医学
活检
脂肪变性
金标准(测试)
放射科
肝活检
人工智能
核医学
内科学
计算机科学
作者
Vittorio Cherchi,Vincenzo Della Mea,Giovanni Terrosu,Pier Paolo Brollo,Riccardo Pravisani,Sergio Calandra,Edoardo Scarpa,Marco Ventin,Lorenzo D’Alì,Dario Lorenzin,Carla Di Loreto,Andrea Risaliti,Umberto Baccarani
摘要
Abstract Background Assessment of hepatic steatosis (HS) before transplantation requires the pathologist to read a graft biopsy. A simple method based on the evaluation of images from tissue samples with a smartphone could expedite and facilitate the liver selection. This study aims to assess the degree of HS by analysing photographic images from liver needle biopsy samples. Methods Thirty‐three biopsy‐images were acquired with a smartphone. Image processing was carried out using ImageJ: background subtraction, conversion to HSB colour space, segmentation of the biopsy area, and evaluation of statistical features of Hue, Saturation, Brightness, Red, Green, and Blue channels on the biopsy area. After feature extraction, correlations were made with gold standard HS percentage assessed at two levels (frozen‐section vs glass‐slide). Sensitivity, specificity, and accuracy were calculated for each feature. Results Correlations were found for H, S, R. The sensitivity, specificity, and accuracy of the final classifier based on the K* algorithm were 94%, 92%, 94%. Limitations Accuracy assessment was performed considering macrovesicular steatosis on specimens with mostly < 30% HS. Conclusions The steatosis assessment based on needle biopsy images, proved to be an effective and promising method. Deep learning approaches could also be experimented with a larger set of images
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