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Zero-shot benchmarking of RNA language models in structural, functional, and evolutionary learning. RNA语言模型在结构、功能和进化学习中的零基准测试。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-03-01 DOI: 10.1093/bib/bbag098
He Wang, Yikun Zhang, Jie Chen, Jian Zhan, Yaoqi Zhou

RNA language models (LMs) are increasingly applied to RNA structure and function analysis, yet their intrinsic representational capacities remain poorly characterized. Here, we present a standardized zero-shot evaluation of 21 RNA LMs, with representative DNA LMs included as reference controls. Three complementary tasks-attention-based RNA secondary structure prediction, embedding-based RNA classification, and mutational fitness estimation from sequence likelihoods-are evaluated without downstream fine-tuning. Our results reveal substantial variability across models and clear trade-offs between structural, functional, and evolutionary representations. RNA-specific, noncoding RNA-enriched pretraining is crucial for capturing structural information, while evolutionary signals from multiple sequence alignments substantially boost performance. Although model scaling yields gains, architectural and objective choices critically influence performance across task categories. Together, this study provides a foundational benchmark, highlights inherent challenges in learning unified RNA representations, and offers insights for developing next-generation RNA foundation models.

RNA语言模型(LMs)越来越多地应用于RNA结构和功能分析,但其固有的表征能力仍然缺乏表征。在这里,我们提出了21个RNA LMs的标准化零射击评估,包括代表性的DNA LMs作为参考对照。三个互补的任务-基于注意力的RNA二级结构预测,基于嵌入的RNA分类和序列似然的突变适应度估计-在没有下游微调的情况下进行评估。我们的研究结果揭示了模型之间的巨大可变性,以及结构、功能和进化表征之间的清晰权衡。rna特异性、非编码rna富集的预训练对于捕获结构信息至关重要,而来自多序列比对的进化信号大大提高了性能。尽管模型缩放会产生收益,但架构和目标选择会严重影响跨任务类别的性能。总之,这项研究提供了一个基础基准,突出了学习统一RNA表示的固有挑战,并为开发下一代RNA基础模型提供了见解。
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引用次数: 0
Large language model agents for biological intelligence across genomics, proteomics, spatial biology, and biomedicine. 跨基因组学、蛋白质组学、空间生物学和生物医学的生物智能大语言模型代理。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-03-01 DOI: 10.1093/bib/bbag110
Sajib Acharjee Dip, Dipanwita Mallick, Uddip Acharjee Shuvo, Shovito Barua Soumma, Fazle Rafsani, Bikash Kumar Paul, Nazifa Ahmed Moumi, Shafayat Ahmed, Liqing Zhang

Large language models (LLMs) are evolving from passive predictors into agentic systems capable of planning, tool-use, and multimodal reasoning. This shift is especially consequential for biology, where complex, noisy, and multi-scale data require adaptive and integrative computational strategies. In this review, we provide the first systematic synthesis of LLM-based agents across genomics, molecular biology, imaging, biomedical analysis, and automated bioinformatics workflows. We analyze >60 emerging systems and organize them within a unifying framework that characterizes agentic traits, such as autonomous decision-making, external tool invocation, memory, and self-correction. Across domains, agentic LLMs show early promise in enabling multi-step analysis, linking heterogeneous evidence, and supporting exploratory scientific tasks. At the same time, our comparative assessment highlights consistent challenges, including unstable reasoning, limited biological grounding, retrieval misalignment, and barriers to reproducibility and biosafety. We conclude by outlining opportunities for trustworthy and collaborative biological agents, including multimodal integration, closed-loop experimental design, and robust evaluation practices. This survey aims to clarify the emerging landscape and chart a path toward reliable agentic systems for biological discovery.

