Park Seungman, Chien Anna L, Lin Beiyu, Li Keva
Department of Mechanical Engineering, University of Nevada, Las Vegas, NV 89154, USA.
Department of Dermatology, Johns Hopkins University School of Medicine, Baltimore, MD 21287, USA.
Appl Sci (Basel). 2023 Jan 2;13(2). doi: 10.3390/app13020970. Epub 2023 Jan 11.
Rosacea is a chronic inflammatory skin disorder that causes visible blood vessels and redness on the nose, chin, cheeks, and forehead. However, visual assessment, the current standard method used to identify rosacea, is often subjective among clinicians and results in high variation. Recent advances in artificial intelligence have allowed for the effective detection of various skin diseases with high accuracy and consistency. In this study, we develop a new methodology, coined "five accurate CNNs-based evaluation system (FACES)", to identify and classify rosacea more efficiently. First, 19 CNN-based models that have been widely used for image classification were trained and tested via training and validation data sets. Next, the five best performing models were selected based on accuracy, which served as a weight value for FACES. At the same time, we also applied a majority rule to five selected models to detect rosacea. The results exhibited that the performance of FACES was superior to that of the five individual CNN-based models and the majority rule in terms of accuracy, sensitivity, specificity, and precision. In particular, the accuracy and sensitivity of FACES were the highest, and the specificity and precision were higher than most of the individual models. To improve the performance of our system, future studies must consider patient details, such as age, gender, and race, and perform comparison tests between our model system and clinicians.
酒渣鼻是一种慢性炎症性皮肤病,会导致鼻子、下巴、脸颊和前额出现可见的血管和泛红。然而,视觉评估作为目前用于识别酒渣鼻的标准方法,在临床医生中往往具有主观性,且结果差异很大。人工智能的最新进展使得能够以高精度和一致性有效检测各种皮肤疾病。在本研究中,我们开发了一种新方法,称为“基于五个精确卷积神经网络的评估系统(FACES)”,以更有效地识别和分类酒渣鼻。首先,通过训练和验证数据集对19个广泛用于图像分类的基于卷积神经网络的模型进行训练和测试。接下来,根据准确率选择五个表现最佳的模型,将其作为FACES的权重值。同时,我们还对五个选定的模型应用多数规则来检测酒渣鼻。结果表明,FACES在准确率、敏感性、特异性和精确率方面的表现优于五个基于卷积神经网络的单个模型和多数规则。特别是,FACES的准确率和敏感性最高,特异性和精确率高于大多数单个模型。为了提高我们系统的性能,未来的研究必须考虑患者的详细信息,如年龄、性别和种族,并在我们的模型系统和临床医生之间进行比较测试。