124 results on '"Baeza Y"'
Search Results
2. Avoiding Pandemic Fears in the Subway and Conquering the Platypus
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Gonzalez, A, Vázquez-Baeza, Y, Pettengill, JB, Ottesen, A, McDonald, D, and Knight, R
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Microbiology ,Biological Sciences ,Infectious Diseases - Abstract
Metagenomics is increasingly used not just to show patterns of microbial diversity but also as a culture-independent method to detect individual organisms of intense clinical, epidemiological, conservation, forensic, or regulatory interest. A widely reported metagenomic study of the New York subway suggested that the pathogens Yersinia pestis and Bacillus anthracis were part of the "normal subway microbiome." In their article in mSystems, Hsu and collaborators (mSystems 1(3):e00018-16, 2016, http://dx.doi.org/10.1128/mSystems.00018-16) showed that microbial communities on transit surfaces in the Boston subway system are maintained from a metapopulation of human skin commensals and environmental generalists and that reanalysis of the New York subway data with appropriate methods did not detect the pathogens. We note that commonly used software pipelines can produce results that lack prima facie validity (e.g., reporting widespread distribution of notorious endemic species such as the platypus or the presence of pathogens) but that appropriate use of inclusion and exclusion sets can avoid this issue.
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- 2016
3. EFECTO DE LA MICORRIZA ARBUSCULAR EN PLANTAS DE CAFE (Coffea arables L.) INFECTADAS POR EL NEMATODO DE LA CORCHOSIS DE LA RAIZ
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Trejo-Aguilar, D., Ferrera-Cerrato, R., Sangabriel-Conde, W., and Baeza, Y.
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- 2018
4. Early prediction of incident liver disease using conventional risk factors and gut-microbiome-augmented gradient boosting
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Liu, Y, Meric, G, Havulinna, AS, Teo, SM, Aberg, F, Ruuskanen, M, Sanders, J, Zhu, Q, Tripathi, A, Verspoor, K, Cheng, S, Jain, M, Jousilahti, P, Vazquez-Baeza, Y, Loomba, R, Lahti, L, Niiranen, T, Salomaa, V, Knight, R, Inouye, M, Liu, Y, Meric, G, Havulinna, AS, Teo, SM, Aberg, F, Ruuskanen, M, Sanders, J, Zhu, Q, Tripathi, A, Verspoor, K, Cheng, S, Jain, M, Jousilahti, P, Vazquez-Baeza, Y, Loomba, R, Lahti, L, Niiranen, T, Salomaa, V, Knight, R, and Inouye, M
- Abstract
The gut microbiome has shown promise as a predictive biomarker for various diseases. However, the potential of gut microbiota for prospective risk prediction of liver disease has not been assessed. Here, we utilized shallow shotgun metagenomic sequencing of a large population-based cohort (N > 7,000) with ∼15 years of follow-up in combination with machine learning to investigate the predictive capacity of gut microbial predictors individually and in conjunction with conventional risk factors for incident liver disease. Separately, conventional and microbial factors showed comparable predictive capacity. However, microbiome augmentation of conventional risk factors using machine learning significantly improved the performance. Similarly, disease-free survival analysis showed significantly improved stratification using microbiome-augmented models. Investigation of predictive microbial signatures revealed previously unknown taxa for liver disease, as well as those previously associated with hepatic function and disease. This study supports the potential clinical validity of gut metagenomic sequencing to complement conventional risk factors for prediction of liver diseases.
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- 2022
5. Phylogeny-Aware Analysis of Metagenome Community Ecology Based on Matched Reference Genomes while Bypassing Taxonomy
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Sharpton, TJ, Zhu, Q, Huang, S, Gonzalez, A, McGrath, I, McDonald, D, Haiminen, N, Armstrong, G, Vazquez-Baeza, Y, Yu, J, Kuczynski, J, Sepich-Poore, GD, Swafford, AD, Das, P, Shaffer, JP, Lejzerowicz, F, Belda-Ferre, P, Havulinna, AS, Meric, G, Niiranen, T, Lahti, L, Salomaa, V, Kim, H-C, Jain, M, Inouye, M, Gilbert, JA, Knight, R, Sharpton, TJ, Zhu, Q, Huang, S, Gonzalez, A, McGrath, I, McDonald, D, Haiminen, N, Armstrong, G, Vazquez-Baeza, Y, Yu, J, Kuczynski, J, Sepich-Poore, GD, Swafford, AD, Das, P, Shaffer, JP, Lejzerowicz, F, Belda-Ferre, P, Havulinna, AS, Meric, G, Niiranen, T, Lahti, L, Salomaa, V, Kim, H-C, Jain, M, Inouye, M, Gilbert, JA, and Knight, R
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We introduce the operational genomic unit (OGU) method, a metagenome analysis strategy that directly exploits sequence alignment hits to individual reference genomes as the minimum unit for assessing the diversity of microbial communities and their relevance to environmental factors. This approach is independent of taxonomic classification, granting the possibility of maximal resolution of community composition, and organizes features into an accurate hierarchy using a phylogenomic tree. The outputs are suitable for contemporary analytical protocols for community ecology, differential abundance, and supervised learning while supporting phylogenetic methods, such as UniFrac and phylofactorization, that are seldom applied to shotgun metagenomics despite being prevalent in 16S rRNA gene amplicon studies. As demonstrated in two real-world case studies, the OGU method produces biologically meaningful patterns from microbiome data sets. Such patterns further remain detectable at very low metagenomic sequencing depths. Compared with taxonomic unit-based analyses implemented in currently adopted metagenomics tools, and the analysis of 16S rRNA gene amplicon sequence variants, this method shows superiority in informing biologically relevant insights, including stronger correlation with body environment and host sex on the Human Microbiome Project data set and more accurate prediction of human age by the gut microbiomes of Finnish individuals included in the FINRISK 2002 cohort. We provide Woltka, a bioinformatics tool to implement this method, with full integration with the QIIME 2 package and the Qiita web platform, to facilitate adoption of the OGU method in future metagenomics studies. IMPORTANCE Shotgun metagenomics is a powerful, yet computationally challenging, technique compared to 16S rRNA gene amplicon sequencing for decoding the composition and structure of microbial communities. Current analyses of metagenomic data are primarily based on taxonomic classification
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- 2022
6. Multi-omics profiling of Earth’s biomes reveals patterns of diversity and co-occurrence in microbial and metabolite composition across environments
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Rodolfo A. Salido, Ashley Shade, Mads Albertsen, Daniel McDonald, Anupriya Tripathi, Rob Knight, Daniel Petras, Kai Dührkop, Se Jin Song, Cameron Martino, Thomas O. Metz, James T. Morton, Mélissa Nothias-Esposito, A. Gonzalez, Louis-Félix Nothias, Justin P. Shaffer, Promi Das, Alexander A. Aksenov, Karenina Sanders, Torsten Thomas, Hyun-Woo Kim, Jeremiah J. Minich, Vásquez-Baeza Y, Tara Schwartz, Smruthi Karthikeyan, Janet K. Jansson, James C. Stegen, Jeff DeReus, Jack A. Gilbert, Søren Michael Karst, Bryant Mm, Sneha P. Couvillion, Sebastian Böcker, Jon G. Sanders, Gail Ackermann, Franck Lejzerowicz, Pieter C. Dorrestein, Qiyun Zhu, Greg Humphrey, Niina Haiminen, Serina Huang, Anna Paola Carrieri, Luke R. Thompson, Laxmi Parida, Clarisse Marotz, Kristen L. Beck, Asker Daniel Brejnrod, Wout Bittremieux, Austin D. Swafford, and Holly L. Lutz
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Profiling (computer programming) ,chemistry.chemical_compound ,chemistry ,Metagenomics ,Metabolite ,Biome ,Metabolome ,Multi omics ,Computational biology ,Microbiome ,Biology ,Genome - Abstract
As our understanding of the structure and diversity of the microbial world grows, interpreting its function is of critical interest for understanding and managing the many systems microbes influence. Despite advances in sequencing, lack of standardization challenges comparisons among studies that could provide insight into the structure and function of microbial communities across multiple habitats on a planetary scale. Technical variation among distinct studies without proper standardization of approaches prevents robust meta-analysis. Here, we present a multi-omics, meta-analysis of a novel, diverse set of microbial community samples collected for the Earth Microbiome Project. We include amplicon (16S, 18S, ITS) and shotgun metagenomic sequence data, and untargeted metabolomics data (liquid chromatography-tandem mass spectrometry and gas chromatography mass spectrometry), centering our description on relationships and co-occurrences of microbially-related metabolites and microbial taxa across environments. Standardized protocols and analytical methods for characterizing microbial communities, including assessment of molecular diversity using untargeted metabolomics, facilitate identification of shared microbial and metabolite features, permitting us to explore diversity at extraordinary scale. In addition to a reference database for metagenomic and metabolomic data, we provide a framework for incorporating additional studies, enabling the expansion of existing knowledge in the form of a community resource that will become more valuable with time. To provide examples of applying this database, we outline important ecological questions that can be addressed, and test the hypotheses that every microbe and metabolite is everywhere, but the environment selects. Our results show that metabolite diversity exhibits turnover and nestedness related to both microbial communities and the environment. The relative abundances of microbially-related metabolites vary and co-occur with specific microbial consortia in a habitat-specific manner, and highlight the power of certain chemistry – in particular terpenoids – in distinguishing Earth’s environments.
