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Today, 11:29 AM
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Therapeutically utilized phages should optimally be produced in defined bacterial strains that are free of prophages and virulence factors. However, phage–host interactions in these production strains may be very different from clinical strains. Here, we characterized a lytic Staphylococcus aureus–specific phage vB_SauP_EBHT (EBHT), which had a dramatic change in its host specificity when produced in alternative host 19A2 compared with the original isolation host DSM 104437, even though there were no changes in the phage genome, proteome, structure, or adsorption efficiency. The reason for the altered host range was revealed to be based on different methylation patterns of the EBHT genome by host restriction–modification (R-M) systems in the two hosts. Even though the alternative host 19A2 produced a higher burst size, the host range of the produced phages was narrower. Together, these results illustrate that the most efficient production host may not necessarily be the most optimal one and that bacterial R-M systems should be considered when selecting the optimal phage-production host.
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Today, 11:07 AM
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In recent years, DNA origami technology has advanced rapidly as a groundbreaking method for nano-manufacturing. This technology takes advantage of the unique base-pairing characteristics of DNA, and has significant advantages in constructing spatially ordered and programmable nanostructures. This capability aligns with synthetic biology's core principle of mimicking, extending, and reconstructing natural biological processes by modularly assembling artificial systems. This article provides a comprehensive overview of DNA origami's innovative applications across various domains, including cell membrane surfaces, intercellular communication, intelligent biosensing, and precise gene editing, progressing from the extracellular to the intracellular environment. Finally, this review highlights the synergistic interaction between this technology and cell-free synthetic biology, achieved through the integration of in vitro assembly and cellular regulation, thereby opening new pathways for the rational design of artificial life systems.
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November 27, 11:54 PM
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Understanding how opposing regulatory factors shape gene expression is essential for interpreting complex biological systems. A motivating observation, drawn from cancer epigenetics, is that removing an activating factor can sometimes lead to higher, not lower, expression of a gene that is also subject to repression. This counterintuitive behavior suggests that competition between activators and repressors for limited genomic binding sites may produce unexpected transcriptional outcomes. Prior theoretical work proposed this mechanism, but it has been difficult to test directly in natural systems, where layers of chromatin regulation obscure causal relationships. This paper introduces a fully synthetic, tunable genetic platform in a prokaryotic model system that isolates this competition mechanism in a clean and interpretable setting. The engineered construct contains a target gene with binding sites for both an activator and a repressor, together with a separate decoy region that carries overlapping binding sites for the same regulators. Activator and repressor functions are implemented using CRISPRa and CRISPRi, which permit independent control of regulator expression levels and binding affinities. Using this minimal system, the paper shows that increasing activator expression can reduce expression of the target gene when both regulators are present, consistent with the prediction that additional activator molecules displace the repressor from decoy sites and allow it to more effectively repress the target. By demonstrating how competition alone can invert expected regulatory responses, this synthetic framework provides a validated model for understanding similar paradoxical behaviors in natural regulatory networks and establishes a foundation for future studies in more complex mammalian contexts.
