Literature DB >> 28923471

Accurately Diagnosing Uric Acid Stones from Conventional Computerized Tomography Imaging: Development and Preliminary Assessment of a Pixel Mapping Software.

Vishnu Ganesan1, Shubha De2, Nicholas Shkumat3, Giovanni Marchini4, Manoj Monga5.   

Abstract

PURPOSE: Preoperative determination of uric acid stones from computerized tomography imaging would be of tremendous clinical use. We sought to design a software algorithm that could apply data from noncontrast computerized tomography to predict the presence of uric acid stones.
MATERIALS AND METHODS: Patients with pure uric acid and calcium oxalate stones were identified from our stone registry. Only stones greater than 4 mm which were clearly traceable from initial computerized tomography to final composition were included in analysis. A semiautomated computer algorithm was used to process image data. Average and maximum HU, eccentricity (deviation from a circle) and kurtosis (peakedness vs flatness) were automatically generated. These parameters were examined in several mathematical models to predict the presence of uric acid stones.
RESULTS: A total of 100 patients, of whom 52 had calcium oxalate and 48 had uric acid stones, were included in the final analysis. Uric acid stones were significantly larger (12.2 vs 9.0 mm, p = 0.03) but calcium oxalate stones had higher mean attenuation (457 vs 315 HU, p = 0.001) and maximum attenuation (918 vs 553 HU, p <0.001). Kurtosis was significantly higher in each axis for calcium oxalate stones (each p <0.001). A composite algorithm using attenuation distribution pattern, average attenuation and stone size had overall 89% sensitivity, 91% specificity, 91% positive predictive value and 89% negative predictive value to predict uric acid stones.
CONCLUSIONS: A combination of stone size, attenuation intensity and attenuation pattern from conventional computerized tomography can distinguish uric acid stones from calcium oxalate stones with high sensitivity and specificity.
Copyright © 2018 American Urological Association Education and Research, Inc. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  calcium oxalate; diagnostic imaging; nephrolithiasis; tomography; uric acid; x-ray computed

Mesh:

Substances:

Year:  2017        PMID: 28923471     DOI: 10.1016/j.juro.2017.09.069

Source DB:  PubMed          Journal:  J Urol        ISSN: 0022-5347            Impact factor:   7.450


  3 in total

1.  The combination of mean and maximum Hounsfield Unit allows more accurate prediction of uric acid stones.

Authors:  Long Qin; Jianhua Zhou; Wei Hu; Hu Zhang; Yunhui Tang; Mingyong Li
Journal:  Urolithiasis       Date:  2022-06-06       Impact factor: 2.861

2.  Prediction of the Uric Acid Component in Nephrolithiasis Using Simple Clinical Information about Metabolic Disorder and Obesity: A Machine Learning-Based Model.

Authors:  Hao-Wei Chen; Yu-Chen Chen; Jung-Ting Lee; Frances M Yang; Chung-Yao Kao; Yii-Her Chou; Ting-Yin Chu; Yung-Shun Juan; Wen-Jeng Wu
Journal:  Nutrients       Date:  2022-04-27       Impact factor: 6.706

3.  Association of Gut Microbiota and Biochemical Features in a Chinese Population With Renal Uric Acid Stone.

Authors:  Cheng Cao; Bo Fan; Jin Zhu; Na Zhu; Jing-Yuan Cao; Dong-Rong Yang
Journal:  Front Pharmacol       Date:  2022-05-19       Impact factor: 5.988

  3 in total

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