Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:5047-5050. doi: 10.1109/EMBC46164.2021.9630430.
One of the greatest concerns in post-operative care is the infection of the surgical wound. Such infections are a particular concern in global health and low-resource areas, where microbial antibiotic resistance is often common. In order to help address this problem, there is a great interest in developing simple tools for early detection of surgical wounds. Motivated by this need, we describe the development of two Convolutional Neural Net (CNN) models designed to detect an infection in a surgical wound using a color image taken from a mobile device. These models were developed using image data collected from a clinical study with 572 women in Rural Rwanda, who underwent Cesarean section surgery and had photos taken approximately 10 days after surgery. Infected wounds (N=62) were diagnosed by a trained doctor through a physical exam. In our model development, we observed a trade-off between AUC accuracy and sensitivity, and we chose to optimize for sensitivity, to match its use as a screening tool. Our naïve CNN model, with a limited number of convolutions and parameters, achieved median AUC = 0.655, true positive rate sensitivity = 0.75, specificity = 0.58, classification accuracy = 0.86. The second CNN model, developed with transfer learning using the Resnet50 architecture, produced a median AUC = 0.639 sensitivity = 0.92, specificity = 0.18, and classification accuracy 0.82. We discuss the specific training and optimization methods used to compensate for significant class imbalance and maximize sensitivity.
术后护理中最大的关注点之一是手术伤口的感染。这种感染在全球卫生和资源匮乏地区尤其令人担忧,因为那里的微生物抗生素耐药性通常很常见。为了帮助解决这个问题,人们非常关注开发用于早期检测手术伤口的简单工具。受此需求的启发,我们描述了两种卷积神经网络 (CNN) 模型的开发,这些模型旨在使用从移动设备拍摄的彩色图像来检测手术伤口的感染。这些模型是使用从卢旺达农村的 572 名女性的临床研究中收集的图像数据开发的,这些女性接受了剖腹产手术,并且在手术后大约 10 天拍摄了照片。感染的伤口(N=62)通过受过培训的医生通过体格检查进行诊断。在我们的模型开发中,我们观察到 AUC 准确性和敏感性之间存在权衡,我们选择优化敏感性,以匹配其作为筛选工具的使用。我们的朴素 CNN 模型,卷积和参数数量有限,获得的中位数 AUC = 0.655,真阳性率敏感性 = 0.75,特异性 = 0.58,分类准确率 = 0.86。第二个使用 Resnet50 架构的迁移学习开发的 CNN 模型,产生的中位数 AUC = 0.639,敏感性 = 0.92,特异性 = 0.18,分类准确率 0.82。我们讨论了用于补偿严重类别不平衡并最大化敏感性的具体训练和优化方法。