大型语言模型(llm)正在从被动的预测器演变为能够规划、工具使用和多模态推理的代理系统。这种转变对生物学来说尤其重要,因为复杂、嘈杂和多尺度的数据需要自适应和综合的计算策略。在这篇综述中,我们首次在基因组学、分子生物学、成像、生物医学分析和自动化生物信息学工作流程中系统地合成了基于llm的药物。我们分析了bbbb60个新兴系统,并将它们组织在一个统一的框架内,该框架具有代理特征,如自主决策、外部工具调用、记忆和自我纠正。跨领域,代理法学硕士在实现多步骤分析、连接异质证据和支持探索性科学任务方面显示出早期的希望。与此同时,我们的比较评估强调了一致的挑战,包括不稳定的推理、有限的生物基础、检索偏差以及可重复性和生物安全性的障碍。最后,我们概述了值得信赖和协作的生物制剂的机会,包括多模态集成、闭环实验设计和稳健的评估实践。这项调查的目的是澄清新兴的景观,并绘制出一条通往可靠的生物发现代理系统的道路。
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引用次数: 0
STGNET: extending panel coverage in imaging-based spatial transcriptomics using deep generative adversarial networks. STGNET:使用深度生成对抗网络扩展基于成像的空间转录组学的面板覆盖范围。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-03-01 DOI: 10.1093/bib/bbag122
Tao Wang, Bingtao Wang, Han Shu, Peimeng Zhen, Jialu Hu, Yongtian Wang, Jiajie Peng, Xuequn Shang, Zhiyuan Wu, Bing Xiao, Jing Chen

Imaging-based spatial transcriptomics (ST) technologies offer unparalleled resolution for mapping gene expression within intact tissues but are fundamentally constrained by the limited size of their gene panels. This restriction hinders comprehensive biological discovery by omitting potentially crucial genes from analysis. To overcome this limitation, we introduce STGNET, a deep learning framework that extends gene panel coverage by integrating generative adversarial networks (GANs) with graph neural networks. STGNET employs a multi-stage GAN to learn the global transcriptomic distribution from single-cell RNA sequencing data, followed by a spatially aware graph convolutional network that refines imputations by modeling both physical cell proximity and transcriptional similarity. We rigorously benchmarked STGNET against seven state-of-the-art methods across nine diverse ST datasets. STGNET consistently achieved superior performance, demonstrating enhanced accuracy in gene imputation, and exceptional preservation of cellular topology. We further showcase its biological utility by accurately reconstructing developmental marker patterns in mouse embryogenesis, revealing a novel transitional cell state in breast cancer progression, and uncovering extensive, previously obscured cell-cell communication networks in the mouse brain. STGNET provides a powerful and robust solution for unlocking the full potential of targeted ST assays, thereby enabling deeper and more comprehensive spatial biology. STGNET is freely accessible at https://github.com/wuyuanwuhuii/STGNET.

基于成像的空间转录组学(ST)技术为完整组织内的基因表达定位提供了无与伦比的分辨率,但从根本上受到其基因面板大小的限制。这种限制通过从分析中忽略潜在的关键基因而阻碍了全面的生物学发现。为了克服这一限制,我们引入了STGNET,这是一个深度学习框架,通过集成生成对抗网络(GANs)和图神经网络来扩展基因面板覆盖。STGNET采用多阶段GAN从单细胞RNA测序数据中学习全局转录组分布,然后使用空间感知的图卷积网络,通过建模物理细胞接近性和转录相似性来改进估算。我们在九个不同的ST数据集上对STGNET进行了严格的基准测试。STGNET始终取得了卓越的性能,证明了基因插入的准确性增强,以及对细胞拓扑结构的特殊保存。我们通过精确地重建小鼠胚胎发生中的发育标记模式,揭示乳腺癌进展中的一种新的移行细胞状态,并揭示小鼠大脑中广泛的,以前模糊的细胞-细胞通信网络,进一步展示了其生物学实用性。STGNET提供了一个强大而稳健的解决方案,用于释放靶向ST检测的全部潜力,从而实现更深入、更全面的空间生物学。STGNET可在https://github.com/wuyuanwuhuii/STGNET免费访问。
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引用次数: 0
Biochemical-knowledge-driven machine learning pipeline for generating potent antimicrobial peptides. 生化知识驱动的机器学习管道,用于生成有效的抗菌肽。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-03-01 DOI: 10.1093/bib/bbag115
Deliang Yang, Yifan Li, Chenxi Li, Qingpeng Zhang, Jiandong Huang, Xue Li, Peng Gao

