Keywords: detection, visualization, 3D voxel reconstruction, DICOM images, YOLO network
Algorithms for 3D reconstruction and calculation of object parameters based on the results of detection in medical images
UDC 004.931
DOI: 10.26102/2310-6018/2024.45.2.013
The article presents algorithms for reconstruction, calculation of stone parameters and visualization of three-dimensional kidney and stone objects based on data obtained after the detection of 2D objects by a neural network on medical images obtained as a result of computed tomography of human internal organs. The algorithms allow you to restore (assemble) kidney and stone objects, calculate the physical parameters of stones, and perform flat and three-dimensional visualization of stones. The implementation of algorithms in the software code allows you to obtain the dimensions of the found concretions in the kidneys, visualize the density distribution inside the stone, visualize the location of the found stones in the kidney, which simplifies the support of medical decision-making during diagnosis and subsequent planning of surgical intervention during the stone crushing procedure using a laser installation. The proposed algorithms and models were implemented in a prototype of a medical decision support system in surgery and urology using computer vision technologies as part of software modules. The use of the developed algorithms for layered assembly of stones and kidneys in the prototype of a medical decision support system in surgery and urology using computer vision reduces the time for diagnosis and planning of stone crushing surgery, and also helps to avoid errors in determining the location of stones inside the kidney and, thereby, reduce the likelihood of injury to the patient.
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Keywords: detection, visualization, 3D voxel reconstruction, DICOM images, YOLO network
For citation: Rudenko A.V., Rudenko M.A., Kashirina I.L. Algorithms for 3D reconstruction and calculation of object parameters based on the results of detection in medical images. Modeling, Optimization and Information Technology. 2024;12(2). URL: https://moitvivt.ru/ru/journal/pdf?id=1594 DOI: 10.26102/2310-6018/2024.45.2.013 (In Russ).
Received 30.05.2024
Revised 10.06.2024
Accepted 14.06.2024
Published 30.06.2024