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Toxicogenomic prediction with graph-based structured regularization on transcription factor network
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- Nagata Keisuke
- Drug Safety Research Laboratories, Astellas Pharma Inc. The Institute of Scientific and Industrial Research, Osaka University
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- Kawahara Yoshinobu
- The Institute of Scientific and Industrial Research, Osaka University
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- Washio Takashi
- The Institute of Scientific and Industrial Research, Osaka University
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- Unami Akira
- Drug Safety Research Laboratories, Astellas Pharma Inc.
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Description
Structured regularization is a mathematical technique which incorporates prior structural knowledge among variables into regression analysis to make a sparse estimation reflecting relationships among them. Abundance of structural information in biology, such as pathways formed by genes, transcripts, and proteins, especially suits well its application. Previously, we reported on the first application of latent group Lasso, a group-based regularization method, in toxicogenomics, with genes regulated by the same transcription factor treated as a group. We revealed that it achieved good predictive performances comparable to Lasso and allowed us to discuss mechanisms behind liver weight gain in rats based on selected groups. Latent group Lasso, however, does not lead to a sparse estimation, due to large group sizes in our analytical setting. In this study, we applied graph-based regularization methods, generalized fused Lasso and graph Lasso, for the same data, with regulatory networks formed by transcription factors and their downstream genes as a graph. These methods are expected to make a sparser estimation since they select variables based on edges. Comparisons showed that graph Lasso generated an accurate, biologically relevant and sparse model that could not have been possible with latent group Lasso and generalized fused Lasso.
Journal
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- Fundamental Toxicological Sciences
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Fundamental Toxicological Sciences 3 (2), 39-46, 2016
The Japanese Society of Toxicology
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Details 詳細情報について
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- CRID
- 1390282680739717248
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- NII Article ID
- 130005129243
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- DOI
- 10.2131/fts.3.39
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- ISSN
- 2189115X
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- Text Lang
- en
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- Article Type
- journal article
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- Data Source
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- JaLC
- Crossref
- CiNii Articles
- KAKEN
- OpenAIRE
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- Abstract License Flag
- Disallowed