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Satoru Miyano

Researcher at Tokyo Medical and Dental University

Publications -  874
Citations -  45801

Satoru Miyano is an academic researcher from Tokyo Medical and Dental University. The author has contributed to research in topics: Gene & Gene regulatory network. The author has an hindex of 84, co-authored 811 publications receiving 38723 citations. Previous affiliations of Satoru Miyano include University of Paderborn & Institute of Medical Science.

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Identification of a p53-repressed gene module in breast cancer cells.

TL;DR: The p53 protein is a sophisticated transcription factor that regulates dozens of target genes simultaneously in accordance with the cellular circumstances, and it is shown that appropriate suppression of some genes belonging to the p53-repressed gene module contributed to a better prognosis of breast cancer patients.
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High prevalence of myeloid malignancies in progeria with Werner syndrome is associated with p53 insufficiency.

TL;DR: Werner syndrome (WS) is a progeroid syndrome caused by mutations in the WRN gene which encodes the RecQ type DNA helicase for the unwinding of unusual DNA structures and is implicated in DNA replication, DNA repair, and telomere maintenance as discussed by the authors .
Journal ArticleDOI

An Unusually Short Latent Period of Therapy-Related Myeloid Neoplasm Harboring a Rare MLL-EP300 Rearrangement: Case Report and Literature Review

TL;DR: A 62-year-old female who developed t-MN only three months after the completion of conventional chemotherapy and anti-CCR4 antibody for ATL acute type died of viral encephalomyelitis at 7 months after diagnosis.
Proceedings ArticleDOI

Partial Order-Based Bayesian Network Learning Algorithm for Estimating Gene Networks

TL;DR: This paper considers the problem of constructing the order of nodes in such algorithms based on prior knowledge of gene networks and proposes an efficient partial order-based algorithm for estimating gene networks based on Bayesian networks.