基于深度学习的头骨物理特性表征方法:模型研究

Deepika Aggrawal, Loïc Saint-Martin, Rayyan Manwar, Amanda Siegel, Dan Schonfeld, Kamran Avanaki
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引用次数: 0

摘要

经颅超声成像是研究大脑功能和诊断脑损伤的常用方法。然而,由于颅骨造成的像差,检测到的超声波信号会发生很大的失真。畸变机制主要取决于厚度和孔隙率这两个重要的颅骨物理特征。虽然颅骨厚度和孔隙率可以通过 CT 或 MRI 扫描估算,但开发从超声波本身获取厚度和孔隙率信息的方法仍有重要价值。在此,我们利用具有不同厚度的物理颅骨模拟模型和嵌入式孔隙率模拟声学错配,从超声波信号中提取了各种特征,并使用机器学习(ML)和深度学习(DL)模型对其进行了分析。性能评估结果表明,经过 ML 和 DL 训练的模型都能以合理的准确度预测各种头骨模型的物理特性。所提出的方法可以扩展并用于开发有效的头骨像差校正方法。
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A Deep Learning-Based Approach to Characterize Skull Physical Properties: A Phantom Study.

Transcranial ultrasound imaging is a popular method to study cerebral functionality and diagnose brain injuries. However, the detected ultrasound signal is greatly distorted due to the aberration caused by the skull bone. The aberration mechanism mainly depends on thickness and porosity, two important skull physical characteristics. Although skull bone thickness and porosity can be estimated from CT or MRI scans, there is significant value in developing methods for obtaining thickness and porosity information from ultrasound itself. Here, we extracted various features from ultrasound signals using physical skull-mimicking phantoms of a range of thicknesses with embedded porosity-mimicking acoustic mismatches and analyzed them using machine learning (ML) and deep learning (DL) models. The performance evaluation demonstrated that both ML- and DL-trained models could predict the physical characteristics of a variety of skull phantoms with reasonable accuracy. The proposed approach could be expanded upon and utilized for the development of effective skull aberration correction methods.

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