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scEGG: an exogenous gene-guided clustering method for single-cell transcriptomic data. scEGG:单细胞转录组数据的外源基因引导聚类方法。
IF 6.8 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2024-09-23 DOI: 10.1093/bib/bbae483
Dayu Hu, Renxiang Guan, Ke Liang, Hao Yu, Hao Quan, Yawei Zhao, Xinwang Liu, Kunlun He

In recent years, there has been significant advancement in the field of single-cell data analysis, particularly in the development of clustering methods. Despite these advancements, most algorithms continue to focus primarily on analyzing the provided single-cell matrix data. However, within medical contexts, single-cell data often encompasses a wealth of exogenous information, such as gene networks. Overlooking this aspect could result in information loss and produce clustering outcomes lacking significant clinical relevance. To address this limitation, we introduce an innovative deep clustering method for single-cell data that leverages exogenous gene information to generate discriminative cell representations. Specifically, an attention-enhanced graph autoencoder has been developed to efficiently capture topological signal patterns among cells. Concurrently, a random walk on an exogenous protein-protein interaction network enabled the acquisition of the gene's embeddings. Ultimately, the clustering process entailed integrating and reconstructing gene-cell cooperative embeddings, which yielded a discriminative representation. Extensive experiments have demonstrated the effectiveness of the proposed method. This research provides enhanced insights into the characteristics of cells, thus laying the foundation for the early diagnosis and treatment of diseases. The datasets and code can be publicly accessed in the repository at https://github.com/DayuHuu/scEGG.

近年来,单细胞数据分析领域取得了重大进展,尤其是在聚类方法的开发方面。尽管取得了这些进步,但大多数算法仍然主要侧重于分析所提供的单细胞矩阵数据。然而,在医学领域,单细胞数据往往包含大量外源信息,如基因网络。忽视这一点可能会导致信息丢失,并产生缺乏重要临床意义的聚类结果。为了解决这一局限性,我们为单细胞数据引入了一种创新的深度聚类方法,该方法利用外源基因信息生成具有区分性的细胞表征。具体来说,我们开发了一种注意力增强图自动编码器,以有效捕捉细胞间的拓扑信号模式。与此同时,在外源蛋白质-蛋白质相互作用网络上进行随机游走可获取基因嵌入。最终,聚类过程需要整合和重建基因-细胞合作嵌入,从而产生一种判别表征。广泛的实验证明了所提方法的有效性。这项研究有助于深入了解细胞的特征,从而为疾病的早期诊断和治疗奠定基础。数据集和代码可在 https://github.com/DayuHuu/scEGG 的资源库中公开访问。
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引用次数: 0
Digital PCR threshold robustness analysis and optimization using dipcensR. 使用 dipcensR 进行数字 PCR 阈值稳健性分析和优化。
IF 6.8 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2024-09-23 DOI: 10.1093/bib/bbae507
Matthijs Vynck, Wim Trypsteen, Olivier Thas, Jo Vandesompele, Ward De Spiegelaere

Digital polymerase chain reaction (dPCR) is a best-in-class molecular biology technique for the accurate and precise quantification of nucleic acids. The recent maturation of dPCR technology allows the quantification of up to thousands of targeted nucleic acids per instrument per day. A key step in the dPCR data analysis workflow is the classification of partitions into two classes based on their partition intensities: partitions either containing or lacking target nucleic acids of interest. Much effort has been invested in the design and tailoring of automated dPCR partition classification procedures, and such procedures will be increasingly important as the technology ventures into high-throughput applications. However, automated partition classification is not fail-safe, and evaluation of its accuracy is highly advised. This accuracy evaluation is a manual endeavor and is becoming a bottleneck for high-throughput dPCR applications. Here, we introduce dipcensR, the first data-analysis procedure that automates the assessment of any linear partition classifier's partition classification accuracy, offering potentially substantial efficiency gains. dipcensR is based on a robustness evaluation of said partition classification and flags classifications with low robustness as needing review. Additionally, dipcensR's robustness analysis underpins (optional) automatic optimization of partition classification to achieve maximal robustness. A freely available R implementation supports dipcensR's use.

