Abstract
PURPOSE: The purpose of this study was to propose a method for segmentation and volume measurement of graft liver and spleen of pediatric transplant recipients on digital imaging and communications in medicine (DICOM) -format images using U-Net and three-dimensional (3-D) workstations (3DWS) . METHOD: For segmentation accuracy assessments, Dice coefficients were calculated for the graft liver and spleen. After verifying that the created DICOM-format images could be imported using the existing 3DWS, accuracy rates between the ground truth and segmentation images were calculated via mask processing. RESULT: As per the verification results, Dice coefficients for the test data were as follows: graft liver, 0.758 and spleen, 0.577. All created DICOM-format images were importable using the 3DWS, with accuracy rates of 87.10±4.70% and 80.27±11.29% for the graft liver and spleen, respectively. CONCLUSION: The U-Net could be used for graft liver and spleen segmentations, and volume measurement using 3DWS was simplified by this method.
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CITATION STYLE
Esaki, T., & Furukawa, R. (2020). Volume Measurements of Post-transplanted Liver of Pediatric Recipients Using Workstations and Deep Learning. Japanese Journal of Radiological Technology, 76(11), 1133–1142. https://doi.org/10.6009/jjrt.2020_jsrt_76.11.1133
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