Page 49 - Read Online
P. 49

George et al. Mini-invasive Surg 2024;8:4  https://dx.doi.org/10.20517/2574-1225.2023.102  Page 13 of 23



 tumours  based on LCDH for polyp                                       specificity of 96.20%
 detection
 [61]
 Vieira et al.  Polyps and   2020  Retrospective  Portugal  Construction of GMM and   Database of 936 tumour images, 3,000 normal   SVM   Best result: sensitivity
 tumours  ensemble system for tumour   images for training and testing  MLP  of 96.1%, specificity
 detection                                                              of 98.3%
 Yamada   Polyps and   2021  Retrospective  Japan  Construction of CNN based on  Training: 15,933 colorectal neoplasm images   CNN  Sensitivity of 79.0%,
 [64]
 et al.  tumours  SSMD for colorectal neoplasm  Testing: 1,850 colorectal neoplasm images, 2,934   specificity of 87%
 detection          normal colon images
 Saraiva   Polyps and   2021  Retrospective  Portugal  Development of CNN for   Database: 860 protruding lesions images, 2,780  CNN  Sensitivity of 90.7%,
 [65]
 et al.  tumours  protruding lesion detection on  normal mucosa images   specificity of 92.6%
 CCE imaging        Training: 2,912 images of database
                    Testing: 728 images of database
 [66]                                              [110]
 Jain et al.  Polyps and   2021  Retrospective  India  Creation of deep CNN based   Training and testing on KID database   and   CNN  Sensitivity of 98%
                                      [113]
 tumours  WCENet model for anomaly   CVC-clinic database
 detection in WCE images
 [67]
 Zhou et al.  Polyps and   2022  Retrospective  China  Utilising neural network   Training: 195 images   CNN  No sensitivity and
 tumours  ensembles to improve polyp   Testing: 41 images               specificity reported
 segmentation
 Mascarenhas   Polyps and   2022  Retrospective  Portugal  Construction of CNN for   Training: 1,928 protruding lesion images, 2,644   CNN  Sensitivity of 90.0%,
 [68]
 et al.  tumours  protruding lesion detection on  normal/other finding imagesTesting: 482   specificity of 99.1%
 CCE                protruding lesion images, 661 normal/other
                    finding images
 Gilabert   Polyps and   2022  Retrospective  Spain  Comparing AI tool to RAPID   Testing: 18 videos  CNN  Sensitivity of 87.8%
 [69]
 et al.  tumours  Reader Software v9.0
 (Medtronic)
 Piccirelli   Polyps and   2022  Retrospective  Italy  Testing the diagnostic   Testing: 126 patients  Express  Sensitivity of 97%,
 [75]
 et al.  tumours  accuracy of Express View                     view     specificity of 100%
 (IntroMedic)
 [70]
 Liu et al.  Polyps and   2022  Retrospective  China  Constructing DBMF fusion   Training: 1,450 images   DBMF  No sensitivity and
 tumours  network with CNN and   Testing: 636 images                    specificity given
 transformer for polyp
 segmentation
 [71]
 Souaidi et al.  Polyps and   2023  Retrospective  Morocco  Modifying existing SSMD   Training: 2,745 images   SSMD  No sensitivity and
 tumours  models for polyp detection  Testing: 784 images               specificity given
 Mascarenhas   Polyps and   2023  Retrospective  Portugal  Developing CNN for automatic  Training: 14,900 images   CNN  Sensitivity of 96.8%,
 [72]
 Saraiva et al.  tumours  detection of small bowel   Testing: 3,725 images  specificity of 96.5%
 protruding lesions
                               [114]
 Lafraxo   Polyps and   2023  Retrospective  Morocco  Proposing novel CNN-based   MICCAI2017  :   CNN  No sensitivity or
 [73]
 et al.  tumours  architecture for GI image   training: 2,796 images    specificity given.
 segmentation       Testing: 652 images                                 Accuracy of 99.16%
                                     [115]
                    Kvasir-SEG dataset   :                              on MICCAI2017
                    Training: 800 images                                reported,
                                                         [116]
                    Testing: 200 images CVC-ClinicDB dataset  :         97.55% on Kvasir-
                    Training: 490 images                                SEG,
   44   45   46   47   48   49   50   51   52   53   54