Ge Lan, Li Yaoying, Wu Yaguang, Fan Ziwei, Song Zhiqiang
Department of Dermatology, The First Affiliated Hospital of Army Medical University, Chongqing, People's Republic of China.
Lianren Digital Health Technology Co., LTD, Shanghai, People's Republic of China.
Clin Cosmet Investig Dermatol. 2022 Aug 1;15:1465-1473. doi: 10.2147/CCID.S373534. eCollection 2022.
Rosacea is a common chronic inflammatory disease occurring on the face, whose diagnosis is mainly based on symptoms and physical signs. Due to some overlap in symptoms and signs with other inflammatory skin diseases, young and inexperienced doctors often make misdiagnoses and missed diagnoses in clinical practices. We analyze the results of skin physiology and dermatoscopy using machine learning method and identify the characteristics of acne rosacea, which differentiate it from other common facial inflammatory skin diseases so as to improve the accuracy of clinical and differential diagnosis of rosacea.
A total of 495 patients who were jointly diagnosed by two experienced doctors were included. Basic data, clinical symptoms, physiological skin detection, and dermatoscopy results were collected, and the clinical characteristics of rosacea and other common facial inflammatory diseases were summarized according to the descriptive analysis results. The model was established using a machine learning method and compared with the judgment results of young and inexperienced doctors to verify whether the model can improve the accuracy of clinical diagnosis and differential diagnosis of rosacea.
The proportion of yellow and red halos, vascular polygons, as well as follicular pustules, showed by dermatoscopy, and the melanin index in physiological skin detection revealed statistical significance in differentiating rosacea and other common facial inflammatory diseases (all P < 0.01). After adopting the machine learning, we found that GBM (Gradient Boosting Machine) algorithm was the best, and the error rate of this model in the validation set was 5.48%. In the final man-machine comparison, the accuracy of the GBM algorithm model for the classification of skin disease was significantly higher than that of young and inexperienced doctors.
Dermatoscopy combined with machine learning can effectively improve the diagnosis and differential diagnosis accuracy of rosacea and other facial inflammatory skin diseases.
酒渣鼻是一种常见的发生于面部的慢性炎症性疾病,其诊断主要基于症状和体征。由于其症状和体征与其他炎症性皮肤病存在一些重叠,年轻且经验不足的医生在临床实践中常出现误诊和漏诊。我们运用机器学习方法分析皮肤生理学和皮肤镜检查结果,识别玫瑰痤疮的特征,将其与其他常见的面部炎症性皮肤病区分开来,以提高酒渣鼻临床及鉴别诊断的准确性。
纳入由两名经验丰富的医生共同诊断的495例患者。收集基本数据、临床症状、皮肤生理检测及皮肤镜检查结果,并根据描述性分析结果总结酒渣鼻及其他常见面部炎症性疾病的临床特征。采用机器学习方法建立模型,并与年轻且经验不足的医生的判断结果进行比较,以验证该模型是否能提高酒渣鼻临床诊断和鉴别诊断的准确性。
皮肤镜检查显示的黄色和红色晕圈、血管多边形以及毛囊脓疱的比例,以及皮肤生理检测中的黑色素指数,在区分酒渣鼻和其他常见面部炎症性疾病方面具有统计学意义(均P < 0.01)。采用机器学习后,我们发现梯度提升机(GBM)算法最佳,该模型在验证集中的错误率为5.48%。在最终的人机比较中,GBM算法模型对皮肤病分类的准确性显著高于年轻且经验不足的医生。
皮肤镜检查结合机器学习可有效提高酒渣鼻及其他面部炎症性皮肤病的诊断和鉴别诊断准确性。