Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:5059-5062. doi: 10.1109/EMBC46164.2021.9630094.
The ability to detect surgical site infections (SSI) is a critical need for healthcare worldwide, but is especially important in low-income countries, where there is limited access to health facilities and trained clinical staff. In this paper, we present a new method of predicting SSI using a thermal image collected with a smart phone. Machine learning algorithms were developed using images collected as part of a clinical study that included 530 women in rural Rwanda who underwent cesarean section surgery. Thermal images were collected approximately 10 days after surgery, in conjunction with an examination by a trained doctor to determine the status of the wound (infected or not). Of the 530 women, 30 were found to have infected wounds. The data were used to develop two Convolutional Neural Net (CNN) models, with special care taken to avoid overfitting and address the problem of class imbalance in binary classification. The first model, a 6-layer naïve CNN model, demonstrated a median accuracy of AUC=0.84 with sensitivity=71% and specificity=87%. The transfer learning CNN model demonstrated a median accuracy of AUC=0.90 with sensitivity =95% and specificity=84%. To our knowledge, this is the first successful demonstration of a machine learning algorithm to predict surgical infection using thermal images alone.Clinical Relevance- This work establishes a promising new method for automated detection of surgical site infection.
检测手术部位感染(SSI)的能力是全球医疗保健的迫切需求,但在低收入国家尤为重要,因为这些国家获得医疗设施和训练有素的临床医务人员的机会有限。在本文中,我们提出了一种使用智能手机采集的热图像预测 SSI 的新方法。使用在包括卢旺达农村地区 530 名接受剖腹产手术的妇女在内的临床研究中收集的图像开发了机器学习算法。大约在手术后 10 天采集热图像,并结合经过培训的医生进行的检查以确定伤口的状况(感染或未感染)。在 530 名妇女中,有 30 名发现有感染的伤口。这些数据用于开发两个卷积神经网络(CNN)模型,特别注意避免过度拟合并解决二进制分类中的类不平衡问题。第一个模型是一个 6 层的朴素 CNN 模型,其 AUC=0.84 的中位数准确率为 71%,灵敏度为 87%。迁移学习 CNN 模型的 AUC=0.90 的中位数准确率为 95%,特异性为 84%。据我们所知,这是首次成功使用热图像单独预测手术感染的机器学习算法。临床意义-这项工作确立了一种有前途的新方法,用于自动检测手术部位感染。