with that of the International Rice Research Institute (IRRI) holding more than 140,000 accessions. These gene banks provide rich genetic resources to reinforce the genetic diversity consumed in breeding,but remain underutilized because constraints of budgets and logistics prevent extensive phenotyping of germplasm.

    Genomic prediction can efficiently genetically characterize germplasm without the need for comprehensive phenotyping, as described by Yu et al. [5]. The accuracy of genomic prediction depends strongly on the robustness of the training set.As relatedness is the major factor driving genomic prediction accuracy[6-8],a prerequisite of the training set is that it should be genetically related to the genotypes to be predicted. For this reason, genomic prediction is implemented within specific subspecies or subpopulations. But because germplasm preserved in gene banks is highly diverse, compiling a unique training set for each specific subspecies or subpopulation is impractically expensive. A composite training set consisting of accessions from each subspecies or subpopulation offers potential for comprehensive prediction, as it is related to each subspecies or subpopulation. The utility of such a set has been substantiated in dairy cattle breeding. Hayes et al.[9] and Erbe et al. [10] showed that including Holstein cattle in a training set for a Jersey population increased the genomic predictability of Jersey cattle in comparison with the pure Jersey training set.Hoze et al.[11]demonstrated that a multi-bred dairy cattle training population could improve prediction for the breed with a small number of reference animals included in the composite training set.Guo et al.[12]investigated the potential of a composite training set in rice and found the prediction accuracy using a composite training set of XI, GJ-trp, and GJ-tmp (rice subpopulations) to be comparable to that based on homogeneous training sets.However,as they used only around 400 accessions,the results await validation in a larger and more diverse population.

    The Rice 3K project [13] collected more than 3000 diverse accessions from the gene banks of IRRI and China. They include all major known rice subspecies and ecotypes and provide abundant genetic resources for developing composite training sets.Ideally, the composite training set can be organized among subspecies, which enables prediction of any subspecies contained in the training set. However, the two rice subspecies,indica(XI)andjaponica(GJ), are genetically so distant that they are adapted to very different ecological conditions. Merging accessions from these subspecies may greatly reduce the overall relatedness between the training set and the accessions to be predicted,impairing prediction in either subspecies [14,15]. The expansion of the training set conferred by combining accessions from different subspecies may not compensate for the sharp decrease in relatedness of the training set to individual subspecies. Compiling a composite training set across subpopulations within a specific subspecies is more promising,as relatedness among subpopulations is much greater.Still,the potential of a composite training set of both levels: across subspecies and across subpopulations within subspecies,merits investigation.In addition,the utility of a composite training set also depends on the trait of interest. For some traits measured at early phases of plant growth such as the seedling stage, different subspecies are not separately measured and an across-subspecies composite training set can be organized to predict accessions of each subspecies.For traits measured at maturity such as grain yield, different subspecies are normally respectively evaluated.Thus,a composite training set organized across subpopulations within specific subspecies is useful.

    To investigate the potential of a composite training set for genomic prediction for germplasm utilization in rice,we measured four early traits and two maturity-stage traits for 1999 accessions from the Rice 3K project. An independent population consisting of 281 cultivars was used to validate the robustness of the composite training set.Our experimental aims were to investigate 1)whether the composite training set organized across subpopulations within XI or GJ showed sufficiently high prediction accuracy for accessions from each subpopulation of XI or GJ, and 2) whether the use of a composite training set built across subspecies XI and GJ is adequate for an accurate prediction of germplasm of XI or GJ.

    2. Materials and methods

    2.1. Rice materials

    Subsets of 1338 XI and 661 GJ accessions from the Rice 3K project were sampled. Following Wang et al. [13], XI accessions were divided into subpopulations XI-1A, XI-1B, XI-2, XI-3, and XI-adm,based mainly on their geographic origins. In view of their genetic similarity and subpopulation size,XI-1A and XI-1B were combined as XI-1. GJ accessions were sampled from subpopulations GJ-trp,GJ-sbtrp, and GJ-tmp [13]. GJ-sbtrp and GJ-tmp were merged into a more general subpopulation, GJ-tmp, following classical taxonomy [16,17]. The size of each subpopulation is shown in Table 1.All accessions were phenotyped for six traits: mesocotyl length,coleoptile length, shoot length, germination rate, normalized difference vegetation index (NDVI), and straw weight. A population of 281 cultivars from south Asia, southeast Asia, and China and phenotyped for mesocotyl length was used for independent validation.

    2.2. Phenotyping

    To evaluate the variation in mesocotyl length(the distance from the basal part of the seminal root to the coleoptile node),coleoptile length, and shoot length, the phenotyping procedure established by Liu et al. [18] was used. The detailed phenotyping method was as follows: 15 good-quality seeds from each accession were sown at a depth of 6 cm in plant substrate contained in plastic trays, in each replicate. Each plastic tray contained 50 holes, each with 9.5 cm depth,4.5 cm top diameter,and 2.1 cm bottom diameter. After sowing, the plastic tray was kept in a container with 3 cm deep soil, and the system was maintained in a 30 °C dark incubator. Soil in each pallet was kept water-saturated for seed emergence and seedling growth. Emergence rate was recorded every day, until the emergence rate of any accession reached 100%.The reading at the last day was recorded for calculating germination rate.Three days after that,seedlings were carefully excavated and washed for measurement of mesocotyl length,coleoptile length, and shoot length using Image J (https://imagej.en.softonic.com/). A randomized complete block design with two replicates was adopted as a layout for the experiment. The phenotypic values of mesocotyl, coleoptile, and shoot length used for genomic prediction were the means of two replications.

