4,636 research outputs found

    Haplotype-based quantitative trait mapping using a clustering algorithm

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    BACKGROUND: With the availability of large-scale, high-density single-nucleotide polymorphism (SNP) markers, substantial effort has been made in identifying disease-causing genes using linkage disequilibrium (LD) mapping by haplotype analysis of unrelated individuals. In addition to complex diseases, many continuously distributed quantitative traits are of primary clinical and health significance. However the development of association mapping methods using unrelated individuals for quantitative traits has received relatively less attention. RESULTS: We recently developed an association mapping method for complex diseases by mining the sharing of haplotype segments (i.e., phased genotype pairs) in affected individuals that are rarely present in normal individuals. In this paper, we extend our previous work to address the problem of quantitative trait mapping from unrelated individuals. The method is non-parametric in nature, and statistical significance can be obtained by a permutation test. It can also be incorporated into the one-way ANCOVA (analysis of covariance) framework so that other factors and covariates can be easily incorporated. The effectiveness of the approach is demonstrated by extensive experimental studies using both simulated and real data sets. The results show that our haplotype-based approach is more robust than two statistical methods based on single markers: a single SNP association test (SSA) and the Mann-Whitney U-test (MWU). The algorithm has been incorporated into our existing software package called HapMiner, which is available from our website at . CONCLUSION: For QTL (quantitative trait loci) fine mapping, to identify QTNs (quantitative trait nucleotides) with realistic effects (the contribution of each QTN less than 10% of total variance of the trait), large samples sizes (≥ 500) are needed for all the methods. The overall performance of HapMiner is better than that of the other two methods. Its effectiveness further depends on other factors such as recombination rates and the density of typed SNPs. Haplotype-based methods might provide higher power than methods based on a single SNP when using tag SNPs selected from a small number of samples or some other sources (such as HapMap data). Rank-based statistics usually have much lower power, as shown in our study

    Learning the optimal scale for GWAS through hierarchical SNP aggregation

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    Motivation: Genome-Wide Association Studies (GWAS) seek to identify causal genomic variants associated with rare human diseases. The classical statistical approach for detecting these variants is based on univariate hypothesis testing, with healthy individuals being tested against affected individuals at each locus. Given that an individual's genotype is characterized by up to one million SNPs, this approach lacks precision, since it may yield a large number of false positives that can lead to erroneous conclusions about genetic associations with the disease. One way to improve the detection of true genetic associations is to reduce the number of hypotheses to be tested by grouping SNPs. Results: We propose a dimension-reduction approach which can be applied in the context of GWAS by making use of the haplotype structure of the human genome. We compare our method with standard univariate and multivariate approaches on both synthetic and real GWAS data, and we show that reducing the dimension of the predictor matrix by aggregating SNPs gives a greater precision in the detection of associations between the phenotype and genomic regions

    Prediction of haplotypes for ungenotyped animals and its effect on marker-assisted breeding value estimation

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    Background: In livestock populations, missing genotypes on a large proportion of animals are a major problem to implement the estimation of marker-assisted breeding values using haplotypes. The objective of this article is to develop a method to predict haplotypes of animals that are not genotyped using mixed model equations and to investigate the effect of using these predicted haplotypes on the accuracy of marker-assisted breeding value estimation. Methods: For genotyped animals, haplotypes were determined and for each animal the number of haplotype copies (nhc) was counted, i.e. 0, 1 or 2 copies. In a mixed model framework, nhc for each haplotype were predicted for ungenotyped animals as well as for genotyped animals using the additive genetic relationship matrix. The heritability of nhc was assumed to be 0.99, allowing for minor genotyping and haplotyping errors. The predicted nhc were subsequently used in marker-assisted breeding value estimation by applying random regression on these covariables. To evaluate the method, a population was simulated with one additive QTL and an additive polygenic genetic effect. The QTL was located in the middle of a haplotype based on SNP-markers. Results: The accuracy of predicted haplotype copies for ungenotyped animals ranged between 0.59 and 0.64 depending on haplotype length. Because powerful BLUP-software was used, the method was computationally very efficient. The accuracy of total EBV increased for genotyped animals when marker-assisted breeding value estimation was compared with conventional breeding value estimation, but for ungenotyped animals the increase was marginal unless the heritability was smaller than 0.1. Haplotypes based on four markers yielded the highest accuracies and when only the nearest left marker was used, it yielded the lowest accuracy. The accuracy increased with increasing marker density. Accuracy of the total EBV approached that of gene-assisted BLUP when 4-marker haplotypes were used with a distance of 0.1 cM between the markers. Conclusions: The proposed method is computationally very efficient and suitable for marker-assisted breeding value estimation in large livestock populations including effects of a number of known QTL. Marker-assisted breeding value estimation using predicted haplotypes increases accuracy especially for traits with low heritabilit

