Abstract
A synthetic phantom model is typically utilized to evaluate the initial performance of a photoacoustic image reconstruction algorithm. The characteristics of the phantom model (structural, optical, and acoustic) are required to be very similar to those of the biological tissue. Typically, generic two-dimensional shapes are used as imaging targets to calibrate reconstruction algorithms. However, these structures are not representative of complex biological tissue, and therefore the artifacts that exist in reconstructed images of biological tissue vasculature are ignored. Real data from 3D MRI/CT volumes can be extrapolated to create high-quality phantom models; however, these sometimes involve complicated pre-processing and mostly are challenging, due to the inaccessibility of these datasets or the requirement for approval to utilize the data. Therefore, it is necessary to develop a 3D tissue-mimicking phantom model consisting of different compartments with characteristics that can be easily modified. In this tutorial, we present an optimized development process of a generic 3D complex digital vasculature phantom model in Blender. The proposed workflow is such that an accurate and easily editable digital phantom can be developed. Other workflows for creating the same phantom will take much longer to set up and require more time to edit. We have made a few examples of editable 3D phantom models, which are publicly available to test and modify.
Funder
National Institutes of Health
Subject
Radiology, Nuclear Medicine and imaging,Instrumentation,Atomic and Molecular Physics, and Optics
Reference43 articles.
1. Review of cost reduction methods in photoacoustic computed tomography
2. Photoacoustic Imaging: A Promising Alternative to Transcranial Ultrasound;Manwar;Res. J. Photonics,2018
3. Low-cost fast photoacoustic computed tomography: Phantom study;Zafar;Proceedings of the Photons Plus Ultrasound: Imaging and Sensing 2019,2019
4. Double-Stage Delay Multiply and Sum Beamforming Algorithm: Application to Linear-Array Photoacoustic Imaging;Mozaffarzadeh;IEEE Trans. Biomed. Eng.,2017
5. Linear-array photoacoustic imaging using minimum variance-based delay multiply and sum adaptive beamforming algorithm
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