    To measure NDVI,a field trial was conducted at the experiment station of the Agricultural Genomics Institute in Shenzhen, China.A row-column design with two complete replicates was used.The methodology for NDVI measurement followed Condorelli et al. [19]. NDVI was measured after eighty days of sowing using an unmanned aerial vehicle (UAV) platform. UAV-based NDVI was extracted from georeferenced orthomosaic GeoTIFFs generated from imagery captured from autopiloted flights of a Parrot Sequoia (Parrot, Paris, France) multi-spectral camera carried on a fixed-wing aircraft (Dajiang-Spirit, Shenzhen, Guangdong, China).Table S1 shows the features of the multispectral camera in terms of band centers and bandwidths. Flights were conducted at 30 m above ground level, resulting in ground sampling resolution of~3 cm/pixel for the Sequoia.Mission planning was performed with universal ground control software for the Sequoia camera (Mica-Sense, Seattle, WA, USA). All flights were planned for 80% image overlap along flight corridors. Pix4D Mapper Pro desktop software(Pix4D SA, Switzerland, http://pix4d.com) was used to generate orthomosaics for each camera band. Six to eight ground control points (GCP) geolocated with Real Time Kinematic (RTK) survey precision was used to georeference the orthomosaics. Camera images were calibrated using the manufacturer’s reflectance panels, which were imaged at the beginning of each flight. The Pix4D processing options were essentially the same as those of Pix4D’s‘‘Ag Multispectral” template version 4.1.10, except that GeoTIFF tiles were merged to create the NDVI orthomosaic.Plot-level NDVI means from UAV’s were calculated in Quantum Geographic Information System (QGIS) software version 2.18.3 (QGIS, US, http://www.qgis.org). Shape files containing annotated single-plot polygons were generated using R[20].Shape files with GCPs as features(points) were also employed based on RTK survey-grade measuring devices.For all flights,the GeoTIFF with the NDVI orthomosaicfrom Pix4D was combined with the plot polygon and GCP shape files in a single QGIS project. Confirmation of proper geolocations of the Pix4D orthomosaics was achieved by visually confirming alignment of the visible GCPs with the corresponding points in the feature shape file. NDVI plot means were generated with the Zonal Statistics function in QGIS.To eliminate bias from bird damage in dry-matter production of early-maturity genotypes, only rice straw was harvested to represent aboveground biomass. By hand threshing, all spikelets were separated from the rachis, and the remaining parts were oven-dried at 70 °C to constant weight.

    Table 1The number of accessions in each subpopulation of indica (XI) and japonica (GJ).

    The lme4 package [21] was used to conduct a spatial adjustment analysis of the raw NDVI plot data using a mixed model.Row and column were treated as random effects and a moving mean of variable size was used.

    2.3. Genomic data

    The resequencing and variant-calling protocols of the 1338 XI and 661 GJ accessions from the Rice 3K project were described by Wang et al. [13]. The original genotypic data were retrieved from https://aws.amazon.com/public-data-sets/3000-rice-genome/. In total, 26,829,979 bi-allelic single nucleotide polymorphisms (SNPs) were available. Further quality control for SNPs was performed by (1) removing SNPs with minor allele frequency(MAF) <0.05; (2) removing SNPs with call rate <90%; (3) filtering SNPs using the linkage disequilibrium (LD) pruning procedure in PLINK [22] with a window size of 300 SNPs, shifting step of 50 SNPs, andr2threshold of 0.1. Finally, 24,887 high quality SNPs were available for the 1999 genotypes. The resequencing and variant-calling procedure of the independent population of 281 cultivars was as described by Wang et al. [13] except that the sequencing depth was 50×.Finally,11,178,242 biallelic SNPs were identified, of which 18,770 were common to the 1999 3K accessions and the independent population.Relatedness between accessions was inspected using a cluster analysis based on the 18,770 common SNPs.

    To investigate the potential of a composite training set for subpopulations within subspecies,the genotypic data were readjusted for XI and GJ populations separately.Quality control was applied as described for the full set of 1999 accessions. Finally, 53,416 and 14,878 SNPs were available for the XI and GJ populations,respectively.

    2.4. Genomic prediction models

    The two BLUP models were implemented in R [20] using the BGLR package [26]. The Bayesian approaches were fitted with GCTB software developed by Zeng et al. [27]. Genomic prediction accuracy was calculated as the Pearson correlation coefficient between adjusted phenotypic values and genomic predicted genetic values.

    2.5. Genomic heritability

    Genomic heritability of each trait was independently estimated in the full population of 1999 genotypes and in the two subspecies populations XI and GJ using the formulabased on the GBLUP model.GCTA software[28]was used to compute the genomic relationship matrix and fit the GBLUP model.

    2.6. Composite training set designs and prediction scenarios

    The composite training set was organized in two levels:withinsubspecies and across-subspecies. For the within-subspecies level,the composite training set comprised accessions from each subpopulation of the XI, and GJ. Predictive ability was validated in each subpopulation of XI or GJ. To allow investigating the effect of training set size, 5%-80% accessions from each subpopulation were stochastically sampled to compose the composite training set, while the remaining 95%-20% accessions formed test sets.Genomic prediction accuracy was separately evaluated in each subpopulation. Random sampling of accessions to compile the composite training set was repeated 100 times. For comparison,samples from a specific subpopulation, termed as a homogeneous training set, were also used to predict the corresponding test set belonging to the same subpopulation.

    For the across-subspecies level, both XI and GJ samples in each repeat of the random sampling with sampling ratios of 5%-80% in the within-subspecies-level composite training set design described above were combined as the composite training sets,while the remaining 95%-20%XI accessions formed the XI test sets.The GJ test sets were constructed likewise. Genomic prediction accuracy was separately computed in the XI and GJ test sets. The XI and GJ test sets were also predicted using the sampled accessions of only their own subspecies, which were denoted as homogeneous training sets. The composite training set designs for both within-subspecies and across-subspecies levels are shown in Fig. S1.

    Genomic predictive ability of the across-subspecies level composite training set was further validated in the independent population of 281 cultivars. These cultivars were first genetically clustered with reference to the Rice 3K accessions. Genomic prediction accuracy was separately evaluated in each clustered set.

    2.7. Reliability criterion

    As reliability criterion theoretically describes the correlation between predicted and true genetic values [29-31] and is also indicative of genomic prediction accuracy [32], we compared reliability estimates derived from the composite and corresponding homogeneous training sets. The reliability of each accession in the test set was estimated with the GBLUP model and was formulated aswhere PEViis the prediction error variance [29] of theithgenotype. GBLUP was implemented using functionmmerin the R package sommer[33]andPEVcan be directly extracted from columnPevUin the output of functionmmer.

    3. Results

    3.1. Range and coefficient of variation (CV) of phenotypic values,genomic heritability, and population classification of the 281 independent cultivars

    The ranges of phenotypic values of the six traits under study are shown in Table 2.Among the six traits,the CVs of NDVI and mesocotyl length measured among all 1999 XI and GJ accessions or separately in the XI and GJ sets were respectively smallest and largest,at approximately 0.1 and 0.6.Genomic heritability estimates of the six traits studied were overall highest in XI,and were similar in full population and GJ (Table 2). Of the 281 cultivars of the independent population, 191 were genetically close to XI and the remaining 90 were close to GJ (Fig. S2).