The growing threat of antimicrobial resistance (AMR) necessitates the rapid discovery of novel antimicrobial peptides (AMPs) as alternative therapeutics. However, most computational approaches rely on binary AMP or non-AMP classification or permissive MIC thresholds (e.g. ≤128 μg/mL), offering limited biological interpretability and translational value. We present CVAE-BIO, a biochemical-knowledge-driven, multi-module pipeline for the discovery of AMPs targeting drug-resistant Escherichia coli as a model pathogen yet generalisable to other bacterial targets. The model integrates a conditional variational autoencoder (CVAE) constrained by key biochemical properties (MIC≤10 μg/mL, net charge > + 2, peptide length < 40 residues, instability index <40, and Boman index <0) with a Random Forest classifier trained on 30 biochemical descriptors. In vitro validation showed that 18.5% of generated peptides exhibited strong activity (MIC≤10 μg/mL), with 38.9% reaching MIC ≤50 μg/mL while maintaining key biochemical properties. Most validated novel peptides are narrow-spectrum AMP targeting E. coli. Wet-lab results also showed that highly active cationic-amphipathic AMPs are characterized by significantly low counts of tiny and small residues, suggesting that avoiding using these residues or limiting them to a maximum of 2 and 3, respectively, might improve the activity of AMP. Taking both antimicrobial activity and hemolytic toxicity into account, 9 peptides were identified as non-toxic and active AMP candidates. This explainable framework enables efficient AMP discovery under biochemical constraints and yields experimentally validated candidates with translational potential.

抗菌素耐药性(AMR)的威胁日益严重,迫切需要快速发现新的抗菌肽(amp)作为替代治疗方法。然而,大多数计算方法依赖于二进制AMP或非AMP分类或允许MIC阈值(例如≤128 μg/mL),提供有限的生物学可解释性和翻译价值。我们提出了CVAE-BIO,这是一个生化知识驱动的多模块管道,用于发现靶向耐药大肠杆菌作为模型病原体的amp,但可推广到其他细菌靶点。该模型集成了一个条件变分自编码器(CVAE),受关键生化特性(MIC≤10 μg/mL,净电荷> + 2,肽长度)的约束
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引用次数: 0
Supervisory signals are intriguingly high in even simple features for predicting anticancer effect of antibody drug conjugates. 有趣的是,在预测抗体药物偶联物抗癌作用的简单特征中,监督信号也很高。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-03-01 DOI: 10.1093/bib/bbag108
Sunil Nagpal
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引用次数: 0
Differentiation of RNA-protein docking structures through molecular dynamics simulation and machine learning methods. 通过分子动力学模拟和机器学习方法分化rna -蛋白对接结构。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-03-01 DOI: 10.1093/bib/bbag109
Bui Tien Thanh, Yoichi Kurumida, Kaito Kobayashi, Michiaki Hamada, Tomoshi Kameda

Accurately predicting the structures of RNA-protein complexes remains a major challenge. Recently, machine learning-based methods such as AlphaFold3 and RosettaFoldNA have been proposed. However, most conventional approaches rely on docking simulations to generate candidate structures, which are then identified as accurate using various methods. This study presents a method that integrates specialized molecular dynamics simulations and machine learning (ML) techniques to identify the correct structure among many docking poses. First, steered molecular dynamics simulations are performed to estimate the stability of the candidate structures. The simulation data then serve as the training data for a ML model, which classifies the results as either correct or incorrect. Next, the candidates predicted as correct are narrowed down using thermodynamic simulations and ML methods. Findings indicated that candidate structures could be classified as correct or incorrect with an accuracy of 0.934 in the RNA-protein docking simulation results. Additionally, we used AlphaFold3 to predict 15 RNA-protein complexes that Zou's group categorized as difficult, medium or easy category. Subsequently, our method classified these binding structures as correct or incorrect, with accuracies of 0.80, 0.92 and 0.96, respectively. Thus, our method is powerful for accurately predicting the structures of RNA-protein complexes.