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November 27, 11:36 PM
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Protein-protein interactions are central for understanding biological processes. The ability to predict interaction partners is extremely valuable for avoiding costly, time-consuming experiments. It has been shown that AlphaFold has an unsurpassed ability to accurately evaluate interacting protein pairs. However, a protein can also form homomeric interactions, i.e. interact with itself. We found that AlphaFold yielded a significantly higher false-positive rate for identifying homodimers than for heterodimers. True Positive Rate (TPR) at 1% False Positive Rate (FPR) drops from 63% for heterodimers to 18% for homodimers. When we investigated the high-scoring false positives, i.e., non-homodimers with high AlphaFold scores when predicted as such, we found that their homologs were enriched for homomultimeric proteins. Using a simple logistic regression model that combines AlphaFold scores with structural and homology information, we increased the TPR (at 1% FPR) to 42 +/- 8% (5-fold cross-validation) from 19%. If we excluded the homology information, we achieved a TPR of 28 +/- 7%, which is still better than using AlphaFold metrics. Availability and implementation: All data are available from Zenodo DOI:\10.5281/zenodo.17738668 and all code from https://github.com/SarahND97/alphafold-homodimers
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November 27, 11:24 PM
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Intraspecies interactions shapes microbial community structure and evolution, yet the mechanisms determining competitive outcomes among closely related strains remain unclear. The soil bacterium Bacillus subtilis is a model for microbial social interactions, where quorum-sensing systems regulate cooperation and antagonism. Here, we take a multifaceted approach to dissect the role of quorum-sensing regulation in competitive fitness. Isolate NCIB 3610 carries a signal unresponsive RapP-PhrP module that alters quorum-sensing control and promotes faster growth. Modelling and mutant analysis demonstrate that the small differences in growth rate conferred by RapP-PhrP3610 are sufficient to drive competitive exclusion. The importance of quorum sensing control is further exemplified by experimental evolution of distinct wild isolates, which revealed recurrent mutations in the sensor kinase comP, which phenocopy complete comP or comA deletions and confer a growth-linked competitive advantage. Key quorum sensing mechanisms are abandoned even in structured microbial communities, where it might be expected that communal traits are favored. Furthermore, a phylogenomic survey of 370 B. subtilis genomes identified disruptive comP mutations in ~16% of isolates. However, growth rate alone does not explain all interaction outcomes as even isogenic strains with equivalent doubling times differ in competitiveness. Transcriptomic profiling and validation experiments implicated a type VII secretion system toxin as an additional effector. These findings reveal that disruption of quorum-sensing pathways, whether naturally or through selection, provides a rapid route to competitive advantage, highlighting a fundamental trade-off between communal signalling and individual fitness in microbial populations.
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November 27, 11:08 PM
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Evolution of prokaryote genomes appears to be defined by the interplay of selection for genome streamlining, deletion bias and selection for functional diversification. The previously observed overall positive correlation between the strength of selection, measured as the ratio of non-synonymous to synonymous nucleotide substitutions (dN/dS), points to diversification as the primary factor of prokaryote genome evolution. Here, we investigated the interplay between genome size and selection pressure by analyzing an expanded collection of closely related prokaryotic genomes, evaluating genome-wide selection by measuring dN/dS by using an accurate, phylogeny-based method and decomposing the resulting values into lineage-specific and gene-specific components. These analyses reveal a pronounced heterogeneity in the relationship between genome size and the strength of selection across the diversity of prokaryotes. Most bacteria display a positive correlation consistent with selection for diversification, whereas all analyzed archaeal lineages show strong negative correlation which is the signature of streamlining. These findings indicate that the selection regimes broadly vary across the diversity of prokaryotes rather than following a single, universal pattern. Genome streamlining, selection for functional diversity and drift in small populations are all important factors of evolution, their relative contributions depending on the population genetics and ecology of a given lineage.
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November 27, 3:10 PM
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Cancer treatment mediated by bacteria, also known as Bacteria-mediated cancer therapy (BMCT), has emerged as a promising strategy that overcomes several limitations of conventional cancer treatments by exploiting the natural tumor-targeting ability of bacteria. Among them, Salmonella typhimurium has gained particular attention due to its intrinsic capacity to colonize hypoxic and nutrient-deprived regions of tumors, secrete cytotoxins, and activate host immune responses. This review, along with summarizing these mechanisms, uniquely integrates the diverse anticancer mechanisms of S. typhimurium, such as apoptosis and autophagy induction, immune modulation, nutrient competition, and tumor colonization, which collectively contribute to tumor regression. We discuss the recent advances in metabolic engineering and synthetic biology to provide a unified perspective on how engineered strains achieve enhanced specificity, biosafety, and controlled intratumoral payload delivery. We also critically evaluate the current limitations and translational challenges of BMCT, emphasizing that bacteria-based therapies only complement and not replace existing cancer treatments.
