Diagnosing erythema migrans (EM) skin lesion, the most common early symptom of Lyme disease using deep learning techniques can be effective to prevent long-term complications. Existing works on deep learning based EM recognition only utilizes lesion image due to the lack of a dataset of Lyme disease related images with associated patient data. Physicians rely on patient information about the background of the skin lesion to confirm their diagnosis. In order to assist the deep learning model with a probability score calculated from patient data, this study elicited opinion from fifteen doctors. For the elicitation process, a questionnaire with questions and possible answers related to EM was prepared. Doctors provided relative weights to different answers to the questions. We converted doctors evaluations to probability scores using Gaussian mixture based density estimation. For elicited probability model validation, we exploited formal concept analysis and decision tree. The elicited probability scores can be utilized to make image based deep learning Lyme disease pre-scanners robust.
翻译:利用深层学习技术诊断红细胞偏差(EM)皮肤损伤(Lyme病最常见的早期症状),这是使用深层学习技术预防长期并发症的最常见早期症状。现有的基于深层学习的EM识别工作只利用了与相关病人数据有关的Lyme病相关图像数据集中的损伤图象。医生依靠关于皮肤损伤背景的病人信息来证实其诊断。为了协助深层学习模型,根据病人数据计算出概率分数,这项研究征求了15名医生的意见。为了引出过程,已准备了一份包含与EM有关的问题和可能答案的问卷。医生为不同问题的答案提供了相对权重。我们利用高斯混合密度估计将医生评价转换为概率分数。为了获得概率模型的验证,我们利用了正式的概念分析和决策树。获得的概率分数可用于使基于深层学习 Lyme疾病前扫描器的图像变得坚固。