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TRANSFoRm Query Workbench 转换查询工作台
Pub Date : 2015-05-22 DOI: 10.1186/2043-9113-5-S1-S16
Theodoros N. Arvanitis, W. Kuchinke
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引用次数: 3
MOLGENIS catalogue MOLGENIS目录
Pub Date : 2015-05-22 DOI: 10.1186/2043-9113-5-S1-S8
M. Swertz, David van Enckevort, Chao Pang
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引用次数: 0
Comparative efficacy and acceptability of five anti-tubercular drugs in treatment of multidrug resistant tuberculosis: a network meta-analysis. 五种抗结核药物治疗耐多药结核病的比较疗效和可接受性:网络荟萃分析。
Pub Date : 2015-04-28 eCollection Date: 2015-01-01 DOI: 10.1186/s13336-015-0020-x
Huaidong Wang, Xiaotian Zhang, Yuanxiang Bai, Zipeng Duan, Yan Lin, Guoqing Wang, Fan Li

Multidrug resistant tuberculosis (MDR-TB) is a serious form of tuberculosis (TB). There is no recognized effective treatment for MDR-TB, although there are a number of publications that have reported positive results for MDR-TB. We performed a network meta-analysis to assess the efficacy and acceptability of potential antitubercular drugs. We conducted a network meta-analysis of randomized controlled clinical trials to compare the efficacy and acceptability of five antitubercular drugs, bedaquiline, delamanid, levofloxacin, metronidazole and moxifloxacin in the treatment of MDR-TB. We included eleven suitable trials from nine journal articles and six clinical trials from ClinicalTrials.gov, with data for 1472 participants. Bedaquiline (odds ratio [OR] 2.69, 95% CI 1.02-7.43), delamanid (OR 2.45, 95% CI 1.36-4.89) and moxifloxacin (OR 2.47, 95% CI 1.01, 7.31) were significantly more effective than placebo. For efficacy, the results indicated no statistical significance between each antitubercular drug. For acceptability, the results indicated no statistically significant difference between each compared intervention. There is insufficient evidence to suggest that any one of the five antitubercular drugs (bedaquiline, delamanid, levofloxacin, metronidazole and moxifloxacin) has superior efficacy compared to the others.

耐多药结核病(MDR-TB)是结核病的一种严重形式。目前还没有公认的耐多药结核病的有效治疗方法,尽管有一些出版物报道了耐多药结核病的积极结果。我们进行了一项网络荟萃分析,以评估潜在抗结核药物的疗效和可接受性。我们对随机对照临床试验进行了网络meta分析,比较贝达喹啉、德拉马尼、左氧氟沙星、甲硝唑和莫西沙星五种抗结核药物治疗耐多药结核病的疗效和可接受性。我们从9篇期刊文章中纳入了11项合适的试验,并从ClinicalTrials.gov网站上纳入了6项临床试验,共有1472名参与者的数据。贝达喹啉(比值比[OR] 2.69, 95% CI 1.02-7.43)、德拉马尼(比值比[OR] 2.45, 95% CI 1.36-4.89)和莫西沙星(比值比[OR] 2.47, 95% CI 1.01, 7.31)显著优于安慰剂。疗效方面,各抗结核药物间比较无统计学意义。对于可接受性,结果显示各比较干预之间无统计学显著差异。没有足够的证据表明五种抗结核药物(贝达喹啉、德拉马尼、左氧氟沙星、甲硝唑和莫西沙星)中的任何一种比其他药物具有更好的疗效。
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引用次数: 4
Clinical decision support systems for improving diagnostic accuracy and achieving precision medicine. 用于提高诊断准确性和实现精准医疗的临床决策支持系统。
Pub Date : 2015-03-26 eCollection Date: 2015-01-01 DOI: 10.1186/s13336-015-0019-3
Christian Castaneda, Kip Nalley, Ciaran Mannion, Pritish Bhattacharyya, Patrick Blake, Andrew Pecora, Andre Goy, K Stephen Suh

