利用水平集方法建立宿主-病原体相互作用的时空模型

Sheila Rae E. Permanes, Youcef Mammeri, Melen Leclerc
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引用次数: 0

摘要

对宿主与病原体之间的相互作用进行表型分析对于了解植物传染病至关重要。传统上,这一过程依赖视觉评估或人工测量,既主观又耗费人力。近年来,图像处理和数学建模技术的进步实现了精确和高通量的表型分析。在本研究中,我们提出了一种创新的植物病理学方法,将图像处理技术与水平集方法相结合。这种综合方法充分利用了两种方法的优势,可对叶片和病变的演变进行精确、稳健和详细的分析。通过采用这种组合,我们实现了病变边界的精确划定,并可追踪病变随时间的发展,提供清晰的视觉反馈。结果跟踪了两个豌豆栽培品种托叶上 Peyronellaea pinodes 的生长情况以及相关的叶片变形情况,准确直观地反映了病害的发展。该模型代表了植物病害表型技术的重大进步,提供了精确而详细的见解,有助于加深我们对宿主-病原体相互作用的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatio-temporal modeling of host-pathogen interactions using level set method
Phenotyping host-pathogen interactions is crucial for understanding infectious diseases in plants. Traditionally, this process has relied on visual assessments or manual measurements, which can be subjective and labor-intensive. Recent advances in image processing and mathematical modeling enable precise and high-throughput phenotyping. In this study, we propose an innovative approach in plant pathology by combining image processing techniques with the level set method. This integrated approach leverages the strengths of both methodologies to provide accurate, robust, and detailed analysis of leaf and lesion evolution. By employing this combination, we achieve precise delineation of lesion boundaries and track their progression over time, offering clear visual feedback. This enhances the ability of the method to monitor plant health status comprehensively. The results, which track the growth of Peyronellaea pinodes on the stipules of two pea cultivars and the associated leaf deformation, provide an accurate visual representation of disease progression. This model represents a significant advancement in plant disease phenotyping, offering precise and detailed insights that can enhance our understanding of host-pathogen interactions.
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