Publications by authors named "Michael Ku Yu"

Systems biology requires not only genome-scale data but also methods to integrate these data into interpretable models. Previously, we developed approaches that organize omics data into a structured hierarchy of cellular components and pathways, called a "data-driven ontology." Such hierarchies recapitulate known cellular subsystems and discover new ones.

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Although cancer genomes are replete with noncoding mutations, the effects of these mutations remain poorly characterized. Here we perform an integrative analysis of 930 tumor whole genomes and matched transcriptomes, identifying a network of 193 noncoding loci in which mutations disrupt target gene expression. These 'somatic eQTLs' (expression quantitative trait loci) are frequently mutated in specific cancer tissues, and the majority can be validated in an independent cohort of 3,382 tumors.

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Article Synopsis
  • Gene networks are increasing in size and number, prompting an evaluation of which networks best identify disease gene sets from various research methods.
  • Out of 21 human genome-wide interaction networks assessed, STRING, ConsensusPathDB, and GIANT showed the highest effectiveness at recovering disease-related genes.
  • The study highlights that network performance generally improves with size, but the DIP network stands out for its efficiency, leading to the creation of a composite network to enhance disease research.
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Although artificial neural networks are powerful classifiers, their internal structures are hard to interpret. In the life sciences, extensive knowledge of cell biology provides an opportunity to design visible neural networks (VNNs) that couple the model's inner workings to those of real systems. Here we develop DCell, a VNN embedded in the hierarchical structure of 2,526 subsystems comprising a eukaryotic cell (http://d-cell.

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Analysis of patient genomes and transcriptomes routinely recognizes new gene sets associated with human disease. Here we present an integrative natural language processing system which infers common functions for a gene set through automatic mining of the scientific literature with biological networks. This system links genes with associated literature phrases and combines these links with protein interactions in a single heterogeneous network.

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Background: Global but predictable changes impact the DNA methylome as we age, acting as a type of molecular clock. This clock can be hastened by conditions that decrease lifespan, raising the question of whether it can also be slowed, for example, by conditions that increase lifespan. Mice are particularly appealing organisms for studies of mammalian aging; however, epigenetic clocks have thus far been formulated only in humans.

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Article Synopsis
  • Researchers developed a method called Active Interaction Mapping to organize biological functions, focusing on autophagy, a crucial recycling process linked to many diseases.
  • Using this approach, they created an initial model based on gene networks from yeast (Saccharomyces), capturing key elements of autophagy and their relationships to processes like vesicle transport and stress response.
  • By analyzing over 156,000 synthetic-lethal interactions, they significantly enhanced the model, identifying 220 functions related to autophagy, including previously unknown roles for specific proteins involved in the process.
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Accurately translating genotype to phenotype requires accounting for the functional impact of genetic variation at many biological scales. Here we present a strategy for genotype-phenotype reasoning based on existing knowledge of cellular subsystems. These subsystems and their hierarchical organization are defined by the Gene Ontology or a complementary ontology inferred directly from previously published datasets.

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