Genotype imputation has a wide range of applications in genome-wide association study (GWAS), including increasing the statistical power of association tests, discovering trait-associated loci in meta-analyses, and prioritizing causal variants with fine-mapping. In recent years, deep learning (DL) based methods, such as sparse convolutional denoising autoencoder (SCDA), have been developed for genotype imputation. However, it remains a challenging task to optimize the learning process in DL-based methods to achieve high imputation accuracy. To address this challenge, we have developed a convolutional autoencoder (AE) model for genotype imputation and implemented a customized training loop by modifying the training process with a single batc...
The 1000 Genomes Project and disease-specific sequencing efforts are producing large collections of ...
The recent development of high-throughput systems for genotyping SNP in Eukaryote has led to an extr...
Well-powered genomic studies require genome-wide marker coverage across many individuals. For non-mo...
The advent of genome-wide association studies (GWAS) revolutionized the field of complex disease gen...
Genotype imputation methods are now being widely used in the analysis of genome-wide association stu...
Genotype imputation methods are now being widely used in the analysis of genome-wide association stu...
Imputation is an in silico method that can increase the power of association studies by inferring mi...
Abstract Background Although high-throughput genotyping arrays have made whole-genome association st...
Increasing availability of large whole genome sequencing and genomics data have brought both opportu...
BACKGROUND: Imputation of missing genotypes is becoming a very popular solution for synchronizing ge...
Abstract Genome-wide association studies have proven to be a highly successful method for identifica...
Abstract Background Imputation of missing genotypes is becoming a very popular solution for synchron...
In the past few years genome-wide association (GWA) studies have uncovered a large number of convinc...
As the amount of data from genome wide association studies grows dramatically, many interesting scie...
As the amount of data from genome wide association studies grows dramatically, many interesting scie...
The 1000 Genomes Project and disease-specific sequencing efforts are producing large collections of ...
The recent development of high-throughput systems for genotyping SNP in Eukaryote has led to an extr...
Well-powered genomic studies require genome-wide marker coverage across many individuals. For non-mo...
The advent of genome-wide association studies (GWAS) revolutionized the field of complex disease gen...
Genotype imputation methods are now being widely used in the analysis of genome-wide association stu...
Genotype imputation methods are now being widely used in the analysis of genome-wide association stu...
Imputation is an in silico method that can increase the power of association studies by inferring mi...
Abstract Background Although high-throughput genotyping arrays have made whole-genome association st...
Increasing availability of large whole genome sequencing and genomics data have brought both opportu...
BACKGROUND: Imputation of missing genotypes is becoming a very popular solution for synchronizing ge...
Abstract Genome-wide association studies have proven to be a highly successful method for identifica...
Abstract Background Imputation of missing genotypes is becoming a very popular solution for synchron...
In the past few years genome-wide association (GWA) studies have uncovered a large number of convinc...
As the amount of data from genome wide association studies grows dramatically, many interesting scie...
As the amount of data from genome wide association studies grows dramatically, many interesting scie...
The 1000 Genomes Project and disease-specific sequencing efforts are producing large collections of ...
The recent development of high-throughput systems for genotyping SNP in Eukaryote has led to an extr...
Well-powered genomic studies require genome-wide marker coverage across many individuals. For non-mo...