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Active Not RecruitingNCT06412900

Radiomics and Image Segmentation of Urinary Stones by Artificial Intelligence

Status
Active Not Recruiting
Phase
Study type
Observational
Enrollment
522 (actual)
Sponsor
Oslo University Hospital · Academic / Other
Sex
All
Age
18 Years
Healthy volunteers
Not accepted

Summary

Kidney stone disease causes significant morbidity, and stones obstructing the ureter can have serious consequences. Imaging diagnostics with computed tomography (CT) are crucial for diagnosis, treatment selection, and follow-up. Segmentation of CT images can provide objective data on stone burden and signs of obstruction. Artificial intelligence (AI) can automate such segmentation but can also be used for the diagnosis of stone disease and obstruction. In this project, the aim is to investigate if: Manual segmentation of CT scans can provide more accurate information about kidney stone disease compared to conventional interpretation. AI segmentation yields valid results compared to manual segmentation. AI can detect ureteral stones and obstruction or predict spontaneous passage.

Detailed description

Background: Goals and Objectives: The project aims to contribute to personalized and improved treatment and follow-up of patients with kidney stones using radiomics and the development of an artificial intelligence tool for CT examination assessment. The objectives are to assess: * Whether manual segmentation of CT images of the urinary tract provides equivalent or more accurate information about kidney stone disease compared to conventional interpretation and reporting. * Whether segmentation performed with AI yields valid results compared to manual segmentation. * Whether AI can detect ureteral stones and obstruction and/or predict spontaneous passage of stones. Method: Cohort: Patients are recruited to the study at Oslo University Hospital, Radiology Department, Section Aker, which performs approximately 1350 CT examinations for urinary tract stones in approximately 1000 patients each year. Approximately 500 patients with a new episode or newly occurring colic pain and clinical suspicion of kidney stones are expected to be included. Clinical data (where available): * Baseline CT: date and image data * Initial treatment (conservative, URS, PCN, ESWL) decision after baseline CT * Follow-up CT: date and image data * Time to spontaneous stone passage (negative control CT) or completed surgical intervention (URS) * Any other surgical/invasive procedure * Stone chemical analysis * Clinical biochemistry: creatinine/eGFR, CRP, leukocytes (at baseline and follow-ups). Image data: Clinical radiology report: * Stone: (largest calculus and any obstructing calculus): largest diameter in any plane, density (ROI set by clinical judgment, largest possible ROI - in the slice where the stone is largest), location (upper ureter: above crossing of vessels, lower ureter: below crossing of vessels, ostial: in bladder wall) * Renal pelvis: largest diameter of calyx neck lower calyx, clinical assessment of dilation (not dilated/slight/moderate/severe). * Segmentation: * Stone: total segmented stone volume, largest diameter, and density of segmented stone. * Collecting system: total segmented volume of the collecting system and renal pelvis.

Conditions

Timeline

Start date
2024-05-21
Primary completion
2025-08-02
Completion
2028-03-28
First posted
2024-05-14
Last updated
2025-08-11

Locations

1 site across 1 country: Norway

Source: ClinicalTrials.gov record NCT06412900. Inclusion in this directory is not an endorsement.