研究者業績

Atsuko Takano

  (高野 温子)

Profile Information

Affiliation
Professor, Institute of Natural and Environmental Sciences, University of Hyogo
主任研究員, 自然環境・評価研究部, 兵庫県立人と自然の博物館
Degree
博士(理学)(大阪市立大学)

ORCID ID
 https://orcid.org/0000-0002-8345-5080
J-GLOBAL ID
201801000866821460
researchmap Member ID
B000298957

External link

自然史系博物館に勤務しています。個人研究と社会教育事業とのバランスに悩みつつ、研究もセミナー実施も展示制作も向上心を忘れず務めたいと思っています。JICA長期専門家として1年間マレーシア国立サバ大学に赴任した経験もあります。

Education

 3

Papers

 48
  • Atsuko Takano, Theodor C. H. Cole, Hajime Konagai
    Scientific Reports, 14(1), Jan 2, 2024  Peer-reviewedLead author
    Abstract Digital extraction of label data from natural history specimens along with more efficient procedures of data entry and processing is essential for improving documentation and global information availability. Herbaria have made great advances in this direction lately. In this study, using optical character recognition (OCR) and named entity recognition (NER) techniques, we have been able to make further advancements towards fully automatic extraction of label data from herbarium specimen images. This system can be developed and run on a consumer grade desktop computer with standard specifications, and can also be applied to extracting label data from diverse kinds of natural history specimens, such as those in entomological collections. This system can facilitate the digitization and publication of natural history museum specimens around the world.
  • Mei‐Zhen Wang, Jing Wu, Sheng‐Lu Zhang, Li‐Mi Mao, Tetsuo Ohi‐Toma, Atsuko Takano, Yong‐Hua Zhang, Kenneth M. Cameron, Pan Li
    Cladistics, Nov 20, 2023  Peer-reviewed
    Abstract Species delimitation has long been a subject of controversy, and there are many alternative concepts and approaches used to define species in plants. The genus Amana (Liliaceae), known as ”East Asian tulips” has a number of cryptic species and a huge genome size (1C = 21.48–57.35 pg). It also is intriguing how such a spring ephemeral genus thrives in subtropical areas. However, phylogenetic relationships and species delimitation within Amana are challenging. Here we included all species and 84 populations of Amana, which are collected throughout its distribution range. A variety of methods were used to clarify its species relationships based on a combination of morphological, ecological, genetic, evolutionary and phylogenetic species concepts. This evidence supports the recognition of at least 12 species in Amana. Moreover, we explored the complex evolutionary history within the genus and detected several historical hybridization and introgression events based on phylogenetic trees (transcriptomic and plastid), phylonetworks, admixture and ABBA‐BABA analyses. Morphological traits have undergone parallel evolution in the genus. This spring ephemeral genus might have originated from a temperate region, yet finally thrives in subtropical areas, and three hypotheses about its adaptive evolution are proposed for future testing. In addition, we propose a new species, Amana polymorpha, from eastern Zhejiang Province, China. This research also demonstrates that molecular evidence at the genome level (such as transcriptomes) has greatly improved the accuracy and reasonability of species delimitation and taxon classification.
  • Masato Shirai, Atsuko Takano, Takahide Kurosawa, Masahito Inoue, Shuichiro Tagane, TOmoya Tanimoto, Tohru Koganeyama, Hirayuki Sato, Tomohiko Terasawa, Takehito Horie, Isao Mandai, Takashi Akihiro
    Scientific reports, 12(1), May, 2022  Peer-reviewedLead author
    Abstract Herbarium specimens are dried plants mounted onto paper. They are used by a limited number of researchers, such as plant taxonomists, as a source of information on morphology and distribution. Recently, digitised herbarium specimens have begun to be used in comprehensive research to address broader issues. However, some specimens have been misidentified, and if used, there is a risk of drawing incorrect conclusions. In this study, we successfully developed a system for identifying taxon names with high accuracy using an image recognition system. We developed a system with an accuracy of 96.4% using 500,554 specimen images of 2171 plant taxa (2064 species, 9 subspecies, 88 varieties, and 10 forms in 192 families) that grow in Japan. We clarified where the artificial intelligence is looking to make decisions, and which taxa is being misidentified. As the system can be applied to digitalised images worldwide, it is useful for selecting and correcting misidentified herbarium specimens.
  • Hiroshi IKEDA, Bo-Mi NAM, Nobuko YAMAMOTO, Hidenobu FUNAKOSHI, Atsuko TAKANO, Hyoung-Tak IM
    Korean Journal of Plant Taxonomy, 51(1) 100-102, Mar 31, 2021  Peer-reviewed

Misc.

 84

Books and Other Publications

 13

Presentations

 56

Teaching Experience

 4

Works

 1

Research Projects

 13

Academic Activities

 22

Social Activities

 54

Media Coverage

 5