数字聚合酶链式反应(dPCR)是精确定量核酸的最佳分子生物学技术。随着 dPCR 技术的不断成熟,每台仪器每天最多可对数千个目标核酸进行定量分析。dPCR 数据分析工作流程中的一个关键步骤是根据分区强度将分区分为两类:含有或缺乏目标核酸的分区。在设计和定制 dPCR 自动分区分类程序方面投入了大量精力,随着该技术进入高通量应用领域,这些程序将变得越来越重要。不过,自动分区分类并非万无一失,因此建议对其准确性进行评估。准确性评估需要人工完成,这已成为高通量 dPCR 应用的瓶颈。dipcensR 基于对所述分区分类的稳健性评估,并将稳健性低的分类标记为需要审查。此外,dipcensR 的稳健性分析还支持分区分类的自动优化(可选),以实现最大的稳健性。免费提供的 R 实现支持 dipcensR 的使用。
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引用次数: 0
HMPA: a pioneering framework for the noncanonical peptidome from discovery to functional insights. HMPA:非典型肽组从发现到功能深入研究的开创性框架。
IF 6.8 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2024-09-23 DOI: 10.1093/bib/bbae510
Xinwan Su, Chengyu Shi, Fangzhou Liu, Manman Tan, Ying Wang, Linyu Zhu, Yu Chen, Meng Yu, Xinyi Wang, Jian Liu, Yang Liu, Weiqiang Lin, Zhaoyuan Fang, Qiang Sun, Tianhua Zhou, Aifu Lin

Advancements in peptidomics have revealed numerous small open reading frames with coding potential and revealed that some of these micropeptides are closely related to human cancer. However, the systematic analysis and integration from sequence to structure and function remains largely undeveloped. Here, as a solution, we built a workflow for the collection and analysis of proteomic data, transcriptomic data, and clinical outcomes for cancer-associated micropeptides using publicly available datasets from large cohorts. We initially identified 19 586 novel micropeptides by reanalyzing proteomic profile data from 3753 samples across 8 cancer types. Further quantitative analysis of these micropeptides, along with associated clinical data, identified 3065 that were dysregulated in cancer, with 370 of them showing a strong association with prognosis. Moreover, we employed a deep learning framework to construct a micropeptide-protein interaction network for further bioinformatics analysis, revealing that micropeptides are involved in multiple biological processes as bioactive molecules. Taken together, our atlas provides a benchmark for high-throughput prediction and functional exploration of micropeptides, providing new insights into their biological mechanisms in cancer. The HMPA is freely available at http://hmpa.zju.edu.cn.

肽组学的进步揭示了许多具有编码潜力的小型开放阅读框,并发现其中一些微肽与人类癌症密切相关。然而,从序列到结构和功能的系统分析和整合在很大程度上仍未得到发展。在这里,作为一种解决方案,我们建立了一个工作流程,利用来自大型队列的公开数据集,收集和分析与癌症相关的微肽的蛋白质组数据、转录组数据和临床结果。通过重新分析 8 种癌症类型 3753 个样本的蛋白质组数据,我们初步鉴定出 19 586 种新型微肽。通过对这些微肽以及相关临床数据的进一步定量分析,我们发现了3065种在癌症中调控失调的微肽,其中370种与预后密切相关。此外,我们还利用深度学习框架构建了微肽-蛋白质相互作用网络,用于进一步的生物信息学分析,揭示了微肽作为生物活性分子参与了多种生物过程。总之,我们的图集为微肽的高通量预测和功能探索提供了一个基准,为了解微肽在癌症中的生物学机制提供了新的视角。HMPA 可在 http://hmpa.zju.edu.cn 免费获取。
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引用次数: 0
SpaGIC: graph-informed clustering in spatial transcriptomics via self-supervised contrastive learning. SpaGIC:通过自监督对比学习在空间转录组学中进行图信息聚类。
IF 6.8 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2024-09-23 DOI: 10.1093/bib/bbae578
Wei Liu, Bo Wang, Yuting Bai, Xiao Liang, Li Xue, Jiawei Luo