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- 2021
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7. Efficient computation of Faith's phylogenetic diversity with applications in characterizing microbiomes
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Armstrong, G, Cantrell, K, Huang, S, McDonald, D, Haiminen, N, Carrieri, AP, Zhu, Q, Gonzalez, A, McGrath, I, Beck, KL, Hakim, D, Havulinna, AS, Meric, G, Niiranen, T, Lahti, L, Salomaa, V, Jain, M, Inouye, M, Swafford, AD, Kim, H-C, Parida, L, Vazquez-Baeza, Y, Knight, R, Armstrong, G, Cantrell, K, Huang, S, McDonald, D, Haiminen, N, Carrieri, AP, Zhu, Q, Gonzalez, A, McGrath, I, Beck, KL, Hakim, D, Havulinna, AS, Meric, G, Niiranen, T, Lahti, L, Salomaa, V, Jain, M, Inouye, M, Swafford, AD, Kim, H-C, Parida, L, Vazquez-Baeza, Y, and Knight, R
- Abstract
The number of publicly available microbiome samples is continually growing. As data set size increases, bottlenecks arise in standard analytical pipelines. Faith's phylogenetic diversity (Faith's PD) is a highly utilized phylogenetic alpha diversity metric that has thus far failed to effectively scale to trees with millions of vertices. Stacked Faith's phylogenetic diversity (SFPhD) enables calculation of this widely adopted diversity metric at a much larger scale by implementing a computationally efficient algorithm. The algorithm reduces the amount of computational resources required, resulting in more accessible software with a reduced carbon footprint, as compared to previous approaches. The new algorithm produces identical results to the previous method. We further demonstrate that the phylogenetic aspect of Faith's PD provides increased power in detecting diversity differences between younger and older populations in the FINRISK study's metagenomic data.
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- 2021
8. Links between gut microbiome composition and fatty liver disease in a large population sample
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Ruuskanen, MO, Aberg, F, Mannisto, V, Havulinna, AS, Meric, G, Liu, Y, Loomba, R, Vazquez-Baeza, Y, Tripathi, A, Valsta, LM, Inouye, M, Jousilahti, P, Salomaa, V, Jain, M, Knight, R, Lahti, L, Niiranen, TJ, Ruuskanen, MO, Aberg, F, Mannisto, V, Havulinna, AS, Meric, G, Liu, Y, Loomba, R, Vazquez-Baeza, Y, Tripathi, A, Valsta, LM, Inouye, M, Jousilahti, P, Salomaa, V, Jain, M, Knight, R, Lahti, L, and Niiranen, TJ
- Abstract
Fatty liver disease is the most common liver disease in the world. Its connection with the gut microbiome has been known for at least 80 y, but this association remains mostly unstudied in the general population because of underdiagnosis and small sample sizes. To address this knowledge gap, we studied the link between the Fatty Liver Index (FLI), a well-established proxy for fatty liver disease, and gut microbiome composition in a representative, ethnically homogeneous population sample of 6,269 Finnish participants. We based our models on biometric covariates and gut microbiome compositions from shallow metagenome sequencing. Our classification models could discriminate between individuals with a high FLI (≥60, indicates likely liver steatosis) and low FLI (<60) in internal cross-region validation, consisting of 30% of the data not used in model training, with an average AUC of 0.75 and AUPRC of 0.56 (baseline at 0.30). In addition to age and sex, our models included differences in 11 microbial groups from class Clostridia, mostly belonging to orders Lachnospirales and Oscillospirales. Our models were also predictive of the high FLI group in a different Finnish cohort, consisting of 258 participants, with an average AUC of 0.77 and AUPRC of 0.51 (baseline at 0.21). Pathway analysis of representative genomes of the positively FLI-associated taxa in (NCBI) Clostridium subclusters IV and XIVa indicated the presence of, e.g., ethanol fermentation pathways. These results support several findings from smaller case-control studies, such as the role of endogenous ethanol producers in the development of the fatty liver.
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- 2021
9. SciPy 1.0: fundamental algorithms for scientific computing in Python: 24 February 2020 : An amendment to this paper has been published and can be accessed via a link at the top of the paper
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Virtanen, P., Gommers, R., Oliphant, T.E., Haberland, M., Reddy, T., Cournapeau, D., Burovski, E., Peterson, P., Weckesser, W., Bright, J., Walt, S.J., Brett, M., Wilson, J., Millman, K.J., Mayorov, N., Nelson, A.R.J., Jones, E., Kern, R., Larson, E., Carey, C.J., Polat, I., Feng, Y., Moore, E.W., VanderPlas, J., Laxalde, D., Perktold, J., Cimrman, R., Henriksen, I., Quintero, E.A., Harris, C.R., Archibald, A.M., Ribeiro, A.H., Pedregosa, F., Mulbregt, P., Vijaykumar, A., Bardelli, A.P., Rothberg, A., Hilboll, A., Kloeckner, A., Scopatz, A., Lee, A., Rokem, A., Woods, C.N., Fulton, C., Masson, C., Häggström, C., Fitzgerald, C., Nicholson, D.A., Hagen, D.R., Pasechnik, D.V., Olivetti, E., Martin, E., Wieser, E., Lenders, F., Silva, Fabrice, Wilhelm, F., Young, G., Price, G.A., Ingold, G.-L., Allen, G.E., Lee, G.R., Audren, H., Probst, Irvin, Dietrich, J.P., Silterra, J., Webber, J.T., Slavič, J., Nothman, J., Buchner, J., Kulick, J., Schönberger, J.L., Miranda Cardoso, J.V., Reimer, J., Harrington, J., Rodríguez, J.L.C., Nunez-Iglesias, J., Kuczynski, J., Tritz, K., Thoma, M., Newville, M., Kümmerer, M., Bolingbroke, M., Tartre, M., Pak, M., Smith, N.J., Nowaczyk, N., Shebanov, N., Pavlyk, O., Brodtkorb, P.A., Lee, P., McGibbon, R.T., Feldbauer, R., Lewis, S., Tygier, S., Sievert, S., Vigna, S., Peterson, S., More, S., Pudlik, T., Oshima, T., Pingel, T.J., Robitaille, T.P., Spura, T., Jones, T.R., Cera, T., Leslie, T., Zito, T., Krauss, T., Upadhyay, U., Halchenko, Y.O., Vázquez-Baeza, Y., SciPy 1.0, Contributors, Low Temperature Laboratory, TKK Helsinki University of Technology (TKK), Centre Interdisciplinaire de Nanoscience de Marseille (CINaM), Aix Marseille Université (AMU)-Centre National de la Recherche Scientifique (CNRS), Laboratoire de Tribologie et Dynamique des Systèmes (LTDS), École Centrale de Lyon (ECL), Université de Lyon-Université de Lyon-École Nationale des Travaux Publics de l'État (ENTPE)-Ecole Nationale d'Ingénieurs de Saint Etienne-Centre National de la Recherche Scientifique (CNRS), SNECMA Villaroche [Moissy-Cramayel], Safran Group, New Technologies Research Centre [Plzeň] (NTC), University of West Bohemia [Plzeň ], Institute of Environmental Physics [Bremen] (IUP), University of Bremen, Istituto Nazionale di Ricerca Metrologica (INRiM), Laboratoire Chrono-environnement - CNRS - UBFC (UMR 6249) (LCE), Centre National de la Recherche Scientifique (CNRS)-Université de Franche-Comté (UFC), Université Bourgogne Franche-Comté [COMUE] (UBFC)-Université Bourgogne Franche-Comté [COMUE] (UBFC), Laboratoire de Mécanique et d'Acoustique [Marseille] (LMA ), Aix Marseille Université (AMU)-École Centrale de Marseille (ECM)-Centre National de la Recherche Scientifique (CNRS), Sons, Aix Marseille Université (AMU)-École Centrale de Marseille (ECM)-Centre National de la Recherche Scientifique (CNRS)-Aix Marseille Université (AMU)-École Centrale de Marseille (ECM)-Centre National de la Recherche Scientifique (CNRS), European Synchrotron Radiation Facility (ESRF), Lab-STICC_ENSTAB_CID_PRASYS, Laboratoire des sciences et techniques de l'information, de la communication et de la connaissance (Lab-STICC), École Nationale d'Ingénieurs de Brest (ENIB)-Université de Bretagne Sud (UBS)-Université de Brest (UBO)-École Nationale Supérieure de Techniques Avancées Bretagne (ENSTA Bretagne)-Institut Mines-Télécom [Paris] (IMT)-Centre National de la Recherche Scientifique (CNRS)-Université Bretagne Loire (UBL)-IMT Atlantique Bretagne-Pays de la Loire (IMT Atlantique), Institut Mines-Télécom [Paris] (IMT)-École Nationale d'Ingénieurs de Brest (ENIB)-Université de Bretagne Sud (UBS)-Université de Brest (UBO)-École Nationale Supérieure de Techniques Avancées Bretagne (ENSTA Bretagne)-Institut Mines-Télécom [Paris] (IMT)-Centre National de la Recherche Scientifique (CNRS)-Université Bretagne Loire (UBL)-IMT Atlantique Bretagne-Pays de la Loire (IMT