A Method for Isoform Prediction from RNA-Seq Data by Iterative Mapping
スポンサーリンク
概要
- 論文の詳細を見る
Alternative splicing plays an important role in eukaryotic gene expression by producing diverse proteins from a single gene. Predicting how genes are transcribed is of great biological interest. To this end, massively parallel whole transcriptome sequencing, often referred to as RNA-Seq, is becoming widely used and is revolutionizing the cataloging isoforms using a vast number of short mRNA fragments called reads. Conventional RNA-Seq analysis methods typically align reads onto a reference genome (mapping) in order to capture the form of isoforms that each gene yields and how much of every isoform is expressed from an RNA-Seq dataset. However, a considerable number of reads cannot be mapped uniquely. Those so-called multireads that are mapped onto multiple locations due to short read length and analogous sequences inflate the uncertainty as to how genes are transcribed. This causes inaccurate gene expression estimations and leads to incorrect isoform prediction. To cope with this problem, we propose a method for isoform prediction by iterative mapping. The positions from which multireads originate can be estimated based on the information of expression levels, whereas quantification of isoform-level expression requires accurate mapping. These procedures are mutually dependent, and therefore remapping reads is essential. By iterating this cycle, our method estimates gene expression levels more precisely and hence improves predictions of alternative splicing. Our method simultaneously estimates isoform-level expressions by computing how many reads originate from each candidate isoform using an EM algorithm within a gene. To validate the effectiveness of the proposed method, we compared its performance with conventional methods using an RNA-Seq dataset derived from a human brain. The proposed method had a precision of 66.7% and outperformed conventional methods in terms of the isoform detection rate.
- 2012-06-21
著者
-
Takenaka Yoichi
Department Of Bioinformatic Engineering Graduate School Of Information Science And Technology Osaka
-
Matsuda Hideo
Department Of Bioinformatic Engineering Graduate School Of Information Science And Technology Osaka
-
Seno Shigeto
Department Of Bioinformatic Engineering Graduate School Of Information Science And Technology Osaka University
-
MATSUDA HIDEO
Department of Bioinformatic Engineering, Graduate School of Information Science and Technology, Osaka University
-
OHNO TOMOSHIGE
Department of Bioinformatic Engineering, Graduate School of Information Science and Technology, Osaka University
関連論文
- 93. Studies on the Tinels Sign in Peripheral Nerve Regeneration
- 170. Pain with Radiation on Whiplash Iujury and Cervical Syndrome
- ISO-7 p16INK4a expression in cytology of ascites and response to chemotherapy in advanced ovarian cancer(Group1 Oncology,International Session: Oral Presentation)
- Fusion of Paramecia by Means of Altered Electrofusion
- Conservative management of pelvic organ prolapse with soft or hard type pessaries(Others 1)
- ISO-6 Retrospective analyses on prognosis of high grade endometrial cancer : A comparison of serous type and clear cell type to Grade 3 endometrioid type(Group1 Oncology,International Session : Oral Presentation)
- Structure and Physical Properties of Naphthalene Containing Polyesters I. Structure of Poly(butylene 2,6-naphthalate) and Poly(ethylene 2,6-naphthalate) as Studied by Solid State NMR Spectroscopy
- Surgical Treatment of Spontaneous Dissection of the Superior Mesenteric Artery : A Case Report
- IS-74 Clinical prospective study on post-surgical bladder dysfunction at radical hysterectomy in aspect of histological analysis of pelvic nerve innervations
- Determination of the complete nucleotide sequence and haplotypes in the D-loop region of the mitochondrial genome in the Oriental white stork, Ciconia boyciana
- "Deterministic Diffusion" in a Neural Network Model (Special Section of Letters Selected from the 1994 IEICE Spring Conference)
- Trisomy 1 in a case of a missed abortion
- A Method for Isoform Prediction from RNA-Seq Data by Iterative Mapping
- A Method for Isoform Prediction from RNA-Seq Data by Iterative Mapping
- A Method for Isoform Prediction from RNA-Seq Data by Iterative Mapping