As research laboratories and clinics collaborate to achieve precision medicine, both communities are required to understand mandated electronic health/medical record (EHR/EMR) initiatives that will be fully implemented in all clinics in the United States by 2015. Stakeholders will need to evaluate current record keeping practices and optimize and standardize methodologies to capture nearly all information in digital format. Collaborative efforts from academic and industry sectors are crucial to achieving higher efficacy in patient care while minimizing costs. Currently existing digitized data and information are present in multiple formats and are largely unstructured. In the absence of a universally accepted management system, departments and institutions continue to generate silos of information. As a result, invaluable and newly discovered knowledge is difficult to access. To accelerate biomedical research and reduce healthcare costs, clinical and bioinformatics systems must employ common data elements to create structured annotation forms enabling laboratories and clinics to capture sharable data in real time. Conversion of these datasets to knowable information should be a routine institutionalized process. New scientific knowledge and clinical discoveries can be shared via integrated knowledge environments defined by flexible data models and extensive use of standards, ontologies, vocabularies, and thesauri. In the clinical setting, aggregated knowledge must be displayed in user-friendly formats so that physicians, non-technical laboratory personnel, nurses, data/research coordinators, and end-users can enter data, access information, and understand the output. The effort to connect astronomical numbers of data points, including '-omics'-based molecular data, individual genome sequences, experimental data, patient clinical phenotypes, and follow-up data is a monumental task. Roadblocks to this vision of integration and interoperability include ethical, legal, and logistical concerns. Ensuring data security and protection of patient rights while simultaneously facilitating standardization is paramount to maintaining public support. The capabilities of supercomputing need to be applied strategically. A standardized, methodological implementation must be applied to developed artificial intelligence systems with the ability to integrate data and information into clinically relevant knowledge. Ultimately, the integration of bioinformatics and clinical data in a clinical decision support system promises precision medicine and cost effective and personalized patient care.

随着研究实验室和诊所合作实现精准医疗,两个社区都需要了解强制性的电子健康/医疗记录(EHR/EMR)倡议,该倡议将于2015年在美国所有诊所全面实施。利益相关者将需要评估当前的记录保存实践,并优化和标准化方法,以获取几乎所有的数字格式信息。学术和工业部门的合作努力对于实现患者护理的更高功效,同时最大限度地降低成本至关重要。目前现有的数字化数据和信息以多种格式存在,并且大部分是非结构化的。在缺乏普遍接受的管理制度的情况下,各部门和机构继续产生信息孤岛。因此,宝贵的和新发现的知识很难获得。为了加速生物医学研究并降低医疗成本,临床和生物信息学系统必须采用通用数据元素来创建结构化注释表单,从而使实验室和诊所能够实时捕获可共享的数据。将这些数据集转换为可知信息应该是一个常规的制度化过程。新的科学知识和临床发现可以通过集成的知识环境共享,这些环境由灵活的数据模型和广泛使用的标准、本体、词汇表和辞典定义。在临床环境中,汇总的知识必须以用户友好的格式显示,以便医生、非技术实验室人员、护士、数据/研究协调员和最终用户可以输入数据、访问信息并理解输出。连接天文数字数据点的努力,包括基于“组学”的分子数据、个体基因组序列、实验数据、患者临床表型和随访数据,是一项艰巨的任务。实现这一集成和互操作性愿景的障碍包括道德、法律和后勤方面的问题。确保数据安全和保护患者权利,同时促进标准化,对于保持公众支持至关重要。超级计算的能力需要战略性地加以应用。标准化的方法学实施必须应用于开发的人工智能系统,该系统具有将数据和信息整合到临床相关知识中的能力。最终,将生物信息学和临床数据集成到临床决策支持系统中,可以实现精准医疗、成本效益和个性化患者护理。
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引用次数: 258
Metabolomics and partial least square discriminant analysis to predict history of myocardial infarction of self-claimed healthy subjects: validity and feasibility for clinical practice. 代谢组学和偏最小二乘判别分析预测自称健康受试者心肌梗死史:临床实践的有效性和可行性
Pub Date : 2015-03-13 eCollection Date: 2015-01-01 DOI: 10.1186/s13336-015-0018-4
Nornazliya Mohamad, Rose Iszati Ismet, MohdSalleh Rofiee, Zakaria Bannur, Thomas Hennessy, Manikandan Selvaraj, Aminuddin Ahmad, FadzilahMohd Nor, ThuhairahHasrah Abdul Rahman, Kamarudzaman Md Isa, AdzroolIdzwan Ismail, Lay Kek Teh, Mohd Zaki Salleh

Background: The dynamics of metabolomics in establishing a prediction model using partial least square discriminant analysis have enabled better disease diagnosis; with emphasis on early detection of diseases. We attempted to translate the metabolomics model to predict the health status of the Orang Asli community whom we have little information. The metabolite expressions of the healthy vs. diseased patients (cardiovascular) were compared. A metabotype model was developed and validated using partial least square discriminant analysis (PLSDA). Cardiovascular risks of the Orang Asli were predicted and confirmed by biochemistry profiles conducted concurrently.

