
pmid: 38523678
pmc: PMC10957472
AbstractRecent genome-wide association studies have successfully identified associations between genetic variants and simple cardiac morphological parameters derived from cardiac magnetic resonance images. However, the emergence of large databases, including genetic data linked to cardiac magnetic resonance facilitates the investigation of more nuanced patterns of cardiac shape variability than those studied so far. Here we propose a framework for gene discovery coined unsupervised phenotype ensembles. The unsupervised phenotype ensemble builds a redundant yet highly expressive representation by pooling a set of phenotypes learnt in an unsupervised manner, using deep learning models trained with different hyperparameters. These phenotypes are then analysed via genome-wide association studies, retaining only highly confident and stable associations across the ensemble. We applied our approach to the UK Biobank database to extract geometric features of the left ventricle from image-derived three-dimensional meshes. We demonstrate that our approach greatly improves the discoverability of genes that influence left ventricle shape, identifying 49 loci with study-wide significance and 25 with suggestive significance. We argue that our approach would enable more extensive discovery of gene associations with image-derived phenotypes for other organs or image modalities.
Pooling, FOS: Computer and information sciences, Technology, Artificial intelligence, LOCI, Gene Expression, VARIANTS, Genome-wide association studies, 46 Information and computing sciences, Gene, Computer Science, Artificial Intelligence, Computational biology, Prognostic markers, 40 Engineering, RISK, Discoverability, Human–computer interaction, Life Sciences, ASSOCIATION, Genetic Mapping, Phenotype, Genetic Architecture of Quantitative Traits, Medicine, Computer Science, Interdisciplinary Applications, Cardiology and Cardiovascular Medicine, Radiology, EXPRESSION, PLAYER, Haplotype Mapping, Bioinformatics, Article, Magnetic resonance imaging, Recommendations for Cardiac Chamber Quantification by Echocardiography, Biochemistry, Genetics and Molecular Biology, Machine learning, Health Sciences, Genetics, Biology, Biobank, Science & Technology, CARDIOMYOPATHY, MUTATIONS, GENOME-WIDE, Cardiovascular genetics, Computer science, Genomic Studies and Association Analyses, FOS: Biological sciences, Computer Science, Genome-wide Association Studies
Pooling, FOS: Computer and information sciences, Technology, Artificial intelligence, LOCI, Gene Expression, VARIANTS, Genome-wide association studies, 46 Information and computing sciences, Gene, Computer Science, Artificial Intelligence, Computational biology, Prognostic markers, 40 Engineering, RISK, Discoverability, Human–computer interaction, Life Sciences, ASSOCIATION, Genetic Mapping, Phenotype, Genetic Architecture of Quantitative Traits, Medicine, Computer Science, Interdisciplinary Applications, Cardiology and Cardiovascular Medicine, Radiology, EXPRESSION, PLAYER, Haplotype Mapping, Bioinformatics, Article, Magnetic resonance imaging, Recommendations for Cardiac Chamber Quantification by Echocardiography, Biochemistry, Genetics and Molecular Biology, Machine learning, Health Sciences, Genetics, Biology, Biobank, Science & Technology, CARDIOMYOPATHY, MUTATIONS, GENOME-WIDE, Cardiovascular genetics, Computer science, Genomic Studies and Association Analyses, FOS: Biological sciences, Computer Science, Genome-wide Association Studies
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| influence This indicator reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically). | Top 10% | |
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