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AI for difficult herbarium specimens: identification of peat mosses (subgenus Sphagnum) without dissection.

Publication ,  Journal Article
Little, DP; Aguero, B; Shaw, AJ; Tessler, M
Published in: The New phytologist
August 2025

Artificial intelligence (AI) for image-based herbarium specimen identification has thus far focused on plants that can be identified by eye. Here, we develop the first AI focused on identifying herbarium specimens of a bryophyte group, peat mosses in Sphagnum subgenus Sphagnum. These plants have substantial morphological plasticity, and confident identifications require time-consuming dissections and microscopy. We hypothesized that AI, using unmagnified low-resolution images, can (H1) identify species and (H2) discover novel morphological characters. We collected 4386 publicly available herbarium specimen images of all 10 North American species and imaged an additional 105 specimens with determinations verified by DNA and morphology. AI identification was generally successful with our newly formulated FireNetSEz model (68% AUCPR (area under the curve: precision recall)). We produced a reduced dataset (the five most imaged species) that we, the authors, could attempt. Our identifications took hours and were all lower-scoring than the AI. These H1 results show that AI can learn hard-to-identify botanical species without microscopy and outperform both generalist botanists and Sphagnum experts. Regarding H2, we found the AI focuses on edges of organs that humans often ignore. AI holds promise for hard botanical identifications and the potential to rapidly identify Sphagnum, which is important for studying peatlands that strongly impact climate.

Duke Scholars

Published In

The New phytologist

DOI

EISSN

1469-8137

ISSN

1469-8137

Publication Date

August 2025

Related Subject Headings

  • Plant Biology & Botany
  • 4102 Ecological applications
  • 4101 Climate change impacts and adaptation
  • 3108 Plant biology
 

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Little, D. P., Aguero, B., Shaw, A. J., & Tessler, M. (2025). AI for difficult herbarium specimens: identification of peat mosses (subgenus Sphagnum) without dissection. The New Phytologist. https://doi.org/10.1111/nph.70461
Little, Damon P., Blanka Aguero, A Jonathan Shaw, and Michael Tessler. “AI for difficult herbarium specimens: identification of peat mosses (subgenus Sphagnum) without dissection.The New Phytologist, August 2025. https://doi.org/10.1111/nph.70461.
Little DP, Aguero B, Shaw AJ, Tessler M. AI for difficult herbarium specimens: identification of peat mosses (subgenus Sphagnum) without dissection. The New phytologist. 2025 Aug;
Little, Damon P., et al. “AI for difficult herbarium specimens: identification of peat mosses (subgenus Sphagnum) without dissection.The New Phytologist, Aug. 2025. Epmc, doi:10.1111/nph.70461.
Little DP, Aguero B, Shaw AJ, Tessler M. AI for difficult herbarium specimens: identification of peat mosses (subgenus Sphagnum) without dissection. The New phytologist. 2025 Aug;
Journal cover image

Published In

The New phytologist

DOI

EISSN

1469-8137

ISSN

1469-8137

Publication Date

August 2025

Related Subject Headings

  • Plant Biology & Botany
  • 4102 Ecological applications
  • 4101 Climate change impacts and adaptation
  • 3108 Plant biology