Deep learning computer vision algorithm for detecting kidney stone composition

被引:93
|
作者
Black, Kristian M. [1 ]
Law, Hei [2 ]
Aldoukhi, Ali [1 ]
Deng, Jia [2 ]
Ghani, Khurshid R. [1 ]
机构
[1] Univ Michigan, Dept Urol, Ann Arbor, MI 48109 USA
[2] Princeton Univ, Dept Comp Sci, Princeton, NJ 08544 USA
关键词
ureteroscopy; laser lithotripsy; holmium; computer vision; artificial intelligence; deep learning; #UroStone; #KidneyStones; SYSTEM;
D O I
10.1111/bju.15035
中图分类号
R5 [内科学]; R69 [泌尿科学(泌尿生殖系疾病)];
学科分类号
1002 ; 100201 ;
摘要
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.
引用
收藏
页码:920 / 924
页数:5
相关论文
共 50 条
  • [41] Deep Learning vs. Traditional Computer Vision
    O'Mahony, Niall
    Campbell, Sean
    Carvalho, Anderson
    Harapanahalli, Suman
    Hernandez, Gustavo Velasco
    Krpalkova, Lenka
    Riordan, Daniel
    Walsh, Joseph
    ADVANCES IN COMPUTER VISION, CVC, VOL 1, 2020, 943 : 128 - 144
  • [42] Deep learning-enabled medical computer vision
    Esteva, Andre
    Chou, Katherine
    Yeung, Serena
    Naik, Nikhil
    Madani, Ali
    Mottaghi, Ali
    Liu, Yun
    Topol, Eric
    Dean, Jeff
    Socher, Richard
    NPJ DIGITAL MEDICINE, 2021, 4 (01)
  • [43] Application of Deep Learning to Computer Vision: A Comprehensive Study
    Islam, S. M. Sofiqul
    Rahman, Shanto
    Rahman, Md. Mostafijur
    Dey, Emon Kumar
    Shoyaib, Mohammad
    2016 5TH INTERNATIONAL CONFERENCE ON INFORMATICS, ELECTRONICS AND VISION (ICIEV), 2016, : 592 - 597
  • [44] Advances in solar forecasting: Computer vision with deep learning
    Paletta, Quentin
    Terren-Serrano, Guillermo
    Nie, Yuhao
    Li, Binghui
    Bieker, Jacob
    Zhang, Wenqi
    Dubus, Laurent
    Dev, Soumyabrata
    Feng, Cong
    ADVANCES IN APPLIED ENERGY, 2023, 11
  • [45] Deep learning-enabled medical computer vision
    Andre Esteva
    Katherine Chou
    Serena Yeung
    Nikhil Naik
    Ali Madani
    Ali Mottaghi
    Yun Liu
    Eric Topol
    Jeff Dean
    Richard Socher
    npj Digital Medicine, 4
  • [46] Deep reinforcement learning in computer vision: a comprehensive survey
    Le, Ngan
    Rathour, Vidhiwar Singh
    Yamazaki, Kashu
    Luu, Khoa
    Savvides, Marios
    ARTIFICIAL INTELLIGENCE REVIEW, 2022, 55 (04) : 2733 - 2819
  • [47] Improving landslide prediction by computer vision and deep learning
    Guerrero-Rodriguez, Byron
    Garcia-Rodriguez, Jose
    Salvador, Jaime
    Mejia-Escobar, Christian
    Cadena, Shirley
    Cepeda, Jairo
    Benavent-Lledo, Manuel
    Mulero-Perez, David
    INTEGRATED COMPUTER-AIDED ENGINEERING, 2024, 31 (01) : 77 - 94
  • [48] COMPUTING PLATFORMS FOR DEEP LEARNING TASK IN COMPUTER VISION
    Kratochvila, Lukas
    PROCEEDINGS II OF THE 26TH CONFERENCE STUDENT EEICT 2020, 2020, : 171 - 175
  • [49] Deep learning in olive pitting machines by computer vision
    de Jodar Lazaro, Manuel
    Madueno Luna, Antonio
    Lucas Pascual, Alberto
    Molina-Martinez, Jose Miguel
    Ruiz Canales, Antonio
    Madueno Luna, Jose Miguel
    Justicia Segovia, Meritxel
    Baena Sanchez, Montserrat
    COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2020, 171
  • [50] Deep reinforcement learning in computer vision: a comprehensive survey
    Ngan Le
    Vidhiwar Singh Rathour
    Kashu Yamazaki
    Khoa Luu
    Marios Savvides
    Artificial Intelligence Review, 2022, 55 : 2733 - 2819