    3.2. Within-subspecies genomic prediction accuracy and reliability

    Genomic prediction accuracies using a composite training set organized among subpopulations within subspecies XI or GJ increased overall with the size of the training set for all traits,prediction models, and validation subpopulations (Figs. 1, 2, S3-S12).In most cases, using composite training sets resulted in insignificantly different or significantly higher prediction accuracies relative to the corresponding homogeneous training sets incorporating accessions only from the same subpopulation as the accessions in the test sets.The number of cases in which using a composite training set led to significantly higher prediction accuracies than using the corresponding homogeneous training set was greater for the Bayesian models than for the BLUP models. For XI,when the composite training set size was small (5%-10%, corresponding to 67-134 accessions), the prediction accuracies of BayesR were overall markedly lower than those of other prediction models for all traits considered (Figs. 1, S3-S7). The prediction accuracies of different subpopulations using the composite training set differed,except for mesocotyl and coleoptile length.In contrast, prediction accuracies of the two GJ subpopulations differed among all traits studied (Figs. 2, S8-S12).

    The prediction accuracies of the composite training sets reached their plateau approximately when 30%of the accessions from each subpopulation of XI or GJ, or about 400 accessions of XI or 200 of GJ, were included in the composite training set (Figs. 1, 2, S3-S12). For XI, the composite training set comprising approximately 400 XI accessions (30%) from each subpopulation did not result in significantly lower prediction accuracies than the homogeneous training sets incorporating more than 30% accessions of a specific XI subpopulation (Table S2). The number of cases in which the composite training set containing 400 XI accessions (30%) was not inferior to larger composite training sets using the Bayesian models was greater than that using the BLUP models (Table S2).For GJ, the composite training set comprising approximately 200 GJ accessions (30%) from each subpopulation did not yield significantly lower prediction accuracy than the homogeneous training sets comprising even more than 200 accessions (70%-80% for GJtrp and 60%-80%for GJ-tmp,corresponding to 222-254 accessions for GJ-trp and 206-275 accessions for GJ-tmp) (Table S3). The Bayesian approaches performed better than the BLUP methods(Table S3).

    For all the investigated training set sizes, reliability estimates achieved by the composite training sets were globally higher than those by the homogeneous training sets (Figs. 3, 4). The variation among reliability estimates in the XI subpopulations was overall smaller than that in the GJ subpopulations (Figs. 3, 4). Comparing different subpopulations,the superiority of the composite training set over the homogeneous training sets in reliability estimation varied with the trait (Figs. S13, S14).

    3.3. Across-subspecies genomic prediction accuracy and reliability

    Similarly to the trend observed in the within-subspecies level,the prediction accuracies using the across-subspecies composite training set increased with training set size for all traits, models,and validation subspecies (Figs. 5, S15-S19). In most cases, using a composite training set resulted in insignificantly different or significantly higher prediction accuracies relative to the corresponding homogeneous training sets incorporating germplasm only from the same subspecies as the germplasm in the test sets(Figs.5,S15-S19). However, for straw weight, the prediction accuracies of XI accessions using the composite training set were mostly significantly lower than those using the corresponding homogeneous training set, except for the EGBLUP model (Fig. S19). Prediction accuracy of XI was overall higher than that of GJ accessions for coleoptile length and shoot length (Figs. S15, S16), whereas for the other four traits the GJ displayed generally higher prediction accuracy than XI accessions (Figs. 5, S17-S19). This difference could not be explained by the differences in the estimates of heritability for XI and GJ(Table 2).For coleoptile length,the prediction accuracies of GJ accessions when the composite training set size was small (5%-10%, corresponding to 100-200 accessions) were markedly lower for the BayesR model than for the other prediction methods (Fig. S15).

    The prediction accuracies using the composite training set reached their plateau when 30% accessions from XI and GJ, of the full 600 accessions, were included in the composite training set(Figs.5,S15-S19).Prediction accuracies using the composite training set comprising 600 XI and GJ accessions were not significantly lower than those of the homogeneous training sets incorporating more than 30% accessions (40%-80%, corresponding to 535-1070 XI genotypes and 264-529 GJ genotypes), especially for the GJ homogeneous training sets when the BayesB model was used(Table S4).

    Table 2Range and coefficient of variation(CV)of phenotypic values,and genomic heritabilities(?)of traits,estimated from the full population or separately from indica(XI)and japonica(GJ) sets.

    For each training set size,reliability was higher for the composite training set than for the homogeneous training sets (Fig. S20).The use of a composite training set seemed particularly beneficial for GJ. For instance, the composite training set consisting of 600 XI and GJ accessions (30% of the full accessions)(Fig. S21) showed markedly higher reliability estimates than the GJ homogenous training set for all of the traits.

    3.4. Validation of genomic predictive ability of the composite training set in an independent population

    Genomic prediction accuracy of mesocotyl length of XI and GJ in the independent population using the composite training setcomposed of 600 XI and GJ accessions(30%)from the Rice 3K project was slightly lower than that observed in validation within the 3K population, decreasing from approximately 0.6 to 0.5 (Figs. 5,6). Prediction accuracies of the GJ group were overall higher than those of XI accessions,in accord with that within the 3K population(Figs. 5, 6). The Bayesian approaches performed more poorly than the BLUP models with respect to both overall prediction accuracy and variation of prediction accuracy for both XI and GJ groups(Fig. 6).

    Fig. 1. Genomic prediction accuracies of mesocotyl length in subpopulations of indica (XI) using four prediction approaches based on a composite training set consisting of approximately 70(5%)to 1070(80%)accessions from each subpopulation of XI.Green and red asterisks indicate that the prediction accuracies using the composite training set were respectively higher and lower(P <0.05, t-test) than the accuracies using a homogeneous training set comprising accessions in the composite training set from the same subpopulation as the test set. Training set size is displayed as the ratios of sampling accessions from each subpopulation.