准确预测rna -蛋白复合物的结构仍然是一个重大挑战。最近,人们提出了基于机器学习的方法,如AlphaFold3和RosettaFoldNA。然而,大多数传统方法依赖于对接模拟来生成候选结构,然后使用各种方法确定其是否准确。本研究提出了一种集成了专门的分子动力学模拟和机器学习(ML)技术的方法,以识别许多对接姿势中的正确结构。首先,进行定向分子动力学模拟来估计候选结构的稳定性。然后,模拟数据作为ML模型的训练数据,该模型将结果分类为正确或不正确。接下来,使用热力学模拟和ML方法缩小预测为正确的候选对象。结果表明,在rna -蛋白对接模拟结果中,候选结构可以被分类为正确或错误,准确率为0.934。此外,我们使用AlphaFold3预测了15种rna -蛋白复合物,邹的团队将其分类为困难、中等或容易类别。随后,我们的方法将这些结合结构分类为正确或不正确,准确率分别为0.80,0.92和0.96。因此,我们的方法对于准确预测rna -蛋白复合物的结构是强有力的。
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引用次数: 0
scDIAGRAM: detecting chromatin compartments from individual single-cell Hi-C matrix without imputation or reference features. scDIAGRAM:从单个单细胞Hi-C基质中检测染色质区室,无需输入或参考特征。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-03-01 DOI: 10.1093/bib/bbag096
Yongli Peng, Yujing Deng, Menghan Liu, Zhiyuan Liu, Ya-Hui Li, Xiang-Yu Zhao, Dong Xing, Jinzhu Jia, Hao Ge

Single-cell Hi-C (scHi-C) provides unprecedented insight into 3D genome organization, but its sparse and noisy data pose challenges in accurately detecting A/B compartments, which are crucial for understanding chromatin structure and gene regulation. We presented scDIAGRAM, a data-driven method for annotating A/B compartments in single cells using direct statistical modeling and graph community detection. Unlike existing approaches, scDIAGRAM infers chromatin compartments directly from individual scHi-C matrix without imputation or external reference features, and subsequently assigns A/B labels using conventional genomic annotations. Accuracy and robustness of scDIAGRAM were illustrated through simulated scHi-C datasets and a human cell line. We applied scDIAGRAM to real scHi-C datasets from the mouse brain cortex, mouse embryonic development, and human acute myeloid leukemia, demonstrating its ability to capture compartmental shifts associated with transcriptional variation. This robust framework offers new insights into the functional roles of chromatin compartments at single-cell resolution across various biological contexts.

单细胞Hi-C (scHi-C)为三维基因组组织提供了前所未有的见解,但其稀疏和嘈杂的数据给准确检测A/B区室带来了挑战,这对于理解染色质结构和基因调控至关重要。我们提出了scDIAGRAM,这是一种数据驱动的方法,用于使用直接统计建模和图社区检测来注释单个细胞中的a /B区室。与现有的方法不同,scDIAGRAM直接从单个scHi-C矩阵中推断出染色质区室,而不需要插入或外部参考特征,然后使用传统的基因组注释分配A/B标记。通过模拟scHi-C数据集和人类细胞系,验证了scDIAGRAM的准确性和鲁棒性。我们将scDIAGRAM应用于来自小鼠大脑皮层、小鼠胚胎发育和人类急性髓系白血病的真实scHi-C数据集,证明其能够捕获与转录变异相关的区室转移。这个强大的框架提供了新的见解,在单细胞分辨率的染色质室的功能作用跨越各种生物学背景。
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引用次数: 0
MutPPI+: a multimodal framework for predicting mutation effects on protein-protein interactions via mutation-path-based data augmentation. MutPPI+:通过基于突变路径的数据增强预测突变对蛋白质相互作用的影响的多模式框架。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-03-01 DOI: 10.1093/bib/bbag105
Juntao Deng, Miao Gu, Pengyan Zhang, Tao Liu, Guansong Hu, Mingyu Dong, Yabin Zhang, Yizhen Song, Yunfan Zhang, Min Liu, Junzhang Tian, Weibin Cheng

