Department of Dermatology, Xiangya Hospital, Central South University, Changsha, Hunan, China.
National Engineering Research Center of Personalized Diagnostic and Therapeutic Technology, Hunan, China.
J Med Internet Res. 2023 Mar 16;25:e44932. doi: 10.2196/44932.
Psoriasis is one of the most frequent inflammatory skin conditions and could be treated via tele-dermatology, provided that the current lack of reliable tools for objective severity assessments is overcome. Psoriasis Area and Severity Index (PASI) has a prominent level of subjectivity and is rarely used in real practice, although it is the most widely accepted metric for measuring psoriasis severity currently.
This study aimed to develop an image-artificial intelligence (AI)-based validated system for severity assessment with the explicit intention of facilitating long-term management of patients with psoriasis.
A deep learning system was trained to estimate the PASI score by using 14,096 images from 2367 patients with psoriasis. We used 1962 patients from January 2015 to April 2021 to train the model and the other 405 patients from May 2021 to July 2021 to validate it. A multiview feature enhancement block was designed to combine vision features from different perspectives to better simulate the visual diagnostic method in clinical practice. A classification header along with a regression header was simultaneously applied to generate PASI scores, and an extra cross-teacher header after these 2 headers was designed to revise their output. The mean average error (MAE) was used as the metric to evaluate the accuracy of the predicted PASI score. By making the model minimize the MAE value, the model becomes closer to the target value. Then, the proposed model was compared with 43 experienced dermatologists. Finally, the proposed model was deployed into an app named SkinTeller on the WeChat platform.
The proposed image-AI-based PASI-estimating model outperformed the average performance of 43 experienced dermatologists with a 33.2% performance gain in the overall PASI score. The model achieved the smallest MAE of 2.05 at 3 input images by the ablation experiment. In other words, for the task of psoriasis severity assessment, the severity score predicted by our model was close to the PASI score diagnosed by experienced dermatologists. The SkinTeller app has been used 3369 times for PASI scoring in 1497 patients from 18 hospitals, and its excellent performance was confirmed by a feedback survey of 43 dermatologist users.
An image-AI-based psoriasis severity assessment model has been proposed to automatically calculate PASI scores in an efficient, objective, and accurate manner. The SkinTeller app may be a promising alternative for dermatologists' accurate assessment in the real world and chronic disease self-management in patients with psoriasis.
银屑病是最常见的炎症性皮肤疾病之一,可以通过远程皮肤病学进行治疗,前提是克服当前缺乏可靠的客观严重程度评估工具的问题。银屑病面积和严重程度指数(PASI)具有明显的主观性,在实际中很少使用,尽管它是目前最广泛接受的衡量银屑病严重程度的指标。
本研究旨在开发一种基于图像人工智能(AI)的验证系统,用于进行严重程度评估,明确目的是为了方便长期管理银屑病患者。
利用来自 2367 名银屑病患者的 14096 张图像,训练深度学习系统来估算 PASI 评分。我们使用 2015 年 1 月至 2021 年 4 月的 1962 名患者来训练模型,而另外 405 名患者则用于 2021 年 5 月至 7 月的验证。设计了一个多视图特征增强块,以结合来自不同视角的视觉特征,更好地模拟临床实践中的视觉诊断方法。同时应用分类标题和回归标题来生成 PASI 评分,并在这两个标题之后设计了一个额外的交叉教师标题来修正它们的输出。平均绝对误差(MAE)被用作评估预测 PASI 评分准确性的指标。通过使模型最小化 MAE 值,模型会更接近目标值。然后,将所提出的模型与 43 名有经验的皮肤科医生进行了比较。最后,将所提出的模型部署到名为 SkinTeller 的微信平台应用程序中。
与 43 名有经验的皮肤科医生的平均表现相比,基于图像 AI 的 PASI 估算模型表现出色,整体 PASI 评分提高了 33.2%。通过消融实验,模型在输入 3 张图像时达到了 2.05 的最小 MAE。换句话说,对于银屑病严重程度评估任务,我们模型预测的严重程度得分接近有经验的皮肤科医生诊断的 PASI 评分。SkinTeller 应用程序已在 18 家医院的 1497 名患者中用于 PASI 评分 3369 次,其出色的性能得到了 43 名皮肤科医生用户的反馈调查的证实。
已经提出了一种基于图像 AI 的银屑病严重程度评估模型,以高效、客观和准确的方式自动计算 PASI 评分。SkinTeller 应用程序可能是皮肤科医生在现实世界中进行准确评估以及银屑病患者进行慢性疾病自我管理的一种有前途的替代方案。