    4. Discussion

    4.1. A composite training set permits comprehensive and accurate prediction

    In comparison with the preceding study of Guo et al. [12], ours used much more diverse accessions and demonstrated that a composite training set composed of about 600 XI and GJ accessions satisfactorily predicted each of the two subspecies. However, the prediction accuracy was not satisfactory when the composite set was reduced to the size used by Guo et al.[12].The germplasm collection of the Rice 3K project has high diversity and appropriately represents the diversity in the world largest rice gene bank [13].For this reason,the composite training set compiled in the present study could be used for predicting other XI and GJ accessions conserved in the IRRI gene bank or newly collected. Compared to the validation within the Rice 3K population, only a slight reduction of prediction accuracy was observed in the independent population consisting of modern cultivars, supporting the robustness of the composite training set (Fig. 6). The validation in the independent population could also indicate that the training set composed of landraces and primitive cultivars could also be used to predict the genetic merits of modern rice cultivars.Still,other independent validation populations with phenotypes of more traits are needed to corroborate the robustness of the composite training set.For the traits studied,which showed a wide range of heritability estimates,the composite training set did not lead to inferior prediction accuracies relative to the homogeneous training sets (Figs. 1, 2, 5,S3-S12, S15-S19), implying that the composite training set could be used for predicting various traits.Comparing the predictabilities when the composite training set was organized within and across subspecies, the within-subspecies composite training set did not provide higher prediction accuracies across different traits than the across-subspecies composite training set. Theoretically, a within-subspecies composite training set would lead to higher prediction accuracies than an across-subspecies training set, because the relatedness between subpopulations within a specific subspecies is closer than that between subspecies.However,considering another critical factor affecting prediction accuracy, namely training set size[34-36],the size of the within-subspecies composite training set was much smaller than that of the acrosssubspecies set. Thus, the benefit of genetic closeness between the within-subspecies composite training set and each included subpopulation would be counterbalanced by its small size.

    Fig.2. Genomic prediction accuracies of mesocotyl length in subpopulations of japonica(GJ)using four prediction approaches based on a composite training set consisting of approximately 30(5%)to 530(80%)accessions from each subpopulation of GJ.Green and red asterisks indicate that the prediction accuracies using the composite training set were respectively higher and lower(P <0.05,t-test)than the accuracies using a homogeneous training set comprising accessions in the composite training set from the same subpopulation as the test set. Training set size is displayed as the ratios of sampling accessions from each subpopulation.

    Fig. 3. Reliability estimates of accessions in test sets for all traits based on GBLUP model using a composite training set consisting of approximately 70 (5%) to 1070 (80%)accessions from each subpopulation of indica(XI)and homogeneous training sets comprising accessions in the composite training set from the same subpopulation as the test set. Training set size is displayed as the ratios of sampling accessions from each subpopulation.

    Fig. 4. Reliability estimates of accessions in test sets for all traits based on GBLUP model using a composite training set consisting of approximately 30 (5%) to 530 (80%)accessions from each subpopulation of japonica(GJ)and homogeneous training sets comprising accessions in the composite training set from the same subpopulation as the test set. Training set size is displayed as the ratios of sampling accessions from each subpopulation.

    Fig. 5. Genomic prediction accuracies of mesocotyl length in indica (XI) and japonica (GJ) populations using four prediction approaches based on a composite training set consisting of 100(5%)to 1600(80%)accessions from both indica(XI)and japonica(GJ)populations.Green and red asterisks indicate that the prediction accuracies of XI or GJ accessions using composite training set were respectively higher and lower (P <0.05, t-test) than the accuracies using a homogeneous training set comprising only XI or GJ accessions involved in the composite training set. Training set size is displayed as the ratios of sampling accessions from each subspecies.

    Fig. 6. Genomic prediction accuracies of mesocotyl length in indica (XI) and japonica(GJ)groups of the independent population based on four prediction models using composite training sets consisting of 600(30%)XI and GJ accessions from the Rice 3K project.Numbers in parentheses indicate numbers of cultivars belonging to the XI and GJ groups.

    4.2.A composite training set consisting of a few hundred accessions is sufficient

    The composite training set with a few hundred accessions is sufficient as its prediction accuracy reached the plateau and was insignificantly different or significantly higher than those of corresponding homogeneous training sets (Figs. 1, 2, 5, S3-S12, S15-S19). Moreover, the prediction accuracy of composite training set was even not significantly inferior to the homogeneous training sets that included more accessions of specific subpopulations/subspecies (Table S2-S4). In particular, using the composite training set established for the GJ showed no significant reduction in prediction accuracies for each of the subpopulations relative to the homogeneous training sets containing more than 200 accessions(Table S3), reducing the necessity of organizing homogeneous training sets specifically for each GJ subpopulation. The variation of prediction accuracies among different samplings of reference accessions to constitute the composite training set was small for both of the within-subspecies level (400 and 200 for XI and GJ,respectively, Figs. 1, 2, S3-S12) and across-subspecies level (600 XI and GJ accessions,Fig.5,S15-S19),indicating that the predictive ability of the composite training set was stable and that the training set could be formed in practice by random sampling.Although the constitution of the composite training set could be further optimized by selecting representative accessions [5,30], the benefit from such optimization is likely to be small.

    4.3. BLUP models are recommended in across-population prediction

    There was negligible difference in prediction accuracies between the BLUP models (GBLUP and EGBLUP) and the Bayesian approaches (BayesB and BayesR) in different prediction scenarios within the 3K population when composite training sets were used(Figs. 1, 2, 5, S3-S12, S15-S19). However, with respect to the prediction accuracies of mesocotyl length using different genomic prediction models in the independent population based on the composite training set composed by the 3K project accessions,the BLUP models performed much more stably than the Bayesian models in the two sets classified as XI and GJ (Fig. 6). This finding could be attributed to the difference between BLUP and Bayesian models in hypotheses about the distribution of marker effects. In BLUP models, marker effects are assumed to be independently and identically distributed [24,37], in accordance with the infinitesimal model underlying quantitative traits[38,39].In Bayesian models,varied distributions of marker effects are set with the assumption that some markers are linked with major genes or large-effect quantitative trait loci (QTL) [24,40]. For this reason,the performance of Bayesian approaches is highly influenced by the existence of major genes or QTL and the linkage disequilibrium(LD)between markers and genes/QTL[36,41].We used LD of pairs of SNPs as surrogate of LD between SNPs and genes or QTL and found the that the LD of SNPs across the genome separately estimated in the 3K population and independent population varied greatly (Fig. S22). When a population is highly diverse it is highly likely that in different subpopulations the markers in high LD with QTL are different. This reduces the benefits from assuming different marker effect distributions by the Bayesian approaches,which is more appropriate for more homogeneous populations, or even makes the assumption a disadvantage.In contrast,the BLUP methods straightforwardly estimate the overall genetic value of accessions based on a genomic relationship matrix, circumventing the problem raised by the inconsistency of the LD extent of markers among populations. For this reason, we recommend the use of BLUP models for independent populations prediction if the proposed composite training set is used.