Atlantique), Institut Mines-Télécom [Paris] (IMT), Max Planck Institute for Solar System Research (MPS), Max-Planck-Gesellschaft, University of Chicago, Consortium of Advanced Radiation Sciences, Advanced Photon Source, GSECARS, University of Chicago, Laboratoire de physique des gaz et des plasmas (LPGP), Université Paris-Sud - Paris 11 (UP11)-Centre National de la Recherche Scientifique (CNRS), The Open University [Milton Keynes] (OU), Nobeyama Radio Observatory, Gommers, Ralf [0000-0002-0300-3333], Haberland, Matt [0000-0003-4806-3601], Reddy, Tyler [0000-0003-2364-6157], van der Walt, Stéfan J. [0000-0001-9276-1891], Millman, K. Jarrod [0000-0002-5263-5070], Nelson, Andrew R. J. [0000-0002-4548-3558], Laxalde, Denis [0000-0002-5540-4825], Ribeiro, Antônio H. [0000-0003-3632-8529], van Mulbregt, Paul [0000-0002-2382-8308], Apollo - University of Cambridge Repository, van der Walt, Stéfan J [0000-0001-9276-1891], Millman, K Jarrod [0000-0002-5263-5070], Nelson, Andrew RJ [0000-0002-4548-3558], Ribeiro, Antônio H [0000-0003-3632-8529], Quansight LLC, California Polytechnic State University [San Luis Obispo] (CAL POLY), Los Alamos National Laboratory (LANL), AUTRES, National Research University Higher School of Economics [St. Petersburg], Tallinn Technical University, University of California [Berkeley] (UC Berkeley), University of California (UC), University of Birmingham [Birmingham], Skolkovo Innovation Center, Australian Nuclear Science and Technology Organisation [Australie] (ANSTO), Enthought Inc, University of Washington [Seattle], University of Massachusetts [Amherst] (UMass Amherst), University of Massachusetts System (UMASS), Bruker BioSpin Corporation, Université de Lyon-Université de Lyon-École Nationale des Travaux Publics de l'État (ENTPE)-Ecole Nationale d'Ingénieurs de Saint Etienne (ENISE)-Centre National de la Recherche Scientifique (CNRS), University of Texas at Austin [Austin], Astronomical Institute Anton Pannekoek (AI PANNEKOEK), University of Amsterdam [Amsterdam] (UvA), Universidade Federal de Minas Gerais [Belo Horizonte] (UFMG), Google LLC, Laboratoire Chrono-environnement (UMR 6249) (LCE), École Nationale d'Ingénieurs de Brest (ENIB)-Université de Bretagne Sud (UBS)-Université de Brest (UBO)-École Nationale Supérieure de Techniques Avancées Bretagne (ENSTA Bretagne)-Institut Mines-Télécom [Paris] (IMT)-Centre National de la Recherche Scientifique (CNRS)-Université Bretagne Loire (UBL)-IMT Atlantique (IMT Atlantique), Institut Mines-Télécom [Paris] (IMT)-École Nationale d'Ingénieurs de Brest (ENIB)-Université de Bretagne Sud (UBS)-Université de Brest (UBO)-École Nationale Supérieure de Techniques Avancées Bretagne (ENSTA Bretagne)-Institut Mines-Télécom [Paris] (IMT)-Centre National de la Recherche Scientifique (CNRS)-Université Bretagne Loire (UBL)-IMT Atlantique (IMT Atlantique), and Max-Planck-Institut für Sonnensystemforschung = Max Planck Institute for Solar System Research (MPS)
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FOS: Computer and information sciences ,Computer science ,01 natural sciences ,Biochemistry ,Computer Science - Software Engineering ,631/45/56 ,Data Structures and Algorithms (cs.DS) ,010303 astronomy & astrophysics ,computer.programming_language ,0303 health sciences ,Signal processing ,Signal Processing, Computer-Assisted ,Computational Physics (physics.comp-ph) ,ddc ,Linear algebra ,Perspective ,Minification ,Physics - Computational Physics ,Algorithm ,Algorithms ,Biotechnology ,De facto standard ,FOS: Physical sciences ,Image processing ,History, 21st Century ,Models, Biological ,706/703/559 ,Python (Computer program language) ,Computational science ,03 medical and health sciences ,Computer Science - Data Structures and Algorithms ,0103 physical sciences ,Computer Simulation ,[INFO]Computer Science [cs] ,ddc:530 ,Cluster analysis ,Molecular Biology ,Scientific computing ,030304 developmental biology ,Sparse matrix ,software ,Computational Biology ,Cell Biology ,Python (programming language) ,History, 20th Century ,[INFO.INFO-NA]Computer Science [cs]/Numerical Analysis [cs.NA] ,Software Engineering (cs.SE) ,Nonlinear Dynamics ,Linear Models ,Computer Science - Mathematical Software ,Programming Languages ,631/114 ,computer ,Mathematical Software (cs.MS) ,Python - Abstract
SciPy is an open source scientific computing library for the Python programming language. SciPy 1.0 was released in late 2017, about 16 years after the original version 0.1 release. SciPy has become a de facto standard for leveraging scientific algorithms in the Python programming language, with more than 600 unique code contributors, thousands of dependent packages, over 100,000 dependent repositories, and millions of downloads per year. This includes usage of SciPy in almost half of all machine learning projects on GitHub, and usage by high profile projects including LIGO gravitational wave analysis and creation of the first-ever image of a black hole (M87). The library includes functionality spanning clustering, Fourier transforms, integration, interpolation, file I/O, linear algebra, image processing, orthogonal distance regression, minimization algorithms, signal processing, sparse matrix handling, computational geometry, and statistics. In this work, we provide an overview of the capabilities and development practices of the SciPy library and highlight some recent technical developments., Comment: Article source data is available here: https://github.com/scipy/scipy-articles
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- 2020
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10. OP31 Meta–omics reveals microbiome-driven proteolysis as a contributing factor to the severity of ulcerative colitis disease activity
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Mills, R, primary, Dulai, P, additional, Vázquez-Baeza, Y, additional, Zhu, Q, additional, Humphrey, G, additional, DeRight Goldasich, L, additional, Quinn, R, additional, Gewirtz, A, additional, Chassaing, B, additional, Chu, H, additional, Sandborn, W, additional, Dorrestein, P, additional, Knight, R, additional, and Gonzalez, D, additional
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- 2020
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11. MCT4 is a high affinity transporter capable of exporting lactate in high-lactate environments
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Contreras-Baeza, Y, primary, Sandoval, PY, additional, Alarcón, R, additional, Galaz, A, additional, Cortés-Molina, F, additional, Alegría, K, additional, Baeza-Lehnert, F, additional, Arce-Molina, R, additional, Guequén, A, additional, Flores, CA, additional, San Martín, A, additional, and Barros, LF, additional
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- 2019
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12. MitoToxy Assay: a novel cell-based method for the assessment of metabolic toxicity in a multiwell plate format using a lactate FRET nanosensor, Laconic
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Contreras-Baeza, Y, primary, Ceballo, S, additional, Arce-Molina, R, additional, Sandoval, PY, additional, Alegría, K, additional, Barros, L.F., additional, and San Martín, A., additional
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- 2019
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13. Influence of a passive accumulator of heat on the microclimate and Bioproductivity under greenhouse
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Estaban José Baeza y otros
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Producción Agraria ,Temperatura del aire ,HORTICULTURA ,310200 INGENIERIA AGRICOLA ,310700 HORTICULTURA ,Producción vegetal ,Almacenamiento de agua ,Radiación solar - Abstract
The incorporation of sleeves of plastic water-filled as accumulators of heat in the greenhouse is a passive heating system that allows to increase the temperature of the air and plant during the cold period and increase the production of the fruit of sweet pepper. La incorporación de mangas de plástico llenas de agua como acumuladores de calor en el invernadero es un sistema de calefacción pasivo que permite aumentar la temperatura del aire y de la planta durante el periodo frio e incrementar la producción del fruto de pimiento.
