Digital images classification in automatic laparoscopic diagnostics

Abstract

The aim: To evaluate the automatic computer diagnostic (ACD) systems, which were developed, based on two classi!ers–HAAR features cascade and AdaBoost for the laparoscopic diagnostics of appendicitis and ovarian cysts in women with chronic pelvic pain. Materials and methods: The training of HAAR features cascade, and AdaBoost classi!ers were performed with images/ frames of laparoscopic diagnostics. Both gamma-corrected RGB and RGB converted into HSV frames were used for training. Descriptors were extracted from images with the method of Local Binary Pattern (LBP), which includes both data on color characteristics («modi!ed color LBP»-MCLBP) and textural features. Results: Classi!cation of test video images revealed that the highest recall for appendicitis diagnostics was achieved after training of AdaBoost with MCLBP descriptors extracted from RGB images – 0.708, and in the case of ovarian cysts diagnostics – for MCLBP gained from RGB images – 0.886 (P<0.05). Developed AdaBoost-based ACD system achieved a 73.6% correct classi!cation rate (accuracy) for appendicitis and 85.4% for ovarian cysts. The accuracy of the HAAR features classi!er was highest in the case of ovarian cysts identi!cation and achieved 0,653 (RGB) – 0,708 (HSV) values (P<0.05). Conclusions: The HAAR feature-based cascade classi!er turned out to be less e"ective when compared with the AdaBoost classi!er trained with MCLBP descriptors. Ovarian cysts were better diagnosed when compared with appendicitis with the developed ACD

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