Precision annotation of digital samples in NCBI’s gene expression omnibus
Citations Over TimeTop 15% of 2017 papers
Abstract
The Gene Expression Omnibus (GEO) contains more than two million digital samples from functional genomics experiments amassed over almost two decades. However, individual sample meta-data remains poorly described by unstructured free text attributes preventing its largescale reanalysis. We introduce the Search Tag Analyze Resource for GEO as a web application (http://STARGEO.org) to curate better annotations of sample phenotypes uniformly across different studies, and to use these sample annotations to define robust genomic signatures of disease pathology by meta-analysis. In this paper, we target a small group of biomedical graduate students to show rapid crowd-curation of precise sample annotations across all phenotypes, and we demonstrate the biological validity of these crowd-curated annotations for breast cancer. STARGEO.org makes GEO data findable, accessible, interoperable and reusable (i.e., FAIR) to ultimately facilitate knowledge discovery. Our work demonstrates the utility of crowd-curation and interpretation of open 'big data' under FAIR principles as a first step towards realizing an ideal paradigm of precision medicine.
Related Papers
- 다중 사용자 환경에서 Annotation 인터페이스의 설계 및 구현(2002)
- Social Filtering 환경에서 사용자 관심사를 고려한 Annotation 디스플레이 설계 및 구현(2002)
- On the Important Content Characters about Annotation of Xiaojing by Tang Xuan_zong(2005)
- Annotation of Li Shan WenXuan——One Annotation Phenomenon Which is Poles Apart with China Classics Annotation(2006)
- A Review of Annotation of the Pedagogic Colen Corpus(2006)