Spatial transcriptomics technologies enable the generation of gene expression profiles while preserving spatial context, providing the potential for in-depth understanding of spatial-specific tissue heterogeneity. Leveraging gene and spatial data effectively is fundamental to accurately identifying spatial domains in spatial transcriptomics analysis. However, many existing methods have not yet fully exploited the local neighborhood details within spatial information. To address this issue, we introduce SpaGIC, a novel graph-based deep learning framework integrating graph convolutional networks and self-supervised contrastive learning techniques. SpaGIC learns meaningful latent embeddings of spots by maximizing both edge-wise and local neighborhood-wise mutual information of graph structures, as well as minimizing the embedding distance between spatially adjacent spots. We evaluated SpaGIC on seven spatial transcriptomics datasets across various technology platforms. The experimental results demonstrated that SpaGIC consistently outperformed existing state-of-the-art methods in several tasks, such as spatial domain identification, data denoising, visualization, and trajectory inference. Additionally, SpaGIC is capable of performing joint analyses of multiple slices, further underscoring its versatility and effectiveness in spatial transcriptomics research.

空间转录组学技术能够生成基因表达谱,同时保留空间背景,为深入了解空间特异性组织异质性提供了可能。在空间转录组学分析中,有效利用基因和空间数据是准确识别空间域的基础。然而,许多现有方法尚未充分利用空间信息中的局部邻域细节。为了解决这个问题,我们引入了 SpaGIC,这是一种新颖的基于图的深度学习框架,集成了图卷积网络和自监督对比学习技术。SpaGIC 通过最大化图结构的边缘互信息和局部邻域互信息,以及最小化空间相邻图点之间的嵌入距离,学习有意义的图点潜在嵌入。我们在不同技术平台的七个空间转录组学数据集上对 SpaGIC 进行了评估。实验结果表明,SpaGIC 在空间域识别、数据去噪、可视化和轨迹推断等多项任务中的表现始终优于现有的先进方法。此外,SpaGIC 还能对多个切片进行联合分析,进一步突出了其在空间转录组学研究中的多功能性和有效性。
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引用次数: 0
Deciphering gene expression patterns using large-scale transcriptomic data and its applications. 利用大规模转录组数据破译基因表达模式及其应用。
IF 6.8 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2024-09-23 DOI: 10.1093/bib/bbae590
Shunjie Chen, Pei Wang, Haiping Guo, Yujie Zhang

Gene expression varies stochastically across genders, racial groups, and health statuses. Deciphering these patterns is crucial for identifying informative genes, classifying samples, and understanding diseases like cancer. This study analyzes 11,252 bulk RNA-seq samples to explore expression patterns of 19,156 genes, including 10,512 cancer tissue samples and 740 normal samples. Additionally, 4,884 single-cell RNA-seq samples are examined. Statistical analysis using 16 probability distributions shows that normal samples display a wider range of distributions compared to cancer samples. Cancer samples tend to favor asymmetric distributions such as generalized extreme value, logarithmic normal, and Gaussian mixture distributions. In contrast, certain genes in normal samples exhibit symmetric distributions. Remarkably, more than 95.5% of genes exhibit non-normal distributions, which challenges traditional assumptions. Furthermore, distributions differ significantly between bulk and single-cell RNA-seq data. Many cancer driver genes exhibit distinct distribution patterns across sample types, suggesting potential for gene selection and classification based on distribution characteristics. A novel skewness-based metric is proposed to quantify distribution variation across datasets, showing genes with significant skewness differences have biological relevance. Finally, an improved naïve Bayes method incorporating gene-specific distributions demonstrates superior performance in simulations over traditional methods. This work enhances understanding of gene expression and its application in omics-based gene selection and sample classification.

