Hernández Alicia, de Zulueta Pablo Robles, Spagnolo Emanuela, Soguero Cristina, Cristobal Ignacio, Pascual Isabel, López Ana, Ramiro-Cortijo David
Department of Obstetrics and Gynecology, Hospital Universitario La Paz, Paseo de la Castellana, 261, 28046 Madrid, Spain.
Department of Obstetrics and Gynecology, Faculty of Medicine, Universidad Autónoma de Madrid, C/Arzobispo Morcillo 2, 28029 Madrid, Spain.
J Pers Med. 2022 Jun 16;12(6):982. doi: 10.3390/jpm12060982.
Endometriosis is a gynecological pathology that affects between 6 and 15% of women of childbearing age. One of the manifestations is intestinal deep infiltrating endometriosis. This condition may force patients to resort to surgical treatment, often ending in resection. The level of blood perfusion at the anastomosis is crucial for its outcome, for this reason, indocyanine green (ICG), a fluorochrome that green stains the structures where it is present, is injected during surgery. This study proposes a novel method based on deep learning algorithms for quantifying the level of blood perfusion in anastomosis. Firstly, with a deep learning algorithm based on the U-Net, models capable of automatically segmenting the intestine from the surgical videos were generated. Secondly, blood perfusion level, from the already segmented video frames, was quantified. The frames were characterized using textures, precisely nine first- and second-order statistics, and then two experiments were carried out. In the first experiment, the differences in the perfusion between the two-anastomosis parts were determined, and in the second, it was verified that the ICG variation could be captured through the textures. The best model when segmenting has an accuracy of 0.92 and a dice coefficient of 0.96. It is concluded that segmentation of the bowel using the U-Net was successful, and the textures are appropriate descriptors for characterization of the blood perfusion in the images where ICG is present. This might help to predict whether postoperative complications will occur during surgery, enabling clinicians to act on this information.
子宫内膜异位症是一种妇科疾病,影响6%至15%的育龄妇女。其表现之一是肠道深部浸润性子宫内膜异位症。这种情况可能迫使患者诉诸手术治疗,手术往往以切除告终。吻合口处的血液灌注水平对其结果至关重要,因此,在手术过程中会注射吲哚菁绿(ICG),一种能使存在它的结构染成绿色的荧光染料。本研究提出了一种基于深度学习算法的新方法,用于量化吻合口处的血液灌注水平。首先,使用基于U-Net的深度学习算法,生成能够从手术视频中自动分割肠道的模型。其次,对已经分割的视频帧的血液灌注水平进行量化。使用纹理对这些帧进行特征描述,确切地说是九个一阶和二阶统计量,然后进行了两个实验。在第一个实验中,确定了两个吻合部分之间灌注的差异,在第二个实验中,验证了可以通过纹理捕捉ICG的变化。分割时最佳模型的准确率为0.92,骰子系数为0.96。得出的结论是,使用U-Net对肠道进行分割是成功的,并且纹理是用于表征存在ICG的图像中血液灌注的合适描述符。这可能有助于预测手术期间是否会发生术后并发症,使临床医生能够根据这些信息采取行动。