CVClient

Hidehiro Ishizawa

  (石澤 秀紘)

Profile Information

Affiliation
Assistant Professor, Graduate School of Engineering, University of Hyogo
Degree
博士(工学)(Mar, 2020, 大阪大学)

Contact information
ishizawahidehirogmail.com
Researcher number
90888265
ORCID ID
 https://orcid.org/0000-0003-0026-6039
J-GLOBAL ID
202001007668662740
researchmap Member ID
R000003339

Awards

 3

Papers

 33
  • Hidehiro Ishizawa, Sunao Noguchi, Miku Kito, Yui Nomura, Kodai Kimura, Masahiro Takeo
    The ISME Journal, Oct, 2025  Peer-reviewedLead authorCorresponding author
    Abstract The functions of microbial communities, including substrate conversion and pathogen suppression, arise not as a simple sum of individual species’ capabilities but through complex interspecies interactions. Understanding how such functions arise from individual species and their interactions remains a major challenge, limiting efforts to rationally understand microbial roles in both natural and engineered ecosystems. Because current holistic (meta-omics) and reductionist (isolation- or single-cell-based) approaches struggle to capture these emergent microbial community functions, this study explores an intermediate strategy: analyzing simple sub-community combinations to enable a bottom-up understanding of community-level functions. To examine the validity of this approach, we used a nine-member synthetic microbial community capable of degrading the environmental pollutant aniline, and systematically generated a dataset of 256 sub-community combinations and their associated functions. Analyses using random forest models revealed that the sub-community combinations of just three to four species enabled the quantitative prediction of functions in larger communities (5–9-member; Pearson’s r = 0.78–0.80). Prediction performance remained robust even with limited sub-community data, suggesting applicability to more diverse microbial communities where exhaustive sub-community observation is infeasible. Moreover, interpreting models trained on these simple sub-community combinations enabled the identification of key species and interspecies interactions that strongly influence the overall community function. These findings provide a methodological framework for mechanistically dissecting complex microbial community functions through sub-community-based analysis.
  • Hidehiro Ishizawa, Yuparat Saimee, Tomomi Sugiyama, Tsubasa Kojima, Daisuke Inoue, Michihiko Ike, Arinthip Thamchaipenet, Masaaki Morikawa
    Environmental Microbiology, 27(9), Sep 22, 2025  Peer-reviewedInvitedLead authorCorresponding author
    ABSTRACT Understanding the processes through which plant‐associated microbiomes influence host physiology and fitness is a central goal of plant–microbiome interaction research. While traditional model plants such as Arabidopsis thaliana have provided foundational platforms to examine these processes, alternative model systems may address certain bottlenecks in current research. In recent years, duckweeds (family Lemnacea) have emerged as a unique model plant offering several experimental advantages owing to their small size, simple morphology, aquatic habitat, and two‐dimensional clonal growth. These features facilitate the establishment of highly tractable and reproducible model systems that facilitate robust investigations and high‐throughput screening platforms, enabling multifactorial massive parallel experiments. This review provides an overview of the recent studies that have applied the advantages of using duckweed in the field of plant–microbiome interactions to highlight how duckweed‐based systems have enabled unique experimental approaches that are difficult in conventional systems. We have also discussed the emerging directions in duckweed–microbiome research, including elucidation of the co‐evolutionary processes mediated via metabolic exchange and bottom‐up explanation of community structure and functions using synthetic bacterial communities. Together, this review underscores the potential of duckweed to serve as a distinctive model for advancing plant–microbiome interaction research.
  • Jingjing Yang, Hidehiro Ishizawa, Hongwei Hou
    Journal of Experimental Botany, Sep 16, 2025  Peer-reviewed
  • Yuparat Saimee, Kousuke Kuwai, Hidehiro Ishizawa, Daisuke Inoue, Arinthip Thamchaipene, Michihiko Ike
    Environmental Microbiome, 20 102, Aug, 2025  Peer-reviewed
  • Klaus J. Appenroth, Viktor Oláh, Hidehiro Ishizawa, K. Sowjanya Sree
    Plants, 14 2143, Jul 11, 2025  Peer-reviewed
    Duckweeds are aquatic monocotyledonous plants known to be the smallest and the fastest growing angiosperms. The 7th International Conference on Duckweed Research and Applications (7th ICDRA) was held in Bangkok, Thailand, from 12th to 16th November 2024. The conference drew young and experienced scientists from across the world who presented their research in varied fields. This conference report presents the highlights of the advancements in the field of duckweed research and application in the sections: Genomics and Cell Biology; Diversity, Ecology, Evolution; Physiology, Reproduction, Metabolomics; Microbiome and Interactions; Applications; and Future Outlook. The next conference, 8th ICDRA, will be held in Naples, Italy, in 2026.

Misc.

 9
  • Hidehiro Ishizawa, Sunao Noguchi, Miku Kito, Yui Nomura, Kodai Kimura, Masahiro Takeo
    bioRxiv, Aug 25, 2025  Lead authorCorresponding author
    ABSTRACT The functions of microbial communities, including substrate conversion and pathogen suppression, arise not as a simple sum of individual species’ capabilities but through complex interspecies interactions. Understanding how such functions arise from individual species and their interactions remains a major challenge, limiting efforts to rationally understand microbial roles in both natural and engineered ecosystems. Because current holistic (meta-omics) and reductionist (isolation- or single-cell-based) approaches struggle to capture these emergent microbial community functions, this study explores an intermediate strategy: analyzing simple sub-community combinations to enable a bottom-up understanding of community-level functions. To examine the validity of this approach, we used a nine-member synthetic microbial community capable of degrading the environmental pollutant aniline, and systematically generated a dataset of 256 sub-community combinations and their associated functions. Analyses using random forest models revealed that the sub-community combinations of just three to four species enabled the quantitative prediction of functions in larger communities (5–9-member; Pearson’s r = 0.78–0.80). Prediction performance remained robust even with limited sub-community data, suggesting applicability to more diverse microbial communities where exhaustive sub-community observation is infeasible. Moreover, interpreting models trained on these simple sub-community combinations enabled the identification of key species and interspecies interactions that strongly influence the overall community function. These findings provide a methodological framework for mechanistically dissecting complex microbial community functions through sub-community-based analysis.
  • Hidehiro Ishizawa, Hongwei Hou
    Duckweed Forum, 13(2) 46-47, Apr, 2025  Invited
  • 石澤秀紘
    化学と生物, 62(11) 523-525, Nov, 2024  Invited
  • 石澤秀紘, 田代陽介, 井上大介, 池道彦, 二又裕之
    兵庫県立大学プレスリリース, Feb, 2024  
  • 奥田萌莉, 石澤秀紘, 大島裕明
    画像ラボ2024年2月号, Jan, 2024  Invited

Books and Other Publications

 1

Research Projects

 7