Tomoaki Hori
University of Tokyo
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Publication
Featured researches published by Tomoaki Hori.
Theoretical and Applied Genetics | 2016
Tomoaki Hori; David Montcho; Clément Agbangla; Kaworu Ebana; Koichi Futakuchi; Hiroyoshi Iwata
Key messageA method based on a multi-task Gaussian process using self-measuring similarity gave increased accuracy for imputing missing phenotypic data in multi-trait and multi-environment trials.AbstractMulti-environmental trial (MET) data often encounter the problem of missing data. Accurate imputation of missing data makes subsequent analysis more effective and the results easier to understand. Moreover, accurate imputation may help to reduce the cost of phenotyping for thinned-out lines tested in METs. METs are generally performed for multiple traits that are correlated to each other. Correlation among traits can be useful information for imputation, but single-trait-based methods cannot utilize information shared by traits that are correlated. In this paper, we propose imputation methods based on a multi-task Gaussian process (MTGP) using self-measuring similarity kernels reflecting relationships among traits, genotypes, and environments. This framework allows us to use genetic correlation among multi-trait multi-environment data and also to combine MET data and marker genotype data. We compared the accuracy of three MTGP methods and iterative regularized PCA using rice MET data. Two scenarios for the generation of missing data at various missing rates were considered. The MTGP performed a better imputation accuracy than regularized PCA, especially at high missing rates. Under the ‘uniform’ scenario, in which missing data arise randomly, inclusion of marker genotype data in the imputation increased the imputation accuracy at high missing rates. Under the ‘fiber’ scenario, in which missing data arise in all traits for some combinations between genotypes and environments, the inclusion of marker genotype data decreased the imputation accuracy for most traits while increasing the accuracy in a few traits remarkably. The proposed methods will be useful for solving the missing data problem in MET data.
Earth, Planets and Space | 2017
Natsuo Sato; Akira Sessai Yukimatu; Yoshimasa Tanaka; Tomoaki Hori
Archive | 2015
華奈子 関; 由純 三好; 孝伸 天野; 慎司 齊藤; 幸長 宮下; 邦裕 桂華; 智昭 堀; 真史 小路; 善治 大村; 祐輔 海老原; 正仁 能勢; 雄人 加藤; 章正 家田; 隆行 梅田; 成寿 北村; 朋紀 瀬川; 育 篠原; 洋介 松本; 慎也 中野; 幸敏 西村; 雅夫 中村; 実穂 齊藤; 顕正 吉川; 葵 中溝; ERG理論・モデリング・総合解析班; Kanako Seki; Yoshizumi Miyoshi; Takanobu Amano; Shinji Saito; Y. Miyashita
Archive | 2013
Akiyo Yatagai; Yukinobu Koyama; Tomoaki Hori; Shuji Abe; Yoshimasa Tanaka; Atsuki Shinbori; Satoru Ueno; Norio Umemura; Yuka Sato; Manabu Yagi; Bernd Ritschel; Toshihiko Iyemori
Archive | 2012
Hiroo Hayashi; Yoshimasa Tanaka; Tomoaki Hori; Yukinobu Koyama; Atsuki Shinbori; Shuji Abe; Norio Umemura; Mizuki Yoneda; Satoru Ueno; Naoki Kaneda; Masato Kagitani; Takahisa Kouno; Daiki Yoshida; Tetsuo Motoba; Hiroyasu Tadokoro
Archive | 2012
Tsukasa Hori; Y Ohtsuka; K Shiokawa; A Shinbori; Tomoaki Hori; Y. Otsuka; K. Shiokawa; Atsuki Shinbori
Archive | 2011
Hiroo Hayashi; Yoshimasa Tanaka; Atsuki Shinbori; Tomoaki Hori; Yukinobu Koyama; Masato Kagitani; Shuji Abe; Takahisa Kouno; Daiki Yoshida; Satoru Ueno; Naoki Kaneda; Mizuki Yoneda; Hiroyasu Tadokoro; Tetsuo Motoba
Archive | 2011
Yukinobu Koyama; Takahisa Kouno; Tomoaki Hori; Shuji Abe; Daiki Yoshida; Hiroo Hayashi; Atsuki Shinbori; Yoshimasa Tanaka; Masato Kagitani; Satoru Ueno; Naoki Kaneda; Hiroyasu Tadokoro; Mizuki Yoneda
Archive | 2011
Hiroo Hayashi; Yukinobu Koyama; Tomoaki Hori; Yoshimasa Tanaka; Masato Kagitani; Atsuki Shinbori; Shuji Abe; Takahisa Kouno; Daiki Yoshida; Satoru Ueno; Naoki Kaneda
Archive | 2010
Hiroo Hayashi; Tomoaki Hori; Yukinobu Koyama; Yoshimasa Tanaka; Masato Kagitani; Takahisa Kouno; Daiki Yoshida; Satoru Ueno; Naoki Kaneda; Shuji Abe; Yoshizumi Miyoshi; Masaki Okada; Takuji Nakamura; M. Nosé; Atsuki Shinbori