不同性别、种族群体和健康状况的基因表达随机变化。破解这些模式对于识别信息基因、对样本进行分类以及了解癌症等疾病至关重要。本研究分析了 11,252 份大容量 RNA-seq 样本,探索了 19,156 个基因的表达模式,其中包括 10,512 份癌症组织样本和 740 份正常样本。此外,还研究了 4884 个单细胞 RNA-seq 样本。使用 16 种概率分布进行的统计分析显示,与癌症样本相比,正常样本的分布范围更广。癌症样本倾向于非对称分布,如广义极值分布、对数正态分布和高斯混合分布。相比之下,正常样本中的某些基因则呈现对称分布。值得注意的是,超过 95.5% 的基因呈现非正态分布,这对传统假设提出了挑战。此外,大量 RNA 序列数据和单细胞 RNA 序列数据的分布也有很大不同。许多癌症驱动基因在不同样本类型中表现出不同的分布模式,这表明基于分布特征的基因选择和分类具有潜力。研究人员提出了一种基于偏度的新指标来量化不同数据集的分布差异,结果表明具有显著偏度差异的基因具有生物学相关性。最后,一种包含基因特异性分布的改进型天真贝叶斯方法在模拟中表现出优于传统方法的性能。这项研究加深了人们对基因表达的理解,并将其应用于基于 omics 的基因选择和样本分类。
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引用次数: 0
Development and experimental validation of computational methods for human antibody affinity enhancement. 人类抗体亲和力增强计算方法的开发与实验验证。
IF 6.8 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2024-09-23 DOI: 10.1093/bib/bbae488
Junxin Li, Linbu Liao, Chao Zhang, Kaifang Huang, Pengfei Zhang, John Z H Zhang, Xiaochun Wan, Haiping Zhang

High affinity is crucial for the efficacy and specificity of antibody. Due to involving high-throughput screens, biological experiments for antibody affinity maturation are time-consuming and have a low success rate. Precise computational-assisted antibody design promises to accelerate this process, but there is still a lack of effective computational methods capable of pinpointing beneficial mutations within the complementarity-determining region (CDR) of antibodies. Moreover, random mutations often lead to challenges in antibody expression and immunogenicity. In this study, to enhance the affinity of a human antibody against avian influenza virus, a CDR library was constructed and evolutionary information was acquired through sequence alignment to restrict the mutation positions and types. Concurrently, a statistical potential methodology was developed based on amino acid interactions between antibodies and antigens to calculate potential affinity-enhanced antibodies, which were further subjected to molecular dynamics simulations. Subsequently, experimental validation confirmed that a point mutation enhancing 2.5-fold affinity was obtained from 10 designs, resulting in the antibody affinity of 2 nM. A predictive model for antibody-antigen interactions based on the binding interface was also developed, achieving an Area Under the Curve (AUC) of 0.83 and a precision of 0.89 on the test set. Lastly, a novel approach involving combinations of affinity-enhancing mutations and an iterative mutation optimization scheme similar to the Monte Carlo method were proposed. This study presents computational methods that rapidly and accurately enhance antibody affinity, addressing issues related to antibody expression and immunogenicity.