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November 27, 2:59 PM
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The human gut microbiome contains numerous proteins whose functions remain elusive yet are pivotal to host health. Sequence-based methods often falter when attempting to infer functions within this microbial proteome due to evolutionary divergence. To address this challenge, we develop the Human Gut Microbial Protein Structure Database, which incorporates ∼2.7 million predicted protein structures. Our findings reveal that structural analogy enhances the annotation of phage proteins. We detail the structural diversification of phage endolysins and confirm their potential in eliminating gut pathobionts. Furthermore, our structure-guided approach is effective in the identification of microbial-host isozymes. By employing structural alignments, we identify previously unrecognized bacterial enzymes involved in melatonin biosynthesis. Finally, we present an alignment-free method, dense enzyme retrieval, based on structure-encoded protein language models for ultrafast and sensitive detection of remote homologs. Our research underscores the value of computational structural genomics in elucidating the functional landscape of the human gut microbiome.
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November 27, 2:33 PM
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Plant virus infections pose a substantial threat to crop quality and productivity, contributing to considerable economic losses in global agriculture annually. Traditionally, laboratories have widely adopted serological techniques, such as ELISA, and molecular methods, including quantitative PCR, for virus diagnostics. More recently, sophisticated next-generation sequencing approaches have been introduced to improve the efficiency and reliability of virus detection and identification. However, the development of sensitive, rapid and low-cost methods for the on-site detection, quantification and identification of plant viruses remains an ongoing challenge and is still in its early days. Point-of-care technologies have not fully realized their potential in agriculture due to numerous challenges, such as the elevated cost of development, lack of standardized validation and insufficient field testing. Therefore, future success depends on addressing these technical, economic and regulatory hurdles, as well as considering the specific user needs within the agricultural context. In this mini-review, recent advancements in biosensing for on-site plant virus monitoring, involving nanotechnology-based sensors, CRISPR-Cas systems, electrochemical and modern field-effect transistor-based sensors offering high sensitivity, speed and portability, are discussed. These technologies, when integrated with smartphone applications and/or machine learning modules, could enable real-time, field-deployable diagnostics for early disease management and sustainable agriculture. The aim is to raise awareness among plant virologists about this panel of emerging diagnostic concepts that could help improve current methods, ultimately facilitating the management of plant viral diseases.
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November 27, 2:18 PM
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Engineering microbial computers has been a longstanding endeavor in synthetic biology. Like other unconventional computing disciplines, the goal is to bring computation into real world scenarios. Several potential applications in bioproduction, bioremediation, and biomedicine highlight the promise of this discipline. The first biocomputers were bottom-up predictable circuits that relied on a monoculture-based digital logic and were able to emulate simple logic gates. Drawing from computer theory and extending the analogy with conventional hardware has enabled the engineering of more complex circuits. However this abstraction soon reached its limits and introduced a semantic gap, which, alongside the constraints imposed by the monoculture paradigm, led to significant scalability limitations such as metabolic burden, orthogonality issues and noisy expression. This review outlines the strategies developed to overcome these issues and engineer more complex biodevices : (i) mitigation strategies that focus on the optimization of the circuits, (ii) multicellular computing that distributes the metabolic load across a consortium and (iii) the implementation of more energy-efficient computing frameworks, such as analog and neuromorphic architectures. While these bottom-up strategies have yielded significant progress, they remain insufficient to emulate the computational complexity of the cellular signal-processing system. In this review, we additionally introduce a new perspective on biocomputing with a top-down approach named reservoir computing. This framework leverages the inherent dynamical computational capabilities and functionalities of biosystems to solve more complex and diverse tasks, thus offering a promising new path for engineering the next generation of microbial computers.
