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  1. Article ; Online: Comparison between instrumental variable and mediation-based methods for reconstructing causal gene networks in yeast.

    Ludl, Adriaan-Alexander / Michoel, Tom

    Molecular omics

    2021  Volume 17, Issue 2, Page(s) 241–251

    Abstract: Causal gene networks model the flow of information within a cell. Reconstructing causal networks from omics data is challenging because correlation does not imply causation. When genomics and transcriptomics data from a segregating population are ... ...

    Abstract Causal gene networks model the flow of information within a cell. Reconstructing causal networks from omics data is challenging because correlation does not imply causation. When genomics and transcriptomics data from a segregating population are combined, genomic variants can be used to orient the direction of causality between gene expression traits. Instrumental variable methods use a local expression quantitative trait locus (eQTL) as a randomized instrument for a gene's expression level, and assign target genes based on distal eQTL associations. Mediation-based methods additionally require that distal eQTL associations are mediated by the source gene. A detailed comparison between these methods has not yet been conducted, due to the lack of a standardized implementation of different methods, the limited sample size of most multi-omics datasets, and the absence of ground-truth networks for most organisms. Here we used Findr, a software package providing uniform implementations of instrumental variable, mediation, and coexpression-based methods, a recent dataset of 1012 segregants from a cross between two budding yeast strains, and the Yeastract database of known transcriptional interactions to compare causal gene network inference methods. We found that causal inference methods result in a significant overlap with the ground-truth, whereas coexpression did not perform better than random. A subsampling analysis revealed that the performance of mediation saturates at large sample sizes, due to a loss of sensitivity when residual correlations become significant. Instrumental variable methods on the other hand contain false positive predictions, due to genomic linkage between eQTL instruments. Instrumental variable and mediation-based methods also have complementary roles for identifying causal genes underlying transcriptional hotspots. Instrumental variable methods correctly predicted STB5 targets for a hotspot centred on the transcription factor STB5, whereas mediation failed due to Stb5p auto-regulating its own expression. Mediation suggests a new candidate gene, DNM1, for a hotspot on Chr XII, whereas instrumental variable methods could not distinguish between multiple genes located within the hotspot. In conclusion, causal inference from genomics and transcriptomics data is a powerful approach for reconstructing causal gene networks, which could be further improved by the development of methods to control for residual correlations in mediation analyses, and for genomic linkage and pleiotropic effects from transcriptional hotspots in instrumental variable analyses.
    MeSH term(s) Computational Biology ; Databases, Genetic ; Gene Expression Regulation, Fungal/genetics ; Gene Regulatory Networks/genetics ; Genetic Variation ; Genome, Fungal/genetics ; Genomics ; Models, Genetic ; Quantitative Trait Loci/genetics ; Saccharomyces cerevisiae/genetics ; Saccharomyces cerevisiae Proteins/genetics ; Transcription Factors/genetics
    Chemical Substances Saccharomyces cerevisiae Proteins ; Stb5 protein, S cerevisiae ; Transcription Factors
    Language English
    Publishing date 2021-01-13
    Publishing country England
    Document type Journal Article
    ISSN 2515-4184
    ISSN (online) 2515-4184
    DOI 10.1039/d0mo00140f
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  2. Article: Impact of Physical Obstacles on the Structural and Effective Connectivity of

    Ludl, Adriaan-Alexander / Soriano, Jordi

    Frontiers in computational neuroscience

    2020  Volume 14, Page(s) 77

    Abstract: Scaffolds and patterned substrates are among the most successful strategies to dictate the connectivity between neurons in culture. Here, we used numerical simulations to investigate the capacity of physical obstacles placed on a flat substrate to shape ... ...

    Abstract Scaffolds and patterned substrates are among the most successful strategies to dictate the connectivity between neurons in culture. Here, we used numerical simulations to investigate the capacity of physical obstacles placed on a flat substrate to shape structural connectivity, and in turn collective dynamics and effective connectivity, in biologically-realistic neuronal networks. We considered μ-sized obstacles placed in mm-sized networks. Three main obstacle shapes were explored, namely crosses, circles and triangles of isosceles profile. They occupied either a small area fraction of the substrate or populated it entirely in a periodic manner. From the point of view of structure, all obstacles promoted short length-scale connections, shifted the in- and out-degree distributions toward lower values, and increased the modularity of the networks. The capacity of obstacles to shape distinct structural traits depended on their density and the ratio between axonal length and substrate diameter. For high densities, different features were triggered depending on obstacle shape, with crosses trapping axons in their vicinity and triangles funneling axons along the reverse direction of their tip. From the point of view of dynamics, obstacles reduced the capacity of networks to spontaneously activate, with triangles in turn strongly dictating the direction of activity propagation. Effective connectivity networks, inferred using transfer entropy, exhibited distinct modular traits, indicating that the presence of obstacles facilitated the formation of local effective microcircuits. Our study illustrates the potential of physical constraints to shape structural blueprints and remodel collective activity, and may guide investigations aimed at mimicking organizational traits of biological neuronal circuits.
    Language English
    Publishing date 2020-08-31
    Publishing country Switzerland
    Document type Journal Article
    ZDB-ID 2452964-3
    ISSN 1662-5188
    ISSN 1662-5188
    DOI 10.3389/fncom.2020.00077
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  3. Book ; Online: GENER