Results: Fourteen (14) metabolites were determined as potential biomarkers for cardiovascular risks with receiver operating characteristic of more than 0.7. They include 15S-HETE (AUC = 0.997) and phosphorylcholine (AUC = 0.995). Seven Orang Asli were clustered with the patients' group and may have ongoing cardiovascular risks and problems. This is supported by biochemistry tests results that showed abnormalities in cholesterol, triglyceride, HDL and LDL levels.

Conclusions: The disease prediction model based on metabolites is a useful diagnostic alternative as compared to the current single biomarker assays. The former is believed to be more cost effective since a single sample run is able to provide a more comprehensive disease profile, whilst the latter require different types of sampling tubes and blood volumes.

背景:利用偏最小二乘判别分析建立代谢组学的动态预测模型,可以更好地进行疾病诊断;强调疾病的早期发现。我们试图翻译代谢组学模型来预测我们知之甚少的原住民社区的健康状况。比较健康和患病患者(心血管)的代谢物表达。利用偏最小二乘判别分析(PLSDA)建立了代谢型模型并进行了验证。同时进行的生物化学分析预测和证实了猩猩的心血管风险。结果:14种代谢物被确定为心血管风险的潜在生物标志物,受试者工作特征大于0.7。其中15S-HETE (AUC = 0.997)和磷酸胆碱(AUC = 0.995)。7只猩猩与患者组聚集在一起,可能有持续的心血管风险和问题。生物化学测试结果显示胆固醇、甘油三酯、高密度脂蛋白和低密度脂蛋白水平异常,这也支持了这一观点。结论:与目前的单一生物标志物分析相比,基于代谢物的疾病预测模型是一种有用的诊断选择。前者被认为更具成本效益,因为单次取样能够提供更全面的疾病概况,而后者需要不同类型的采样管和血容量。
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引用次数: 14
Variations in genome-wide RNAi screens: lessons from influenza research. 全基因组RNAi筛选的变异:来自流感研究的教训。
Pub Date : 2015-03-03 eCollection Date: 2015-01-01 DOI: 10.1186/s13336-015-0017-5
Yu-Chi Chou, Michael Mc Lai, Yi-Chen Wu, Nai-Chi Hsu, King-Song Jeng, Wen-Chi Su

Genome-wide RNA interference (RNAi) screening is an emerging and powerful technique for genetic screens, which can be divided into arrayed RNAi screen and pooled RNAi screen/selection based on different screening strategies. To date, several genome-wide RNAi screens have been successfully performed to identify host factors essential for influenza virus replication. However, the host factors identified by different research groups are not always consistent. Taking influenza virus screens as an example, we found that a number of screening parameters may directly or indirectly influence the primary hits identified by the screens. This review highlights the differences among the published genome-wide screening approaches and offers recommendations for performing a good pooled shRNA screen/selection.

全基因组RNA干扰(Genome-wide RNA interference, RNAi)筛选是一种新兴的、功能强大的基因筛选技术,可根据筛选策略的不同分为阵列RNAi筛选和集合RNAi筛选/选择。迄今为止,已经成功地进行了几次全基因组RNAi筛选,以确定流感病毒复制所必需的宿主因子。然而,不同研究小组确定的宿主因素并不总是一致的。以流感病毒筛选为例,我们发现许多筛选参数可能直接或间接影响筛选确定的初级命中。这篇综述强调了已发表的全基因组筛选方法之间的差异,并为进行良好的shRNA筛选/选择提供了建议。
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引用次数: 24
K-core decomposition of a protein domain co-occurrence network reveals lower cancer mutation rates for interior cores. 蛋白质结构域共发生网络的k核心分解揭示了内部核心较低的癌症突变率。
Pub Date : 2015-03-03 eCollection Date: 2015-01-01 DOI: 10.1186/s13336-015-0016-6
Arnold I Emerson, Simeon Andrews, Ikhlak Ahmed, Thasni Ka Azis, Joel A Malek