高亲和力对抗体的有效性和特异性至关重要。由于涉及高通量筛选,抗体亲和力成熟的生物实验耗时长、成功率低。精确的计算辅助抗体设计有望加速这一过程,但目前仍缺乏有效的计算方法,无法准确定位抗体互补决定区(CDR)内的有益突变。此外,随机突变往往会导致抗体表达和免疫原性方面的挑战。在这项研究中,为了提高人类抗体对禽流感病毒的亲和力,我们构建了一个 CDR 库,并通过序列比对获得了进化信息,从而限制了突变的位置和类型。同时,根据抗体与抗原之间的氨基酸相互作用,开发了一种统计潜力方法,计算潜在的亲和力增强抗体,并对其进行分子动力学模拟。随后,实验验证证实,从 10 个设计中获得了亲和力增强 2.5 倍的点突变,使抗体亲和力达到 2 nM。此外,还开发了一个基于结合界面的抗体-抗原相互作用预测模型,在测试集上的曲线下面积(AUC)达到 0.83,精确度达到 0.89。最后,研究人员还提出了一种新方法,该方法涉及亲和力增强突变的组合以及与蒙特卡罗方法类似的迭代突变优化方案。本研究提出的计算方法可快速准确地增强抗体亲和力,解决抗体表达和免疫原性相关问题。
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引用次数: 0
PathMethy: an interpretable AI framework for cancer origin tracing based on DNA methylation. PathMethy:基于 DNA 甲基化的可解释癌症起源追踪人工智能框架。
IF 6.8 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2024-09-23 DOI: 10.1093/bib/bbae497
Jiajing Xie, Yuhang Song, Hailong Zheng, Shijie Luo, Ying Chen, Chen Zhang, Rongshan Yu, Mengsha Tong

Despite advanced diagnostics, 3%-5% of cases remain classified as cancer of unknown primary (CUP). DNA methylation, an important epigenetic feature, is essential for determining the origin of metastatic tumors. We presented PathMethy, a novel Transformer model integrated with functional categories and crosstalk of pathways, to accurately trace the origin of tumors in CUP samples based on DNA methylation. PathMethy outperformed seven competing methods in F1-score across nine cancer datasets and predicted accurately the molecular subtypes within nine primary tumor types. It not only excelled at tracing the origins of both primary and metastatic tumors but also demonstrated a high degree of agreement with previously diagnosed sites in cases of CUP. PathMethy provided biological insights by highlighting key pathways, functional categories, and their interactions. Using functional categories of pathways, we gained a global understanding of biological processes. For broader access, a user-friendly web server for researchers and clinicians is available at https://cup.pathmethy.com.

尽管诊断手段先进,但仍有 3%-5% 的病例被归类为原发灶不明的癌症(CUP)。DNA 甲基化是一种重要的表观遗传特征,对于确定转移性肿瘤的起源至关重要。我们提出了 PathMethy,这是一种新型的 Transformer 模型,集成了功能分类和路径串联,可根据 DNA 甲基化准确追踪 CUP 样本中肿瘤的来源。在九个癌症数据集中,PathMethy 的 F1 分数超过了七种竞争方法,并准确预测了九种原发性肿瘤类型中的分子亚型。它不仅在追踪原发性肿瘤和转移性肿瘤的起源方面表现出色,而且与之前诊断出的 CUP 病例的部位高度吻合。PathMethy 通过突出关键通路、功能类别及其相互作用来提供生物学见解。通过途径的功能类别,我们对生物过程有了全面的了解。为了扩大访问范围,我们还为研究人员和临床医生提供了一个用户友好型网络服务器,网址是 https://cup.pathmethy.com。
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引用次数: 0
Predicting functional outcome in ischemic stroke patients using genetic, environmental, and clinical factors: a machine learning analysis of population-based prospective cohort study. 利用遗传、环境和临床因素预测缺血性中风患者的功能预后:基于人群的前瞻性队列研究的机器学习分析。
IF 6.8 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2024-09-23 DOI: 10.1093/bib/bbae487
Siding Chen, Zhe Xu, Jinfeng Yin, Hongqiu Gu, Yanfeng Shi, Cang Guo, Xia Meng, Hao Li, Xinying Huang, Yong Jiang, Yongjun Wang

