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"Biomedical Engineering/Biotechnology"
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Voices of biotech
2016
Nature Biotechnology
asks a selection of researchers about the most exciting frontier in their field and the most needed technologies for advancing knowledge and applications.
Journal Article
Fast and accurate protein structure search with Foldseek
by
Kim, Stephanie S.
,
Tumescheit, Charlotte
,
Steinegger, Martin
in
631/114
,
631/114/794
,
631/535
2024
As structure prediction methods are generating millions of publicly available protein structures, searching these databases is becoming a bottleneck. Foldseek aligns the structure of a query protein against a database by describing tertiary amino acid interactions within proteins as sequences over a structural alphabet. Foldseek decreases computation times by four to five orders of magnitude with 86%, 88% and 133% of the sensitivities of Dali, TM-align and CE, respectively.
Foldseek speeds up protein structural search by four to five orders of magnitude.
Journal Article
Extending and improving metagenomic taxonomic profiling with uncharacterized species using MetaPhlAn 4
by
Nickols, William A.
,
Huang, Kun D.
,
Wolf, Jonathan
in
631/114/1314
,
631/326/2565/2142
,
Agriculture
2023
Metagenomic assembly enables new organism discovery from microbial communities, but it can only capture few abundant organisms from most metagenomes. Here we present MetaPhlAn 4, which integrates information from metagenome assemblies and microbial isolate genomes for more comprehensive metagenomic taxonomic profiling. From a curated collection of 1.01 M prokaryotic reference and metagenome-assembled genomes, we define unique marker genes for 26,970 species-level genome bins, 4,992 of them taxonomically unidentified at the species level. MetaPhlAn 4 explains ~20% more reads in most international human gut microbiomes and >40% in less-characterized environments such as the rumen microbiome and proves more accurate than available alternatives on synthetic evaluations while also reliably quantifying organisms with no cultured isolates. Application of the method to >24,500 metagenomes highlights previously undetected species to be strong biomarkers for host conditions and lifestyles in human and mouse microbiomes and shows that even previously uncharacterized species can be genetically profiled at the resolution of single microbial strains.
Integration of metagenomic assemblies and microbial isolate genomes improves profiling of uncharacterized species.
Journal Article
CheckM2: a rapid, scalable and accurate tool for assessing microbial genome quality using machine learning
by
Parks, Donovan H.
,
Tyson, Gene W.
,
Woodcroft, Ben J.
in
631/114/1305
,
631/114/2785
,
631/114/794
2023
Advances in sequencing technologies and bioinformatics tools have dramatically increased the recovery rate of microbial genomes from metagenomic data. Assessing the quality of metagenome-assembled genomes (MAGs) is a critical step before downstream analysis. Here, we present CheckM2, an improved method of predicting genome quality of MAGs using machine learning. Using synthetic and experimental data, we demonstrate that CheckM2 outperforms existing tools in both accuracy and computational speed. In addition, CheckM2’s database can be rapidly updated with new high-quality reference genomes, including taxa represented only by a single genome. We also show that CheckM2 accurately predicts genome quality for MAGs from novel lineages, even for those with reduced genome size (for example, Patescibacteria and the DPANN superphylum). CheckM2 provides accurate genome quality predictions across bacterial and archaeal lineages, giving increased confidence when inferring biological conclusions from MAGs.
This work presents CheckM2, which is a machine learning-based tool to predict genome quality of isolate, single-cell and metagenome-assembled genomes.
