Covariate-adjusted measures of discrimination for survival data.

Ian R White,Eleni Rapsomaniki,S G Wannamethee,Richard W Morris,Johann Willeit,Peter Willeit,Peter Santer,Stefan Kiechl, N J Wald,Shah Ebrahim,Debbie A Lawlor,John Gallacher,J W G Yarnell,Yoav Benshlomo,Edoardo Casiglia,Valerie Tikhonoff,S Sutherland,Paul J Nietert, Julian E Keil,David L Bachman,Bruce M Psaty,Mary Cushman,Borge G Nordestgaard,Anne Tybjaerghansen,Ruth Frikkeschmidt,Simona Giampaoli,Luigi Palmieri,Salvatore Panico, L Pilotto,Diego Vanuzzo, L A Simons, Y Friedlander,John Mccallum,Jackie Price, S A Mclachlan,James O Taylor,Jack M Guralnik,Robert B Wallace, Frank J Kohout,Joan Cornonihuntley,Dan G Blazer,Caroline Phillips,Nicholas J Wareham,K T Khaw,Hermann Brenner,Ben Schottker,H Muller,Dietrich Rothenbacher,A Nissinen,Chiara Donfrancesco,Kennet Harald,Pekka Jousilahti,Erkki Vartiainen,Veikko Salomaa,Ralph B Dagostino,Philip A Wolf,Ramachandran S Vasan,Makoto Daimon,Toshihide Oizumi,Takamasa Kayama, Tadafumi Kato,Angela Chetrit,Rachel Dankner, Flora Lubin,Lennart Welin,Kurt Svardsudd, H Eriksson,Georg Lappas,Lauren Lissner,Kirsten Mehlig,Cecilia Bjorkelund, D Nagel,Yutaka Kiyohara,Hisatomi Arima,Toshiharu Ninomiya,Jun Hata,Beatriz L Rodriguez,Jacqueline M Dekker,Giel Nijpels,Coen D A Stehouwer,Hiroyasu Iso,Akihiko Kitamura,Kazumasa Yamagishi,Hiroyuki Noda,Uri Goldbourt,Jussi Kauhanen,J T Salonen,Tomipekka Tuomainen,T W Meade,Bianca L Destavola, A Blokstra, W M M Verschuren, I H De Boer,Aaron R Folsom,Wolfgang Koenig,Christa Meisinger,Annette Peters,H B Buenodemesquita,Annika M Rosengren, L Wilhelmsen,Lewis H Kuller,Gregory A Grandits,J A Cooper, K A Bauer,Karina W Davidson,Susan Kirkland,Jonathan A Shaffer,Daichi Shimbo,Soichiro Sato,Robin P F Dullaart,Stephan J L Bakker,Ron T Gansevoort,Pierre Ducimetiere,Philippe Amouyel,Dominique Arveiler,Alun Evans,Jean Ferrieres, H Schulte,Gerd Assmann,J W Jukema,Rudi G J Westendorp,Naveed Sattar,Bernard Cantin,Benoit Lamarche,Jeanpierre Despres, Null E Barrettconnor,Deborah L Wingard,Lori B Daniels,Vilmundur Gudnason,Thor Aspelund,Maurizio Trevisan,Albert Hofman,Oscar H Franco,Hugh Tunstallpedoe, R Tavendale,G D O Lowe, M Woodward,William J Howard,Barbara V Howard, Yurong Zhang,Lyle G Best,Jason G Umans,George Davey Smith,Altan Onat, Hidemi Nakagawa,Masao Sakurai, Kensuke Nakamura,Yuko Morikawa,Inger Njolstad,Ellisiv B Mathiesen,Tom Wilsgaard,Johan Sundstrom,J M Gaziano,Paul M Ridker,Michael Marmot,R N Clarke, R P Collins,Astrid E Fletcher,Eric J Brunner,Martin J Shipley,Mika Kivimaki,Julie E Buring,Nader Rifai,Nancy R Cook,Ian Ford, M M Robertson, A Marin Ibanez,Edith J M Feskens,Johanna M Geleijnse

BIOMETRICAL JOURNAL(2015)

引用 19|浏览187
暂无评分
摘要
MotivationDiscrimination statistics describe the ability of a survival model to assign higher risks to individuals who experience earlier events: examples are Harrell's C-index and Royston and Sauerbrei's D, which we call the D-index. Prognostic covariates whose distributions are controlled by the study design (e.g. age and sex) influence discrimination and can make it difficult to compare model discrimination between studies. Although covariate adjustment is a standard procedure for quantifying disease-risk factor associations, there are no covariate adjustment methods for discrimination statistics in censored survival data. ObjectiveTo develop extensions of the C-index and D-index that describe the prognostic ability of a model adjusted for one or more covariate(s). MethodWe define a covariate-adjusted C-index and D-index for censored survival data, propose several estimators, and investigate their performance in simulation studies and in data from a large individual participant data meta-analysis, the Emerging Risk Factors Collaboration. ResultsThe proposed methods perform well in simulations. In the Emerging Risk Factors Collaboration data, the age-adjusted C-index and D-index were substantially smaller than unadjusted values. The study-specific standard deviation of baseline age was strongly associated with the unadjusted C-index and D-index but not significantly associated with the age-adjusted indices. ConclusionsThe proposed estimators improve meta-analysis comparisons, are easy to implement and give a more meaningful clinical interpretation.
更多
查看译文
关键词
C-index,D-index,Discrimination
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要