Protein-protein interactions (PPIs) are central to cellular signaling and regulation, and their dysregulation underlies many diseases. Predicting the impact of mutations on PPI stability, quantified as ΔΔG, is essential for understanding disease mechanisms and guiding protein engineering. Here, we first present MutPPI, a graph-based deep-learning model that encodes full-residue structural features of protein-protein complexes and employs a shared GIN-GAT feature extractor for wild-type and mutant complexes. MutPPI outperforms 12 existing methods on an antibody-antigen single-point mutation dataset (S645). By integrating evolutionary information from protein language models, we further develop MutPPI-plus, achieving enhanced predictive performance. Second, we proposed a mutation-path-based data augmentation strategy, which enriches input modalities and improves generalization of both MutPPI and MutPPI-plus. After data augmentation, MutPPI-plus demonstrates state-of-the-art performance on S645 and three additional multi-point mutation datasets (SM_ZEMu, SM595, SM1124), substantially surpassing DDMut-PPI. Our analyses highlight the benefits of the multimodal framework and the physically informed data augmentation method. Together, these results provide a versatile computational tool for accurate ΔΔG prediction, advancing rational protein design.

蛋白-蛋白相互作用(PPIs)是细胞信号传导和调控的核心,其失调是许多疾病的基础。预测突变对PPI稳定性的影响(量化为ΔΔG)对于理解疾病机制和指导蛋白质工程至关重要。在这里,我们首先提出了MutPPI,这是一种基于图的深度学习模型,它编码蛋白质-蛋白质复合物的全残基结构特征,并对野生型和突变型复合物使用共享的GIN-GAT特征提取器。MutPPI在抗体-抗原单点突变数据集(S645)上优于现有的12种方法。通过整合来自蛋白质语言模型的进化信息,我们进一步开发了MutPPI-plus,实现了增强的预测性能。其次,我们提出了一种基于突变路径的数据增强策略,该策略丰富了MutPPI和MutPPI-plus的输入方式,提高了它们的泛化能力。在数据增强后,MutPPI-plus在S645和另外三个多点突变数据集(SM_ZEMu, SM595, SM1124)上表现出了最先进的性能,大大超过了ddmuti - ppi。我们的分析强调了多模态框架和物理信息数据增强方法的好处。总之,这些结果为准确的ΔΔG预测提供了一个通用的计算工具,促进了合理的蛋白质设计。
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引用次数: 0
Benchmarking large language models for pathogen-disease classification in post-acute infection syndromes. 对标急性感染后综合征病原疾病分类的大型语言模型。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-03-01 DOI: 10.1093/bib/bbag089
Syed Mohammed Khalid, Tom Wölker, Leidy-Alejandra G Molano, Simon Graf, Andreas Keller

Post-Acute Infection Syndromes (PAIS) are medical conditions that persist following acute infections from pathogens such as SARS-CoV-2, Epstein-Barr virus, and Influenza virus. Despite growing global awareness of PAIS and the exponential increase in biomedical literature, only a small fraction of this literature pertains specifically to PAIS, making the identification of pathogen-disease associations within such a vast, heterogeneous, and unstructured corpus a significant challenge for researchers. This study evaluated the effectiveness of large language models (LLMs) in extracting these associations through a binary classification task using a curated dataset of 1000 manually labeled PubMed abstracts. We benchmarked a wide range of open-source LLMs of varying sizes (4B-70B parameters), including generalist, reasoning, and biomedical-specific models. We also investigated the extent to which prompting strategies such as zero-shot, few-shot, and Chain of Thought (CoT) methods can improve classification performance. Our results indicate that model performance varied by size, architecture, and prompting strategy. Zero-shot prompting produced the most reliable results: Mistral-Small-Instruct-2409 and Llama-3.1-Nemotron-70B-Instruct achieved balanced accuracy scores of 0.81 and 0.80, respectively, along with macro-F1 scores of up to 0.80, while maintaining minimal invalid outputs. While few-shot and CoT prompting often degraded performance in generalist models, reasoning models such as DeepSeek-R1-Distill-Llama-70B and QwQ-32B demonstrated improved accuracy and consistency when provided with additional context.

