TY - JOUR
T1 - Exploring predictive biomarkers from clinical genome-wide association studies via multidimensional hierarchical mixture models
AU - Otani, Takahiro
AU - Noma, Hisashi
AU - Sugasawa, Shonosuke
AU - Kuchiba, Aya
AU - Goto, Atsushi
AU - Yamaji, Taiki
AU - Kochi, Yuta
AU - Iwasaki, Motoki
AU - Matsui, Shigeyuki
AU - Tsunoda, Tatsuhiko
N1 - Funding Information:
Acknowledgements This work was supported by CREST, Japan Science and Technology Agency (JPMJCR1412), the Practical Research for Innovative Cancer Control (17ck0106266 since 2017) from the Japan Agency for Medical Research and Development, and JSPS KAKENHI Grant Numbers JP16H06299 and JP17H01557.
Publisher Copyright:
© 2018, European Society of Human Genetics.
PY - 2019/1/1
Y1 - 2019/1/1
N2 - Although the detection of predictive biomarkers is of particular importance for the development of accurate molecular diagnostics, conventional statistical analyses based on gene-by-treatment interaction tests lack sufficient statistical power for this purpose, especially in large-scale clinical genome-wide studies that require an adjustment for multiplicity of a huge number of tests. Here we demonstrate an alternative efficient multi-subgroup screening method using multidimensional hierarchical mixture models developed to overcome this issue, with application to stroke and breast cancer randomized clinical trials with genomic data. We show that estimated effect size distributions of single nucleotide polymorphisms (SNPs) associated with outcomes, which could provide clues for exploring predictive biomarkers, optimizing individualized treatments, and understanding biological mechanisms of diseases. Furthermore, using this method we detected three new SNPs that are associated with blood homocysteine levels, which are strongly associated with the risk of stroke. We also detected six new SNPs that are associated with progression-free survival in breast cancer patients.
AB - Although the detection of predictive biomarkers is of particular importance for the development of accurate molecular diagnostics, conventional statistical analyses based on gene-by-treatment interaction tests lack sufficient statistical power for this purpose, especially in large-scale clinical genome-wide studies that require an adjustment for multiplicity of a huge number of tests. Here we demonstrate an alternative efficient multi-subgroup screening method using multidimensional hierarchical mixture models developed to overcome this issue, with application to stroke and breast cancer randomized clinical trials with genomic data. We show that estimated effect size distributions of single nucleotide polymorphisms (SNPs) associated with outcomes, which could provide clues for exploring predictive biomarkers, optimizing individualized treatments, and understanding biological mechanisms of diseases. Furthermore, using this method we detected three new SNPs that are associated with blood homocysteine levels, which are strongly associated with the risk of stroke. We also detected six new SNPs that are associated with progression-free survival in breast cancer patients.
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U2 - 10.1038/s41431-018-0251-y
DO - 10.1038/s41431-018-0251-y
M3 - Article
C2 - 30202041
AN - SCOPUS:85053518479
SN - 1018-4813
VL - 27
SP - 140
EP - 149
JO - European Journal of Human Genetics
JF - European Journal of Human Genetics
IS - 1
ER -