Huy Tran Quang, Tue Huynh Huu, Long Ton That, Duc-Tan Tran
HaNoi Pedagogical University 2, Hanoi, Vietnam.
School of Electrical Engineering, VNU International University, HoChiMinh, Vietnam.
BMC Med Imaging. 2017 May 25;17(1):34. doi: 10.1186/s12880-017-0206-8.
A well-known diagnostic imaging modality, termed ultrasound tomography, was quickly developed for the detection of very small tumors whose sizes are smaller than the wavelength of the incident pressure wave without ionizing radiation, compared to the current gold-standard X-ray mammography. Based on inverse scattering technique, ultrasound tomography uses some material properties such as sound contrast or attenuation to detect small targets. The Distorted Born Iterative Method (DBIM) based on first-order Born approximation is an efficient diffraction tomography approach. One of the challenges for a high quality reconstruction is to obtain many measurements from the number of transmitters and receivers. Given the fact that biomedical images are often sparse, the compressed sensing (CS) technique could be therefore effectively applied to ultrasound tomography by reducing the number of transmitters and receivers, while maintaining a high quality of image reconstruction.
There are currently several work on CS that dispose randomly distributed locations for the measurement system. However, this random configuration is relatively difficult to implement in practice. Instead of it, we should adopt a methodology that helps determine the locations of measurement devices in a deterministic way. For this, we develop the novel DCS-DBIM algorithm that is highly applicable in practice. Inspired of the exploitation of the deterministic compressed sensing technique (DCS) introduced by the authors few years ago with the image reconstruction process implemented using l regularization.
Simulation results of the proposed approach have demonstrated its high performance, with the normalized error approximately 90% reduced, compared to the conventional approach, this new approach can save half of number of measurements and only uses two iterations. Universal image quality index is also evaluated in order to prove the efficiency of the proposed approach.
Numerical simulation results indicate that CS and DCS techniques offer equivalent image reconstruction quality with simpler practical implementation. It would be a very promising approach in practical applications of modern biomedical imaging technology.
一种被称为超声层析成像的知名诊断成像方式迅速发展起来,用于检测尺寸小于入射压力波波长的极小肿瘤,与当前的金标准乳腺X线摄影相比,它无需电离辐射。基于逆散射技术,超声层析成像利用诸如声对比度或衰减等一些材料特性来检测小目标。基于一阶玻恩近似的扭曲玻恩迭代法(DBIM)是一种有效的衍射层析成像方法。高质量重建面临的挑战之一是从发射器和接收器的数量中获得大量测量值。鉴于生物医学图像通常是稀疏的,因此压缩感知(CS)技术可以通过减少发射器和接收器的数量,同时保持高质量的图像重建,有效地应用于超声层析成像。
目前有几项关于CS的工作为测量系统设置随机分布的位置。然而,这种随机配置在实践中相对难以实现。与之不同的是,我们应采用一种有助于以确定性方式确定测量设备位置的方法。为此,我们开发了在实践中高度适用的新型DCS-DBIM算法。灵感来自于作者几年前引入的确定性压缩感知技术(DCS)的应用,图像重建过程使用l正则化实现。
所提方法的模拟结果证明了其高性能,与传统方法相比,归一化误差降低了约90%,这种新方法可以节省一半的测量次数,并且只使用两次迭代。还评估了通用图像质量指数以证明所提方法的有效性。
数值模拟结果表明,CS和DCS技术提供了等效的图像重建质量,且实际实现更简单。在现代生物医学成像技术的实际应用中,这将是一种非常有前景的方法。