《代谢组学介绍》PPT课件

上传人:huo****ian 文档编号:245080936 上传时间:2024-10-07 格式:PPT 页数:25 大小:3.11MB
返回 下载 相关 举报
《代谢组学介绍》PPT课件_第1页
第1页 / 共25页
《代谢组学介绍》PPT课件_第2页
第2页 / 共25页
《代谢组学介绍》PPT课件_第3页
第3页 / 共25页
点击查看更多>>
资源描述
单击此处编辑母版标题样式,单击此处编辑母版文本样式,第二级,Introduction of metabonomics/metabolomics,2009-06-26,The flow of the “omics” sciences: genomics, proteomics, and metabolomics,Spratlin J.L. ,et al,.,Clin Cancer Res, 2009 January 15, 15(2):431-440,Whats in a name?,Metabolome,“,refers to the complete set of small-molecule metabolites (such as metabolic intermediates, hormones and other signalling molecules, and secondary metabolites) to be found within a biological sample, such as a single organism,”,Oliver,et al.,1998,代谢组,“是,指基因组的所有下游产物也即最终产物的组合,这些产物是一些参与生物新陈代谢、维持生物体正常功能和生长发育的小分子化合物,主要是相对分子量小于,1000Da,的内源性小分子,”,许国旺著,.,代谢组学,-,方法与应用,科学出版社,,2008,年第一版,:,第一章,P1-10,Metabo,n,omics,“,measurement of the dynamic multiparametric metabolic response of living systems to pathophysiological stimuli or genetic modification”,Nicholson,et al.,1999,Metabo,l,omics,“.the complete set of metabolites/low-molecular-weight intermediates, which are context dependent, varying according to the physiology, developmental or pathological state of the cell, tissue, organ or organism”,Oliver,2002,代谢组学,“是通过考察生物体系(细胞、组织或生物体)受到刺激或扰动后(如将某个特定的基因变异或者环境变化后),其代谢产物的变化或其随时间的变化,来研究生物体系的一门科学” 许国旺,2008,Whats in a name?,A,nalytical plat-forms,:,(1),Nuclear magnetic resonance (NMR);,(2) Gas ChromatographyMass Spectrometry (,GC-MS,);,(3),Liquid Chromatography-Mass Spectrometry (,LC-MS,); etc.,GC-MS,LC-MS,Metadata obtain,Tao X.M.,et al,.,Anal Bioanal Chem,., 2008, 391:2881-2889,Total ion chromatogram,Data obtain,(1) Filtering and peak detection,滤噪、峰检测,(2) Deconvolution,重叠峰解析,(,3,),Peak alignment,峰对齐、匹配,(,4,),Normalization,归一化,Data analysis and interpretation,(5),非监督的模式识别方法:,利用获取的样本信息,对样本进行归类,并采用相应的可视化技术直观的表达出来,不需要有关样品分类的任何背景信息。该方法将得到的分类信息和这些样本的原始信息(如疾病的种)进行比较,建立代谢产物与这些原始信息的联系,筛选与原始信息相关的标志物,进而考察其中的代谢途径。,常用的非监督学习方法如,主成分分析,(principal components analysis),系统聚类分析,主成分分析的基本思想:,对变量,X,进行线性变换,形成新的综合变量,PC,;根据实际需要选择,2-3,个,PC,进行分析,以达到降维和简化问题的作用(多元 二元,/,三元),PC1=a,11,X,1,+a,21,X,2,+,+a,p1,X,p,PC2=a,12,X,1,+a,22,X,2,+,+a,p2,X,p,许国旺等著,.,代谢组学,-,方法与应用,科学出版社,,2008,年第一版,:,第,12,章,146-156,PCA scores plot of onset ALL and AML patients,Data analysis,(6),有监督的模式识别方法:,利用一组已知分类的样本作为训练集,让计算机对其进行学习,获取分类的基本模型,进而可以利用这种模型对另一组分类未知的样本进行类别识别。,常用的有监督学习方法如,偏最小二乘判别分析,(Partial least squares-discriminant analysis,,,PLS-DA),,正交偏最小二乘判别分析,费舍尔线性判别分析,许国旺等著,.,代谢组学,-,方法与应用,科学出版社,,2008,年第一版,:12,146-156,偏最小二乘法分析思想,对变量进行分类:设定,p,个因变量,Y,1, Y,p,和,m,个自变量,X,1, ,,,Xm,,对两类变量进行建模。提取自变量的第一成分,T,1,和因变量的第一成分,U1,,,使,T,1,和,U,1,相关程度达最大,然后建立,U1,和,T1,的回归方程;如果回归方程未达到满意的精度,则用同样的方法提取,T,2,和,U,2,。,T,1,=w,11,X,1,+,+w,1m,X,m,T,2,=w,21,X,1,+ +w,2m,X,m,判别分析思想,应变量为定性变量,且分组类型在两组以上;自变量为可测量的度量变量。计算(线性)判别式;将自变量代入判别式,计算每个观察样本的判别,Z,得分,然后根据得分值对其进行归类。