ImageVerifierCode 换一换
格式:PPT , 页数:21 ,大小:149.50KB ,
资源ID:379369      下载积分:2000 积分
快捷下载
登录下载
邮箱/手机:
温馨提示:
如需开发票,请勿充值!快捷下载时,用户名和密码都是您填写的邮箱或者手机号,方便查询和重复下载(系统自动生成)。
如填写123,账号就是123,密码也是123。
特别说明:
请自助下载,系统不会自动发送文件的哦; 如果您已付费,想二次下载,请登录后访问:我的下载记录
支付方式: 支付宝扫码支付 微信扫码支付   
注意:如需开发票,请勿充值!
验证码:   换一换

加入VIP,免费下载
 

温馨提示:由于个人手机设置不同,如果发现不能下载,请复制以下地址【http://www.mydoc123.com/d-379369.html】到电脑端继续下载(重复下载不扣费)。

已注册用户请登录:
账号:
密码:
验证码:   换一换
  忘记密码?
三方登录: 微信登录  

下载须知

1: 本站所有资源如无特殊说明,都需要本地电脑安装OFFICE2007和PDF阅读器。
2: 试题试卷类文档,如果标题没有明确说明有答案则都视为没有答案,请知晓。
3: 文件的所有权益归上传用户所有。
4. 未经权益所有人同意不得将文件中的内容挪作商业或盈利用途。
5. 本站仅提供交流平台,并不能对任何下载内容负责。
6. 下载文件中如有侵权或不适当内容,请与我们联系,我们立即纠正。
7. 本站不保证下载资源的准确性、安全性和完整性, 同时也不承担用户因使用这些下载资源对自己和他人造成任何形式的伤害或损失。

版权提示 | 免责声明

本文(Categorical Data Analysis-Stratified Analyses, Matching, and .ppt)为本站会员(progressking105)主动上传,麦多课文库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。 若此文所含内容侵犯了您的版权或隐私,请立即通知麦多课文库(发送邮件至master@mydoc123.com或直接QQ联系客服),我们立即给予删除!

Categorical Data Analysis-Stratified Analyses, Matching, and .ppt

1、Categorical Data Analysis: Stratified Analyses, Matching, and Agreement Statistics,Biostatistics 510 13-15 March 2007 Carla Talarico,Overview,Variable stratification Cochran-Mantel-Haenszel (CMH) statistics Matching and matched data Agreement statistics McNemars Test Cohens Kappa,Stratification by a

2、 Third Variable,Exposure of interest Disease outcome Third variable, e.g., confounder,Confounding,Effect of exposure on disease may be different in the presence of a third variable (“Confounder”) Reflects the fact that epidemiologic research is conducted among humans with unevenly distributed charac

3、teristics Results because of a lack of comparability between the exposed and unexposed groups in the base population,Controlling for Confounding,Design phase of studies Randomization in experimental studies Restriction Matching Analysis phase Stratified analysis Model fitting,Stratified Analyses: Th

4、e CMH Option in SAS,Gives a stratified statistical analysis of the relationship between Exposure (E) and Disease (D), after controlling for a Confounder (C):,Proc freq;tables C * E * D / cmh; Run;,Proc freq;tables C1 * C2 * E * D / cmh; Run;,Can simultaneously stratify by multiple confounders:,Estim

5、ates of Common Relative Risk for 2x2 Tables,Adjusted odds ratio (OR) and relative risk (RR) for stratified 2x2 tables with 95% CL Obtain OR and RR estimates for association between Exposure and Disease, adjusted for the Confounder For this course, report the Mantel-Haenszel estimate of the common od

6、ds ratio, ORMH,Breslow-Day Test for Homogeneity of the Odds Ratios,For stratified 2x2 tables Null hypothesis is that the ORs are equal across all strata 2 distribution with q 1 df, where q is the number of strata Alternative hypothesis is that at least one stratum-specific OR differs from other stra

7、tum-specific ORs,2BD (cont),If reject H0 for 2BD test: There is evidence for heterogeneity of ORs across strata; not appropriate to report the adjusted common OR Report the stratum-specific ORs when effect modification is present,CMH Statistic 1: Nonzero Correlation,Tests the null hypothesis of no a

8、ssociation vs. the alternative hypothesis that there is a linear association between the row and column variables in at least one stratum Both row and column variables have to be ordinal Under H0, 2 with 1 df,CMH Statistic 2: Row Mean Scores Differ,Tests the null hypothesis of no association vs. the

9、 alternative hypothesis that the mean scores of the table rows are unequal for at least one stratum Useful only when the column variable is ordinal Under H0, 2 with (r 1) df,CMH Statistic 3: General Association,Tests the null hypothesis of no association vs. the alternative hypothesis that there is

10、some kind of association between the row and column variables for at least one stratum Does not require the row or column variable to be ordinal Under H0, 2 with (r 1)(c 1) df,Matching,Control for confounding more efficiently than if the matching had not been performed Design phase of a study Gain s

11、tatistical efficiency in effect estimation,Matching (cont),Select comparison participants into a study such that they are the same (or nearly the same) on certain variable(s) Matched design requires a matched analysis Once match on a variable, the effect of that variable cannot be estimated in your

12、data set,Matched Data and the AGREE Option in SAS,AGREE option computes tests and measures of agreement for square tables (where the number of rows equal the number of columns),AGREE Option in SAS,AGREE option generates:-McNemars Test-Kappa-Weighted Kappa,McNemars Test of Symmetry for Matched Sample

13、s,For 2x2 tables Appropriate when have data from matched pairs of subjects with a dichotomous (yes/no) outcome Null hypothesis of marginal homogeneity Werner data set of matched pairs, comparing proportion of women with high cholesterol who take birth control pill to the proportion of women with hig

14、h cholesterol who do not take the pill2 distribution with 1 df,McNemars Test for Matched Proportions,Werner data set with age-matched pairs,2M = (21 23)2(21 +23)= 0.0909,There are 92 pairs. 45.65% of the NoPill group have high chol. 47.83% of the Pill group have high chol.,Simple Kappa Coefficient (

15、Cohens Kappa),Measure of inter-rater agreement, corrected for chanceScale from -1 to +1 = +1 when there is perfect agreement = 0 when the agreement equals that expected by chance Magnitude of Kappa reflects the strength of the agreement, beyond chance,Cohens Kappa (cont),SAS gives 95% CI for Kappa K

16、appa Guidelines (Landis and Koch),Good Resources for Categorical Data Analysis and SAS,SAS: Categorical Data Analysis Using The SAS System by Maura E. Stokes, Charles S. Davis, and Gary G. Koch. 2nd Ed, SAS Institute Inc., Cary, NC, 2000. See pages 155-156 of Biostat 510 course pack Kappa: “The Measurement of Observer Agreement for Categorical Data,” by J. Richard Landis and Gary G. Koch. Biometrics 33(1):159-174, 1977,

copyright@ 2008-2019 麦多课文库(www.mydoc123.com)网站版权所有
备案/许可证编号:苏ICP备17064731号-1