    Fakhry, Ahmed / Khafagy, Raneem / Ludl, Adriaan-Alexander

    A Parallel Layer Deep Learning Network To Detect Gene-Gene Interactions From Gene Expression Data

    2023  

    Abstract: Detecting and discovering new gene interactions based on known gene expressions and gene interaction data presents a significant challenge. Various statistical and deep learning methods have attempted to tackle this challenge by leveraging the ... ...

    Abstract Detecting and discovering new gene interactions based on known gene expressions and gene interaction data presents a significant challenge. Various statistical and deep learning methods have attempted to tackle this challenge by leveraging the topological structure of gene interactions and gene expression patterns to predict novel gene interactions. In contrast, some approaches have focused exclusively on utilizing gene expression profiles. In this context, we introduce GENER, a parallel-layer deep learning network designed exclusively for the identification of gene-gene relationships using gene expression data. We conducted two training experiments and compared the performance of our network with that of existing statistical and deep learning approaches. Notably, our model achieved an average AUROC score of 0.834 on the combined BioGRID&DREAM5 dataset, outperforming competing methods in predicting gene-gene interactions.
    Keywords Computer Science - Machine Learning
    Publishing date 2023-10-05
    Publishing country us
    Document type Book ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  4. Book ; Online: Comparison between instrumental variable and mediation-based methods for reconstructing causal gene networks in yeast

    Ludl, Adriaan-Alexander / Michoel, Tom

    2020  

    Abstract: Causal gene networks model the flow of information within a cell, but reconstructing them from omics data is challenging because correlation does not imply causation. Combining genomics and transcriptomics data from a segregating population allows to ... ...

    Abstract Causal gene networks model the flow of information within a cell, but reconstructing them from omics data is challenging because correlation does not imply causation. Combining genomics and transcriptomics data from a segregating population allows to orient the direction of causality between gene expression traits using genomic variants. Instrumental-variable methods (IV) use a local expression quantitative trait locus (eQTL) as a randomized instrument for a gene's expression level, and assign target genes based on distal eQTL associations. Mediation-based methods (ME) additionally require that distal eQTL associations are mediated by the source gene. Here we used Findr, a software providing uniform implementations of IV, ME, and coexpression-based methods, a recent dataset of 1,012 segregants from a cross between two budding yeast strains, and the YEASTRACT database of known transcriptional interactions to compare causal gene network inference methods. We found that causal inference methods result in a significant overlap with the ground-truth, whereas coexpression did not perform better than random. A subsampling analysis revealed that the performance of ME decreases at large sample sizes, due to a loss of sensitivity when residual correlations become significant. IV methods contain false positive predictions, due to genomic linkage between eQTL instruments. IV and ME methods also have complementary roles for identifying causal genes underlying transcriptional hotspots. IV methods correctly predicted STB5 targets for a hotspot centred on the transcription factor STB5, whereas ME failed due to Stb5p auto-regulating its own expression. ME suggests a new candidate gene, DNM1, for a hotspot on Chr XII, where IV methods could not distinguish between multiple genes located within the hotspot.
    Keywords Quantitative Biology - Molecular Networks ; Quantitative Biology - Genomics ; Statistics - Applications
    Subject code 004
    Publishing date 2020-10-14
    Publishing country us
    Document type Book ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  5. Book ; Online: High-dimensional multi-trait GWAS by reverse prediction of genotypes

    Malik, Muhammad Ammar / Ludl, Adriaan-Alexander / Michoel, Tom

    2021  

    Abstract: Multi-trait genome-wide association studies (GWAS) use multi-variate statistical methods to identify associations between genetic variants and multiple correlated traits simultaneously, and have higher statistical power than independent univariate ... ...