    4.4. The composite training set improves prediction reliability of genotypes to be predicted

    Theoretically,the prediction reliability of a specific accession is the squared correlation between predicted and true genetic value[31,42]. The method used in our study to calculate heritability is based on the prediction error variance, which can be directly derived from the inverse of the coefficient matrix of a mixed model equation[29].The coefficient matrix contains the genetic relationship matrix of accessions and variance component estimates of random effects, e.g., genetic effect and residual. These two factors,the genetic relationship matrix and variance component estimates,are associated with relatedness and training set size,which are the two major factors driving genomic prediction accuracy[7,8,11,34,43]. Relatedness and training set size are intrinsically in a counterbalancing relationship,as integrating more genetically distant accessions into the training set would expand the training set size but lower the overall relatedness between the training set and the genotypes to be predicted. Still, the reliability criterion could integrally consider these two factors and afford an overall evaluation of robustness of a training set. Several studies[42,44,45]have used reliability or reliability-associated parameters to optimize training set design.

    Our study demonstrated that a composite training set,whether organized in the level of within-subspecies or across-subspecies,could lead overall to higher reliabilities than the corresponding homogeneous training sets(Figs.3,4,S13,S14,S20,S21).This finding is in line with that of Hayes et al.[9]showing that a composite training set incorporating both Holstein and Jersey cattle could boost the reliability estimates of both Holstein and Jersey cattle compared to a single-breed training set, and a simulation study of De Roos et al. [31] showing that combining populations could increase the reliabilities of both populations especially when the populations were not diverged and a high density of markers was available. In our study, the differences between reliabilities of small population(i.e.,GJ)accessions estimated based on the composite and homogeneous training sets were markedly larger than the differences for large population (i.e., XI) accessions (Fig. S21). For GJ accessions the number of cases in which the composite training set resulted in significantly higher prediction accuracies than the homogeneous training set were greater than that for XI(Figs.5,S15-S19).Similar observations were also made in dairy cattle studies by Hayes et al.[9],Erbe et al.[10],and Hoze et al.[11].This finding implies that relative to the benefit brought by the expansion of training set size,the negative impact on overall relatedness incurred by integrating genetically distant reference genotypes would be marginal if the genetically close reference genotypes, i.e., accessions belonging to the same subpopulation or subspecies as the test set accessions respectively in the level of within- or across-subspecies, have been included in the composite training set.

    5. Conclusions

    In approximately 2000 XI and GJ accessions from the Rice 3K project, a composite training set containing 400 or 200 accessions from XI or GJ showed satisfactory genomic prediction accuracy for accessions from each subpopulation of XI or GJ.A composite training set containing 600 XI and GJ accessions showed adequately high prediction accuracies for the XI and GJ accessions.A composite training set afforded prediction accuracy comparable to or higher than those of homogeneous training sets consisting of accessions from specific subpopulations of XI or GJ when organized within XI or GJ populations, or pure XI or GJ accessions when established across XI and GJ populations.Validation using an independent population of 281 rice cultivars phenotyped for mesocotyl length supported the predictive ability of the composite training set.The superiority of the composite training set over the homogeneous training sets was attributed to increased reliability, revealing the robustness of a training set.

    CRediT authorship contribution statement

    Sang He:Writing-original draft,Investigation,Formal analysis,Conceptualization, Methodology.Hongyan Liu:Writing - original draft,Resources,Data curation.Junhui Zhan:Resources,Data curation.Yun Meng:Resources, Data curation.Yamei Wang:Resources,Data curation.Feng Wang:Conceptualization,Methodology.Guoyou Ye:Writing - review & editing, Resources, Data curation, Conceptualization, Methodology.

    Declaration of competing interest

    The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

    Acknowledgments

    This project was funded by National Key Research and Development Program of China(2020YFE0202300)and International Postdoctoral Exchange Fellowship Program (Talent-Introduction Program) in 2020.

    Appendix A. Supplementary data

    Supplementary data for this article can be found online at https://doi.org/10.1016/j.cj.2021.11.011.

