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Deepwound: Automated Postoperative Wound Assessment and Surgical Site Surveillance through Convolutional Neural Networks

机译:Deepwound:通过卷积神经网络自动进行术后伤口评估和手术部位监视

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Postoperative wound complications are a significant cause of expense for hospitals, doctors, and patients. Hence, an effective method to diagnose the onset of wound complications is strongly desired. Algorithmically classifying wound images is a difficult task due to the variability in the appearance of wound sites. Convolutional neural networks (CNNs), a subgroup of artificial neural networks that have shown great promise in analyzing visual imagery, can be leveraged to categorize surgical wounds. We present a multi-label CNN ensemble, Deepwound, trained to classify wound images using only image pixels and corresponding labels as inputs. Our final computational model can accurately identify the presence of nine labels: the presence of a wound, drainage, fibrinous exudate, granulation tissue, surgical site infection, open wound, staples, steri strips, and sutures. Our model achieves receiver operating curve (ROC) area under curve (AUC) scores, sensitivity, specificity, and F1 scores superior to prior work in this area. Smartphones provide a means to deliver accessible wound care due to their increasing ubiquity. Paired with deep neural networks, they offer the capability to provide clinical insight to assist surgeons during postoperative care. We also present a mobile application frontend to Deepwound that assists patients in tracking their wound and surgical recovery from the comfort of their home. It also exports comprehensive wound reports that can be shared with a surgeon.
机译:术后伤口并发症是医院,医生和患者花费的重要原因。因此,强烈需要一种诊断伤口并发症发作的有效方法。由于伤口部位的外观变化,在算法上对伤口图像进行分类是一项艰巨的任务。卷积神经网络(CNN)是在分析视觉图像方面显示出巨大希望的人工神经网络的一个子集,可以利用它来对手术伤口进行分类。我们提出了多标签CNN集合Deepwound,经过训练可仅使用图像像素和相应标签作为输入来对伤口图像进行分类。我们的最终计算模型可以准确地识别九种标记的存在:伤口,引流,纤维状渗出液,肉芽组织,手术部位感染,开放性伤口,钉书钉,胸骨条和缝合线的存在。我们的模型在曲线(AUC)得分,灵敏度,特异性和F1得分之下获得了接收器工作曲线(ROC)区域,优于该领域的先前工作。由于智能手机无处不在,因此提供了一种提供可访问的伤口护理的方法。与深层神经网络配合使用,它们提供了提供临床见解的能力,可在术后护理期间为外科医生提供帮助。我们还为Deepwound提供了一个移动应用程序前端,可帮助患者在家中舒适地跟踪伤口和手术恢复情况。它还可以导出可与外科医生共享的全面伤口报告。

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