Literature DB >> 28003583

Optimizing an ion semiconductor sequencing data analysis method to identify somatic mutations in the genomes of cancer cells in clinical tissue samples.

Takeshi Nagashima1, Yuji Shimoda, Tomoe Tanabe, Akane Naruoka, Junko Saito, Masakuni Serizawa, Keiichi Ohshima, Kenichi Urakami, Sumiko Ohnami, Shumpei Ohnami, Tohru Mochizuki, Masatoshi Kusuhara, Ken Yamaguchi.   

Abstract

Identification of causal genomic alterations is an indispensable step in the implementation of personalized cancer medicine. Analytical methods play a central role in identifying such changes because of the vast amount of data produced by next generation sequencer. Most analytical techniques are designed for the Illumina platform and are therefore suboptimal for analyzing datasets generated by whole exome sequencing (WES) using the Ion Proton System. Accurate identification of somatic mutations requires the characterization of platform-dependent error profiles and genomic properties that affect the accuracy of sequence data as well as platform-oriented optimization of the pipeline. Therefore, we used the Ion Proton System to perform WES of DNAs isolated from tumor and matched control tissues of 1,058 patients with cancer who were treated at the Shizuoka Cancer Center Hospital. Among the initially identified candidate somatic single-nucleotide variants (SNVs), 10,279 were validated by manual inspection of the WES data followed by Sanger sequencing. These validated SNVs were used as an objective standard to determine an optimum cutoff value to improve the pipeline. Using this optimized pipeline analysis, 189,381 SNVs were identified in 1,101 samples. The analytical technique presented here is a useful resource for conducting clinical WES, particularly using semiconductor-based sequencing technology.

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Year:  2016        PMID: 28003583     DOI: 10.2220/biomedres.37.359

Source DB:  PubMed          Journal:  Biomed Res        ISSN: 0388-6107            Impact factor:   1.203


  11 in total

1.  Disclosure of secondary findings in exome sequencing of 2480 Japanese cancer patients.

Authors:  Yasue Horiuchi; Hiroyuki Matsubayashi; Yoshimi Kiyozumi; Seiichiro Nishimura; Satomi Higashigawa; Nobuhiro Kado; Takeshi Nagashima; Maki Mizuguchi; Sumiko Ohnami; Makoto Arai; Kenichi Urakami; Masatoshi Kusuhara; Ken Yamaguchi
Journal:  Hum Genet       Date:  2020-07-24       Impact factor: 4.132

2.  Comprehensive genomic analysis contrasting primary colorectal cancer and matched liver metastases.

Authors:  Akio Shiomi; Masatoshi Kusuhara; Takashi Sugino; Teiichi Sugiura; Keiichi Ohshima; Takeshi Nagashima; Kenichi Urakami; Masakuni Serizawa; Hideyuki Saya; Ken Yamaguchi
Journal:  Oncol Lett       Date:  2021-04-12       Impact factor: 2.967

3.  Germline and somatic genetic changes in multicentric tumors obtained from a patient with multiple endocrine neoplasia type 1.

Authors:  Akane Naruoka; Sumiko Ohnami; Takeshi Nagashima; Masakuni Serizawa; Keiichi Ohshima; Shumpei Ohnami; Kenichi Urakami; Yasue Horiuchi; Yoshimi Kiyozumi; Masato Abe; Takashi Nakajima; Teiichi Sugiura; Katsuhiko Uesaka; Masatoshi Kusuhara; Ken Yamaguchi
Journal:  Hum Genome Var       Date:  2017-04-27

4.  Molecular profiling and sequential somatic mutation shift in hypermutator tumours harbouring POLE mutations.

Authors:  Keiichi Hatakeyama; Keiichi Ohshima; Takeshi Nagashima; Shumpei Ohnami; Sumiko Ohnami; Masakuni Serizawa; Yuji Shimoda; Koji Maruyama; Yasuto Akiyama; Kenichi Urakami; Masatoshi Kusuhara; Tohru Mochizuki; Ken Yamaguchi
Journal:  Sci Rep       Date:  2018-06-07       Impact factor: 4.379