    亚洲 国产 在线| 亚洲av中文字字幕乱码综合| 亚洲,欧美精品.| 国产伦一二天堂av在线观看| 男人的好看免费观看在线视频 | 丁香欧美五月| 午夜福利视频1000在线观看| АⅤ资源中文在线天堂| 人妻久久中文字幕网| 琪琪午夜伦伦电影理论片6080| 一区二区三区国产精品乱码| videosex国产| 日本 av在线| ponron亚洲| 中文字幕av在线有码专区| 久久久久久亚洲精品国产蜜桃av| 90打野战视频偷拍视频| 18禁黄网站禁片免费观看直播| 波多野结衣巨乳人妻| 欧美丝袜亚洲另类 | 中文字幕最新亚洲高清| 久久久国产成人免费| 51午夜福利影视在线观看| 国产免费av片在线观看野外av| 我的老师免费观看完整版| 亚洲午夜理论影院| 久久久精品国产亚洲av高清涩受| 少妇裸体淫交视频免费看高清 | 亚洲精品美女久久久久99蜜臀| 身体一侧抽搐| 亚洲av成人一区二区三| 国内精品久久久久精免费| 免费在线观看黄色视频的| 免费搜索国产男女视频| 国产精品,欧美在线| 男人舔奶头视频| 久久久久国产精品人妻aⅴ院| 欧美国产日韩亚洲一区| 青草久久国产| 舔av片在线| 国产精品免费一区二区三区在线| 最好的美女福利视频网| 国产精品久久久久久久电影 | 在线观看一区二区三区| 黑人巨大精品欧美一区二区mp4| 国产1区2区3区精品| 亚洲av电影不卡..在线观看| 真人一进一出gif抽搐免费| 两个人视频免费观看高清| 九色成人免费人妻av| 国产野战对白在线观看| 手机成人av网站| 91老司机精品| 亚洲免费av在线视频| 一边摸一边抽搐一进一小说| 99在线人妻在线中文字幕| 亚洲精品一区av在线观看| 午夜精品一区二区三区免费看| 又爽又黄无遮挡网站| 91av网站免费观看| 男女床上黄色一级片免费看| 国产成人系列免费观看| 亚洲成人久久性| 国产1区2区3区精品| 国产精品久久电影中文字幕| 两性夫妻黄色片| 国产亚洲精品久久久久5区| 久久精品国产亚洲av香蕉五月| 精品一区二区三区视频在线观看免费| 香蕉久久夜色| 欧美一级毛片孕妇| 禁无遮挡网站| av视频在线观看入口| 亚洲性夜色夜夜综合| 天堂动漫精品| 美女午夜性视频免费| 日本免费一区二区三区高清不卡| 国产又黄又爽又无遮挡在线| 桃色一区二区三区在线观看| 午夜精品在线福利| 亚洲国产精品成人综合色| 亚洲熟妇熟女久久| 国产精品久久久人人做人人爽| 欧美+亚洲+日韩+国产| 亚洲熟女毛片儿| 曰老女人黄片| 国产免费男女视频| 欧美大码av| 成年人黄色毛片网站| 婷婷六月久久综合丁香| 免费看a级黄色片| 日本黄色视频三级网站网址| 国产伦在线观看视频一区| 精品国产乱子伦一区二区三区| 观看免费一级毛片| 久久久久精品国产欧美久久久| 亚洲欧美激情综合另类| 99精品久久久久人妻精品| 久久久久九九精品影院| 亚洲欧美一区二区三区黑人| 听说在线观看完整版免费高清| 亚洲精品粉嫩美女一区| www.999成人在线观看| 1024香蕉在线观看| 99re在线观看精品视频| 国产三级在线视频| 亚洲欧美日韩无卡精品| 国产精品久久久久久亚洲av鲁大| 国产高清视频在线播放一区| 久久香蕉精品热| 日韩精品中文字幕看吧| 日本熟妇午夜| 超碰成人久久| 精品高清国产在线一区| 国产激情欧美一区二区| 亚洲av中文字字幕乱码综合| 两个人看的免费小视频| 国产精品 欧美亚洲| www.精华液| 在线播放国产精品三级| 国产久久久一区二区三区| 欧美极品一区二区三区四区| 中出人妻视频一区二区| 国产97色在线日韩免费| 成人av在线播放网站| 亚洲成人久久爱视频| 99久久精品国产亚洲精品| 97超级碰碰碰精品色视频在线观看| bbb黄色大片| tocl精华| 最近在线观看免费完整版| 高清毛片免费观看视频网站| 丰满人妻一区二区三区视频av | 午夜久久久久精精品| 久久中文字幕一级| 大型黄色视频在线免费观看| 亚洲欧美精品综合一区二区三区| 亚洲一区二区三区不卡视频| 亚洲在线自拍视频| 欧美大码av| 日韩欧美在线二视频| 在线看三级毛片| 久久午夜亚洲精品久久| 亚洲国产欧美一区二区综合| 我要搜黄色片| 香蕉丝袜av| 亚洲av第一区精品v没综合| 国产av不卡久久| 五月玫瑰六月丁香| 一进一出好大好爽视频| 日韩成人在线观看一区二区三区| 亚洲精品在线观看二区| 波多野结衣高清无吗| 久久精品人妻少妇| 91九色精品人成在线观看| 国产99久久九九免费精品| 亚洲精品国产一区二区精华液| 久久久国产成人精品二区| 精品熟女少妇八av免费久了| 久久香蕉激情| 久久午夜亚洲精品久久| 大型av网站在线播放| 母亲3免费完整高清在线观看| 亚洲av第一区精品v没综合| 中文字幕熟女人妻在线| a级毛片a级免费在线| 久久久精品欧美日韩精品| 欧美一区二区国产精品久久精品 | 日韩欧美国产一区二区入口| 欧美 亚洲 国产 日韩一| 国产伦一二天堂av在线观看| 岛国在线观看网站| 小说图片视频综合网站| 亚洲 欧美 日韩 在线 免费| 精品国产亚洲在线| 999久久久精品免费观看国产| 看片在线看免费视频| 亚洲 欧美一区二区三区| 国产精品一区二区免费欧美| 99国产精品一区二区三区| 婷婷亚洲欧美| 757午夜福利合集在线观看| 国产午夜精品论理片| 波多野结衣巨乳人妻| 可以在线观看毛片的网站| 淫妇啪啪啪对白视频| 狂野欧美激情性xxxx| 精品一区二区三区四区五区乱码| 成人av在线播放网站| 嫁个100分男人电影在线观看| 18美女黄网站色大片免费观看| 精品免费久久久久久久清纯| 精品久久久久久久毛片微露脸| 亚洲精品粉嫩美女一区| 亚洲性夜色夜夜综合| 国产精品精品国产色婷婷| 欧美一区二区国产精品久久精品 | 五月玫瑰六月丁香| 午夜福利欧美成人| 欧美在线黄色| 日韩精品免费视频一区二区三区| 欧美在线黄色| 在线观看一区二区三区| 99re在线观看精品视频| av国产免费在线观看| 久久婷婷人人爽人人干人人爱| 免费av毛片视频| 