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The MicroArray Quality Control (MAQC)-II study of common practices for the development and validation of microarray-based predictive models
Author(s) -
Leming Shi,
Gregory Campbell,
Wendell Jones,
Fabien Campagne,
Zhining Wen,
Stephen J. Walker,
Zhenqiang Su,
Tzu-Ming Chu,
Federico Goodsaid,
Lajos Pusztai,
John D. Shaughnessy,
André Oberthuer,
Russell S. Thomas,
Richard S. Paules,
Mark R. Fielden,
Bart Barlogie,
Weijie Chen,
Pan Du,
Matthias Fischer,
Cesare Furlanello,
Brandon D. Gallas,
Xijin Ge,
Dalila B. Megherbi,
W. Fraser Symmans,
May D. Wang,
John H. Zhang,
Hans Bitter,
Benedikt Brors,
Pierre R. Bushel,
Max Bylesjö,
Minjun Chen,
Jie Cheng,
Jing Cheng,
J.-H Chou,
Timothy S. Davison,
Mauro Delorenzi,
Youping Deng,
Viswanath Devanarayan,
David J. Dix,
Joaquı́n Dopazo,
Kevin C. Dorff,
Fathi Elloumi,
Jianqing Fan,
Shicai Fan,
Xiaohui Fan,
Hong Fang,
Nina Gonzaludo,
Kenneth R. Hess,
Huixiao Hong,
Jun Huan,
Rafael A. Irizarry,
Richard Judson,
Dilafruz Juraeva,
Samir Lababidi,
Christophe G Lambert,
Li Li,
Yanen Li,
Zhen Li,
Simon Lin,
Guozhen Liu,
Edward K. Lobenhofer,
Jun Luo,
Wen Luo,
Matthew N. McCall,
Yuri Nikolsky,
Gene Pennello,
Roger Perkins,
Reena Philip,
Vlad Popovici,
Nathan D. Price,
Feng Qian,
Andreas Scherer,
Tieliu Shi,
Weiwei Shi,
Jaeyun Sung,
Danielle ThierryMieg,
Jean ThierryMieg,
Venkata J. Thodima,
Johan Trygg,
Lakshmi Vishnuvajjala,
Sue Jane Wang,
Jianping Wu,
Yichao Wu,
Qian Xie,
Waleed A. Yousef,
Liang Zhang,
Xuegong Zhang,
Sheng Zhong,
Yiming Zhou,
Sheng Zhu,
Dhivya Arasappan,
Wenjun Bao,
Anne Bergstrom Lucas,
Frank Berthold,
Richard Brennan,
Andreas Buneß,
Jennifer Catalano,
Chang Chang,
Rong Chen,
Yiyu Cheng,
Jian Cui,
Wendy Czika,
Francesca Demichelis,
Xutao Deng,
Damir Dosymbekov,
Roland Eils,
Yang Feng,
Jennifer Fostel,
Stephanie Fulmer-Smentek,
James C. Fuscoe,
Laurent Gatto,
Weigong Ge,
Daniel R. Goldstein,
Li Guo,
Donald N. Halbert,
Jing Han,
Stephen Harris,
Christos Hatzis,
Damir Herman,
Jianping Huang,
Roderick V. Jensen,
Rui Jiang,
Charles D. Johnson,
Giuseppe Jurman,
Yvonne Kahlert,
Sadik Khuder,
Matthias Kohl,
Jianying Li,
Menglong Li,
QuanZhen Li,
Shao Li,
Zhiguang Li,
Jie Liu,
Ying Liu,
Zhichao Liu,
Lu Meng,
Manuel Madera,
Francisco Martínez-Murillo,
Ignacio Medina,
Joe Meehan,
Kelci Miclaus,
Andrea B. Moffitt,
David Montaner,
Piali Mukherjee,
George Mulligan,
Padraic Neville,
Tatiaikolskaya,
Baitang Ning,
Grier P. Page,
Joel S. Parker,
R. Mitchell Parry,
Xuejun Peng,
Ron Peterson,
John H. Phan,
Brian Quanz,
Yi Ren,
Samantha Riccadonna,
Alan Roter,
F. W. Samuelson,
M. Schumacher,
J.D. Shambaugh,
Qiang Shi,
Richard Shippy,
Shengzhu Si,
Aaron Smalter,
Christos Sotiriou,
Mat Soukup,
Frank Staedtler,
Guido Steiner,
Todd H. Stokes,
Qinglan Sun,
Pei-Yi Tan,
Rong Tang,
Živana Težak,
Brett T. Thorn,
Marina Tsyganova,
Yaron Turpaz,
Silvia C. Vega,
Roberto Visintainer,
Juergen von Frese,
Charles Wang,
Eric Wang,
Junwei Wang,
Wei Wang,
Frank Westermann,
James C. Willey,
Matthew Woods,
Shujian Wu,
Nianqing Xiao,
Joshua Xu,
Lei Xu,
Lun Yang,
Xiao Zeng,
Jialü Zhang,
Li Zhang,
Min Zhang,
Chen Zhao,
Raj K. Puri,
Uwe Scherf,
Weida Tong,
Russell D. Wolfinger
Publication year - 2010
Publication title -
nature biotechnology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 15.358
H-Index - 445
eISSN - 1546-1696
pISSN - 1087-0156
DOI - 10.1038/nbt.1665
Subject(s) - microarray analysis techniques , microarray , reliability (semiconductor) , predictive modelling , computer science , computational biology , data mining , biology , gene expression , machine learning , gene , biochemistry , power (physics) , physics , quantum mechanics
Gene expression data from microarrays are being applied to predict preclinical and clinical endpoints, but the reliability of these predictions has not been established. In the MAQC-II project, 36 independent teams analyzed six microarray data sets to generate predictive models for classifying a sample with respect to one of 13 endpoints indicative of lung or liver toxicity in rodents, or of breast cancer, multiple myeloma or neuroblastoma in humans. In total, >30,000 models were built using many combinations of analytical methods. The teams generated predictive models without knowing the biological meaning of some of the endpoints and, to mimic clinical reality, tested the models on data that had not been used for training. We found that model performance depended largely on the endpoint and team proficiency and that different approaches generated models of similar performance. The conclusions and recommendations from MAQC-II should be useful for regulatory agencies, study committees and independent investigators that evaluate methods for global gene expression analysis.

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