吲哚青绿
计算机科学
腹腔镜手术
人工智能
灌注
亮度
支持向量机
直方图
内窥镜
重复性
结直肠外科
特征(语言学)
计算机视觉
医学
外科
腹腔镜检查
放射科
图像(数学)
数学
腹部外科
统计
物理
光学
语言学
哲学
作者
Pasquale Arpaïa,Umberto Bracale,Francesco Corcione,Egidio De Benedetto,Alessandro Di Bernardo,Vincenzo Di Capua,Luigi Duraccio,Roberto Peltrini,Roberto Prevete
标识
DOI:10.1038/s41598-022-16030-8
摘要
Abstract 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 $$99.9\%$$ 99.9 % , with a repeatability of $$1.9\%$$ 1.9 % . 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.
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