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A novel 3D printing method for accurate anatomy replication in patient‐specific phantoms

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PURPOSE A novel 3D printing method has been developed, which employs human CT images to construct patient specific phantoms by controlling the filament extrusion rate. METHODS An in-house software was… Click to show full abstract

PURPOSE A novel 3D printing method has been developed, which employs human CT images to construct patient specific phantoms by controlling the filament extrusion rate. METHODS An in-house software was developed comprising pixel-by-pixel (PbP) reading of the Hounsfield Units (HU) values in the original patient DICOM images and their sufficiently accurate 3D printed replication in the phantom produced. RESULTS The PbP method was applied to two sets of anonymized patients' CT chest and skull images. The respective patient specific phantoms were 3D printed and then CT scanned and compared to the actual patient images. The chest phantom images were also compared to those of another phantom created employing the older variable infill density method (VID). CONCLUSIONS The results clearly indicated a significant improvement both visually and in the phantom HU values achieved. In contrast to other methods published, its major advantages are: (a) no need for manual contouring and 3D modeling of a patient's organs, (b) wider density range, and (c) significantly better simulation of the organs' HU.

Keywords: specific phantoms; patient specific; anatomy; method; novel printing

Journal Title: Medical Physics
Year Published: 2018

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