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首页> 外文期刊>Journal of Medical Imaging and Health Informatics >A MatLAB Based Virtual Phantom for 2D Electrical Impedance Tomography (MatVP2DEIT): Studying the Medical Electrical Impedance Tomography Reconstruction in Computer
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A MatLAB Based Virtual Phantom for 2D Electrical Impedance Tomography (MatVP2DEIT): Studying the Medical Electrical Impedance Tomography Reconstruction in Computer

机译:基于MatLAB的2D电阻抗层析成像虚拟幻像(MatVP2DEIT):研究计算机中的医学电阻抗层析成像重建

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摘要

Electrical Impedance Tomography (EIT) is a computerized medical imaging technique which reconstructs the electrical impedance images of a domain under test from the boundary voltage-current data measured by an EIT electronic instrumentation using an image reconstruction algorithm. Being a computed tomography technique, EIT injects a constant current to the patient's body through the surface electrodes surrounding the domain to be imaged (Ω) and tries to calculate the spatial distribution of electrical conductivity or resistivity of the closed conducting domain using the potentials developed at the domain boundary (partial deriv Ω). Practical phantoms are essentially required to study, test and calibrate a medical EIT system for certifying the system before applying it on patients for diagnostic imaging. Therefore, the EIT phantoms are essentially required to generate boundary data for studying and assessing the instrumentation and inverse solvers a in EIT. For proper assessment of an inverse solver of a 2D EIT system, a perfect 2D practical phantom is required. As the practical phantoms are the assemblies of the objects with 3D geometries, the developing of a practical 2D-phantom is a great challenge and therefore, the boundary data generated from the practical phantoms with 3D geometry are found inappropriate for assessing a 2D inverse solver. Furthermore, the boundary data errors contributed by the instrumentation are also difficult to separate from the errors developed by the 3D phantoms. Hence, the errorless boundary data are found essential to assess the inverse solver in 2D EIT. In this direction, a MatLAB-based Virtual Phantom for 2D EIT (MatVP2DEIT) is developed to generate accurate boundary data for assessing the 2D-EIT inverse solvers and the image reconstruction accuracy. MatVP2DEIT is a MatLAB-based computer program which simulates a phantom in computer and generates the boundary potential data as the outputs by using the combinations of different phantom parameters as the inputs to the program. Phantom diameter, inhomogeneity geometry (shape, size and position), number of inhomogeneities, applied current magnitude, background resistivity, inhomogeneity resistivity all are set as the phantom variables which are provided as the input parameters to the MatVP2DEIT for simulating different phantom configurations. A constant current injection is simulated at the phantom boundary with different current injection protocols and boundary potential data are calculated. Boundary data sets are generated with different phantom configurations obtained with the different combinations of the phantom variables and the resistivity images are reconstructed using EIDORS. Boundary data of the virtual phantoms, containing inhomogeneities with complex geometries, are also generated for different current injection patterns using MatVP2DEIT and the resistivity imaging is studied. The effect of regularization method on the image reconstruction is also studied with the data generated by MatVP2DEIT. Resistivity images are evaluated by studying the resistivity parameters and contrast parameters estimated from the elemental resistivity profiles of the reconstructed phantom domain. Results show that the MatVP2DEIT generates accurate boundary data for different types of single or multiple objects which are efficient and accurate enough to reconstruct the resistivity images in EIDORS. The spatial resolution studies show that, the resistivity imaging conducted with the boundary data generated by MatVP2DEIT with 2048 elements, can reconstruct two circular inhomogeneities placed with a minimum distance (boundary to boundary) of 2 mm. It is also observed that, in MatVP2DEIT with 2048 elements, the boundary data generated for a phantom with a circular inhomogeneity of a diameter less than 7% of that of the phantom domain can produce resistivity images in EIDORS with a 1968 element mesh. Results also show that the MatVP2DEIT accurately generates the bou
机译:电阻抗断层扫描(EIT)是一种计算机医学成像技术,它使用图像重建算法从由EIT电子仪器测量的边界电压-电流数据重建被测域的电阻抗图像。作为一种计算机断层扫描技术,EIT通过围绕要成像的区域(Ω)的表面电极向患者的身体注入恒定电流,并尝试使用在以下位置产生的电势来计算闭合导电区域的电导率或电阻率的空间分布域边界(偏导数Ω)。在将医疗EIT系统应用于患者进行诊断成像之前,必须对实用的体模进行研究,测试和校准,以认证该系统。因此,本质上需要EIT体模来生成边界数据,以研究和评估EIT中的仪器和逆求解器。为了正确评估2D EIT系统的逆求解器,需要完美的2D实用模型。由于实际模型是具有3D几何形状的对象的集合,因此实际2D模型的开发是一个巨大的挑战,因此,发现从具有3D几何形状的实际模型生成的边界数据不适用于评估2D逆求解器。此外,由仪器引起的边界数据错误也很难与3D体模产生的错误区分开。因此,发现无误差边界数据对于评估2D EIT中的逆求解器至关重要。为此,开发了基于MatLAB的2D EIT虚拟幻影(MatVP2DEIT),以生成准确的边界数据,以评估2D-EIT逆求解器和图像重建精度。 MatVP2DEIT是基于MatLAB的计算机程序,可在计算机中模拟人体模型并通过将不同人体模型参数的组合用作程序的输入来生成边界电势数据作为输出。幻像直径,不均匀几何形状(形状,大小和位置),不均匀数目,施加的电流大小,背景电阻率,不均匀电阻率都设置为幻像变量,这些变量作为MatVP2DEIT的输入参数提供,用于模拟不同的幻像配置。在幻影边界上使用不同的电流注入协议模拟恒定电流注入,并计算边界电势数据。生成的边界数据集具有通过幻像变量的不同组合获得的不同幻像配置,并且使用EIDORS重建了电阻率图像。使用MatVP2DEIT,还针对不同的电流注入模式生成了虚拟幻像的边界数据,其中包含具有复杂几何形状的不均匀性,并研究了电阻率成像。还利用MatVP2DEIT生成的数据研究了正则化方法对图像重建的影响。通过研究电阻率参数和对比度参数来评估电阻率图像,该电阻率参数和对比度参数是从重建体模域的基本电阻率曲线估算的。结果表明,MatVP2DEIT可以为不同类型的单个或多个对象生成准确的边界数据,这些数据足够有效和准确,可以在EIDORS中重建电阻率图像。空间分辨率研究表明,使用MatVP2DEIT的2048个元素生成的边界数据进行电阻率成像,可以重建两个圆形不均匀性,最小不均匀距离(边界到边界)为2 mm。还可以观察到,在具有2048个元素的MatVP2DEIT中,为直径小于幻影域直径的圆形不均匀性的模型生成的边界数据可以在具有1968元素网格的EIDORS中生成电阻率图像。结果还表明MatVP2DEIT可以准确生成

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