Ischemic stroke (IS) is a leading cause of adult disability that can severely compromise the quality of life for patients. Accurately predicting the IS functional outcome is crucial for precise risk stratification and effective therapeutic interventions. We developed a predictive model integrating genetic, environmental, and clinical factors using data from 7819 IS patients in the Third China National Stroke Registry. Employing an 80:20 split, we randomly divided the dataset into development and internal validation cohorts. The discrimination and calibration performance of models were evaluated using the area under the receiver operating characteristic curves (AUC) for discrimination and Brier score with calibration curve in the internal validation cohort. We conducted genome-wide association studies (GWAS) in the development cohort, identifying rs11109607 (ANKS1B) as the most significant variant associated with IS functional outcome. We employed principal component analysis to reduce dimensionality on the top 100 significant variants identified by the GWAS, incorporating them as genetic factors in the predictive model. We employed a machine learning algorithm capable of identifying nonlinear relationships to establish predictive models for IS patient functional outcome. The optimal model was the XGBoost model, which outperformed the logistic regression model (AUC 0.818 versus 0.756, P < .05) and significantly improved reclassification efficiency. Our study innovatively incorporated genetic, environmental, and clinical factors for predicting the IS functional outcome in East Asian populations, thereby offering novel insights into IS functional outcome.

缺血性中风(IS)是导致成人残疾的主要原因,会严重影响患者的生活质量。准确预测缺血性脑卒中的功能预后对于精确的风险分层和有效的治疗干预至关重要。我们利用第三期中国全国脑卒中登记中 7819 例 IS 患者的数据,建立了一个综合了遗传、环境和临床因素的预测模型。我们采用 80:20 的比例将数据集随机分为开发队列和内部验证队列。在内部验证队列中,我们使用接收者操作特征曲线下面积(AUC)评估了模型的判别和校准性能,并使用校准曲线评估了Brier评分。我们在开发队列中进行了全基因组关联研究(GWAS),发现rs11109607(ANKS1B)是与IS功能结果相关的最重要变异。我们采用主成分分析法降低了 GWAS 确定的前 100 个重要变异的维度,将它们作为遗传因素纳入预测模型。我们采用了一种能够识别非线性关系的机器学习算法来建立 IS 患者功能预后的预测模型。最佳模型是 XGBoost 模型,它优于逻辑回归模型(AUC 0.818 对 0.756,P
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引用次数: 0
Reconstructing tumor clonal heterogeneity and evolutionary relationships based on tumor DNA sequencing data. 基于肿瘤 DNA 测序数据重建肿瘤克隆异质性和进化关系。
IF 6.8 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2024-09-23 DOI: 10.1093/bib/bbae516
Zhen Wang, Yanhua Fang, Ruoyu Wang, Liwen Kong, Shanshan Liang, Shuai Tao

The heterogeneity of tumor clones drives the selection and evolution of distinct tumor cell populations, resulting in an intricate and dynamic tumor evolution process. While tumor bulk DNA sequencing helps elucidate intratumor heterogeneity, challenges such as the misidentification of mutation multiplicity due to copy number variations and uncertainties in the reconstruction process hinder the accurate inference of tumor evolution. In this study, we introduce a novel approach, REconstructing Tumor Clonal Heterogeneity and Evolutionary Relationships (RETCHER), which characterizes more realistic cancer cell fractions by accurately identifying mutation multiplicity while considering uncertainty during the reconstruction process and the credibility and reasonableness of subclone clustering. This method comprehensively and accurately infers multiple forms of tumor clonal heterogeneity and phylogenetic relationships. RETCHER outperforms existing methods on simulated data and infers clearer subclone structures and evolutionary relationships in real multisample sequencing data from five tumor types. By precisely analysing the complex clonal heterogeneity within tumors, RETCHER provides a new approach to tumor evolution research and offers scientific evidence for developing precise and personalized treatment strategies. This approach is expected to play a significant role in tumor evolution research, clinical diagnosis, and treatment. RETCHER is available for free at https://github.com/zlsys3/RETCHER.

