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本文引用的文献

1
Inferring porosity from frequency dependent attenuation in cortical bone mimicking porous media.从模拟多孔介质的皮质骨中频率依赖性衰减推断孔隙率。
IEEE Int Ultrason Symp. 2018 Oct;2018. doi: 10.1109/ultsym.2018.8579776. Epub 2018 Dec 20.
2
The effect of pore size and density on ultrasonic attenuation in porous structures with mono-disperse random pore distribution: A two-dimensional in-silico study.孔径和密度对具有单分散随机孔分布的多孔结构中超声衰减的影响:二维计算机模拟研究。
J Acoust Soc Am. 2018 Aug;144(2):709. doi: 10.1121/1.5049782.
3
Machine learning models in electronic health records can outperform conventional survival models for predicting patient mortality in coronary artery disease.机器学习模型在电子健康记录中可以优于传统的生存模型,用于预测冠心病患者的死亡率。
PLoS One. 2018 Aug 31;13(8):e0202344. doi: 10.1371/journal.pone.0202344. eCollection 2018.
4
Lung mass density analysis using deep neural network and lung ultrasound surface wave elastography.使用深度学习神经网络和肺部超声表面波弹性成像分析肺肿块密度。
Ultrasonics. 2018 Sep;89:173-177. doi: 10.1016/j.ultras.2018.05.011. Epub 2018 May 23.
5
Detecting and classifying lesions in mammograms with Deep Learning.深度学习在乳腺 X 光片中检测和分类病灶。
Sci Rep. 2018 Mar 15;8(1):4165. doi: 10.1038/s41598-018-22437-z.
6
Determination of a potential quantitative measure of the state of the lung using lung ultrasound spectroscopy.利用肺部超声光谱学测定肺部状态的潜在定量指标。
Sci Rep. 2017 Oct 6;7(1):12746. doi: 10.1038/s41598-017-13078-9.
7
Machine Learning and Prediction in Medicine - Beyond the Peak of Inflated Expectations.医学中的机器学习与预测——超越过高期望的顶峰
N Engl J Med. 2017 Jun 29;376(26):2507-2509. doi: 10.1056/NEJMp1702071.
8
Characterization of the Lung Parenchyma Using Ultrasound Multiple Scattering.使用超声多重散射对肺实质进行表征。
Ultrasound Med Biol. 2017 May;43(5):993-1003. doi: 10.1016/j.ultrasmedbio.2017.01.011. Epub 2017 Mar 16.
9
Porosity predicted from ultrasound backscatter using multivariate analysis can improve accuracy of cortical bone thickness assessment.使用多变量分析从超声背向散射预测的孔隙率可提高皮质骨厚度评估的准确性。
J Acoust Soc Am. 2017 Jan;141(1):575. doi: 10.1121/1.4973572.
10
Dermatologist-level classification of skin cancer with deep neural networks.基于深度神经网络的皮肤癌皮肤科医生级分类。
Nature. 2017 Feb 2;542(7639):115-118. doi: 10.1038/nature21056. Epub 2017 Jan 25.

通过结合超声衰减和人工神经网络(ANN)预测皮质骨的结构特性:二维时域有限差分(FDTD)研究

Predicting Structural Properties of Cortical Bone by Combining Ultrasonic Attenuation and an Artificial Neural Network (ANN): 2-D FDTD Study.

作者信息

Mohanty Kaustav, Yousefian Omid, Karbalaeisadegh Yasamin, Ulrich Micah, Muller Marie

机构信息

Department of Mechanical and Aerospace Engineering, NC State University, Raleigh, NC, USA.

出版信息

Image Anal Recognit. 2019 Aug;11662:407-417. doi: 10.1007/978-3-030-27202-9_37. Epub 2019 Aug 8.

DOI:10.1007/978-3-030-27202-9_37
PMID:38288296
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10823500/
Abstract

The goal of this paper is to predict the micro-architectural parameters of cortical bone such as pore diameter and porosity from ultrasound attenuation measurements using an artificial neural network (ANN). Slices from a 3-D CT scan of human femur are obtained. The micro-architectural parameters of porosity such as average pore size and porosity are calculated using image processing. When ultrasound waves propagate in porous structures, attenuation is observed due to scattering. Two-dimensional finite-difference time-domain simulations are carried out to obtain frequency dependent attenuation in those 2D structures. An artificial neural network (ANN) is then trained with the input feature vector as the frequency dependent attenuation and output as pore diameter and porosity . The ANN is composed of one input layer, 3 hidden layers and one output layer, all of which are fully connected. 340 attenuation data sets were acquired and trained over 2000 epochs with a batch size of 32. Data was split into train, validation and test. It was observed that the ANN predicted the micro-architectural parameters of the cortical bone with high accuracies and low losses with a minimum R (goodness of fit) value of 0.95. ANN approaches could potentially help inform the solution of inverse-problems to retrieve bone porosity from ultrasound measurements. Ultimately, those inverse-problems could be used for the non-invasive diagnosis and monitoring of osteoporosis.

摘要

本文的目标是使用人工神经网络(ANN),根据超声衰减测量结果预测皮质骨的微观结构参数,如孔径和孔隙率。获取了人类股骨三维CT扫描的切片。使用图像处理计算孔隙率的微观结构参数,如平均孔径和孔隙率。当超声波在多孔结构中传播时,由于散射会观察到衰减。进行二维时域有限差分模拟,以获得这些二维结构中与频率相关的衰减。然后,以与频率相关的衰减作为输入特征向量,以孔径和孔隙率作为输出,训练人工神经网络(ANN)。该人工神经网络由一个输入层、3个隐藏层和一个输出层组成,所有层均为全连接。获取了340个衰减数据集,并在2000个轮次上进行训练,批量大小为32。数据被分为训练集、验证集和测试集。结果发现,人工神经网络能够以高精度和低损失预测皮质骨的微观结构参数,最小拟合优度R值为0.95。人工神经网络方法可能有助于为从超声测量中获取骨孔隙率的反问题解决方案提供信息。最终,这些反问题可用于骨质疏松症的无创诊断和监测。

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