Background: Network biology currently focuses primarily on metabolic pathways, gene regulatory, and protein-protein interaction networks. While these approaches have yielded critical information, alternative methods to network analysis will offer new perspectives on biological information. A little explored area is the interactions between domains that can be captured using domain co-occurrence networks (DCN). A DCN can be used to study the function and interaction of proteins by representing protein domains and their co-existence in genes and by mapping cancer mutations to the individual protein domains to identify signals.

Results: The domain co-occurrence network was constructed for the human proteome based on PFAM domains in proteins. Highly connected domains in the central cores were identified using the k-core decomposition technique. Here we show that these domains were found to be more evolutionarily conserved than the peripheral domains. The somatic mutations for ovarian, breast and prostate cancer diseases were obtained from the TCGA database. We mapped the somatic mutations to the individual protein domains and the local false discovery rate was used to identify significantly mutated domains in each cancer type. Significantly mutated domains were found to be enriched in cancer disease pathways. However, we found that the inner cores of the DCN did not contain any of the significantly mutated domains. We observed that the inner core protein domains are highly conserved and these domains co-exist in large numbers with other protein domains.

Conclusion: Mutations and domain co-occurrence networks provide a framework for understanding hierarchal designs in protein function from a network perspective. This study provides evidence that a majority of protein domains in the inner core of the DCN have a lower mutation frequency and that protein domains present in the peripheral regions of the k-core contribute more heavily to the disease. These findings may contribute further to drug development.

背景:网络生物学目前主要关注代谢途径、基因调控和蛋白质-蛋白质相互作用网络。虽然这些方法已经产生了重要的信息,但网络分析的替代方法将为生物信息提供新的视角。一个很少被探索的领域是可以使用域共现网络(DCN)捕获的域之间的相互作用。DCN可用于研究蛋白质的功能和相互作用,通过表示蛋白质结构域及其在基因中的共存,并通过将癌症突变映射到单个蛋白质结构域来识别信号。结果:构建了基于PFAM结构域的人类蛋白质组结构域共现网络。利用k核分解技术确定了中心核中的高连接结构域。在这里,我们发现这些结构域比外周结构域更具有进化保守性。从TCGA数据库中获得卵巢癌、乳腺癌和前列腺癌的体细胞突变。我们将体细胞突变映射到单个蛋白质结构域,并使用局部错误发现率来识别每种癌症类型中的显著突变结构域。发现在癌症疾病途径中富集了显著突变的结构域。然而,我们发现DCN的内核不包含任何显著突变的结构域。我们观察到内核蛋白结构域是高度保守的,并且这些结构域与其他蛋白结构域大量共存。结论:突变和结构域共现网络为从网络角度理解蛋白质功能的层次设计提供了一个框架。该研究提供的证据表明,DCN内核的大多数蛋白质结构域具有较低的突变频率,而k核外周区域存在的蛋白质结构域对该疾病的贡献更大。这些发现可能有助于进一步的药物开发。
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引用次数: 10
Copy number variation analysis based on AluScan sequences. 基于AluScan序列的拷贝数变异分析。
Pub Date : 2014-12-05 eCollection Date: 2014-01-01 DOI: 10.1186/s13336-014-0015-z
Jian-Feng Yang, Xiao-Fan Ding, Lei Chen, Wai-Kin Mat, Michelle Zhi Xu, Jin-Fei Chen, Jian-Min Wang, Lin Xu, Wai-Sang Poon, Ava Kwong, Gilberto Ka-Kit Leung, Tze-Ching Tan, Chi-Hung Yu, Yue-Bin Ke, Xin-Yun Xu, Xiao-Yan Ke, Ronald Cw Ma, Juliana Cn Chan, Wei-Qing Wan, Li-Wei Zhang, Yogesh Kumar, Shui-Ying Tsang, Shao Li, Hong-Yang Wang, Hong Xue

Background: AluScan combines inter-Alu PCR using multiple Alu-based primers with opposite orientations and next-generation sequencing to capture a huge number of Alu-proximal genomic sequences for investigation. Its requirement of only sub-microgram quantities of DNA facilitates the examination of large numbers of samples. However, the special features of AluScan data rendered difficult the calling of copy number variation (CNV) directly using the calling algorithms designed for whole genome sequencing (WGS) or exome sequencing.