肿瘤克隆的异质性推动了不同肿瘤细胞群的选择和进化,导致了错综复杂的动态肿瘤进化过程。虽然肿瘤大块DNA测序有助于阐明肿瘤内异质性,但拷贝数变异导致的突变多重性识别错误以及重建过程中的不确定性等挑战阻碍了肿瘤进化的准确推断。在这项研究中,我们引入了一种新方法--肿瘤克隆异质性和进化关系再构建(RETCHER),它通过准确识别突变多重性,同时考虑重建过程中的不确定性以及亚克隆聚类的可信度和合理性,来描述更真实的癌细胞组分。该方法全面准确地推断出多种形式的肿瘤克隆异质性和系统发育关系。RETCHER 在模拟数据上的表现优于现有方法,并能在五种肿瘤类型的真实多样本测序数据中推导出更清晰的亚克隆结构和进化关系。通过精确分析肿瘤内部复杂的克隆异质性,RETCHER 为肿瘤进化研究提供了一种新方法,并为制定精确的个性化治疗策略提供了科学依据。这种方法有望在肿瘤进化研究、临床诊断和治疗中发挥重要作用。RETCHER 可在 https://github.com/zlsys3/RETCHER 免费获取。
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引用次数: 0
Cross-population enhancement of PrediXcan predictions with a gnomAD-based east Asian reference framework. 利用基于 gnomAD 的东亚参考框架对 PrediXcan 预测进行跨人群增强。
IF 6.8 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2024-09-23 DOI: 10.1093/bib/bbae549
Han-Ching Chan, Amrita Chattopadhyay, Tzu-Pin Lu

Over the past decade, genome-wide association studies have identified thousands of variants significantly associated with complex traits. For each locus, gene expression levels are needed to further explore its biological functions. To address this, the PrediXcan algorithm leverages large-scale reference data to impute the gene expression level from single nucleotide polymorphisms, and thus the gene-trait associations can be tested to identify the candidate causal genes. However, a challenge arises due to the fact that most reference data are from subjects of European ancestry, and the accuracy and robustness of predicted gene expression in subjects of East Asian (EAS) ancestry remains unclear. Here, we first simulated a variety of scenarios to explore the impact of the level of population diversity on gene expression. Population differentiated variants were estimated by using the allele frequency information from The Genome Aggregation Database. We found that the weights of a variants was the main factor that affected the gene expression predictions, and that ~70% of variants were significantly population differentiated based on proportion tests. To provide insights into this population effect on gene expression levels, we utilized the allele frequency information to develop a gene expression reference panel, Predict Asian-Population (PredictAP), for EAS ancestry. PredictAP can be viewed as an auxiliary tool for PrediXcan when using genotype data from EAS subjects.

在过去十年中,全基因组关联研究发现了数千个与复杂性状有显著关联的变异。对于每个基因位点,都需要基因表达水平来进一步探索其生物学功能。为此,PrediXcan 算法利用大规模参考数据,从单核苷酸多态性推算基因表达水平,从而测试基因与性状的关联,找出候选因果基因。然而,由于大多数参考数据都来自欧洲血统的受试者,而东亚血统受试者的预测基因表达的准确性和稳健性仍不清楚,这就带来了挑战。在此,我们首先模拟了多种情况,以探索人群多样性水平对基因表达的影响。我们利用基因组聚合数据库(The Genome Aggregation Database)中的等位基因频率信息估算了种群差异变异。我们发现,变体的权重是影响基因表达预测的主要因素,根据比例测试,约 70% 的变体具有显著的种群差异。为了深入了解人口对基因表达水平的影响,我们利用等位基因频率信息为 EAS 祖先开发了一个基因表达参考面板,即 Predict Asian-Population (PredictAP)。在使用 EAS 受试者的基因型数据时,PredictAP 可被视为 PrediXcan 的辅助工具。
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