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Page 12 of 23                                                                              George et al. Mini-invasive Surg 2024;8:4  https://dx.doi.org/10.20517/2574-1225.2023.102


                              Table 4. Table of AI applications in capsule endoscopy for polyps and tumours

                                                           Year of                                Study
                              Ref.           Application                 Study design                          Aim and goals               Training/Validation dataset                AI type Results
                                                           publication                            location
                                    [55]
                              Li et al.      Polyps and    2011          Retrospective            China        Utilise textural feature based   Training: 450 normal samples,         KNN      Best Results:
                                             tumours                                                           on multi-scale local binary   450 tumour samples                       MLP      sensitivity of 92.33%,
                                                                                                               pattern for tumour detection  Testing: 150 normal samples,             SVM      specificity of 88.67%
                                                                                                                                           150 tumour samples
                              Karargyris and   Polyps and   2011         Retrospective            America      Utilising log Gabor filters for   Polyps testing: 10 frames with polyps,   SVM  Ulcer detection:
                                      [56]
                              Bourbakis      tumours                                                           feature extraction to detect   40 normal frames                                 sensitivity of 75.0%,
                                                                                                               polyps and ulcers           Ulcer testing: 20 ulcer frames,                     specificity of 73.3%
                                                                                                                                           30 non-ulcer frames                                 Polyp detection:
                                                                                                                                                                                               sensitivity of 100%,
                                                                                                                                                                                               specificity of 67.5%
                              Barbosa        Polyps and    2012          Retrospective            Portugal     Extracting textural features to   Dataset for training and testing: 700 tumour   MLP  Sensitivity of 93.9%,
                                  [57]
                              et al.         tumours                                                           detect polyps and tumours   images, 2,300 normal images                         specificity of 93.1%
                              Mamonov        Polyps and    2014          Retrospective            USA/Portugal Development of binary       Dataset for training and testing:          BC       Per frame: sensitivity
                                  [58]
                              et al.         tumours                                                           classifier for tumour detection  230 tumour images, 18,738 normal images        of 47.4%, specificity
                                                                                                               geometrical analysis and                                                        of 90.2%
                                                                                                               texture content                                                                 Per polyp: sensitivity
                                                                                                                                                                                               of 81.25%, specificity
                                                                                                                                                                                               of 93.47%
                                     [59]
                              Liu et al.     Polyps and    2016          Retrospective            China        Integrating multi-scale curvelet  Training: WCE videos of 15 patients   SVM     Sensitivity of 97.8%,
                                             tumours                                                           and fractal technology into   Testing: 900 normal frames,                       specificity of 96.7%
                                                                                                               textural features for polyp   900 tumour frames
                                                                                                               detection
                              Yuan and       Polyps and    2017          Retrospective            China        Construction of SSAEIM for   Testing: 1,000 bubble images, 1,000 TIs, 1,000   SSAEIM Polyps: sensitivity of
                                   [62]
                              Meng           tumours                                                           polyp detection             CIs, 1,000 polyp images                             98%, specificity of
                                                                                                                                                                                               99%
                                                                                                                                                                                               Bubbles: sensitivity of
                                                                                                                                                                                               99.5%, specificity of
                                                                                                                                                                                               99.17%
                                                                                                                                                                                               TIs: sensitivity of
                                                                                                                                                                                               99%,
                                                                                                                                                                                               specificity of 100%
                                                                                                                                                                                               CIs: sensitivity of
                                                                                                                                                                                               95.5%,
                                                                                                                                                                                               specificity of 99.17%
                              Blanes-Vidal   Polyps and    2019          Retrospective            Denmark      Developed algorithm to match  Training: 39,550 images                  CNN      Sensitivity of 97.1%,
                                  [74]
                              et al.         tumours                                                           CCE and colonoscopy polyps   Testing: 8,476 images                              specificity of 93.3%
                                                                                                               and construct CNN for polyp
                                                                                                               detection
                                       [63]
                              Saito et al.   Polyps and    2020          Retrospective            Japan        Constructing CNN model for   Training: 30,584 protruding lesion images   CNN    Sensitivity of 90.7%,
                                             tumours                                                           protruding lesion detection  Testing: 7,507 protruding lesion images, 10,000    specificity of 79.8%
                                                                                                                                           normal images
                                       [60]
                              Yang et al.    Polyps and    2020          Retrospective            China        Development of algorithm    Testing: 500 normal, 500 polyp images      SVM      Sensitivity of 95.80%,
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