Results: In this study, an AluScanCNV package has been assembled for efficient CNV calling from AluScan sequencing data employing a Geary-Hinkley transformation (GHT) of read-depth ratios between either paired test-control samples, or between test samples and a reference template constructed from reference samples, to call the localized CNVs, followed by use of a GISTIC-like algorithm to identify recurrent CNVs and circular binary segmentation (CBS) to reveal large extended CNVs. To evaluate the utility of CNVs called from AluScan data, the AluScans from 23 non-cancer and 38 cancer genomes were analyzed in this study. The glioma samples analyzed yielded the familiar extended copy-number losses on chromosomes 1p and 9. Also, the recurrent somatic CNVs identified from liver cancer samples were similar to those reported for liver cancer WGS with respect to a striking enrichment of copy-number gains in chromosomes 1q and 8q. When localized or recurrent CNV-features capable of distinguishing between liver and non-liver cancer samples were selected by correlation-based machine learning, a highly accurate separation of the liver and non-liver cancer classes was attained.

Conclusions: The results obtained from non-cancer and cancerous tissues indicated that the AluScanCNV package can be employed to call localized, recurrent and extended CNVs from AluScan sequences. Moreover, both the localized and recurrent CNVs identified by this method could be subjected to machine-learning selection to yield distinguishing CNV-features that were capable of separating between liver cancers and other types of cancers. Since the method is applicable to any human DNA sample with or without the availability of a paired control, it can also be employed to analyze the constitutional CNVs of individuals.

背景:AluScan将基于多个方向相反的alu引物的inter-Alu PCR与下一代测序相结合,捕获大量的Alu-proximal基因组序列进行研究。它只需要亚微克数量的DNA,便于对大量样品进行检查。然而,由于AluScan数据的特殊性,直接使用全基因组测序(WGS)或外显子组测序设计的调用算法难以调用拷贝数变异(CNV)。结果:在本研究中,我们组装了一个AluScanCNV包,利用配对测试-对照样本之间或测试样本与参考样本构建的参考模板之间的读深比的ge加里-欣克利转换(GHT),从AluScan测序数据中高效调用CNV,调用本地化的CNV,然后使用类似gistics的算法识别循环CNV和循环二值分割(CBS),以揭示大的扩展CNV。为了评估从AluScan数据中调用的CNVs的效用,本研究分析了来自23个非癌症和38个癌症基因组的AluScan。分析的胶质瘤样本在染色体1p和9上产生了常见的延长拷贝数损失。此外,在1q和8q染色体拷贝数增益的显著富集方面,从肝癌样本中鉴定出的复发性体细胞CNVs与肝癌WGS中报道的相似。当通过基于相关性的机器学习选择能够区分肝癌和非肝癌样本的局部或复发性cnv特征时,实现了肝癌和非肝癌类别的高度精确分离。结论:从非癌组织和癌组织中获得的结果表明,AluScanCNV包可用于调用来自AluScan序列的定位、复发和扩展的cnv。此外,通过这种方法识别的局部和复发性cnv都可以进行机器学习选择,以产生能够区分肝癌和其他类型癌症的区分cnv特征。由于该方法适用于任何有或没有配对对照的人类DNA样本,因此它也可用于分析个体的体质CNVs。
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引用次数: 12
Analysis for co-occurring sequence features identifies link between common synonymous variant and an early-terminated NPC1 isoform 对共发生序列特征的分析确定了常见同义变体与早期终止的NPC1亚型之间的联系
Pub Date : 2014-11-21 DOI: 10.1186/2043-9113-4-14
Mercedeh Movassagh, P. Mudvari, M. Kokkinaki, N. Edwards, N. Golestaneh, A. Horvath
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引用次数: 0
Semi-automated literature mining to identify putative biomarkers of disease from multiple biofluids. 半自动文献挖掘,从多种生物体液中识别假定的疾病生物标志物。
Pub Date : 2014-10-23 eCollection Date: 2014-01-01 DOI: 10.1186/2043-9113-4-13
Rick Jordan, Shyam Visweswaran, Vanathi Gopalakrishnan

Background: Computational methods for mining of biomedical literature can be useful in augmenting manual searches of the literature using keywords for disease-specific biomarker discovery from biofluids. In this work, we develop and apply a semi-automated literature mining method to mine abstracts obtained from PubMed to discover putative biomarkers of breast and lung cancers in specific biofluids.