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- 2016
14. A communal catalogue reveals Earth's multiscale microbial diversity
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Thompson, LR, Sanders, JG, McDonald, D, Amir, A, Ladau, J, Locey, KJ, Prill, RJ, Tripathi, A, Gibbons, SM, Ackermann, G, Navas-Molina, JA, Janssen, S, Kopylova, E, Vázquez-Baeza, Y, González, A, Morton, JT, Mirarab, S, Xu, ZZ, Jiang, L, Haroon, MF, Kanbar, J, Zhu, Q, Song, SJ, Kosciolek, T, Bokulich, NA, Lefler, J, Brislawn, CJ, Humphrey, G, Owens, SM, Hampton-Marcell, J, Berg-Lyons, D, McKenzie, V, Fierer, N, Fuhrman, JA, Clauset, A, Stevens, RL, Shade, A, Pollard, KS, Goodwin, KD, Jansson, JK, Gilbert, JA, Knight, R, Agosto Rivera, JL, Al-Moosawi, L, Alverdy, J, Amato, KR, Andras, J, Angenent, LT, Antonopoulos, DA, Apprill, A, Armitage, D, Ballantine, K, Bárta, J, Baum, JK, Berry, A, Bhatnagar, A, Bhatnagar, M, Biddle, JF, Bittner, L, Boldgiv, B, Bottos, E, Boyer, DM, Braun, J, Brazelton, W, Brearley, FQ, Campbell, AH, Caporaso, JG, Cardona, C, Carroll, JL, Cary, SC, Casper, BB, Charles, TC, Chu, H, Claar, DC, Clark, RG, Clayton, JB, Clemente, JC, Cochran, A, Coleman, ML, Collins, G, Colwell, RR, Contreras, M, Crary, BB, Creer, S, Cristol, DA, Crump, BC, Cui, D, Daly, SE, Davalos, L, Dawson, RD, Defazio, J, Delsuc, F, Dionisi, HM, Dominguez-Bello, MG, Dowell, R, Dubinsky, EA, Dunn, PO, Ercolini, D, Espinoza, RE, Ezenwa, V, Thompson, LR, Sanders, JG, McDonald, D, Amir, A, Ladau, J, Locey, KJ, Prill, RJ, Tripathi, A, Gibbons, SM, Ackermann, G, Navas-Molina, JA, Janssen, S, Kopylova, E, Vázquez-Baeza, Y, González, A, Morton, JT, Mirarab, S, Xu, ZZ, Jiang, L, Haroon, MF, Kanbar, J, Zhu, Q, Song, SJ, Kosciolek, T, Bokulich, NA, Lefler, J, Brislawn, CJ, Humphrey, G, Owens, SM, Hampton-Marcell, J, Berg-Lyons, D, McKenzie, V, Fierer, N, Fuhrman, JA, Clauset, A, Stevens, RL, Shade, A, Pollard, KS, Goodwin, KD, Jansson, JK, Gilbert, JA, Knight, R, Agosto Rivera, JL, Al-Moosawi, L, Alverdy, J, Amato, KR, Andras, J, Angenent, LT, Antonopoulos, DA, Apprill, A, Armitage, D, Ballantine, K, Bárta, J, Baum, JK, Berry, A, Bhatnagar, A, Bhatnagar, M, Biddle, JF, Bittner, L, Boldgiv, B, Bottos, E, Boyer, DM, Braun, J, Brazelton, W, Brearley, FQ, Campbell, AH, Caporaso, JG, Cardona, C, Carroll, JL, Cary, SC, Casper, BB, Charles, TC, Chu, H, Claar, DC, Clark, RG, Clayton, JB, Clemente, JC, Cochran, A, Coleman, ML, Collins, G, Colwell, RR, Contreras, M, Crary, BB, Creer, S, Cristol, DA, Crump, BC, Cui, D, Daly, SE, Davalos, L, Dawson, RD, Defazio, J, Delsuc, F, Dionisi, HM, Dominguez-Bello, MG, Dowell, R, Dubinsky, EA, Dunn, PO, Ercolini, D, Espinoza, RE, and Ezenwa, V
- Abstract
Our growing awareness of the microbial world's importance and diversity contrasts starkly with our limited understanding of its fundamental structure. Despite recent advances in DNA sequencing, a lack of standardized protocols and common analytical frameworks impedes comparisons among studies, hindering the development of global inferences about microbial life on Earth. Here we present a meta-analysis of microbial community samples collected by hundreds of researchers for the Earth Microbiome Project. Coordinated protocols and new analytical methods, particularly the use of exact sequences instead of clustered operational taxonomic units, enable bacterial and archaeal ribosomal RNA gene sequences to be followed across multiple studies and allow us to explore patterns of diversity at an unprecedented scale. The result is both a reference database giving global context to DNA sequence data and a framework for incorporating data from future studies, fostering increasingly complete characterization of Earth's microbial diversity.
- Published
- 2017
15. Channel-mediated lactate release by K⁺-stimulated astrocytes
- Author
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Sotelo-Hitschfeld, T, Niemeyer, M I, Machler, P, Ruminot, I, Lerchundi, R, Wyss, M T, Stobart, J, Fernandez-Moncada, I, Valdebenito, R, Garrido-Gerter, P, Contreras-Baeza, Y, Schneider, B L, Aebischer, P, Lengacher, S, San Martin, A, Le Douce, J, Bonvento, G, Magistretti, P J, Sepulveda, F V, Weber, B, Barros, L F, Sotelo-Hitschfeld, T, Niemeyer, M I, Machler, P, Ruminot, I, Lerchundi, R, Wyss, M T, Stobart, J, Fernandez-Moncada, I, Valdebenito, R, Garrido-Gerter, P, Contreras-Baeza, Y, Schneider, B L, Aebischer, P, Lengacher, S, San Martin, A, Le Douce, J, Bonvento, G, Magistretti, P J, Sepulveda, F V, Weber, B, and Barros, L F
- Abstract
Excitatory synaptic transmission is accompanied by a local surge in interstitial lactate that occurs despite adequate oxygen availability, a puzzling phenomenon termed aerobic glycolysis. In addition to its role as an energy substrate, recent studies have shown that lactate modulates neuronal excitability acting through various targets, including NMDA receptors and G-protein-coupled receptors specific for lactate, but little is known about the cellular and molecular mechanisms responsible for the increase in interstitial lactate. Using a panel of genetically encoded fluorescence nanosensors for energy metabolites, we show here that mouse astrocytes in culture, in cortical slices, and in vivo maintain a steady-state reservoir of lactate. The reservoir was released to the extracellular space immediately after exposure of astrocytes to a physiological rise in extracellular K+ or cell depolarization. Cell-attached patch-clamp analysis of cultured astrocytes revealed a 37 pS lactate-permeable ion channel activated by cell depolarization. The channel was modulated by lactate itself, resulting in a positive feedback loop for lactate release. A rapid fall in intracellular lactate levels was also observed in cortical astrocytes of anesthetized mice in response to local field stimulation. The existence of an astrocytic lactate reservoir and its quick mobilization via an ion channel in response to a neuronal cue provides fresh support to lactate roles in neuronal fueling and in gliotransmission.
- Published
- 2015
16. HACIA UNA METAFÍSICA DE LA ESPERANZA.
- Author
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BAEZA Y ACÉYEZ, LEOPOLDO
- Published
- 1963
17. Hacia una metafísica de la esperanza
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Leopoldo Baeza y Acévez
- Published
- 1963
- Full Text
- View/download PDF
18. Bossuet Apologista del progreso universal
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Baeza y Aceves, Leopoldo
- Subjects
Humanidades y Artes - Published
- 1944
19. Informe de la Comisión nombrada al efecto sobre los trabajos caligráficos de D. Juan Baeza y Capuz
- Author
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Baeza y Capuz, Juan
- Subjects
Educación - Abstract
Informe de la Comisión nombrada al efecto sobre los trabajos caligráficos de D. Juan Baeza y Capuz.
- Published
- 1850
20. Historia de la insigne ciudad de Segovia y compendio de las historias de Castilla
- Author
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Baeza y González, Tomás, anot, Colmenares, Diego de, Vergara y Martín, Gabriel María, Baeza y González, Tomás, anot, Colmenares, Diego de, and Vergara y Martín, Gabriel María
- Published
- 1921
21. La Fuente de las científicas musas es el angelico Doctor Stº. Thomas de Aquino : coloquio laudatorio, que ... han de representar sus fieles alumnos el dia 5 de abril ... deste año de 1739 ...
- Author
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Lozano, Fernando s. XVIII, Baeza y Mendoza, José de dedicatario, Lozano, Fernando s. XVIII, and Baeza y Mendoza, José de dedicatario
- Abstract
Aguilar Piñal. Bib. S.XVIII, Fecha de impresión deducida del título, Sign.: A-D⁴, Portada con orla tipográfica, Parte del texto a dos columnas, Apostillas marginales, Frisos xilográficos
22. Informe de la Comisión nombrada al efecto sobre los trabajos caligráficos de D. Juan Baeza y Capuz
- Author
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Baeza y Capuz, Juan and Baeza y Capuz, Juan
- Abstract
Informe de la Comisión nombrada al efecto sobre los trabajos caligráficos de D. Juan Baeza y Capuz.
23. La Fuente de las científicas musas es el angelico Doctor Stº. Thomas de Aquino : coloquio laudatorio, que ... han de representar sus fieles alumnos el dia 5 de abril ... deste año de 1739 ...