老汉色av国产亚洲站长工具| 久久香蕉国产精品| 国产一区二区在线av高清观看| 一个人免费在线观看的高清视频| 麻豆国产97在线/欧美 | av超薄肉色丝袜交足视频| 俄罗斯特黄特色一大片| 国产精品精品国产色婷婷| 国产三级黄色录像| 老汉色av国产亚洲站长工具| 床上黄色一级片| 国产一区二区三区在线臀色熟女| 九九热线精品视视频播放| 淫秽高清视频在线观看| 天堂√8在线中文| or卡值多少钱| 亚洲一码二码三码区别大吗| 久久亚洲真实| 一边摸一边抽搐一进一小说| 国产精品 国内视频| 国产成人精品无人区| 淫秽高清视频在线观看| 国产午夜精品久久久久久| 国产av不卡久久| 久久香蕉国产精品| 女生性感内裤真人,穿戴方法视频| 亚洲精品久久成人aⅴ小说| 欧美日韩精品网址| 老司机靠b影院| 精品久久久久久,| 亚洲精品久久成人aⅴ小说| 成人三级黄色视频| 日本精品一区二区三区蜜桃| 日本a在线网址| cao死你这个sao货| 国产精品久久久久久人妻精品电影| 日本a在线网址| 日本a在线网址| 久久亚洲真实| 久久精品成人免费网站| 亚洲精品久久国产高清桃花| 十八禁人妻一区二区| 国产av又大| 亚洲色图 男人天堂 中文字幕| 午夜激情福利司机影院| 亚洲一区高清亚洲精品| 成人国语在线视频| 亚洲欧美精品综合久久99| 校园春色视频在线观看| 一本综合久久免费| av国产免费在线观看| 久久中文字幕一级| 18禁裸乳无遮挡免费网站照片| aaaaa片日本免费| 欧美国产日韩亚洲一区| 免费观看精品视频网站| 亚洲专区字幕在线| 国产人伦9x9x在线观看| 亚洲中文日韩欧美视频| 变态另类成人亚洲欧美熟女| 久久婷婷成人综合色麻豆| 国产在线观看jvid| 床上黄色一级片| 国产成人精品久久二区二区91| 成人手机av| 成人亚洲精品av一区二区| 99国产精品99久久久久| 亚洲va日本ⅴa欧美va伊人久久| 男人舔女人的私密视频| 日本 av在线| 狠狠狠狠99中文字幕| 后天国语完整版免费观看| 国产成人aa在线观看| 在线观看免费午夜福利视频| 最新在线观看一区二区三区| 日本一二三区视频观看| 国产成人精品无人区| 午夜福利视频1000在线观看| 操出白浆在线播放| 老司机午夜福利在线观看视频| 最新美女视频免费是黄的| 精品久久久久久久人妻蜜臀av| 日韩精品中文字幕看吧| 天天躁夜夜躁狠狠躁躁| 欧美午夜高清在线| 天天添夜夜摸| 1024手机看黄色片| 亚洲免费av在线视频| 国产又黄又爽又无遮挡在线| 在线观看舔阴道视频| av福利片在线观看| 婷婷精品国产亚洲av在线| 亚洲精品色激情综合| 男女之事视频高清在线观看| 日韩有码中文字幕| 成人18禁高潮啪啪吃奶动态图| 老司机深夜福利视频在线观看| 女同久久另类99精品国产91| 国产av在哪里看| 免费av毛片视频| 久久人妻福利社区极品人妻图片| 18禁裸乳无遮挡免费网站照片| 亚洲男人的天堂狠狠| 在线观看舔阴道视频| 999精品在线视频| 一进一出好大好爽视频| 国产精品精品国产色婷婷| 精品熟女少妇八av免费久了| 日韩欧美国产在线观看| 黑人操中国人逼视频| 午夜视频精品福利| 亚洲激情在线av| 成人午夜高清在线视频| 国产精品美女特级片免费视频播放器 | 久久久久久免费高清国产稀缺| 欧美+亚洲+日韩+国产| 亚洲成人国产一区在线观看| 俄罗斯特黄特色一大片| 成人手机av| 亚洲国产中文字幕在线视频| 免费在线观看视频国产中文字幕亚洲| 99久久久亚洲精品蜜臀av| 男人舔女人下体高潮全视频| 嫩草影院精品99| 欧美日韩一级在线毛片| 丰满人妻熟妇乱又伦精品不卡| 麻豆一二三区av精品| 国产在线精品亚洲第一网站| 国产av一区在线观看免费| 欧美黄色淫秽网站| e午夜精品久久久久久久| 最新在线观看一区二区三区| 亚洲成a人片在线一区二区| 可以在线观看的亚洲视频| 日本一二三区视频观看| 一本久久中文字幕| av视频在线观看入口| 久久精品国产亚洲av高清一级| 一个人免费在线观看电影 | 老熟妇乱子伦视频在线观看| 国产亚洲精品一区二区www| 国产激情欧美一区二区| 怎么达到女性高潮| 亚洲精品av麻豆狂野| 中文字幕高清在线视频| netflix在线观看网站| 欧美日本视频| 又黄又爽又免费观看的视频| 久久久久国产精品人妻aⅴ院| 少妇熟女aⅴ在线视频| 国产精品综合久久久久久久免费| 国产精品免费一区二区三区在线| 成人午夜高清在线视频| www国产在线视频色| 好看av亚洲va欧美ⅴa在| 午夜视频精品福利| 国产精品,欧美在线| 男女视频在线观看网站免费 | 三级男女做爰猛烈吃奶摸视频| 精华霜和精华液先用哪个| 最近视频中文字幕2019在线8| bbb黄色大片| 亚洲 欧美一区二区三区| 亚洲一区二区三区色噜噜| 亚洲精品久久成人aⅴ小说| 69av精品久久久久久| 亚洲狠狠婷婷综合久久图片| 亚洲成人久久爱视频| 中文字幕av在线有码专区| 欧美日韩黄片免| 国产一区二区激情短视频| 午夜福利视频1000在线观看| 日韩欧美国产在线观看| 变态另类成人亚洲欧美熟女| 亚洲精品久久成人aⅴ小说| 日日干狠狠操夜夜爽| 国产69精品久久久久777片 | 丰满人妻熟妇乱又伦精品不卡| 欧美 亚洲 国产 日韩一| 国产一区二区在线观看日韩 | 国产精品九九99| 久久性视频一级片| 夜夜躁狠狠躁天天躁| ponron亚洲| 国产精品日韩av在线免费观看| 久99久视频精品免费| 日日爽夜夜爽网站| 嫩草影视91久久| АⅤ资源中文在线天堂| 免费看十八禁软件| 欧美久久黑人一区二区| 久久久久久人人人人人| av在线天堂中文字幕| 性欧美人与动物交配| 天天一区二区日本电影三级| 99国产极品粉嫩在线观看| 国产精品精品国产色婷婷| 欧美成人免费av一区二区三区| 国产精品99久久99久久久不卡| 久久99热这里只有精品18| 老鸭窝网址在线观看| 日本在线视频免费播放| 999久久久精品免费观看国产| 天堂√8在线中文| 18禁黄网站禁片午夜丰满| 亚洲成av人片在线播放无| 一区福利在线观看| 日韩高清综合在线| 一级毛片女人18水好多| 亚洲成人中文字幕在线播放| 18禁裸乳无遮挡免费网站照片| 成人欧美大片| 午夜福利18| 午夜福利视频1000在线观看| 男女那种视频在线观看| 亚洲专区中文字幕在线| 午夜亚洲福利在线播放| 淫妇啪啪啪对白视频| 国产男靠女视频免费网站| 亚洲一码二码三码区别大吗| www.