University of Naples Federico II - Interdepartmental Research Center in Health Management and Innovation in Healthcare (CIRMIS), Naples, 80131, Italy.
Department of Information Technology and Electrical Engineering, University of Naples Federico II, Naples, 80125, Italy.
Sci Rep. 2022 Aug 29;12(1):14682. doi: 10.1038/s41598-022-16030-8.
An innovative algorithm to automatically assess blood perfusion quality of the intestinal sector in laparoscopic colorectal surgery is proposed. Traditionally, the uniformity of the brightness in indocyanine green-based fluorescence consists only in a qualitative, empirical evaluation, which heavily relies on the surgeon's subjective assessment. As such, this leads to assessments that are strongly experience-dependent. To overcome this limitation, the proposed algorithm assesses the level and uniformity of indocyanine green used during laparoscopic surgery. The algorithm adopts a Feed Forward Neural Network receiving as input a feature vector based on the histogram of the green band of the input image. It is used to (i) acquire information related to perfusion during laparoscopic colorectal surgery, and (ii) support the surgeon in assessing objectively the outcome of the procedure. In particular, the algorithm provides an output that classifies the perfusion as adequate or inadequate. The algorithm was validated on videos captured during surgical procedures carried out at the University Hospital Federico II in Naples, Italy. The obtained results show a classification accuracy equal to [Formula: see text], with a repeatability of [Formula: see text]. Finally, the real-time operation of the proposed algorithm was tested by analyzing the video streaming captured directly from an endoscope available in the OR.
提出了一种用于自动评估腹腔镜结直肠手术中肠段血液灌注质量的创新算法。传统上,基于吲哚菁绿的荧光亮度均匀性仅作为一种定性的、经验性的评估,这严重依赖于外科医生的主观评估。因此,这导致评估结果强烈依赖于经验。为了克服这一局限性,该算法评估了腹腔镜手术中使用的吲哚菁绿的水平和均匀性。该算法采用前馈神经网络,接收基于输入图像绿色通道直方图的特征向量作为输入。它用于 (i) 获取与腹腔镜结直肠手术期间灌注相关的信息,以及 (ii) 客观支持外科医生评估手术结果。具体来说,该算法提供了一个将灌注分类为充分或不充分的输出。该算法在意大利那不勒斯的 Federico II 大学医院进行的手术过程中捕获的视频上进行了验证。所获得的结果显示分类准确率等于 [Formula: see text],重复性为 [Formula: see text]。最后,通过分析 OR 中直接从内窥镜捕获的视频流来测试所提出算法的实时操作。