    Uncovering Hidden Diversity in Plants

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    One of the greatest challenges to human civilization in the 21st century will be to provide global food security to a growing population while reducing the environmental footprint of agriculture. Despite increasing demand, the fundamental issue of limited genetic diversity in domesticated crops provides windows of opportunity for emerging pandemics and the insufficient ability of modern crops to respond to a changing global environment. The wild relatives of crop plants, with large reservoirs of untapped genetic diversity, offer great potential to improve the resilience of elite cultivars. Utilizing this diversity requires advanced technologies to comprehensively identify genetic diversity and understand the genetic architecture of beneficial traits. The primary focus of the dissertation is developing computational tools to facilitate variant discovery and trait mapping for plant genomics. In Chapter 1, I benchmarked the performance of variant discovery algorithms based on simulated and diverse plant datasets. The comparison of sequence aligners found that BWA-MEM consistently aligned the most plant reads with high accuracy, whereas Bowtie2 had a slightly higher overall accuracy. Variant callers, such as GATK HaplotypCaller and SAMtools mpileup, were shown to significantly differ in their ability to minimize the frequency of false negatives and maximize the discovery of true positives. A cross-reference experiment of Solanum lycopersicum and Solanum pennellii reference genomes revealed significant limitations of using a single reference genome for variant discovery. Next, I demonstrated that a machine-learning-based variant filtering strategy outperformed the traditional hard-cutoff filtering strategy, resulting in a significantly higher number of true positive and fewer false-positive variants. Finally, I developed a 2-step imputation method resulted in up to 60% higher accuracy than direct LD-based imputation methods. In Chapter 2, I focused on developing a trait mapping algorithm tailored for plants considering the high levels of diversity found in plant datasets. This novel trait mapping framework, HapFM, had the ability to incorporate biological priors into the mapping model to identify casual haplotypes for traits of interest. Compared to conventional GWAS analyses, the haplotype-based approach significantly reduced the number of variables while aggregating small effect SNPs to increase mapping power. HapFM could account for LD between haplotype segments to infer the causal haplotypes directly. Furthermore, HapFM could systemically incorporate biological priors into the probability function during the mapping process resulting in greater mapping resolution. Overall, HapFM achieves a balance between powerfulness, interpretability, and verifiability. In Chapter 3, I developed a computational algorithm to select a pan-genome cohort to maximize the haplotype representativeness of the cohort. Increasing evidence suggest that a single reference genome is often inadequate for plant diversity studies due to extensive sequence and structural rearrangements found in many plant genomes. HapPS was developed to utilize local haplotype information to select the reference cohort. There are three steps in HapPS, including genome-wide block partition, representative haplotype identification, and genetic algorithm for reference cohort selection. The comparison of HapPS with global-distance-based selection showed that HapPS resulted in significantly higher block coverage in the highly diverse genic regions. The GO-term enrichment analysis of the highly diverse genic region identified by HapPS showed enrichment for genes involved in defense pathways and abiotic stress, which might identify genomic regions involved in local adaptation. In summary, HapPS provides a systemic and objective solution to pan-genome cohort selection

    Genome-Wide Association Mapping in Arabidopsis Identifies Previously Known Flowering Time and Pathogen Resistance Genes

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    There is currently tremendous interest in the possibility of using genome-wide association mapping to identify genes responsible for natural variation, particularly for human disease susceptibility. The model plant Arabidopsis thaliana is in many ways an ideal candidate for such studies, because it is a highly selfing hermaphrodite. As a result, the species largely exists as a collection of naturally occurring inbred lines, or accessions, which can be genotyped once and phenotyped repeatedly. Furthermore, linkage disequilibrium in such a species will be much more extensive than in a comparable outcrossing species. We tested the feasibility of genome-wide association mapping in A. thaliana by searching for associations with flowering time and pathogen resistance in a sample of 95 accessions for which genome-wide polymorphism data were available. In spite of an extremely high rate of false positives due to population structure, we were able to identify known major genes for all phenotypes tested, thus demonstrating the potential of genome-wide association mapping in A. thaliana and other species with similar patterns of variation. The rate of false positives differed strongly between traits, with more clinal traits showing the highest rate. However, the false positive rates were always substantial regardless of the trait, highlighting the necessity of an appropriate genomic control in association studies

    Second-generation PLINK: rising to the challenge of larger and richer datasets

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    PLINK 1 is a widely used open-source C/C++ toolset for genome-wide association studies (GWAS) and research in population genetics. However, the steady accumulation of data from imputation and whole-genome sequencing studies has exposed a strong need for even faster and more scalable implementations of key functions. In addition, GWAS and population-genetic data now frequently contain probabilistic calls, phase information, and/or multiallelic variants, none of which can be represented by PLINK 1's primary data format. To address these issues, we are developing a second-generation codebase for PLINK. The first major release from this codebase, PLINK 1.9, introduces extensive use of bit-level parallelism, O(sqrt(n))-time/constant-space Hardy-Weinberg equilibrium and Fisher's exact tests, and many other algorithmic improvements. In combination, these changes accelerate most operations by 1-4 orders of magnitude, and allow the program to handle datasets too large to fit in RAM. This will be followed by PLINK 2.0, which will introduce (a) a new data format capable of efficiently representing probabilities, phase, and multiallelic variants, and (b) extensions of many functions to account for the new types of information. The second-generation versions of PLINK will offer dramatic improvements in performance and compatibility. For the first time, users without access to high-end computing resources can perform several essential analyses of the feature-rich and very large genetic datasets coming into use.Comment: 2 figures, 1 additional fil

    An Ultra-High-Density, Transcript-Based, Genetic Map of Lettuce.

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    We have generated an ultra-high-density genetic map for lettuce, an economically important member of the Compositae, consisting of 12,842 unigenes (13,943 markers) mapped in 3696 genetic bins distributed over nine chromosomal linkage groups. Genomic DNA was hybridized to a custom Affymetrix oligonucleotide array containing 6.4 million features representing 35,628 unigenes of Lactuca spp. Segregation of single-position polymorphisms was analyzed using 213 F7:8 recombinant inbred lines that had been generated by crossing cultivated Lactuca sativa cv. Salinas and L. serriola acc. US96UC23, the wild progenitor species of L. sativa The high level of replication of each allele in the recombinant inbred lines was exploited to identify single-position polymorphisms that were assigned to parental haplotypes. Marker information has been made available using GBrowse to facilitate access to the map. This map has been anchored to the previously published integrated map of lettuce providing candidate genes for multiple phenotypes. The high density of markers achieved in this ultradense map allowed syntenic studies between lettuce and Vitis vinifera as well as other plant species
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