人工智能应用于进化形态学的机遇与挑战。

IF 1.9 4区 生物学 Q2 BIOLOGY
Integrative Organismal Biology Pub Date : 2024-09-23 eCollection Date: 2024-01-01 DOI:10.1093/iob/obae036
Y He, J M Mulqueeney, E C Watt, A Salili-James, N S Barber, M Camaiti, E S E Hunt, O Kippax-Chui, A Knapp, A Lanzetti, G Rangel-de Lázaro, J K McMinn, J Minus, A V Mohan, L E Roberts, D Adhami, E Grisan, Q Gu, V Herridge, S T S Poon, T West, A Goswami
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引用次数: 0

摘要

人工智能(AI)将彻底改变科学的许多方面,包括进化形态学的研究。虽然经典的人工智能方法,如主成分分析和聚类分析,在进化形态学的研究中已经司空见惯了几十年,但近年来,深度学习在生态学和进化生物学中的应用越来越多。随着数字化标本数据库变得越来越普遍和开放,人工智能正在提供巨大的新潜力,以绕过长期存在的障碍,实现快速、大数据的表型分析。在这里,我们回顾了可用于进化形态学研究的人工智能方法的现状,这些方法在数据采集和处理领域最为发达。我们介绍了主要的可用人工智能技术,并根据它们出现的顺序将它们分为3个阶段:(1)机器学习,(2)深度学习,以及(3)大规模模型和多模态学习的最新进展。接下来,我们介绍了使用人工智能进行进化形态学的现有方法的案例研究,包括图像捕获和分割、特征识别、形态计量学和系统发育。然后,我们讨论了该领域内特定研究领域的近期进展说明书,包括尚未应用于形态进化研究的新人工智能方法的潜力。特别是,我们注意到人工智能尚未得到充分利用的关键领域,可以用来加强进化形态学的研究。这种现有方法和潜在发展的结合有能力将生物表型的进化分析转化为进化表型组学,从而引领一个“大数据”时代,使表型研究与基因组学和其他生物信息学领域保持一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Opportunities and Challenges in Applying AI to Evolutionary Morphology.

Artificial intelligence (AI) is poised to revolutionize many aspects of science, including the study of evolutionary morphology. While classical AI methods such as principal component analysis and cluster analysis have been commonplace in the study of evolutionary morphology for decades, recent years have seen increasing application of deep learning to ecology and evolutionary biology. As digitized specimen databases become increasingly prevalent and openly available, AI is offering vast new potential to circumvent long-standing barriers to rapid, big data analysis of phenotypes. Here, we review the current state of AI methods available for the study of evolutionary morphology, which are most developed in the area of data acquisition and processing. We introduce the main available AI techniques, categorizing them into 3 stages based on their order of appearance: (1) machine learning, (2) deep learning, and (3) the most recent advancements in large-scale models and multimodal learning. Next, we present case studies of existing approaches using AI for evolutionary morphology, including image capture and segmentation, feature recognition, morphometrics, and phylogenetics. We then discuss the prospectus for near-term advances in specific areas of inquiry within this field, including the potential of new AI methods that have not yet been applied to the study of morphological evolution. In particular, we note key areas where AI remains underutilized and could be used to enhance studies of evolutionary morphology. This combination of current methods and potential developments has the capacity to transform the evolutionary analysis of the organismal phenotype into evolutionary phenomics, leading to an era of "big data" that aligns the study of phenotypes with genomics and other areas of bioinformatics.

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来源期刊
CiteScore
3.70
自引率
6.70%
发文量
48
审稿时长
20 weeks
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