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November 27, 2:03 PM
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Many biological processes depend on protein-protein interactions (PPI), which are particularly important across biology, medicine, and biotechnology. It is essential to accurately predict the binding affinity between protein pairs to prioritize candidate interactions in large-scale studies and expedite drug discovery. The application of cross-attention mechanisms between ligand and receptor protein sequences is often neglected in current computational models, limiting their capacity to accurately represent inter-protein dependencies. In this study, we introduce CrossPPI, a novel deep learning framework that integrates structural and sequential features of interacting proteins to improve binding affinity prediction. To model intricate interactions between protein pairs, CrossPPI uses a transformer-based cross-fusion module and a dual-view feature-extraction approach that combines Graph Attention Networks (GATs) and Convolutional Neural Networks (CNNs). On the test dataset of 300 protein-protein pairs, CrossPPI achieved a Pearson correlation coefficient (PCC) of 0.7616, a Spearman correlation coefficient (SCC) of 0.7644, a mean absolute error (MAE) of 1.2869, and a root mean square error (RMSE) of 1.6824, indicating its ability to predict the binding affinity of two proteins. The results highlight CrossPPI's capability to predict inter-protein binding affinities by leveraging an attention-based integration of sequence and structural features.
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November 27, 1:55 PM
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Large language models (LLMs) are increasingly used to extract knowledge from text, yet their coverage and reliability in biology remain unclear. Microbial phenotypes are especially important to assess, as comprehensive data remain sparse except for well-studied organisms and they underpin our understanding of microbial characteristics, functional roles, and applications. Here, we systematically assessed the biological knowledge encoded in publicly available LLMs for structured phenotype annotation of microbial species. We evaluated the performance of over 50 LLMs, including state-of-the-art models such as Claude Sonnet 4 and the GPT-5 family of models. Across phenotypes, LLMs reached accurate assignments for many species, but performance varied widely by model and trait, and no single model dominated. Model self-reported confidence is informative, with higher confidence aligning with higher accuracy, and can be used to prioritize phenotype assignment, effectively distinguishing between high- and low-confidence inferences. Overall, our study outlines the utility and limitations of text-based LLMs for phenotype characterization in microbiology.
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November 27, 1:43 PM
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Nucleic acid detection plays an important role in pathogen monitoring and disease diagnosis. CRISPR one-pot assays combined with isothermal amplification are emerging as promising point-of-care technologies that simplify workflows while increasing sensitivity and specificity. However, the incompatibility inherent in the one-pot reaction of isothermal amplification and CRISPR detection limits their practical application. This review comprehensively analyzes diverse advanced one-pot CRISPR-based isothermal amplification strategies developed to overcome this fundamental challenge. These strategies primarily encompass physical separation strategies (utilizing lid-bottom, internal ledge, nested tube, and membrane approaches), phase separation strategies (employing glycerol, sucrose, and gel matrices), reaction system optimization strategies (fine-tuning reaction parameters and incorporating specialized additives), non-PAM and suboptimal PAM strategies, improved Cas enzyme strategies (enhanced Cas12 and Cas13 variants), light-controlled approaches (PC-oligonucleotides, NPOM-dt modification, and acylation modification), and microfluidic chip integration strategies (centrifugal microfluidic chips, droplet microfluidic chips, and microarray chips). These methodological approaches have achieved important advances in simplifying operational processes, enhancing sensitivity, shortening detection cycles, and minimizing cross-contamination risks. The review further synthesizes critical insights regarding current opportunities, technical challenges, and future directions for one-pot CRISPR-based isothermal amplification technologies in nucleic acid detection, providing valuable guidance for researchers and practitioners in this evolving field.
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Today, 11:19 AM
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An enzyme switch, termed “Switchbody”, is developed by fusing an antibody with a fragment of a split enzyme for the precise regulation of enzyme activity in response to an antigen. A luciferase-based Switchbody is engineered by fusing the NanoLuc luciferase fragment HiBiT to the N-terminus of an antibody. The enzyme activity of the Switchbody increases upon the addition of an antigen in a dose-dependent manner in the presence of the complementary fragment LgBiT and its substrate furimazine, demonstrating the potential of the luciferase-based Switchbody as a biosensor. As its working principle, ELISA shows that the interaction between HiBiT and LgBiT is facilitated by antigen binding. Moreover, X-ray crystallography and NMR reveal the heterogeneous trapped state of the HiBiT region and an increasing motility of HiBiT region upon antigen binding, respectively. MD simulations and luminescence measurements show that antigen disrupted the trapping of HiBiT in the antibody, enabling its release. By applying this “Trap and Release” principle to Protein M, an antibody-binding protein, label-free IgG antibodies are successfully converted into bioluminescent Switchbodies. This adaptable Switchbody platform has the potential to expand switching technology beyond luciferase to various other enzymes in the future.