急性感染后综合征(PAIS)是在SARS-CoV-2、爱泼斯坦-巴尔病毒和流感病毒等病原体急性感染后持续存在的医疗状况。尽管全球对PAIS的认识不断提高,生物医学文献也呈指数级增长,但只有一小部分文献专门与PAIS有关,这使得在如此庞大、异构和非结构化的语料库中识别病原体-疾病关联对研究人员来说是一个重大挑战。本研究评估了大型语言模型(llm)通过一个二元分类任务提取这些关联的有效性,该任务使用了1000个人工标记的PubMed摘要的精选数据集。我们对各种不同大小(4B-70B参数)的开源法学硕士进行了基准测试,包括通才、推理和生物医学特定模型。我们还研究了zero-shot、few-shot和Chain of Thought (CoT)方法等提示策略在多大程度上可以提高分类性能。我们的结果表明,模型性能因大小、体系结构和提示策略而异。零射击提示产生了最可靠的结果:mistral - small - directive -2409和llama -3.1- nemotron - 70b - directive分别达到了0.81和0.80的平衡精度分数,以及高达0.80的宏观f1分数,同时保持了最小的无效输出。虽然在通才模型中,少量射击和CoT提示通常会降低性能,但DeepSeek-R1-Distill-Llama-70B和QwQ-32B等推理模型在提供额外的上下文时显示出更高的准确性和一致性。
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引用次数: 0
MDPD reveals specific microbial signatures in human pulmonary diseases. MDPD揭示了人类肺部疾病的特定微生物特征。
IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-03-01 DOI: 10.1093/bib/bbag017
Paramita Roy, Dibakar Roy, Sudipto Bhattacharjee, Abhirupa Ghosh, Sudipto Saha

Pulmonary diseases are becoming a serious threat worldwide, and enormous data from different human microbiomes have been generated to understand these complex diseases. Here, we introduce Microbiome Database of Pulmonary Diseases (MDPD), an open-access, comprehensive systemic catalog of pulmonary diseases by manually curating global studies from 2012 to 2024 (13 years). We have compiled 59 362 runs from 430 BioProjects, encompassing data from 10 body sites related to 19 pulmonary diseases and healthy groups covering 278 distinct sub-groups. MDPD enables users to analyze each BioProject and customize analysis with multiple BioProjects to identify taxonomic profiles and disease group/sub-group specific microbial signatures. The re-analyzed intermediate Biological Observation Matrix files are provided for each BioProject for the accessibility of users for further applications, such as machine learning-based classification. Identified microbes (bacteria, fungi, viruses) in MDPD are annotated with several attributes, providing further insights into their disease-causing potential and specificity to certain diseases and body sites. MDPD is freely available at: https://bicresources.jcbose.ac.in/ssaha4/mdpd/.

肺部疾病正在成为世界范围内的严重威胁,已经产生了来自不同人类微生物组的大量数据,以了解这些复杂的疾病。在这里,我们介绍肺部疾病微生物组数据库(MDPD),这是一个开放获取的、全面的系统性肺部疾病目录,通过手动整理2012年至2024年(13年)的全球研究。我们汇编了来自430个生物项目的59 362项测试,包括与19种肺部疾病和健康群体有关的10个身体部位的数据,涵盖278个不同的亚群体。MDPD使用户能够分析每个生物项目,并使用多个生物项目定制分析,以确定分类概况和疾病组/亚组特定的微生物特征。为每个BioProject提供了重新分析的中间生物观察矩阵文件,供用户进一步应用,如基于机器学习的分类。MDPD中已识别的微生物(细菌、真菌、病毒)被标注了几个属性,从而进一步了解它们的致病潜力和对某些疾病和身体部位的特异性。MDPD可在https://bicresources.jcbose.ac.in/ssaha4/mdpd/免费获得。
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引用次数: 0
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