4.6 Article

Noninvasive differentiation of uric acid versus non-uric acid kidney stones using dual-energy CT

Journal

ACADEMIC RADIOLOGY
Volume 14, Issue 12, Pages 1441-1447

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.acra.2007.09.016

Keywords

kidney stones; renal calculi; dual-energy computed tomography; uric acid; urolithiasis

Funding

  1. NIBIB NIH HHS [R01 EB007986, R01 EB007986-01] Funding Source: Medline

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Rationale and Objectives. To determine the accuracy and sensitivity for dual-energy computed tomography (DECT) discrimination of uric acid (UA) stones from other (non-UA) renal stones in a commercially implemented product. Materials and Methods. Forty human renal stones comprising uric acid (n = 16), hydroxyapatite (n = 8), calcium oxalate (n = 8), and cystine (n = 8) were inserted in four porcine kidneys (10 each) and placed inside a 32-cm water tank anterior to a cadaver spine. Spiral dual-energy scans were obtained on a dual-source, 64-slice computed tomography (CT) system using a clinical protocol and automatic exposure control. Scanning was performed at two different collimations (0.6 mm and 1.2 mm) and within three phantom sizes (medium, large, and extra large) resulting in a total of six image datasets. These datasets were analyzed using the dual-energy software tool available on the CT system for both accuracy (number of stones correctly classified as either UA or non-UA) and sensitivity (for UA stones). Stone characterization was correlated with micro-CT. Results. For the medium and large phantom sizes, the DECT technique demonstrated 100% accuracy (40/40), regardless of collimation. For the extra large phantom size and the 0.6-mm collimation (resulting in the noisiest dataset), three (two cystine and one small UA) stones could not be classified (93% accuracy and 94% sensitivity). For the extra large phantom size and the 1.2-mm collimation, the dual-energy tool failed to identify two small UA stones (95% accuracy and 88% sensitivity). Conclusions. In an anthropomorphic phantom model, dual-energy CT can accurately discriminate uric acid stones from other stone types.

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