熟女人妻精品国产| 我的老师免费观看完整版| 一个人免费在线观看的高清视频| 欧美成人免费av一区二区三区| 国产亚洲精品久久久久久毛片| 欧美一区二区国产精品久久精品 | 亚洲av中文字字幕乱码综合| 天天躁狠狠躁夜夜躁狠狠躁| 日韩大码丰满熟妇| 男男h啪啪无遮挡| 搡老岳熟女国产| 午夜福利视频1000在线观看| 99精品在免费线老司机午夜| 村上凉子中文字幕在线| 老鸭窝网址在线观看| 美女高潮喷水抽搐中文字幕| 色哟哟哟哟哟哟| 19禁男女啪啪无遮挡网站| 亚洲成人久久爱视频| 特级一级黄色大片| 美女高潮喷水抽搐中文字幕| 三级毛片av免费| 成人永久免费在线观看视频| 女人高潮潮喷娇喘18禁视频| 99热只有精品国产| 午夜免费激情av| 亚洲av片天天在线观看| 国产爱豆传媒在线观看 | 18禁黄网站禁片午夜丰满| 国产在线精品亚洲第一网站| 亚洲 欧美 日韩 在线 免费| 90打野战视频偷拍视频| a在线观看视频网站| 色av中文字幕| 在线观看舔阴道视频| 日本黄大片高清| 99精品欧美一区二区三区四区| 久久这里只有精品19| 一区二区三区国产精品乱码| 老汉色∧v一级毛片| 久久99热这里只有精品18| 久久人妻福利社区极品人妻图片| 亚洲成av人片免费观看| 一夜夜www| 精品无人区乱码1区二区| 亚洲av成人一区二区三| 国产精品av视频在线免费观看| 51午夜福利影视在线观看| 精品久久久久久久久久免费视频| 黄色成人免费大全| 国产一区二区在线av高清观看| 真人一进一出gif抽搐免费| 在线观看舔阴道视频| 婷婷精品国产亚洲av在线| 国产一区二区在线av高清观看| 精品日产1卡2卡| 搞女人的毛片| 欧美黑人精品巨大| 热99re8久久精品国产| 黑人操中国人逼视频| 国产91精品成人一区二区三区| 51午夜福利影视在线观看| 51午夜福利影视在线观看| 免费观看精品视频网站| 欧美+亚洲+日韩+国产| 岛国在线免费视频观看| 精品午夜福利视频在线观看一区| 亚洲精品中文字幕在线视频| 在线免费观看的www视频| 少妇的丰满在线观看| 欧美不卡视频在线免费观看 | tocl精华| 日本一本二区三区精品| 日韩成人在线观看一区二区三区| 国内毛片毛片毛片毛片毛片| 黄频高清免费视频| 黄片大片在线免费观看| 很黄的视频免费| 91老司机精品| 亚洲精品一卡2卡三卡4卡5卡| 中文亚洲av片在线观看爽| 国产精品,欧美在线| 两性夫妻黄色片| 淫妇啪啪啪对白视频| 久久久久久人人人人人| 淫秽高清视频在线观看| 国产97色在线日韩免费| 在线十欧美十亚洲十日本专区| 亚洲片人在线观看| 舔av片在线| 国产欧美日韩精品亚洲av| 国产激情偷乱视频一区二区| 久久婷婷人人爽人人干人人爱| 夜夜夜夜夜久久久久| 国产高清视频在线播放一区| 亚洲aⅴ乱码一区二区在线播放 | 又黄又爽又免费观看的视频| avwww免费| 欧美3d第一页| 久久久久久人人人人人| 亚洲成人国产一区在线观看| 美女扒开内裤让男人捅视频| 波多野结衣高清无吗| 成人午夜高清在线视频| 亚洲av中文字字幕乱码综合| 精品人妻1区二区| 亚洲中文av在线| 亚洲天堂国产精品一区在线| 黄色 视频免费看| 午夜福利在线观看吧| 一区二区三区国产精品乱码| 99精品欧美一区二区三区四区| 久久久精品国产亚洲av高清涩受| 欧美日韩黄片免| 免费看美女性在线毛片视频| 国产精品电影一区二区三区| 男人舔女人的私密视频| 一个人免费在线观看的高清视频| 91大片在线观看| 国内精品一区二区在线观看| 香蕉av资源在线| 一个人观看的视频www高清免费观看 | 九色成人免费人妻av| 欧美另类亚洲清纯唯美| 精品久久久久久久人妻蜜臀av| 国产高清视频在线播放一区| 高清毛片免费观看视频网站| 可以在线观看毛片的网站| 美女高潮喷水抽搐中文字幕| 在线观看免费日韩欧美大片| 高潮久久久久久久久久久不卡| 国产野战对白在线观看| 亚洲av第一区精品v没综合| 看免费av毛片| 欧美性猛交黑人性爽| 正在播放国产对白刺激| av在线播放免费不卡| 免费在线观看黄色视频的| 久久精品91蜜桃| 国产一区二区激情短视频| 欧美色视频一区免费| 欧美日韩瑟瑟在线播放| 日本精品一区二区三区蜜桃| 国产精品永久免费网站| 成人国产一区最新在线观看| 麻豆成人午夜福利视频| 亚洲一区二区三区不卡视频| 国产精品日韩av在线免费观看| 免费在线观看成人毛片| 天天躁夜夜躁狠狠躁躁| 午夜福利免费观看在线| 欧美色欧美亚洲另类二区| 久久精品人妻少妇| a级毛片在线看网站| 欧美绝顶高潮抽搐喷水| 变态另类丝袜制服| 免费观看精品视频网站| 国产又色又爽无遮挡免费看| 少妇的丰满在线观看| 麻豆成人av在线观看| 90打野战视频偷拍视频| 国产成人影院久久av| 国产亚洲精品综合一区在线观看 | 一边摸一边抽搐一进一小说| 成年版毛片免费区| 欧美不卡视频在线免费观看 | 两个人看的免费小视频| 日韩欧美三级三区| 亚洲欧美日韩高清在线视频| 日本黄大片高清| 欧美性猛交╳xxx乱大交人| 91九色精品人成在线观看| 99热只有精品国产| 黄色a级毛片大全视频| 日韩精品免费视频一区二区三区| 成人三级做爰电影| 欧美又色又爽又黄视频| 成年免费大片在线观看| 男女午夜视频在线观看| 日本一二三区视频观看| 国产亚洲精品久久久久久毛片| 亚洲av日韩精品久久久久久密| 欧美另类亚洲清纯唯美| 亚洲中文字幕一区二区三区有码在线看 | 精品欧美一区二区三区在线| 欧美+亚洲+日韩+国产| 69av精品久久久久久| 亚洲av片天天在线观看|