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Today, 12:01 AM
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CRISPR-associated base editors have been established as genome editing tools that enable base conversions in targeted DNA sequences, without generating double-strand breaks. Here, we describe the development of new base editors based on CRISPR-Cas12f1, a miniature Cas protein of only 422 amino acids. Chimeric constructs have been generated by fusing a catalytically inactive dCas12f1, to either a cytosine deaminase or an adenine deaminase. Using these synthetic fusion proteins, systematic analyses have been performed on base editing of a target sequence on a plasmid in Escherichia coli. Interestingly, apart from the previously described base editing of the displaced non-target DNA strand, we also observed efficient editing of the target DNA strand. This effect was not observed for Un1Cas12f1 BEs. In addition to the small size of AsCas12f1 base editors, its unique editing profile makes it a valuable addition to the CRISPR-Cas toolbox.
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November 27, 11:43 PM
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Polyethylene Terephthalate (PET) is an extensively used plastic whose durability and resistance to degradation contribute to growing environmental pollution and concerns. Enzymatic PET degradation, particularly via PETase from Ideonella sakaiensis, has emerged as a sustainable approach due to its ability to depolymerize PET under mild conditions. While research has largely focused on enhancing the enzyme′s thermal stability through distal mutations, less attention has been given to active-site engineering aimed at directly improving catalytic efficiency. Here, we used an automated in silico protein engineering platform called Gene Discovery and Enzyme Engineering (GDEE), designed to systematically explore mutations at the active site. By leveraging FastPETase (FP) as scaffold, we perform a high throughput generation of thousands of variants, evaluated them via docking studies with a PET substrate analogue, and ranked candidates based on binding affinity and catalytic geometry. We identified S238Y as a key mutation that enhanced PET film degrading performance at 40 °C when inserted in two of the most active PETase variants reported to date: 2.2-fold increase in the FP scaffold and 3.4-increase in the ThermoStable-PETase (TSP) background. Compared to wild type PETase, FP S238Y showed a 14.8-fold increase in bulk activity, translating into 9.4-fold more TPA and 20-fold more MHET by UPLC, while TSP S238Y reached a 25.8-fold increase (14.4-fold more TPA and 42.6-fold more MHET). This mutation also enhanced catalytic efficiency and resistance to enzyme concentration inhibition, especially in the TSP scaffold. Molecular dynamics confirm position 238 as a relevant modulator of ligand stabilisation. These findings underscore the potential of targeted active-site engineering, combined with structure-guided prediction, to accelerate the development of efficient mesophilic biocatalysts for plastic waste remediation.
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November 27, 11:32 PM
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Accessibility of the ribosome binding site (RBS) plays an outsized role in bacterial mRNA decay and translation. Antagonistic mRNA sequences that reduce accessibility and regulate expression have been widely documented near the RBS. To determine whether such sequences are also the primary effectors of expression when placed far from the RBS, we measured impacts of all possible 8-nucleotide substitutions (65,536 variants) at different positions in mRNA in Bacillus subtilis. While the vast majority of substitutions negligibly affect RNA levels, pyrimidine-rich substitutions resembling the anti-Shine-Dalgarno (aSD) sequence exhibit strong inhibitory effects. Even several hundred nucleotides downstream of the RBS, these aSD-like sequences base-pair with the RBS, promote RNA decay, and inhibit translation initiation. We find aSD-like sequences to be depleted throughout endogenous genes, likely due to selective pressure for expression. Taken together, our findings reveal widespread long-range RNA intramolecular interactions in vivo and uncover a key constraint on gene sequence evolution.
