Di Fraia Marco, Tieghi Lorenzo, Magri Francesca, Caro Gemma, Michelini Simone, Pellacani Giovanni, Rossi Alfredo
Dermatology Clinic, Department of Clinical Internal, Anesthesiologic and Cardiovascular Sciences, Sapienza University of Rome, Roma, Italy.
Department of Mechanical and Aerospace Engineering, Sapienza University of Rome, Roma, Italy.
Dermatol Pract Concept. 2023 Jul 1;13(3):e2023136. doi: 10.5826/dpc.1303a136.
Androgenic alopecia (AGA) staging is still based on macroscopic scales, yet the introduction of trichoscopy is gradually bringing an important change, even though it remains an eye-based method. However, recently developed artificial intelligence-assisted programs can execute automated count of trichoscopic patterns. Nevertheless, to interpret data elaborated by these programs can be complex. Machine learning algorithms might represent an innovative solution. Among them, support vector machine (SVM) models are among the best methods for classification.
Our aim was to develop a SVM algorithm, based on three trichoscopic patterns, able to classify AGA patients and to calculate a severity index.
We retrospectively analyzed trichoscopic images from 200 AGA patients using Trichoscale Pro® software, calculating the number of vellus hair, empty follicles and single hair follicular units. Then, we elaborated a SVM model, based on these three patterns and on sex, able to classify patients as affected by mild AGA or moderate-severe AGA, and able to calculate the probability of the classification being correct, expressed as percentage (from 50% to 100%). This probability estimate is higher in patients with more AGA trichoscopic patterns and, thus, it might serve as a severity index.
For training and test datasets, accuracy was 94.3% and 90.0% respectively, while the Area Under the Curve was 0.99 and 0.95 respectively.
We believe our SVM model could be of great support for dermatologists in the management of AGA, especially in better assessing disease severity and, thus, in prescribing a more appropriate therapy.
雄激素性脱发(AGA)的分期仍基于宏观标准,然而,毛囊镜检查的引入正逐渐带来重要变革,尽管它仍是一种基于肉眼观察的方法。不过,最近开发的人工智能辅助程序能够自动计数毛囊镜下的特征。然而,解读这些程序所处理的数据可能会很复杂。机器学习算法或许能提供创新解决方案。其中,支持向量机(SVM)模型是最佳分类方法之一。
我们的目标是开发一种基于三种毛囊镜特征的支持向量机算法,用于对AGA患者进行分类并计算严重程度指数。
我们使用Trichoscale Pro®软件对200例AGA患者的毛囊镜图像进行回顾性分析,计算毳毛、空毛囊和单根毛囊单位的数量。然后,我们基于这三种特征以及性别构建了一个支持向量机模型,该模型能够将患者分为轻度AGA或中度至重度AGA,并计算分类正确的概率,以百分比表示(从50%到100%)。在具有更多AGA毛囊镜特征的患者中,这种概率估计更高,因此它可作为严重程度指数。
对于训练数据集和测试数据集,准确率分别为94.3%和90.0%,而曲线下面积分别为0.99和0.95。
我们认为我们的支持向量机模型在AGA的管理中对皮肤科医生有很大帮助,特别是在更好地评估疾病严重程度以及因此开出更合适的治疗方案方面。