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Edward K. Lobenhofer

Researcher at Clinical Data, Inc

Publications -  23
Citations -  4824

Edward K. Lobenhofer is an academic researcher from Clinical Data, Inc. The author has contributed to research in topics: Gene expression profiling & Gene expression. The author has an hindex of 20, co-authored 23 publications receiving 4676 citations. Previous affiliations of Edward K. Lobenhofer include Paradigm & National Institutes of Health.

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The MicroArray Quality Control (MAQC) project shows inter- and intraplatform reproducibility of gene expression measurements

Leming Shi, +136 more
- 01 Sep 2006 - 
TL;DR: This study describes the experimental design and probe mapping efforts behind the MicroArray Quality Control project and shows intraplatform consistency across test sites as well as a high level of interplatform concordance in terms of genes identified as differentially expressed.
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The Microarray Quality Control (MAQC)-II study of common practices for the development and validation of microarray-based predictive models

Leming Shi, +201 more
- 01 Aug 2010 - 
TL;DR: P 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 are generated.
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Rat toxicogenomic study reveals analytical consistency across microarray platforms

TL;DR: The real-world toxicogenomic data set reported here showed high concordance in intersite and cross-platform comparisons and gene lists generated by fold-change ranking were more reproducible than those obtained by t-test P value or Significance Analysis of Microarrays.
Journal ArticleDOI

Gene selection and clustering for time-course and dose–response microarray experiments using order-restricted inference

TL;DR: An algorithm for selecting and clustering genes according to their time-course or dose-response profiles using gene expression data based on the order-restricted inference methodology developed in statistics is proposed.