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November 27, 11:19 PM
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Horizontal gene transfer introduces foreign DNA that can disrupt cellular processes and is therefore subject to xenogenic silencing by nucleoid-associated proteins such as H-NS and Hha. In Enterohaemorrhagic Escherichia coli (EHEC), prophages make up a large fraction of the accessory genome and encode many virulence factors, yet to be expressed they must overcome this silencing. We identify a prophage-encoded small RNA (sRNA), HnrS, that functions as an anti-silencing factor by targeting the H-NS paralogue Hha. HnrS is a short (66-nt) sRNA present in multiple copies (up to nine) in EHEC and Enteropathogenic E. coli (EPEC) genomes and is enriched in E. coli strains that carry the locus of enterocyte effacement (LEE+). We show that HnrS directly base-pairs with the ribosome-binding site of the hha mRNA, repressing its translation and thereby reducing Hha-enhanced H-NS silencing. This counter-silencing de-represses the LEE type III secretion system T3SS and concomitantly represses motility. Transcriptomic profiling further revealed that HnrS indirectly activates genes involved in nitrate/nitrite respiration and nitric oxide resistance, metabolic pathways that contribute to survival in the inflamed gastrointestinal tract. Deletion of hnrS reduced expression of nitrate reductase genes and impaired actin pedestal formation on host epithelial cells. Our results indicate that prophage-encoded, multicopy hnrS provides a counter-silencing mechanism that reduces Hha–H-NS repression at specific virulence loci. This likely enables expression of horizontally acquired genes without broadly disrupting the core H-NS regulon. HnrS illustrates how mobile genetic elements deploy sRNAs to counteract xenogenic silencing and promote virulence gene expression, enhancing colonisation of the host.
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November 27, 3:20 PM
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IscB, as the putative ancestor of Cas9, possesses a compact size, making it suitable for in vivo delivery. OgeuIscB is the first IscB protein known to function in eukaryotic cells but requires a complex TAM (NWRRNA). Here, we characterize a CRISPR-associated IscB system, named DelIscB, which recognizes a flexible TAM (NAC). Through systematically engineering its protein and sgRNA, we obtain enDelIscB with an average 48.9-fold increase in activity. By fusing enDelIscB with T5 exonuclease (T5E), we find that enDelIscB-T5E displays robust efficiency comparable to that of enIscB-T5E in human cells. Moreover, by fusing cytosine or adenosine deaminase with enDelIscB nickase, we establish efficient miniature base editors (ICBE and IABE). Finally, we efficiently generate mouse models by microinjecting mRNA/sgRNA of enDelIscB and enDelIscB-T5E into mouse embryos. Collectively, our work presents a set of enDelIscB-based miniature genome-editing tools with great potential for diverse applications in vivo. Cas9-based genome editing tools face challenges for efficient in vivo delivery due to their large size. Here, the authors present a set of compact genome-editing tools engineered from a CRISPR-associated IscB system which exhibit robust editing efficiency in human cells and mouse embryos.
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November 27, 3:09 PM
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Plants are critical for sustaining human life and planetary health. However, their potential to enable humans to survive and thrive beyond Earth remains unrealized. This Viewpoint presents a collective vision outlining priorities associated with plant science to support a new frontier of human existence. These priorities are drawn from the International Space Life Sciences Working Group (ISLSWG) Plants for Space Exploration and Earth Applications workshop, held at the European Low Gravity Research Association (ELGRA) conference in September 2024. First, we highlight transformative advances gained from using the ‘laboratory of space’ in understanding how plants respond to gravity and other stressors. Second, we introduce a new crop Bioregenerative Life Support System (BLSS) readiness level (BRL) framework – extending the existing Crop Readiness Level (CRL) – to assist in overcoming challenges to establish resilient, sustainable crop production. Materializing the vision of plants as enablers of space exploration will require innovative approaches, including predictive modeling, synthetic biology, robust Earth-based analogue systems, and reliable space-based instruments to monitor biological processes. Success relies upon a unified international community to promote sharing of resources, facilities, expertise, and data to accelerate progress. Ultimately, this work will both advance human space exploration and provide solutions to enhance sustainable plant production on Earth.
