Content area

Abstract

Objectives

Distinguishing between kidney stones and phleboliths can constitute a diagnostic challenge in patients undergoing unenhanced low-dose CT (LDCT) for acute flank pain. We sought to investigate the accuracy of radiomics and a machine-learning classifier in differentiating between kidney stones and phleboliths on LDCT.

Methods

Radiomics features were extracted following a semi-automatic segmentation of kidney stones and phleboliths for two independent consecutive cohorts of patients undergoing LDCT for acute flank pain.

Radiomics features from the first cohort of patients (n = 369) were ultimately used to train a machine-learning model designed to distinguish kidney stones (n = 211) from phleboliths (n = 201). Classification performance was assessed on the second independent cohort (i.e., testing set) (kidney stones n = 24; phleboliths n = 23) using positive and negative predictive values (PPV and NPV), area under the receiver operating curves (AUC), and permutation testing.

Results

Our machine-learning classification model trained on radiomics features achieved an overall accuracy of 85.1% on the independent testing set, with an AUC of 0.902, PPV of 81.5%, and NPV of 90.0%. Classification accuracy was significantly better than chance on permutation testing (p < 0.05, permutation p value).

Conclusion

Radiomics and machine learning enable accurate differentiation between kidney stones and phleboliths on LDCT in patients presenting with acute flank pain.

Key Points

Combining a machine-learning algorithm with radiomics features extracted for abdominopelvic calcification on LDCT offers a highly accurate method for discriminating phleboliths from kidney stones.

Our radiomics and machine-learning model proved robust for CT acquisition and reconstruction protocol when tested in comparison with an external independent cohort of patients with acute flank pain.

The high performance of the radiomics-based automatic classification model in differentiating phleboliths from kidney stones indicates its potential as a future diagnostic tool for equivocal abdominopelvic calcifications in the setting of suspected renal colic.

Details

Title
Differentiating kidney stones from phleboliths in unenhanced low-dose computed tomography using radiomics and machine learning
Author
De Perrot, Thomas 1   VIAFID ORCID Logo  ; Hofmeister, Jeremy 1 ; Burgermeister, Simon 1 ; Martin, Steve P 1 ; Gregoire Feutry 1 ; Klein, Jacques 2 ; Montet, Xavier 1 

 Division of Radiology, Diagnostic Department, Geneva University Hospitals, Geneva, Switzerland 
 Division of Urology, Department of Surgery, Geneva University Hospitals, Geneva, Switzerland 
Pages
4776-4782
Publication year
2019
Publication date
Sep 2019
Publisher
Springer Nature B.V.
ISSN
09387994
e-ISSN
14321084
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2178841245
Copyright
European Radiology is a copyright of Springer, (2019). All Rights Reserved.