- Author
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Lozano, Fernando s. XVIII, Baeza y Mendoza, José de dedicatario, Lozano, Fernando s. XVIII, and Baeza y Mendoza, José de dedicatario
- Abstract
Aguilar Piñal. Bib. S.XVIII, Fecha de impresión deducida del título, Sign.: A-D⁴, Portada con orla tipográfica, Parte del texto a dos columnas, Apostillas marginales, Frisos xilográficos
24. Estatutos provisionales de la Junta preparatoria de la Sociedad de los verdaderos patricios de Baeza y reyno de Jaen
- Author
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Junta preparatoria de la Sociedad de los verdaderos patricios de Baeza y reino de Jaén and Junta preparatoria de la Sociedad de los verdaderos patricios de Baeza y reino de Jaén
- Abstract
Sign. A-H⁸, Viñeta calcográfica en portada, Inicial grabada
25. El incredulo sin escusa
- Author
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Espinola Baeza y Echaburu, Juan de, trad, Pérez de Soto, Antonio, imp, Correa, Juana, ed. lit, Segneri, Paolo S. I, 1624-1694, Espinola Baeza y Echaburu, Juan de, trad, Pérez de Soto, Antonio, imp, Correa, Juana, ed. lit, and Segneri, Paolo S. I, 1624-1694
- Abstract
Según Palau (XX, p. 297), Juan de Espinola Baeza Echaburu es seudónimo de Juan López de Echaburu, Sign.: ¶\p8\s, A-V\p8\s, X\p2\s, Antep
26. El christiano instruido en su ley : discursos morales y doctrinales
- Author
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Espinola Baeza y Echaburu, Juan de, trad, Segneri, Paolo S. I, 1624-1694, Espinola Baeza y Echaburu, Juan de, trad, and Segneri, Paolo S. I, 1624-1694
- Abstract
Según Palau, (XX, p. 297), Juan de Espinola Baeza y Echaburu es seudónimo de Juan López de Echaburu, Sign.: []\p4\s, A-Z\p4\s, 2A-2Z\p4\s, 3A-3D\p4\s, 3E\p2\s, Antep, Texto con apostillas marginales
27. Informe de la Comisión nombrada al efecto sobre los trabajos caligráficos de D. Juan Baeza y Capuz
- Author
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Baeza y Capuz, Juan and Baeza y Capuz, Juan
- Abstract
Informe de la Comisión nombrada al efecto sobre los trabajos caligráficos de D. Juan Baeza y Capuz.
28. El christiano instruido en su ley : discursos morales y doctrinales
- Author
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Espinola Baeza y Echaburu, Juan de, trad, Segneri, Paolo S. I, 1624-1694, Espinola Baeza y Echaburu, Juan de, trad, and Segneri, Paolo S. I, 1624-1694
- Abstract
Según Palau, (XX, p. 297), Juan de Espinola Baeza y Echaburu es seudónimo de Juan López de Echaburu, Sign.: []\p4\s, *\p4\s, 2*\p6\s, A-Z\p4\s, 2A-2Z\p4\s, 3A-3M\p4\s, 3N\p1\s, Error de pag., de p. 80 pasa a p. 85, Antep, Texto con apostillas marginales
29. El christiano instruido en su ley : discursos morales y doctrinales
- Author
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Espinola Baeza y Echaburu, Juan de, trad, Segneri, Paolo S. I, 1624-1694, Espinola Baeza y Echaburu, Juan de, trad, and Segneri, Paolo S. I, 1624-1694
- Abstract
Según Palau, (XX, p. 297), Juan de Espinola Baeza y Echaburu es seudónimo de Juan López de Echaburu, Sign.: []\p4\s, A-Z\p4\s, 2A-2Z\p4\s, 3A-3K\p4\s, 3L\p2\s, Antep
30. El incredulo sin escusa
- Author
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Espinola Baeza y Echaburu, Juan de, trad, Pérez de Soto, Antonio, imp, Correa, Juana, ed. lit, Segneri, Paolo S. I, 1624-1694, Espinola Baeza y Echaburu, Juan de, trad, Pérez de Soto, Antonio, imp, Correa, Juana, ed. lit, and Segneri, Paolo S. I, 1624-1694
- Abstract
Según Palau (XX, p. 297), Juan de Espinola Baeza Echaburu es seudónimo de Juan López de Echaburu, Sign.: []\p2\s, A-Z\p8\s, 2A\p4\s, Antep
31. El christiano instruido en su ley : discursos morales y doctrinales
- Author
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Espinola Baeza y Echaburu, Juan de, trad, Segneri, Paolo S. I, 1624-1694, Espinola Baeza y Echaburu, Juan de, trad, and Segneri, Paolo S. I, 1624-1694
- Abstract
Según Palau, (XX, p. 297), Juan de Espinola Baeza y Echaburu es seudónimo de Juan López de Echaburu, Sign.: []\p4\s, A-Z\p4\s, 2A-2Z\p4\s, 3A-3N\p4\s, Antep
32. ANALISIS DE MORFOMETRÍA GEOMÉTRICA EN PUNTAS COLA DE PESCADO DEL URUGUAY.
- Author
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Castiñeira, Carola, Cardillo, Marcelo, Charlin, Judith, and Baeza, y Jorge
- Subjects
- *
PLEISTOCENE paleobotany , *HOLOCENE Epoch , *ANTIQUITIES , *CHRONOLOGY , *GEOMETRY - Abstract
Projectile points of the Fishtail or Fell I type are usually associated with the early hunter-gatherer populations who inhabited South America in the Late Pleistocene and Early Holocene. The majority of these points were collected from the pampas region of Argentina, Uruguay, central Chile, and southern Patagonia. These artifacts are defined by a convex blade, rounded shoulders, slightly concave stem sides, concave base, and occasional fluting on one or both faces. The presence of fluting and the Late Pleistocene-Early Holocene chronological assignment have been proposed as evidence in support of a cultural relationship between these points and the early points of North America. To explore projectile point shape and related size variation in a quantitative way, we applied geometric morphometric techniques over a sample of 24 Fishtail points from Uruguay. The major trends of shape variation were tested against metric attributes, geographical provenance, and lithic raw material type. Results suggest no relationships between geographical provenance or lithic raw material type and shape variation. However, a significant correlation between size and shape was observed, which indicates an allometric relationship. Finally, we discuss some implications of these results in terms of the design and life history of projectile points and their relationship with the hunter-gatherer technology of the Late Pleistocene and Early Holocene. [ABSTRACT FROM AUTHOR]
- Published
- 2011
33. Correction for Zhu et al., "Phylogeny-Aware Analysis of Metagenome Community Ecology Based on Matched Reference Genomes while Bypassing Taxonomy".
- Author
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Zhu Q, Huang S, Gonzalez A, McGrath I, McDonald D, Haiminen N, Armstrong G, Vázquez-Baeza Y, Yu J, Kuczynski J, Sepich-Poore GD, Swafford AD, Das P, Shaffer JP, Lejzerowicz F, Belda-Ferre P, Havulinna AS, Méric G, Niiranen T, Lahti L, Salomaa V, Kim H-C, Jain M, Inouye M, Gilbert JA, and Knight R
- Published
- 2024
- Full Text
- View/download PDF
34. Lactate-carried Mitochondrial Energy Overflow.
- Author
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Rauseo D, Contreras-Baeza Y, Faurand H, Cárcamo N, Suárez R, von Faber-Castell A, Silva F, Mora-González V, Wyss MT, Baeza-Lehnert F, Ruminot I, Alvarez-Navarro C, San Martín A, Weber B, Sandoval PY, and Barros LF
- Abstract
We addressed the question of mitochondrial lactate metabolism using genetically-encoded sensors. The organelle was found to contain a dynamic lactate pool that leads to dose- and time-dependent protein lactylation. In neurons, mitochondrial lactate reported blood lactate levels with high fidelity. The exchange of lactate across the inner mitochondrial membrane was found to be mediated by a high affinity H
+ -coupled transport system involving the mitochondrial pyruvate carrier MPC. Assessment of electron transport chain activity and determination of lactate flux showed that mitochondria are tonic lactate producers, a phenomenon driven by energization and stimulated by hypoxia. We conclude that an overflow mechanism caps the redox level of mitochondria, while saving energy in the form of lactate.- Published
- 2024
- Full Text
- View/download PDF
35. Integration of polygenic and gut metagenomic risk prediction for common diseases.
- Author
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Liu Y, Ritchie SC, Teo SM, Ruuskanen MO, Kambur O, Zhu Q, Sanders J, Vázquez-Baeza Y, Verspoor K, Jousilahti P, Lahti L, Niiranen T, Salomaa V, Havulinna AS, Knight R, Méric G, and Inouye M
- Subjects
- Male, Humans, Prospective Studies, Risk Factors, Genetic Risk Score, Diabetes Mellitus, Type 2 diagnosis, Coronary Artery Disease genetics, Prostatic Neoplasms
- Abstract
Multiomics has shown promise in noninvasive risk profiling and early detection of various common diseases. In the present study, in a prospective population-based cohort with ~18 years of e-health record follow-up, we investigated the incremental and combined value of genomic and gut metagenomic risk assessment compared with conventional risk factors for predicting incident coronary artery disease (CAD), type 2 diabetes (T2D), Alzheimer disease and prostate cancer. We found that polygenic risk scores (PRSs) improved prediction over conventional risk factors for all diseases. Gut microbiome scores improved predictive capacity over baseline age for CAD, T2D and prostate cancer. Integrated risk models of PRSs, gut microbiome scores and conventional risk factors achieved the highest predictive performance for all diseases studied compared with models based on conventional risk factors alone. The present study demonstrates that integrated PRSs and gut metagenomic risk models improve the predictive value over conventional risk factors for common chronic diseases., (© 2024. The Author(s).)
- Published
- 2024
- Full Text
- View/download PDF
36. Author Correction: Combined effects of host genetics and diet on human gut microbiota and incident disease in a single population cohort.
