Literature DB >> 33108801

Automatic Detection and Scoring of Kidney Stones on Noncontrast CT Images Using S.T.O.N.E. Nephrolithometry: Combined Deep Learning and Thresholding Methods.

Yingpu Cui1, Zhaonan Sun1, Shuai Ma1, Weipeng Liu2, Xiangpeng Wang2, Xiaodong Zhang1, Xiaoying Wang3.   

Abstract

PURPOSE: To develop and validate a deep learning and thresholding-based model for automatic kidney stone detection and scoring according to S.T.O.N.E. nephrolithometry. PROCEDURES: Abdominal noncontrast computed tomography (NCCT) images were retrospectively archived from February 2018 to April 2019 for three parts: a segmentation dataset (n = 167), a hydronephrosis classification dataset (n = 282), and test dataset (n = 117). The model consisted of four steps. First, the 3D U-Nets for kidney and renal sinus segmentation were developed. Second, the deep 3D dual-path networks for hydronephrosis grading were developed. Third, the thresholding methods were used to detect and segment stones in the renal sinus region. The stone size, CT attenuation, and tract length were calculated from the segmented stone region. Fourth, the stone's location was determined. The stone detection performance was estimated with sensitivity and positive predictive value (PPV). The hydronephrosis grading and stone size, tract length, number of involved calyces, and essence grading were estimated with the area under the curve (AUC) method and linear-weighted κ statistics, respectively.
RESULTS: The stone detection algorithm reached a sensitivity of 95.9 % (236/246) and a PPV of 98.7 % (236/239). The hydronephrosis classification algorithm achieved an AUC of 0.97. The scoring model results showed good agreement with radiologist results for the stone size, tract length, number of involved calyces, and essence grading (κ = 0.95, 95 % confidence interval [CI]: 0.92, 0.98; κ = 0.97, 95 % CI: 0.95, 1.00; κ = 0.95, 95 % CI: 0.92, 0.98; and κ = 0.97, 95 % CI: 0.94, 1.00), respectively.
CONCLUSIONS: The scoring model was constructed that can automatically detect and score stones in NCCT images.

Entities:  

Keywords:  Computer-assisted; Deep learning; Image processing; Kidney stone; Multidetector computed tomography; Severity of illness index

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Year:  2020        PMID: 33108801     DOI: 10.1007/s11307-020-01554-0

Source DB:  PubMed          Journal:  Mol Imaging Biol        ISSN: 1536-1632            Impact factor:   3.488


  2 in total

1.  Deep learning is a promising technology and seems to be the future of the CT stone evaluation.

Authors:  Alexandre Danilovic
Journal:  Int Braz J Urol       Date:  2022 Sep-Oct       Impact factor: 3.050

2.  Fully automated pelvic bone segmentation in multiparameteric MRI using a 3D convolutional neural network.

Authors:  Xiang Liu; Chao Han; He Wang; Jingyun Wu; Yingpu Cui; Xiaodong Zhang; Xiaoying Wang
Journal:  Insights Imaging       Date:  2021-07-07
  2 in total

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