,t(1),t(2),The scores t, one vector for each model dimension, are new variables computed as linear combinations of the Xs. They provide a summary of X that both approximate X and predict Y.,PLS-DA scores plot of onset ALL and AML patients,Other statistic approaches, such as,t,test,and,ANOVA, are alternatives at this step.,VIP (variable importance in the projection ) values,The influence of every term in the matrix X on all the Ys. VIP is normalized so that Sum (VIP),2,= K (number of terms in the matrix X). Terms with VIP 1 have an above average influence on Y.,Deviation of each variables from ALL,(standard deviations from average),Potential biomarker identification:,standard Students,t,test,or,ANOVA,Blind prediction test of PLSDA model,Y-Predicted,Three major steps of metabolomics analysis,Spratlin J.L. ,et al,.,Clin Cancer Res, 2009 January 15, 15(2):431-440,Clinical applications of metabolomics in oncology,1. Search,early diagnostic biomarkers,Breast cancer: tCho glycerophosphocholine glucose,2.,R,esponse,a,ssessment,to,chemical drugs/,therapy,treatments,Both as a predictive measure of efficacy and a pharmacodynamic marker,Tiziani S, Lodi A, Khanim FL, Viant MR, Bunce CM,et al. PLoS ONE, 2009, 4(1):e4251,Bathen TF,et al.,Breast Cancer Res Treat, 2007;104:181189.,Some knowledge about prostate cancer,1.,Prostate cancer the most frequently diagnosed cancer in men,2. current diagnostic methods:,using a combination of digital rectal examination and measuring the levels of the enzyme PSA in the blood serum,3. limitation of current diagnosis: the features of this kind of cancer are notoriously variable among patients.,Metabolomic profiling of prostate cancer,Screekumar A.,et al,.,Nature, 2009 Feruary 12, 457(7231):910-914,a,Venn diagram of the total metabolites detected across 42 prostate-related tissues and,110 matched plasma and urine samples.,b,Venn diagram of 626 metabolites in tissues measured across 16 benign adjacent,prostate tissues, 12 clinically localized prostate cancers (PCA) and 14 metastatic,prostate cancers (Mets),Screekumar A.,et al,.,Nature, 2009 Feruary 12, 457(7231):910-914,Metabolomic profiling of prostate cancer,Screekumar A.,et al,.,Nature, 2009 Feruary 12, 457(7231):910-914,Hierarchical,cluster,analysis of prostate tissue samples,Screekumar A.,et al,.,Nature, 2009 Feruary 12, 457(7231):910-914,blue circles-benign adjacent prostate,yellow squares-localized prostate cancer,red triangles-metastatic prostate cancer,Principal components analysis of prostate tissue samples,Screekumar A.,et al,.,Nature, 2009 Feruary 12, 457(7231):910-914,blue-benign; yellow-localized,two-tailed Wilcoxon rank sum test,Screekumar A.,et al,.,Nature, 2009 Feruary 12, 457(7231):910-914,yellow-localized; red-metastatic,Screekumar A.,et al,.,Nature, 2009 Feruary 12, 457(7231):910-914,A role for sarcosine in prostate cancer cell invasion and androgen signaling,Thank you,
展开阅读全文
相关资源
正为您匹配相似的精品文档
相关搜索

最新文档


当前位置:首页 > 图纸专区 > 课件教案


copyright@ 2023-2025  zhuangpeitu.com 装配图网版权所有   联系电话:18123376007

备案号:ICP2024067431-1 川公网安备51140202000466号


本站为文档C2C交易模式,即用户上传的文档直接被用户下载,本站只是中间服务平台,本站所有文档下载所得的收益归上传人(含作者)所有。装配图网仅提供信息存储空间,仅对用户上传内容的表现方式做保护处理,对上载内容本身不做任何修改或编辑。若文档所含内容侵犯了您的版权或隐私,请立即通知装配图网,我们立即给予删除!