- Author
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Qin Y, Havulinna AS, Liu Y, Jousilahti P, Ritchie SC, Tokolyi A, Sanders JG, Valsta L, Brożyńska M, Zhu Q, Tripathi A, Vázquez-Baeza Y, Loomba R, Cheng S, Jain M, Niiranen T, Lahti L, Knight R, Salomaa V, Inouye M, and Méric G
- Published
- 2024
- Full Text
- View/download PDF
37. Determination of Effect Sizes for Power Analysis for Microbiome Studies Using Large Microbiome Databases.
- Author
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Rahman G, McDonald D, Gonzalez A, Vázquez-Baeza Y, Jiang L, Casals-Pascual C, Hakim D, Dilmore AH, Nowinski B, Peddada S, and Knight R
- Subjects
- Databases, Factual, Software, Gastrointestinal Microbiome genetics, Microbiota genetics
- Abstract
Herein, we present a tool called Evident that can be used for deriving effect sizes for a broad spectrum of metadata variables, such as mode of birth, antibiotics, socioeconomics, etc., to provide power calculations for a new study. Evident can be used to mine existing databases of large microbiome studies (such as the American Gut Project, FINRISK, and TEDDY) to analyze the effect sizes for planning future microbiome studies via power analysis. For each metavariable, the Evident software is flexible to compute effect sizes for many commonly used measures of microbiome analyses, including α diversity, β diversity, and log-ratio analysis. In this work, we describe why effect size and power analysis are necessary for computational microbiome analysis and show how Evident can help researchers perform these procedures. Additionally, we describe how Evident is easy for researchers to use and provide an example of efficient analyses using a dataset of thousands of samples and dozens of metadata categories.
- Published
- 2023
- Full Text
- View/download PDF
38. The gut microbiome is a significant risk factor for future chronic lung disease.
- Author
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Liu Y, Teo SM, Méric G, Tang HHF, Zhu Q, Sanders JG, Vázquez-Baeza Y, Verspoor K, Vartiainen VA, Jousilahti P, Lahti L, Niiranen T, Havulinna AS, Knight R, Salomaa V, and Inouye M
- Subjects
- Adult, Humans, Prospective Studies, Risk Factors, Gastrointestinal Microbiome, Pulmonary Disease, Chronic Obstructive, Asthma
- Abstract
Background: The gut-lung axis is generally recognized, but there are few large studies of the gut microbiome and incident respiratory disease in adults., Objective: We sought to investigate the association and predictive capacity of the gut microbiome for incident asthma and chronic obstructive pulmonary disease (COPD)., Methods: Shallow metagenomic sequencing was performed for stool samples from a prospective, population-based cohort (FINRISK02; N = 7115 adults) with linked national administrative health register-derived classifications for incident asthma and COPD up to 15 years after baseline. Generalized linear models and Cox regressions were used to assess associations of microbial taxa and diversity with disease occurrence. Predictive models were constructed using machine learning with extreme gradient boosting. Models considered taxa abundances individually and in combination with other risk factors, including sex, age, body mass index, and smoking status., Results: A total of 695 and 392 statistically significant associations were found between baseline taxonomic groups and incident asthma and COPD, respectively. Gradient boosting decision trees of baseline gut microbiome abundance predicted incident asthma and COPD in the validation data sets with mean area under the curves of 0.608 and 0.780, respectively. Cox analysis showed that the baseline gut microbiome achieved higher predictive performance than individual conventional risk factors, with C-indices of 0.623 for asthma and 0.817 for COPD. The integration of the gut microbiome and conventional risk factors further improved prediction capacities., Conclusions: The gut microbiome is a significant risk factor for incident asthma and incident COPD and is largely independent of conventional risk factors., (Copyright © 2023 The Authors. Published by Elsevier Inc. All rights reserved.)
- Published
- 2023
- Full Text
- View/download PDF
39. Comprehensive evaluation of shotgun metagenomics, amplicon sequencing, and harmonization of these platforms for epidemiological studies.
- Author
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Usyk M, Peters BA, Karthikeyan S, McDonald D, Sollecito CC, Vazquez-Baeza Y, Shaffer JP, Gellman MD, Talavera GA, Daviglus ML, Thyagarajan B, Knight R, Qi Q, Kaplan R, and Burk RD
- Subjects
- Humans, Bacteria, Metagenome, Sequence Analysis, DNA methods, High-Throughput Nucleotide Sequencing methods, Microbiota genetics
- Abstract
In a large cohort of 1,772 participants from the Hispanic Community Health Study/Study of Latinos with overlapping 16SV4 rRNA gene (bacterial amplicon), ITS1 (fungal amplicon), and shotgun sequencing data, we demonstrate that 16SV4 amplicon sequencing and shotgun metagenomics offer the same level of taxonomic accuracy for bacteria at the genus level even at shallow sequencing depths. In contrast, for fungal taxa, we did not observe meaningful agreements between shotgun and ITS1 amplicon results. Finally, we show that amplicon and shotgun data can be harmonized and pooled to yield larger microbiome datasets with excellent agreement (<1% effect size variance across three independent outcomes) using pooled amplicon/shotgun data compared to pure shotgun metagenomic analysis. Thus, there are multiple approaches to study the microbiome in epidemiological studies, and we provide a demonstration of a powerful pooling approach that will allow researchers to leverage the massive amount of amplicon sequencing data generated over the last two decades., Competing Interests: The authors declare no competing interests.
- Published
- 2023
- Full Text
- View/download PDF
40. Standardized multi-omics of Earth's microbiomes reveals microbial and metabolite diversity.
- Author
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Shaffer JP, Nothias LF, Thompson LR, Sanders JG, Salido RA, Couvillion SP, Brejnrod AD, Lejzerowicz F, Haiminen N, Huang S, Lutz HL, Zhu Q, Martino C, Morton JT, Karthikeyan S, Nothias-Esposito M, Dührkop K, Böcker S, Kim HW, Aksenov AA, Bittremieux W, Minich JJ, Marotz C, Bryant MM, Sanders K, Schwartz T, Humphrey G, Vásquez-Baeza Y, Tripathi A, Parida L, Carrieri AP, Beck KL, Das P, González A, McDonald D, Ladau J, Karst SM, Albertsen M, Ackermann G, DeReus J, Thomas T, Petras D, Shade A, Stegen J, Song SJ, Metz TO, Swafford AD, Dorrestein PC, Jansson JK, Gilbert JA, and Knight R
- Subjects
- Animals, Metagenome, Metagenomics, Earth, Planet, Soil, Microbiota genetics
- Abstract
Despite advances in sequencing, lack of standardization makes comparisons across studies challenging and hampers insights into the structure and function of microbial communities across multiple habitats on a planetary scale. Here we present a multi-omics analysis of a diverse set of 880 microbial community samples collected for the Earth Microbiome Project. We include amplicon (16S, 18S, ITS) and shotgun metagenomic sequence data, and untargeted metabolomics data (liquid chromatography-tandem mass spectrometry and gas chromatography mass spectrometry). We used standardized protocols and analytical methods to characterize microbial communities, focusing on relationships and co-occurrences of microbially related metabolites and microbial taxa across environments, thus allowing us to explore diversity at extraordinary scale. In addition to a reference database for metagenomic and metabolomic data, we provide a framework for incorporating additional studies, enabling the expansion of existing knowledge in the form of an evolving community resource. We demonstrate the utility of this database by testing the hypothesis that every microbe and metabolite is everywhere but the environment selects. Our results show that metabolite diversity exhibits turnover and nestedness related to both microbial communities and the environment, whereas the relative abundances of microbially related metabolites vary and co-occur with specific microbial consortia in a habitat-specific manner. We additionally show the power of certain chemistry, in particular terpenoids, in distinguishing Earth's environments (for example, terrestrial plant surfaces and soils, freshwater and marine animal stool), as well as that of certain microbes including Conexibacter woesei (terrestrial soils), Haloquadratum walsbyi (marine deposits) and Pantoea dispersa (terrestrial plant detritus). This Resource provides insight into the taxa and metabolites within microbial communities from diverse habitats across Earth, informing both microbial and chemical ecology, and provides a foundation and methods for multi-omics microbiome studies of hosts and the environment., (© 2022. The Author(s).)
- Published
- 2022
- Full Text
- View/download PDF
41. Utilizing stability criteria in choosing feature selection methods yields reproducible results in microbiome data.
- Author
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Jiang L, Haiminen N, Carrieri AP, Huang S, Vázquez-Baeza Y, Parida L, Kim HC, Swafford AD, Knight R, and Natarajan L
- Subjects
- Algorithms, Reproducibility of Results, Microbiota
- Abstract
Feature selection is indispensable in microbiome data analysis, but it can be particularly challenging as microbiome data sets are high dimensional, underdetermined, sparse and compositional. Great efforts have recently been made on developing new methods for feature selection that handle the above data characteristics, but almost all methods were evaluated based on performance of model predictions. However, little attention has been paid to address a fundamental question: how appropriate are those evaluation criteria? Most feature selection methods often control the model fit, but the ability to identify meaningful subsets of features cannot be evaluated simply based on the prediction accuracy. If tiny changes to the data would lead to large changes in the chosen feature subset, then many selected features are likely to be a data artifact rather than real biological signal. This crucial need of identifying relevant and reproducible features motivated the reproducibility evaluation criterion such as Stability, which quantifies how robust a method is to perturbations in the data. In our paper, we compare the performance of popular model prediction metrics (MSE or AUC) with proposed reproducibility criterion Stability in evaluating four widely used feature selection methods in both simulations and experimental microbiome applications with continuous or binary outcomes. We conclude that Stability is a preferred feature selection criterion over model prediction metrics because it better quantifies the reproducibility of the feature selection method., (© 2021 The Authors. Biometrics published by Wiley Periodicals LLC on behalf of International Biometric Society.)
