在厚心脏组织中学习增强的三维纤维定向映射。

IF 3.2 2区 医学 Q2 BIOCHEMICAL RESEARCH METHODS
Biomedical optics express Pub Date : 2025-07-22 eCollection Date: 2025-08-01 DOI:10.1364/BOE.563643
Eda Nur Saruhan, Hakancan Ozturk, Demet Kul, Bortecine Sevgin, Merve Nur Coban, Kerem Pekkan
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引用次数: 0

摘要

纤维蛋白,如弹性蛋白和胶原蛋白,对心血管系统的结构完整性至关重要。对于薄组织工程心脏瓣膜和外科贴片,纤维定向的二维映射已经建立。然而,对于三维(3D)厚组织样本,例如胚胎全心,强大的3D纤维分析工具是不可用的。这些信息对于计算血管建模和组织微观结构表征至关重要。因此,本研究采用机器学习(ML)和深度学习(DL)技术对猪心包和胚胎全心厚样本的三维心血管纤维结构进行分析。假设基于ML/ dl的纤维取向分析将通过提供更高的空间精度和减少对人工预处理的依赖而优于传统的傅里叶变换和方向滤波方法。我们在共聚焦成像获得的合成和真实心血管数据集上训练ML/DL模型。评估使用了包含1200个样本的混合数据集和包含400个样本的猪/牛数据集。支持向量回归(SVR)显示出最高的准确性,在混合数据集上实现了5.0%的归一化平均绝对误差(nMAE),在生物数据集上实现了13.0%的归一化平均绝对误差。在深度学习模型中,卷积神经网络(CNN)和残余网络-50 (ResNet50)在混合数据集上的nMAE分别为12.0%和11.0%,在生物数据集上的nMAE分别为23.0%和22.0%。注意机制进一步提高了性能,通道注意ResNet50在混合数据集上实现了5.8%的nMAE,在生物数据集上实现了21.0%的nMAE。这些发现突出了ML和DL技术在改善3D纤维定向检测方面的潜力,从而可以详细评估心血管微结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning-enhanced 3D fiber orientation mapping in thick cardiac tissues.

Fibrous proteins, such as elastin and collagen, are crucial for the structural integrity of the cardiovascular system. For thin tissue-engineered heart valves and surgical patches, the two-dimensional mapping of fiber orientation is well-established. However, for three-dimensional (3D) thick tissue samples, e.g., the embryonic whole heart, robust 3D fiber analysis tools are not available. This information is essential for computational vascular modeling and tissue microstructure characterization. Therefore, this study employs machine learning (ML) and deep learning (DL) techniques to analyze the 3D cardiovascular fiber structures in thick samples of porcine pericardium and embryonic whole hearts. It is hypothesized that ML/DL-based fiber orientation analysis will outperform traditional Fourier transform and directional filter methods by offering higher spatial accuracy and reduced dependency on manual preprocessing. We trained our ML/DL models on both synthetic and real-world cardiovascular datasets obtained from confocal imaging. The evaluation used a mixed dataset of 1200 samples and a porcine/bovine dataset of 400 samples. Support vector regression (SVR) demonstrated the highest accuracy, achieving a normalized mean absolute error (nMAE) of 5.0% on the mixed dataset and 13.0% on the biological dataset. Among DL models, convolutional neural network (CNN) and residual network-50 (ResNet50) had an nMAE of 12.0% and 11.0% on the mixed dataset and 23.0% and 22.0% on the biological dataset, respectively. Attention mechanisms improved performance further, with the channel attention ResNet50 achieving an nMAE of 5.8% on the mixed dataset and 21.0% on the biological dataset. These findings highlight the potential of ML and DL techniques in improving 3D fiber orientation detection, enabling detailed cardiovascular microstructural assessment.

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来源期刊
Biomedical optics express
Biomedical optics express BIOCHEMICAL RESEARCH METHODS-OPTICS
CiteScore
6.80
自引率
11.80%
发文量
633
审稿时长
1 months
期刊介绍: The journal''s scope encompasses fundamental research, technology development, biomedical studies and clinical applications. BOEx focuses on the leading edge topics in the field, including: Tissue optics and spectroscopy Novel microscopies Optical coherence tomography Diffuse and fluorescence tomography Photoacoustic and multimodal imaging Molecular imaging and therapies Nanophotonic biosensing Optical biophysics/photobiology Microfluidic optical devices Vision research.
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