Leveraging descriptor learning and functional map-based shape matching for automated anatomical Landmarking in mouse mandibles.

IF 1.8 3区 医学 Q2 ANATOMY & MORPHOLOGY
Oshane O Thomas, A Murat Maga
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引用次数: 0

Abstract

Geometric morphometrics is used in the biological sciences to quantify morphological traits. However, the need for manual landmark placement hampers scalability, which is both time-consuming, labor-intensive, and open to human error. The selected landmarks embody a specific hypothesis regarding the critical geometry relevant to the biological question. Any adjustment to this hypothesis necessitates acquiring a new set of landmarks or revising them significantly, which can be impractical for large datasets. There is a pressing need for more efficient and flexible methods for landmark placement that can adapt to different hypotheses without requiring extensive human effort. This study investigates the precision and accuracy of landmarks derived from functional correspondences obtained through the functional map framework of geometry processing. We utilize a deep functional map network to learn shape descriptors, which enable us to achieve functional map-based and point-to-point correspondences between specimens in our dataset. Our methodology involves automating the landmarking process by interrogating these maps to identify corresponding landmarks, using manually placed landmarks from the entire dataset as a reference. We apply our method to a dataset of rodent mandibles and compare its performance to MALPACA's, a standard tool for automatic landmark placement. Our model demonstrates a speed improvement compared to MALPACA while maintaining a competitive level of accuracy. Although MALPACA typically shows the lowest RMSE, our models perform comparably well, particularly with smaller training datasets, indicating strong generalizability. Visual assessments confirm the precision of our automated landmark placements, with deviations consistently falling within an acceptable range for MALPACA estimates. Our results underscore the potential of unsupervised learning models in anatomical landmark placement, presenting a practical and efficient alternative to traditional methods. Our approach saves significant time and effort and provides the flexibility to adapt to different hypotheses about critical geometrical features without the need for manual re-acquisition of landmarks. This advancement can significantly enhance the scalability and applicability of geometric morphometrics, making it more feasible for large datasets and diverse biological studies.

利用描述符学习和基于功能地图的形状匹配实现小鼠下颌骨的自动解剖标记。
几何形态计量学在生物科学中用于量化形态特征。然而,手动地标放置的需求阻碍了可伸缩性,这既耗时又费力,而且容易出现人为错误。选定的地标体现了与生物学问题相关的关键几何的特定假设。对这一假设的任何调整都需要获取一组新的地标或对它们进行重大修改,这对于大型数据集来说是不切实际的。迫切需要更有效和灵活的地标放置方法,以适应不同的假设,而不需要大量的人力。本研究探讨了通过几何处理的功能地图框架获得的功能对应得到的地标的精度和准确性。我们利用深度功能地图网络来学习形状描述符,这使我们能够实现数据集中样本之间基于功能地图和点对点的对应。我们的方法包括通过查询这些地图来识别相应的地标,并使用整个数据集中手动放置的地标作为参考,从而实现地标过程的自动化。我们将我们的方法应用于啮齿动物下颌骨数据集,并将其性能与自动地标放置的标准工具MALPACA进行比较。与MALPACA相比,我们的模型显示了速度的提高,同时保持了具有竞争力的精度水平。虽然MALPACA通常显示最低的RMSE,但我们的模型表现相当好,特别是在较小的训练数据集上,这表明了很强的泛化性。视觉评估证实了我们自动地标放置的精度,偏差始终落在MALPACA估计的可接受范围内。我们的研究结果强调了无监督学习模型在解剖地标放置方面的潜力,为传统方法提供了一种实用而有效的替代方法。我们的方法节省了大量的时间和精力,并提供了灵活性,以适应关于关键几何特征的不同假设,而无需手动重新获取地标。这一进展可以显著提高几何形态计量学的可扩展性和适用性,使其更适用于大数据集和多样化的生物学研究。
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来源期刊
Journal of Anatomy
Journal of Anatomy 医学-解剖学与形态学
CiteScore
4.80
自引率
8.30%
发文量
183
审稿时长
4-8 weeks
期刊介绍: Journal of Anatomy is an international peer-reviewed journal sponsored by the Anatomical Society. The journal publishes original papers, invited review articles and book reviews. Its main focus is to understand anatomy through an analysis of structure, function, development and evolution. Priority will be given to studies of that clearly articulate their relevance to the anatomical community. Focal areas include: experimental studies, contributions based on molecular and cell biology and on the application of modern imaging techniques and papers with novel methods or synthetic perspective on an anatomical system. Studies that are essentially descriptive anatomy are appropriate only if they communicate clearly a broader functional or evolutionary significance. You must clearly state the broader implications of your work in the abstract. We particularly welcome submissions in the following areas: Cell biology and tissue architecture Comparative functional morphology Developmental biology Evolutionary developmental biology Evolutionary morphology Functional human anatomy Integrative vertebrate paleontology Methodological innovations in anatomical research Musculoskeletal system Neuroanatomy and neurodegeneration Significant advances in anatomical education.
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