Literature DB >> 35737011

Predicting narrow ureters before ureteroscopic lithotripsy with a neural network: a retrospective bicenter study.

Jun Wang1, Dawei Wang2, Yong Wang3, Shoutong Wang1, Yi Shao4, Jun Lu5.   

Abstract

In some patients, the passage of semi-rigid ureteroscopes up the ureter is impossible due to narrow ureteral lumen. We established a neural network to predict the inability of the ureter to accommodate the semi-rigid ureteroscope and the need for active or passive dilatation using non-contrast computed tomography (CT) images. Data were collected retrospectively from two centers of 1989 eligible patients who underwent ureteroscopic lithotripsy with ureteral stones. Patients were categorized into two groups: control and narrow ureter. The network was designed and trained for predicting a narrow ureter during initial ureteroscopic lithotripsy, which integrated multi-scale features of the ureter. The predictive efficacy of neural networks DenseNet3D, ResNet3D, ResNet3D MC, and TimeSformer was compared. Furthermore, a previous ureteroscopy or a history of double-J stent placement, ureteral wall thickness and Hounsfield unit (HU) density of the ureter under the stone were compared. Model performance was assessed based on the accuracy, area under the receiver operating characteristic curve (AUC ROC), etc. The DenseNet3D-based network achieved an AUC ROC score of 0.884 and an accuracy of 85.29%, followed by the ResNet3D-based network, the ResNet3D MC-based network, and the TimeSformer-based network. The DenseNet3D-based network significantly outperformed other candidate predictors. Furthermore, the networks were validated in an external test set. Decision curve analysis showed the clinical utility of the neural network. The neural network provides an individualized preoperative prediction of narrow ureter based on non-contrast CT images, which could be employed as part of a surgical decision-making support system.
© 2022. The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.

Entities:  

Keywords:  Artificial intelligence; Difficult ureter; Neural network; Ureteral stone; Ureteroscopic lithotripsy

Mesh:

Year:  2022        PMID: 35737011     DOI: 10.1007/s00240-022-01341-2

Source DB:  PubMed          Journal:  Urolithiasis        ISSN: 2194-7228            Impact factor:   2.861


  21 in total

1.  The Difficult Ureter: Clinical and Radiographic Characteristics Associated With Upper Urinary Tract Access at the Time of Ureteroscopic Stone Treatment.

Authors:  Boyd R Viers; Lyndsay D Viers; Nathan C Hull; Theodore J Hanson; Ramila A Mehta; Eric J Bergstralh; Terri J Vrtiska; Amy E Krambeck
Journal:  Urology       Date:  2015-08-20       Impact factor: 2.649

2.  Ureteral Wall Thickness is an Independent Parameter Affecting the Success of Extracorporeal Shock Wave Lithotripsy Treatment in Ureteral Stones above the Iliac Crest.

Authors:  Emre Bulbul; Fahri Yavuz Ilki; Mehmet Hamza Gultekin; Ahmet Erozenci; Onur Tutar; Sinharib Citgez; Nejat Tansu; Bulent Onal
Journal:  Int J Clin Pract       Date:  2021-04-23       Impact factor: 2.503

3.  Ureteral stents for impassable ureteroscopy.

Authors:  Sapan N Ambani; Gary J Faerber; William W Roberts; John M Hollingsworth; J Stuart Wolf
Journal:  J Endourol       Date:  2013-02-06       Impact factor: 2.942

4.  Can CT-Based Stone Impaction Markers Augment the Predictive Ability of Spontaneous Stone Passage?

Authors:  Naveen Kachroo; Rajat Jain; Sarah Maskal; Luay Alshara; Sherif Armanyous; Jason Milk; Leonard Kahn; Manoj Monga; Sri Sivalingam
Journal:  J Endourol       Date:  2020-10-27       Impact factor: 2.942

5.  Prediction of spontaneous ureteral calculous passage by an artificial neural network.

Authors:  J M Cummings; J A Boullier; S D Izenberg; D M Kitchens; R V Kothandapani
Journal:  J Urol       Date:  2000-08       Impact factor: 7.450

6.  Study of ureteral and renal morphometry on the outcome of ureterorenoscopic lithotripsy: The critical role of maximum ureteral wall thickness at the site of ureteral stone impaction.

Authors:  Amit Kumar Mishra; Santosh Kumar; Lalgudi Narayan Dorairajan; Ramanitharan Manikandan; G Ramkumar; K S Sreerag; Jayesh Kumar Mittal
Journal:  Urol Ann       Date:  2020-06-10

7.  Predicting an effective ureteral access sheath insertion: a bicenter prospective study.

Authors:  Yakov Mogilevkin; Mario Sofer; David Margel; Alexander Greenstein; David Lifshitz
Journal:  J Endourol       Date:  2014-12       Impact factor: 2.942

Review 8.  Shock wave lithotripsy or ureteroscopy for the management of proximal ureteral calculi: an old discussion revisited.

Authors:  Kittinut Kijvikai; George E Haleblian; Glenn M Preminger; Jean de la Rosette
Journal:  J Urol       Date:  2007-08-14       Impact factor: 7.450

9.  Differentiation of distal ureteral stones and pelvic phleboliths using a convolutional neural network.

Authors:  Johan Jendeberg; Per Thunberg; Mats Lidén
Journal:  Urolithiasis       Date:  2020-02-27       Impact factor: 3.436

10.  Computer-aided diagnosis with a convolutional neural network algorithm for automated detection of urinary tract stones on plain X-ray.

Authors:  Masaki Kobayashi; Junichiro Ishioka; Yoh Matsuoka; Yuichi Fukuda; Yusuke Kohno; Keizo Kawano; Shinji Morimoto; Rie Muta; Motohiro Fujiwara; Naoko Kawamura; Tetsuo Okuno; Soichiro Yoshida; Minato Yokoyama; Rumi Suda; Ryota Saiki; Kenji Suzuki; Itsuo Kumazawa; Yasuhisa Fujii
Journal:  BMC Urol       Date:  2021-08-05       Impact factor: 2.264

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