Machine‐learning‐based morphological analyses of leaf epidermal cells in modern and fossil ginkgo and their implications for palaeoclimate studies

Author:

Zhang Li123ORCID,Wang Yongdong12ORCID,Ruhl Micha3ORCID,Xu Yuanyuan24ORCID,Zhu Yanbin24ORCID,An Pengcheng24ORCID,Chen Hongyu24ORCID,Yan Defei5

Affiliation:

1. Center for Research and Education on Biological Evolution and Environments, School of Earth Sciences and Engineering Nanjing University Nanjing 210023 China

2. State Key Laboratory of Palaeobiology and Stratigraphy Nanjing Institute of Geology and Palaeontology, Chinese Academy of Sciences (CAS) Nanjing 210008 China

3. Department of Geology & Irish Centre for Research in Applied Geosciences (iCRAG), Trinity College Dublin The University of Dublin College Green Dublin 2 Ireland

4. University of Chinese Academy of Sciences Beijing 10049 China

5. Key Laboratory of Mineral Resources in Western China (Gansu Province) and School of Earth Sciences Lanzhou University Lanzhou 730000 China

Abstract

AbstractLeaf stomata form an essential conduit between plant tissue and the atmosphere, thus presenting a link between plants and their environments. Changes in their properties in fossil leaves have been studied widely to infer palaeo‐atmospheric‐CO2 in deep time, ranging from the Palaeozoic to the Cenozoic. Epidermal cells of leaves, however, have often been neglected for their usefulness in reconstructing past‐environments, as their irregular shape makes the manual analyses of epidermal cells a challenging and error‐prone task. Here, we used machine‐learning (using the U‐Net architecture, which evolved from a fully convolutional network) to segment epidermal cells automatically, to efficiently reduce artificial errors. We furthermore applied minimum bounding rectangles to extract length‐to‐width ratios (RL/W) from the irregularly shaped cells. We applied this to a dataset including over 21 000 stomata and 170 000 epidermal cells in 114 Ginkgo leaves from 16 locations spanning three climate zones in China. Our results show negative correlations between the RL/W and specific climatic parameters, suggesting that local temperature and precipitation conditions may have affected the RL/W of epidermal cells. We subsequently tested this methodology and the observations from the modern dataset on 15 fossil ginkgoaleans from the Lower to the Middle Jurassic (China). It suggested that the RL/W values of fossil ginkgo generally had a similar negative response to warmer climatic backgrounds as modern G. biloba. The automated analyses of large palaeo‐floral datasets provide a new direction for palaeoclimate reconstructions and emphasize the importance of hidden morphological characters of epidermal cells in ginkgoaleans.

Funder

National Natural Science Foundation of China

China Scholarship Council

Publisher

Wiley

Subject

Paleontology,Ecology, Evolution, Behavior and Systematics

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