5.  Clinicopathological and mutational analyses of colorectal cancer with mutations in the POLE gene.

Authors:  Hitoshi Hino; Akio Shiomi; Masatoshi Kusuhara; Hiroyasu Kagawa; Yushi Yamakawa; Keiichi Hatakeyama; Takanori Kawabata; Takuma Oishi; Kenichi Urakami; Takeshi Nagashima; Yusuke Kinugasa; Ken Yamaguchi
Journal:  Cancer Med       Date:  2019-06-25       Impact factor: 4.452

6.  Characterization of tumors with ultralow tumor mutational burden in Japanese cancer patients.

Authors:  Keiichi Hatakeyama; Takeshi Nagashima; Keiichi Ohshima; Sumiko Ohnami; Shumpei Ohnami; Yuji Shimoda; Akane Naruoka; Koji Maruyama; Akira Iizuka; Tadashi Ashizawa; Tohru Mochizuki; Kenichi Urakami; Yasuto Akiyama; Ken Yamaguchi
Journal:  Cancer Sci       Date:  2020-08-07       Impact factor: 6.716

7.  Mutational concordance analysis provides supportive information for double cancer diagnosis.

Authors:  Keiichi Hatakeyama; Takeshi Nagashima; Akifumi Notsu; Keiichi Ohshima; Sumiko Ohnami; Shumpei Ohnami; Yuji Shimoda; Akane Naruoka; Koji Maruyama; Akira Iizuka; Tadashi Ashizawa; Hirotsugu Kenmotsu; Tohru Mochizuki; Kenichi Urakami; Yasuto Akiyama; Ken Yamaguchi
Journal:  BMC Cancer       Date:  2021-02-19       Impact factor: 4.430

8.  Tumor cell enrichment by tissue suspension enables detection of mutations with low variant allele frequency and estimation of germline mutations.

Authors:  Keiichi Hatakeyama; Koji Muramatsu; Takeshi Nagashima; Yuichi Kawanishi; Ryutaro Fukumura; Keiichi Ohshima; Yuji Shimoda; Hirotsugu Kenmotsu; Tohru Mochizuki; Kenichi Urakami; Yasuto Akiyama; Takashi Sugino; Ken Yamaguchi
Journal:  Sci Rep       Date:  2022-02-22       Impact factor: 4.379

9.  Germline mismatch repair gene variants analyzed by universal sequencing in Japanese cancer patients.

Authors:  Yoshimi Kiyozumi; Hiroyuki Matsubayashi; Yasue Horiuchi; Satomi Higashigawa; Takuma Oishi; Masato Abe; Sumiko Ohnami; Kenichi Urakami; Takeshi Nagashima; Masatoshi Kusuhara; Hidehiko Miyake; Ken Yamaguchi
Journal:  Cancer Med       Date:  2019-08-06       Impact factor: 4.452

10.  Japanese version of The Cancer Genome Atlas, JCGA, established using fresh frozen tumors obtained from 5143 cancer patients.

Authors:  Takeshi Nagashima; Ken Yamaguchi; Kenichi Urakami; Yuji Shimoda; Sumiko Ohnami; Keiichi Ohshima; Tomoe Tanabe; Akane Naruoka; Fukumi Kamada; Masakuni Serizawa; Keiichi Hatakeyama; Kenya Matsumura; Shumpei Ohnami; Koji Maruyama; Tohru Mochizuki; Masatoshi Kusuhara; Akio Shiomi; Yasuhisa Ohde; Masanori Terashima; Katsuhiko Uesaka; Tetsuro Onitsuka; Seiichiro Nishimura; Yasuyuki Hirashima; Nakamasa Hayashi; Yoshio Kiyohara; Yasuhiro Tsubosa; Hirohisa Katagiri; Masashi Niwakawa; Kaoru Takahashi; Hiroya Kashiwagi; Masahiro Nakagawa; Yuji Ishida; Takashi Sugino; Mitsuru Takahashi; Yasuto Akiyama
Journal:  Cancer Sci       Date:  2020-01-22       Impact factor: 6.716

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