Journal Article
Biology; A New Main Element in Chemical Engineering Transition from “Chemical” to “Chemical and Biological” Engineering Part 2: Graduate education and industrial achievements
by
Seyed Nezameddin Ashrafizadeh
,
Omid Vahidi
,
Ardalan Ganjizade
in
chemical engineering engineering education chemical and biological engineering biomedical engineering biotechnology
2017
Following the previous part that emphasized on the necessity of accommodating biology in the curriculum of chemical engineering, here we are going to discuss about education conditions, curriculums, pioneer universities, science production procedure and industrial position of Chemical and Biological Engineering. Meanwhile, the increasing tendency of chemical engineering departments in the United States to modify their names and getting involved with biology, has been highlighted. Furthermore a report of progressive procedure of relevant articles and conferences has been provided (indicating the applicable aspects of “biology and chemical engineering”). In addition, it is mentioned that huge amounts of investments have been made on the projects related to this field. This paper also reveals that despite the aforementioned facts, Iranian chemical engineering curriculum, except a small portion of chemical engineering community who wish to expand their own personal knowledge, is almost alien to biology. A re-consideration in the conventional curriculum of Iranian chemical engineering, in order to accommodate “biology” and its branches, has been recommended to overcome the named challenges.
Journal Article
Greengenes2 unifies microbial data in a single reference tree
2024
Studies using 16S rRNA and shotgun metagenomics typically yield different results, usually attributed to PCR amplification biases. We introduce Greengenes2, a reference tree that unifies genomic and 16S rRNA databases in a consistent, integrated resource. By inserting sequences into a whole-genome phylogeny, we show that 16S rRNA and shotgun metagenomic data generated from the same samples agree in principal coordinates space, taxonomy and phenotype effect size when analyzed with the same tree.
A comprehensive microbial resource reconciles genomic and 16S rRNA data in a single tree.
Journal Article
Dictionary learning for integrative, multimodal and scalable single-cell analysis
by
Kowalski, Madeline H.
,
Hartman, Austin
,
Satija, Rahul
in
631/208/177
,
631/208/212
,
Agriculture
2024
Mapping single-cell sequencing profiles to comprehensive reference datasets provides a powerful alternative to unsupervised analysis. However, most reference datasets are constructed from single-cell RNA-sequencing data and cannot be used to annotate datasets that do not measure gene expression. Here we introduce ‘bridge integration’, a method to integrate single-cell datasets across modalities using a multiomic dataset as a molecular bridge. Each cell in the multiomic dataset constitutes an element in a ‘dictionary’, which is used to reconstruct unimodal datasets and transform them into a shared space. Our procedure accurately integrates transcriptomic data with independent single-cell measurements of chromatin accessibility, histone modifications, DNA methylation and protein levels. Moreover, we demonstrate how dictionary learning can be combined with sketching techniques to improve computational scalability and harmonize 8.6 million human immune cell profiles from sequencing and mass cytometry experiments. Our approach, implemented in version 5 of our Seurat toolkit (
http://www.satijalab.org/seurat
), broadens the utility of single-cell reference datasets and facilitates comparisons across diverse molecular modalities.
Reference mapping is extended beyond scRNA-seq to single-cell epigenetic and proteomic data.
Journal Article
Robust decomposition of cell type mixtures in spatial transcriptomics
2022
A limitation of spatial transcriptomics technologies is that individual measurements may contain contributions from multiple cells, hindering the discovery of cell-type-specific spatial patterns of localization and expression. Here, we develop robust cell type decomposition (RCTD), a computational method that leverages cell type profiles learned from single-cell RNA-seq to decompose cell type mixtures while correcting for differences across sequencing technologies. We demonstrate the ability of RCTD to detect mixtures and identify cell types on simulated datasets. Furthermore, RCTD accurately reproduces known cell type and subtype localization patterns in Slide-seq and Visium datasets of the mouse brain. Finally, we show how RCTD’s recovery of cell type localization enables the discovery of genes within a cell type whose expression depends on spatial environment. Spatial mapping of cell types with RCTD enables the spatial components of cellular identity to be defined, uncovering new principles of cellular organization in biological tissue. RCTD is publicly available as an open-source R package at
https://github.com/dmcable/RCTD
.
Cell type mapping in spatial transcriptomics is enabled by accounting for compositional mixtures and differences in sequencing technologies.
Journal Article