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November 27, 2:44 PM
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Large-scale microbial-biotechnology processes for production of chemicals almost exclusively rely on pure cultures of microbial strains. Especially for extensively engineered pure cultures, process performance can be negatively affected, which can be caused by issues such as pathway imbalance, deterioration of productivity caused by genetic instability and enzyme promiscuity. An increasing number of studies demonstrate that, under ‘academic’ laboratory conditions, the use of defined co-cultures (i.e. deliberate mixtures of known microbial strains) offers unique possibilities for mitigating such drawbacks. These advantages differ for dissimilatory products, whose synthesis from one or more carbon substrates provides cells with free energy, and assimilatory products, whose synthesis requires a net input of free energy. Based on advances in experimental and theoretical research, this paper highlights how defined co-cultures can address several limitations of mono-cultures for production of low-molecular-weight compounds. From this largely academic perspective, we outline the key challenges for scaling these systems to industry, which underscore the need for innovative solutions and continued research in this area.
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November 27, 2:25 PM
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Bioengineering offers potential advancements in health, manufacturing, and environmental remediation, but without involvement from ecologists and evolutionary biologists the impact of environmental biotechnologies will remain understudied. Ecologists and evolutionary biologists can assess risks and benefits posed by bioengineered organisms in the environment, and develop new technologies that are ecologically and evolutionarily informed.
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November 27, 2:05 PM
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Detecting structural similarity at the local level between proteins is central to understanding function and evolution, yet most approaches require 3D models. In this work, we show that protein language models (pLMs), solely using sequence data as input, implicitly capture fine-grained structural signals that can be leveraged to identify such similarities. By mean-pooling residue embeddings over sliding windows and comparing them across proteins with cosine similarity, we find diagonal patterns that reflect locally aligned regions even without sequence identity. Building on this insight, we introduce a framework for detecting locally aligned structural regions directly from sequences, supporting the development of scalable methods for structural annotation and comparison.
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November 27, 1:59 PM
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Codon optimization involves selecting synonymous codons to match host-specific preferences. It is critical for heterologous expression but remains challenging due to the combinatorial design space. Under long-term evolutionary selection, natural coding sequences are near-optimal compromises between translational efficiency, accuracy, and regulatory constraints, providing a de facto standard for data-driven models. Recent deep learning-based language models therefore aim to learn the distribution of natural codon sequences and reuse it for design. However, existing approaches discard the rich semantic structure of taxonomic lineages, underutilize protein functional and evolutionary constraints, and often rely on masked-language objectives that lack a principled mechanism for sequence generation. Here we present CodonTranslator, a 150M-parameter decoder-only Transformer trained on 62 million CDS-protein pairs from over 2,100 species. CodonTranslator uses a pretrained language model to embed hierarchical species lineages and a pretrained protein language model to encode protein context, enabling interpolation across hosts and generalization to unseen species and proteins. Our results show that CodonTranslator implicitly learns the genetic code from data, faithfully reproduces species-specific codon usage, and designs coding sequences that match or surpass existing methods in both codon usage metrics and predicted biological stability. https://github.com/poseidonchan/CodonTranslator.
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November 27, 1:49 PM
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Extracellular vesicles (EVs), which carry a variety of molecules such as proteins and nucleic acids, have great potential for broad application in liquid biopsy. However, achieving highly sensitive detection of biomarkers within EVs remains a significant challenge. The emergence of CRISPR/Cas systems─adaptive immune mechanisms found in bacteria and archaea that defend against foreign genetic elements─offers new opportunities to address this issue through powerful nucleic acid recognition and cleavage capabilities. Compared to other EV detection techniques, CRISPR/Cas-based biosensors exhibit superior sensitivity, specificity, and operational efficiency, making them a compelling platform for clinical translation. Thus, to promote the application of EVs in disease diagnosis, disease monitoring, and therapeutic evaluation, this review focuses on the state-of-the-art CRISPR/Cas systems (specifically CRISPR/Cas9, CRISPR/Cas12, CRISPR/Cas13, and CRISPR/Cas14) as well as the latest applications of CRISPR/Cas-based EV detection techniques.
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2st, directed evolution