    Abstract Multi-trait genome-wide association studies (GWAS) use multi-variate statistical methods to identify associations between genetic variants and multiple correlated traits simultaneously, and have higher statistical power than independent univariate analysis of traits. Reverse regression, where genotypes of genetic variants are regressed on multiple traits simultaneously, has emerged as a promising approach to perform multi-trait GWAS in high-dimensional settings where the number of traits exceeds the number of samples. We extended this approach and analyzed different machine learning methods (ridge regression, random forests and support vector machines)for reverse regression in multi-trait GWAS, using genotypes, gene expression data and ground-truth transcriptional regulatory networks from the DREAM5 SysGen Challenge and from a cross between two yeast strains to evaluate methods. We found that genotype prediction performance, in terms of root mean squared error (RMSE), allowed to distinguish between genomic regions with high and low transcriptional activity. Moreover, model feature coefficients correlated with the strength of association between variants and individual traits, and were predictive of true trans-eQTL target genes, with complementary findings across methods.
    Keywords Quantitative Biology - Genomics ; Computer Science - Machine Learning ; Quantitative Biology - Quantitative Methods ; Statistics - Methodology
    Subject code 006
    Publishing date 2021-10-29
    Publishing country us
    Document type Book ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  6. Article ; Online: In Vitro

    Koroleva, Anastasia / Deiwick, Andrea / El-Tamer, Ayman / Koch, Lothar / Shi, Yichen / Estévez-Priego, Estefanía / Ludl, Adriaan-Alexander / Soriano, Jordi / Guseva, Daria / Ponimaskin, Evgeni / Chichkov, Boris

    ACS applied materials & interfaces

    2021  Volume 13, Issue 7, Page(s) 7839–7853

    Abstract: Neural progenitor cells generated from human induced pluripotent stem cells (hiPSCs) are the forefront of ″brain-on-chip″ investigations. Viable and functional hiPSC-derived neuronal networks are shaping ... ...

    Abstract Neural progenitor cells generated from human induced pluripotent stem cells (hiPSCs) are the forefront of ″brain-on-chip″ investigations. Viable and functional hiPSC-derived neuronal networks are shaping powerful
    MeSH term(s) Cell Culture Techniques ; Cells, Cultured ; Humans ; Induced Pluripotent Stem Cells/cytology ; Lasers ; Neural Networks, Computer
    Language English
    Publishing date 2021-02-09
    Publishing country United States
    Document type Journal Article
    ISSN 1944-8252
    ISSN (online) 1944-8252
    DOI 10.1021/acsami.0c16616
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  7. Article ; Online: Effect of salt on the H-bond symmetrization in ice.

    Bove, Livia Eleonora / Gaal, Richard / Raza, Zamaan / Ludl, Adriaan-Alexander / Klotz, Stefan / Saitta, Antonino Marco / Goncharov, Alexander F / Gillet, Philippe

    Proceedings of the National Academy of Sciences of the United States of America

    2015  Volume 112, Issue 27, Page(s) 8216–8220

    Abstract: The richness of the phase diagram of water reduces drastically at very high pressures where only two molecular phases, proton-disordered ice VII and proton-ordered ice VIII, are known. Both phases transform to the centered hydrogen bond atomic phase ice ... ...

    Abstract The richness of the phase diagram of water reduces drastically at very high pressures where only two molecular phases, proton-disordered ice VII and proton-ordered ice VIII, are known. Both phases transform to the centered hydrogen bond atomic phase ice X above about 60 GPa, i.e., at pressures experienced in the interior of large ice bodies in the universe, such as Saturn and Neptune, where nonmolecular ice is thought to be the most abundant phase of water. In this work, we investigate, by Raman spectroscopy up to megabar pressures and ab initio simulations, how the transformation of ice VII in ice X is affected by the presence of salt inclusions in the ice lattice. Considerable amounts of salt can be included in ice VII structure under pressure via rock-ice interaction at depth and processes occurring during planetary accretion. Our study reveals that the presence of salt hinders proton order and hydrogen bond symmetrization, and pushes ice VII to ice X transformation to higher and higher pressures as the concentration of salt is increased.
    Language English
    Publishing date 2015-07-07
    Publishing country United States
    Document type Journal Article ; Research Support, Non-U.S. Gov't
    ZDB-ID 209104-5
    ISSN 1091-6490 ; 0027-8424
    ISSN (online) 1091-6490
    ISSN 0027-8424
    DOI 10.1073/pnas.1502438112
    Database MEDical Literature Analysis and Retrieval System OnLINE

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