- Published
- 2022
- Full Text
- View/download PDF
42. Compositionally Aware Phylogenetic Beta-Diversity Measures Better Resolve Microbiomes Associated with Phenotype.
- Author
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Martino C, McDonald D, Cantrell K, Dilmore AH, Vázquez-Baeza Y, Shenhav L, Shaffer JP, Rahman G, Armstrong G, Allaband C, Song SJ, and Knight R
- Subjects
- Humans, Phylogeny, Sequence Analysis, DNA, Research Design, Phenotype, Microbiota genetics
- Abstract
Microbiome data have several specific characteristics (sparsity and compositionality) that introduce challenges in data analysis. The integration of prior information regarding the data structure, such as phylogenetic structure and repeated-measure study designs, into analysis, is an effective approach for revealing robust patterns in microbiome data. Past methods have addressed some but not all of these challenges and features: for example, robust principal-component analysis (RPCA) addresses sparsity and compositionality; compositional tensor factorization (CTF) addresses sparsity, compositionality, and repeated measure study designs; and UniFrac incorporates phylogenetic information. Here we introduce a strategy of incorporating phylogenetic information into RPCA and CTF. The resulting methods, phylo-RPCA, and phylo-CTF, provide substantial improvements over state-of-the-art methods in terms of discriminatory power of underlying clustering ranging from the mode of delivery to adult human lifestyle. We demonstrate quantitatively that the addition of phylogenetic information improves effect size and classification accuracy in both data-driven simulated data and real microbiome data. IMPORTANCE Microbiome data analysis can be difficult because of particular data features, some unavoidable and some due to technical limitations of DNA sequencing instruments. The first step in many analyses that ultimately reveals patterns of similarities and differences among sets of samples (e.g., separating samples from sick and healthy people or samples from seawater versus soil) is calculating the difference between each pair of samples. We introduce two new methods to calculate these differences that combine features of past methods, specifically being able to take into account the principles that most types of microbes are not in most samples (sparsity), that abundances are relative rather than absolute (compositionality), and that all microbes have a shared evolutionary history (phylogeny). We show using simulated and real data that our new methods provide improved classification accuracy of ordinal sample clusters and increased effect size between sample groups on beta-diversity distances.
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- 2022
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43. Early prediction of incident liver disease using conventional risk factors and gut-microbiome-augmented gradient boosting.
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Liu Y, Méric G, Havulinna AS, Teo SM, Åberg F, Ruuskanen M, Sanders J, Zhu Q, Tripathi A, Verspoor K, Cheng S, Jain M, Jousilahti P, Vázquez-Baeza Y, Loomba R, Lahti L, Niiranen T, Salomaa V, Knight R, and Inouye M
- Subjects
- Humans, Metagenomics, Prospective Studies, Risk Factors, Gastrointestinal Microbiome genetics, Liver Diseases, Microbiota
- Abstract
The gut microbiome has shown promise as a predictive biomarker for various diseases. However, the potential of gut microbiota for prospective risk prediction of liver disease has not been assessed. Here, we utilized shallow shotgun metagenomic sequencing of a large population-based cohort (N > 7,000) with ∼15 years of follow-up in combination with machine learning to investigate the predictive capacity of gut microbial predictors individually and in conjunction with conventional risk factors for incident liver disease. Separately, conventional and microbial factors showed comparable predictive capacity. However, microbiome augmentation of conventional risk factors using machine learning significantly improved the performance. Similarly, disease-free survival analysis showed significantly improved stratification using microbiome-augmented models. Investigation of predictive microbial signatures revealed previously unknown taxa for liver disease, as well as those previously associated with hepatic function and disease. This study supports the potential clinical validity of gut metagenomic sequencing to complement conventional risk factors for prediction of liver diseases., Competing Interests: Declaration of interests V.S. has received honoraria for consulting from Novo Nordisk and Sanofi and travel support from Novo Nordisk. He also has ongoing research collaboration with Bayer Ltd (all unrelated to the present study). R.L. serves as a consultant or advisory board member for Anylam/Regeneron, Arrowhead Pharmaceuticals, Astra Zeneca, Bird Rock Bio, Boehringer Ingelheim, Bristol-Myer Squibb, Celgene, Cirius, CohBar, Conatus, Eli Lilly, Galmed, Gemphire, Gilead, Glympse Bio, GNI, GRI Bio, Inipharm, Intercept, Ionis, Janssen, Inc., Merck, Metacrine, Inc., NGM Biopharmaceuticals, Novartis, Novo Nordisk, Pfizer, Prometheus, Promethera, Sanofi, Siemens, and Viking Therapeutics. In addition, his institution has received grant support from Allergan, Boehringer Ingelheim, Bristol-Myers Squibb, Cirius, Eli Lilly and Company, Galectin Therapeutics, Galmed Pharmaceuticals, GE, Genfit, Gilead, Intercept, Grail, Janssen, Madrigal Pharmaceuticals, Merck, NGM Biopharmaceuticals, NuSirt, Pfizer, pH Pharma, Prometheus, and Siemens. He is also co-founder of Liponexus, Inc., (Copyright © 2022 The Authors. Published by Elsevier Inc. All rights reserved.)
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- 2022
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44. Phylogeny-Aware Analysis of Metagenome Community Ecology Based on Matched Reference Genomes while Bypassing Taxonomy.
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Zhu Q, Huang S, Gonzalez A, McGrath I, McDonald D, Haiminen N, Armstrong G, Vázquez-Baeza Y, Yu J, Kuczynski J, Sepich-Poore GD, Swafford AD, Das P, Shaffer JP, Lejzerowicz F, Belda-Ferre P, Havulinna AS, Méric G, Niiranen T, Lahti L, Salomaa V, Kim HC, Jain M, Inouye M, Gilbert JA, and Knight R
- Subjects
- Humans, Phylogeny, RNA, Ribosomal, 16S genetics, Ecology, Metagenome, Microbiota
- Abstract
We introduce the operational genomic unit (OGU) method, a metagenome analysis strategy that directly exploits sequence alignment hits to individual reference genomes as the minimum unit for assessing the diversity of microbial communities and their relevance to environmental factors. This approach is independent of taxonomic classification, granting the possibility of maximal resolution of community composition, and organizes features into an accurate hierarchy using a phylogenomic tree. The outputs are suitable for contemporary analytical protocols for community ecology, differential abundance, and supervised learning while supporting phylogenetic methods, such as UniFrac and phylofactorization, that are seldom applied to shotgun metagenomics despite being prevalent in 16S rRNA gene amplicon studies. As demonstrated in two real-world case studies, the OGU method produces biologically meaningful patterns from microbiome data sets. Such patterns further remain detectable at very low metagenomic sequencing depths. Compared with taxonomic unit-based analyses implemented in currently adopted metagenomics tools, and the analysis of 16S rRNA gene amplicon sequence variants, this method shows superiority in informing biologically relevant insights, including stronger correlation with body environment and host sex on the Human Microbiome Project data set and more accurate prediction of human age by the gut microbiomes of Finnish individuals included in the FINRISK 2002 cohort. We provide Woltka, a bioinformatics tool to implement this method, with full integration with the QIIME 2 package and the Qiita web platform, to facilitate adoption of the OGU method in future metagenomics studies. IMPORTANCE Shotgun metagenomics is a powerful, yet computationally challenging, technique compared to 16S rRNA gene amplicon sequencing for decoding the composition and structure of microbial communities. Current analyses of metagenomic data are primarily based on taxonomic classification, which is limited in feature resolution. To solve these challenges, we introduce operational genomic units (OGUs), which are the individual reference genomes derived from sequence alignment results, without further assigning them taxonomy. The OGU method advances current read-based metagenomics in two dimensions: (i) providing maximal resolution of community composition and (ii) permitting use of phylogeny-aware tools. Our analysis of real-world data sets shows that it is advantageous over currently adopted metagenomic analysis methods and the finest-grained 16S rRNA analysis methods in predicting biological traits. We thus propose the adoption of OGUs as an effective practice in metagenomic studies.
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- 2022
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45. Correction to: Compositional and genetic alterations in Graves' disease gut microbiome reveal specific diagnostic biomarkers.
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Zhu Q, Hou Q, Huang S, Ou Q, Huo D, Vázquez-Baeza Y, Cen C, Cantu V, Estaki M, Chang H, Belda-Ferre P, Kim HC, Chen K, Knight R, and Zhang J
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- 2022
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46. Multi-omics analyses of the ulcerative colitis gut microbiome link Bacteroides vulgatus proteases with disease severity.