Methodology: A positive set of abstracts was defined by the terms 'breast cancer' and 'lung cancer' in conjunction with 14 separate 'biofluids' (bile, blood, breastmilk, cerebrospinal fluid, mucus, plasma, saliva, semen, serum, synovial fluid, stool, sweat, tears, and urine), while a negative set of abstracts was defined by the terms '(biofluid) NOT breast cancer' or '(biofluid) NOT lung cancer.' More than 5.3 million total abstracts were obtained from PubMed and examined for biomarker-disease-biofluid associations (34,296 positive and 2,653,396 negative for breast cancer; 28,355 positive and 2,595,034 negative for lung cancer). Biological entities such as genes and proteins were tagged using ABNER, and processed using Python scripts to produce a list of putative biomarkers. Z-scores were calculated, ranked, and used to determine significance of putative biomarkers found. Manual verification of relevant abstracts was performed to assess our method's performance.

Results: Biofluid-specific markers were identified from the literature, assigned relevance scores based on frequency of occurrence, and validated using known biomarker lists and/or databases for lung and breast cancer [NCBI's On-line Mendelian Inheritance in Man (OMIM), Cancer Gene annotation server for cancer genomics (CAGE), NCBI's Genes & Disease, NCI's Early Detection Research Network (EDRN), and others]. The specificity of each marker for a given biofluid was calculated, and the performance of our semi-automated literature mining method assessed for breast and lung cancer.

Conclusions: We developed a semi-automated process for determining a list of putative biomarkers for breast and lung cancer. New knowledge is presented in the form of biomarker lists; ranked, newly discovered biomarker-disease-biofluid relationships; and biomarker specificity across biofluids.

背景:生物医学文献挖掘的计算方法可用于增加使用关键字从生物流体中发现疾病特异性生物标志物的文献的手动搜索。在这项工作中,我们开发并应用了一种半自动文献挖掘方法来挖掘从PubMed获得的摘要,以发现特定生物体液中乳腺癌和肺癌的推定生物标志物。方法:阳性摘要用术语“乳腺癌”和“肺癌”以及14种单独的“生物液体”(胆汁、血液、母乳、脑脊液、粘液、血浆、唾液、精液、血清、滑液、粪便、汗液、眼泪和尿液)来定义,而阴性摘要用术语“(生物液体)非乳腺癌”或“(生物液体)非肺癌”来定义。从PubMed获得了530多万份摘要,并检查了生物标志物-疾病-生物流体相关性(乳腺癌阳性34296例,阴性2653396例;28,355例肺癌呈阳性,2,595,034例呈阴性)。使用ABNER对基因和蛋白质等生物实体进行标记,并使用Python脚本进行处理,以产生假定的生物标记物列表。计算z分数,排序,并用于确定发现的假定生物标志物的显著性。对相关摘要进行了人工验证,以评估我们的方法的性能。结果:从文献中识别出生物液体特异性标志物,根据发生频率分配相关性评分,并使用已知的生物标志物列表和/或肺癌和乳腺癌数据库[NCBI的在线孟德尔遗传(OMIM),癌症基因组学的癌症基因注释服务器(CAGE), NCBI的基因与疾病,NCI的早期检测研究网络(EDRN)等]进行验证。计算了给定生物流体的每个标记物的特异性,并评估了我们的半自动文献挖掘方法在乳腺癌和肺癌方面的性能。结论:我们开发了一种半自动化的过程来确定乳腺癌和肺癌的假定生物标志物列表。新知识以生物标志物列表的形式呈现;排名,新发现的生物标志物-疾病-生物流体关系;以及生物流体的生物标志物特异性。
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引用次数: 6
期刊
Journal of clinical bioinformatics
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