Literature DB >> 32045113

Deep learning computer vision algorithm for detecting kidney stone composition.

Kristian M Black1, Hei Law2, Ali Aldoukhi1, Jia Deng2, Khurshid R Ghani1.   

Abstract

OBJECTIVES: To assess the recall of a deep learning (DL) method to automatically detect kidney stones composition from digital photographs of stones.
MATERIALS AND METHODS: A total of 63 human kidney stones of varied compositions were obtained from a stone laboratory including calcium oxalate monohydrate (COM), uric acid (UA), magnesium ammonium phosphate hexahydrate (MAPH/struvite), calcium hydrogen phosphate dihydrate (CHPD/brushite), and cystine stones. At least two images of the stones, both surface and inner core, were captured on a digital camera for all stones. A deep convolutional neural network (CNN), ResNet-101 (ResNet, Microsoft), was applied as a multi-class classification model, to each image. This model was assessed using leave-one-out cross-validation with the primary outcome being network prediction recall.
RESULTS: The composition prediction recall for each composition was as follows: UA 94% (n = 17), COM 90% (n = 21), MAPH/struvite 86% (n = 7), cystine 75% (n = 4), CHPD/brushite 71% (n = 14). The overall weighted recall of the CNNs composition analysis was 85% for the entire cohort. Specificity and precision for each stone type were as follows: UA (97.83%, 94.12%), COM (97.62%, 95%), struvite (91.84%, 71.43%), cystine (98.31%, 75%), and brushite (96.43%, 75%).
CONCLUSION: Deep CNNs can be used to identify kidney stone composition from digital photographs with good recall. Future work is needed to see if DL can be used for detecting stone composition during digital endoscopy. This technology may enable integrated endoscopic and laser systems that automatically provide laser settings based on stone composition recognition with the goal to improve surgical efficiency.
© 2020 The Authors BJU International © 2020 BJU International Published by John Wiley & Sons Ltd.

Entities:  

Keywords:  #KidneyStones; #UroStone; artificial intelligence; computer vision; deep learning; holmium; laser lithotripsy; ureteroscopy

Year:  2020        PMID: 32045113     DOI: 10.1111/bju.15035

Source DB:  PubMed          Journal:  BJU Int        ISSN: 1464-4096            Impact factor:   5.588


  9 in total

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2.  Assessing kidney stone composition using smartphone microscopy and deep neural networks.

Authors:  Ege Gungor Onal; Hakan Tekgul
Journal:  BJUI Compass       Date:  2022-01-06

3.  Prediction of the composition of urinary stones using deep learning.

Authors:  Ui Seok Kim; Hyo Sang Kwon; Wonjong Yang; Wonchul Lee; Changil Choi; Jong Keun Kim; Seong Ho Lee; Dohyoung Rim; Jun Hyun Han
Journal:  Investig Clin Urol       Date:  2022-05-25

4.  Machine Learning Prediction of Kidney Stone Composition Using Electronic Health Record-Derived Features.

Authors:  Abin Abraham; Nicholas L Kavoussi; Wilson Sui; Cosmin Bejan; John A Capra; Ryan Hsi
Journal:  J Endourol       Date:  2022-02       Impact factor: 2.942

Review 5.  The Ascent of Artificial Intelligence in Endourology: a Systematic Review Over the Last 2 Decades.

Authors:  B M Zeeshan Hameed; Milap Shah; Nithesh Naik; Bhavan Prasad Rai; Hadis Karimi; Patrick Rice; Peter Kronenberg; Bhaskar Somani
Journal:  Curr Urol Rep       Date:  2021-10-09       Impact factor: 3.092

6.  Intelligent Algorithm-Based Ultrasound Image for Evaluating the Effect of Comprehensive Nursing Scheme on Patients with Diabetic Kidney Disease.

Authors:  Chunyan Zhao; Qiuyu Shi; Fuying Ma; Junjuan Yu; Aijuan Zhao
Journal:  Comput Math Methods Med       Date:  2022-03-10       Impact factor: 2.238

Review 7.  Discussion on the possibility of multi-layer intelligent technologies to achieve the best recover of musculoskeletal injuries: Smart materials, variable structures, and intelligent therapeutic planning.

Authors:  Na Guo; Jiawen Tian; Litao Wang; Kai Sun; Lixin Mi; Hao Ming; Zhao Zhe; Fuchun Sun
Journal:  Front Bioeng Biotechnol       Date:  2022-09-30

8.  Towards automatic recognition of pure and mixed stones using intra-operative endoscopic digital images.

Authors:  Vincent Estrade; Michel Daudon; Emmanuel Richard; Jean-Christophe Bernhard; Franck Bladou; Grégoire Robert; Baudouin Denis de Senneville
Journal:  BJU Int       Date:  2021-07-14       Impact factor: 5.969

9.  Application and Comparison of Supervised Learning Strategies to Classify Polarity of Epithelial Cell Spheroids in 3D Culture.

Authors:  Birga Soetje; Joachim Fuellekrug; Dieter Haffner; Wolfgang H Ziegler
Journal:  Front Genet       Date:  2020-03-27       Impact factor: 4.599

  9 in total

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