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Mills RH, Dulai PS, Vázquez-Baeza Y, Sauceda C, Daniel N, Gerner RR, Batachari LE, Malfavon M, Zhu Q, Weldon K, Humphrey G, Carrillo-Terrazas M, Goldasich LD, Bryant M, Raffatellu M, Quinn RA, Gewirtz AT, Chassaing B, Chu H, Sandborn WJ, Dorrestein PC, Knight R, and Gonzalez DJ
- Subjects
- Adult, Animals, Bacterial Proteins classification, Bacterial Proteins genetics, Bacteroides enzymology, Cohort Studies, Feces microbiology, Female, Humans, Longitudinal Studies, Male, Metagenome, Mice, Middle Aged, Peptide Hydrolases classification, Severity of Illness Index, Bacteroides pathogenicity, Colitis, Ulcerative microbiology, Colitis, Ulcerative physiopathology, Gastrointestinal Microbiome genetics, Metagenomics methods, Peptide Hydrolases genetics, Proteomics methods
- Abstract
Ulcerative colitis (UC) is driven by disruptions in host-microbiota homoeostasis, but current treatments exclusively target host inflammatory pathways. To understand how host-microbiota interactions become disrupted in UC, we collected and analysed six faecal- or serum-based omic datasets (metaproteomic, metabolomic, metagenomic, metapeptidomic and amplicon sequencing profiles of faecal samples and proteomic profiles of serum samples) from 40 UC patients at a single inflammatory bowel disease centre, as well as various clinical, endoscopic and histologic measures of disease activity. A validation cohort of 210 samples (73 UC, 117 Crohn's disease, 20 healthy controls) was collected and analysed separately and independently. Data integration across both cohorts showed that a subset of the clinically active UC patients had an overabundance of proteases that originated from the bacterium Bacteroides vulgatus. To test whether B. vulgatus proteases contribute to UC disease activity, we first profiled B. vulgatus proteases found in patients and bacterial cultures. Use of a broad-spectrum protease inhibitor improved B. vulgatus-induced barrier dysfunction in vitro, and prevented colitis in B. vulgatus monocolonized, IL10-deficient mice. Furthermore, transplantation of faeces from UC patients with a high abundance of B. vulgatus proteases into germfree mice induced colitis dependent on protease activity. These results, stemming from a multi-omics approach, improve understanding of functional microbiota alterations that drive UC and provide a resource for identifying other pathways that could be inhibited as a strategy to treat this disease., (© 2022. The Author(s), under exclusive licence to Springer Nature Limited.)
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- 2022
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47. Combined effects of host genetics and diet on human gut microbiota and incident disease in a single population cohort.
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Qin Y, Havulinna AS, Liu Y, Jousilahti P, Ritchie SC, Tokolyi A, Sanders JG, Valsta L, Brożyńska M, Zhu Q, Tripathi A, Vázquez-Baeza Y, Loomba R, Cheng S, Jain M, Niiranen T, Lahti L, Knight R, Salomaa V, Inouye M, and Méric G
- Subjects
- ABO Blood-Group System genetics, Bifidobacterium physiology, Clostridiales physiology, Cohort Studies, Colorectal Neoplasms genetics, Colorectal Neoplasms microbiology, Depressive Disorder, Major genetics, Depressive Disorder, Major microbiology, Dietary Fiber, Enterococcus faecalis physiology, Genome-Wide Association Study, Humans, Lactase genetics, Mediator Complex genetics, Mendelian Randomization Analysis, Metagenome, Morganella physiology, Diet, Gastrointestinal Microbiome genetics, Gastrointestinal Tract microbiology, Genetic Variation, Host Microbial Interactions, Polymorphism, Single Nucleotide
- Abstract
Human genetic variation affects the gut microbiota through a complex combination of environmental and host factors. Here we characterize genetic variations associated with microbial abundances in a single large-scale population-based cohort of 5,959 genotyped individuals with matched gut microbial metagenomes, and dietary and health records (prevalent and follow-up). We identified 567 independent SNP-taxon associations. Variants at the LCT locus associated with Bifidobacterium and other taxa, but they differed according to dairy intake. Furthermore, levels of Faecalicatena lactaris associated with ABO, and suggested preferential utilization of secreted blood antigens as energy source in the gut. Enterococcus faecalis levels associated with variants in the MED13L locus, which has been linked to colorectal cancer. Mendelian randomization analysis indicated a potential causal effect of Morganella on major depressive disorder, consistent with observational incident disease analysis. Overall, we identify and characterize the intricate nature of host-microbiota interactions and their association with disease., (© 2022. The Author(s), under exclusive licence to Springer Nature America, Inc.)
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- 2022
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48. Microbial co-occurrence complicates associations of gut microbiome with US immigration, dietary intake and obesity.
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Wang Z, Usyk M, Vázquez-Baeza Y, Chen GC, Isasi CR, Williams-Nguyen JS, Hua S, McDonald D, Thyagarajan B, Daviglus ML, Cai J, North KE, Wang T, Knight R, Burk RD, Kaplan RC, and Qi Q
- Subjects
- Acculturation, Adult, Aged, Aged, 80 and over, Bacteria classification, Bacteria genetics, Cohort Studies, Diet, Emigrants and Immigrants, Feces microbiology, Female, Hispanic or Latino, Humans, Male, Metagenomics, Middle Aged, RNA, Ribosomal, 16S, United States, Eating, Emigration and Immigration, Gastrointestinal Microbiome genetics, Obesity microbiology
- Abstract
Background: Obesity and related comorbidities are major health concerns among many US immigrant populations. Emerging evidence suggests a potential involvement of the gut microbiome. Here, we evaluated gut microbiome features and their associations with immigration, dietary intake, and obesity in 2640 individuals from a population-based study of US Hispanics/Latinos., Results: The fecal shotgun metagenomics data indicate that greater US exposure is associated with reduced ɑ-diversity, reduced functions of fiber degradation, and alterations in individual taxa, potentially related to a westernized diet. However, a majority of gut bacterial genera show paradoxical associations, being reduced with US exposure and increased with fiber intake, but increased with obesity. The observed paradoxical associations are not explained by host characteristics or variation in bacterial species but might be related to potential microbial co-occurrence, as seen by positive correlations among Roseburia, Prevotella, Dorea, and Coprococcus. In the conditional analysis with mutual adjustment, including all genera associated with both obesity and US exposure in the same model, the positive associations of Roseburia and Prevotella with obesity did not persist, suggesting that their positive associations with obesity might be due to their co-occurrence and correlations with obesity-related taxa, such as Dorea and Coprococcus., Conclusions: Among US Hispanics/Latinos, US exposure is associated with unfavorable gut microbiome profiles for obesity risk, potentially related to westernized diet during acculturation. Microbial co-occurrence could be an important factor to consider in future studies relating individual gut microbiome taxa to environmental factors and host health and disease., (© 2021. The Author(s).)
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- 2021
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49. Efficient computation of Faith's phylogenetic diversity with applications in characterizing microbiomes.
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Armstrong G, Cantrell K, Huang S, McDonald D, Haiminen N, Carrieri AP, Zhu Q, Gonzalez A, McGrath I, Beck KL, Hakim D, Havulinna AS, Méric G, Niiranen T, Lahti L, Salomaa V, Jain M, Inouye M, Swafford AD, Kim HC, Parida L, Vázquez-Baeza Y, and Knight R
- Subjects
- Phylogeny, Microbiota genetics
- Abstract
The number of publicly available microbiome samples is continually growing. As data set size increases, bottlenecks arise in standard analytical pipelines. Faith's phylogenetic diversity (Faith's PD) is a highly utilized phylogenetic alpha diversity metric that has thus far failed to effectively scale to trees with millions of vertices. Stacked Faith's phylogenetic diversity (SFPhD) enables calculation of this widely adopted diversity metric at a much larger scale by implementing a computationally efficient algorithm. The algorithm reduces the amount of computational resources required, resulting in more accessible software with a reduced carbon footprint, as compared to previous approaches. The new algorithm produces identical results to the previous method. We further demonstrate that the phylogenetic aspect of Faith's PD provides increased power in detecting diversity differences between younger and older populations in the FINRISK study's metagenomic data., (© 2021 Armstrong et al.; Published by Cold Spring Harbor Laboratory Press.)
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- 2021
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50. Compositional and genetic alterations in Graves' disease gut microbiome reveal specific diagnostic biomarkers.
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Zhu Q, Hou Q, Huang S, Ou Q, Huo D, Vázquez-Baeza Y, Cen C, Cantu V, Estaki M, Chang H, Belda-Ferre P, Kim HC, Chen K, Knight R, and Zhang J
- Subjects
- Biomarkers, Feces, Humans, Metagenome, Gastrointestinal Microbiome genetics, Graves Disease
- Abstract
Graves' Disease is the most common organ-specific autoimmune disease and has been linked in small pilot studies to taxonomic markers within the gut microbiome. Important limitations of this work include small sample sizes and low-resolution taxonomic markers. Accordingly, we studied 162 gut microbiomes of mild and severe Graves' disease (GD) patients and healthy controls. Taxonomic and functional analyses based on metagenome-assembled genomes (MAGs) and MAG-annotated genes, together with predicted metabolic functions and metabolite profiles, revealed a well-defined network of MAGs, genes and clinical indexes separating healthy from GD subjects. A supervised classification model identified a combination of biomarkers including microbial species, MAGs, genes and SNPs, with predictive power superior to models from any single biomarker type (AUC = 0.98). Global, cross-disease multi-cohort analysis of gut microbiomes revealed high specificity of these GD biomarkers, notably discriminating against Parkinson's Disease, and suggesting that non-invasive stool-based diagnostics will be useful for these diseases., (© 2021. The Author(s).)
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- 2021
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