Affiliation:
1. Perelman School of Medicine of the University of Pennsylvania
Abstract
AbstractComputed tomography (CT) is an extensively used imaging modality capable of generating detailed images of a patient’s internal anatomy for diagnostic and interventional procedures. High-resolution volumes are created by measuring and combining information along many radiographic projection angles. In current medical practice, single and dual-view two-dimensional (2D) topograms are utilized for planning the proceeding diagnostic scans and for selecting favorable acquisition parameters, either manually or automatically, as well as for dose modulation calculations. In this study, we develop modified 2D to three-dimensional (3D) encoder-decoder neural network architectures to generate CT-like volumes from single and dual-view topograms. We validate the developed neural networks on synthesized topograms from publicly available thoracic CT datasets. Finally, we assess the viability of the proposed transformational encoder-decoder architecture on both common image similarity metrics and quantitative clinical use case metrics, a first for 2D-to-3D CT reconstruction research. According to our findings, both single-input and dual-input neural networks are able to provide accurate volumetric anatomical estimates. The proposed technology will allow for improved (i) planning of diagnostic CT acquisitions, (ii) input for various dose modulation techniques, and (iii) recommendations for acquisition parameters and/or automatic parameter selection. It may also provide for an accurate attenuation correction map for positron emission tomography (PET) with only a small fraction of the radiation dose utilized.
Publisher
Research Square Platform LLC
Reference33 articles.
1. Medical Imaging: From Roentgen to the Digital Revolution, and Beyond;Bercovich E;Rambam Maimonides Medical Journal,2018
2. Do We Really Need Routine Computed Tomographic Scanning in the Primary Evaluation of Blunt Chest Trauma in Patients with “Normal” Chest Radiograph?;Exadaktylos AK;Journal of Trauma and Acute Care Surgery,2001
3. Computed Tomography of the Chest in the Intensive Care Unit;Gross BH;Critical Care Clinics,1994
4. The evolution of image reconstruction for CT—from filtered back projection to artificial intelligence;Willemink MJ;European Radiology,2019
5. Bushberg, J. T., Seibert, J. Anthony., Leidholdt, E. Marion. & Boone, J. M. The essential physics of medical imaging.