通过 YOLO-v4 算法对银屑病患者的 PASI 分数进行基于图像的远程评估

IF 3.5 3区 医学 Q1 DERMATOLOGY Experimental Dermatology Pub Date : 2024-04-25 DOI:10.1111/exd.15082
Heng Yin, Hui Chen, Wei Zhang, Jing Zhang, Tao Cui, Yunpeng Li, Nan Yu, Yingyao Yu, Hai Long, Rong Xiao, Yuwen Su, Yaping Li, Guiying Zhang, Yixin Tan, Haijing Wu, Qianjin Lu
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引用次数: 0

摘要

作为一种慢性复发性疾病,银屑病的特点是皮损广泛。银屑病面积和严重程度指数(PASI)是临床上评估银屑病严重程度最常用的工具。然而,长期监测和精确评估给皮肤科医生和患者带来了困难,既耗时又主观,还容易出现评估偏差。为了开发一种高精度、高速度的深度学习系统来辅助 PASI 评估,我们收集了来自 1486 名银屑病患者的 2657 张高质量图像,并对图像进行了分割和注释。然后,我们利用 YOLO-v4 算法通过四个模块建立了模型,并通过二次加权卡帕系数(QWK)和类内相关系数(ICC)进行了人机比较。与 YOLOv3、RetinaNet、EfficientDet 和 Faster_rcnn 相比,选择 YOLO-v4 算法进行模型训练和优化。各种病变特征的平均精确度(mAP)的模型评估结果如下:红斑,mAP = 0.903;鳞片,mAP = 0.908;压痕,mAP = 0.882。此外,人机比较结果还显示,皮损严重程度的一致性为中位数,面积和 PASI 分数的一致性极佳。最后,我们建立了一个智能 PASI 应用程序,用于远程疾病评估和疗程管理,并与皮肤科医生达成了令人满意的一致。综上所述,我们提出了一种基于图像 YOLO-v4 算法的智能 PASI 应用程序,它可以协助皮肤科医生进行长期、客观的 PASI 评分,为类似的临床评估提供了启示,计算机可以以一种省时、客观的方式提供协助。
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Image-based remote evaluation of PASI scores with psoriasis by the YOLO-v4 algorithm

As a chronic relapsing disease, psoriasis is characterized by widespread skin lesions. The Psoriasis Area and Severity Index (PASI) is the most frequently utilized tool for evaluating the severity of psoriasis in clinical practice. Nevertheless, long-term monitoring and precise evaluation pose difficulties for dermatologists and patients, which is time-consuming, subjective and prone to evaluation bias. To develop a deep learning system with high accuracy and speed to assist PASI evaluation, we collected 2657 high-quality images from 1486 psoriasis patients, and images were segmented and annotated. Then, we utilized the YOLO-v4 algorithm to establish the model via four modules, we also conducted a human-computer comparison through quadratic weighted Kappa (QWK) coefficients and intra-class correlation coefficients (ICC). The YOLO-v4 algorithm was selected for model training and optimization compared with the YOLOv3, RetinaNet, EfficientDet and Faster_rcnn. The model evaluation results of mean average precision (mAP) for various lesion features were as follows: erythema, mAP = 0.903; scale, mAP = 0.908; and induration, mAP = 0.882. In addition, the results of human-computer comparison also showed a median consistency for the skin lesion severity and an excellent consistency for the area and PASI score. Finally, an intelligent PASI app was established for remote disease assessment and course management, with a pleasurable agreement with dermatologists. Taken together, we proposed an intelligent PASI app based on the image YOLO-v4 algorithm that can assist dermatologists in long-term and objective PASI scoring, shedding light on similar clinical assessments that can be assisted by computers in a time-saving and objective manner.

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来源期刊
Experimental Dermatology
Experimental Dermatology 医学-皮肤病学
CiteScore
6.70
自引率
5.60%
发文量
201
审稿时长
2 months
期刊介绍: Experimental Dermatology provides a vehicle for the rapid publication of innovative and definitive reports, letters to the editor and review articles covering all aspects of experimental dermatology. Preference is given to papers of immediate importance to other investigators, either by virtue of their new methodology, experimental data or new ideas. The essential criteria for publication are clarity, experimental soundness and novelty. Letters to the editor related to published reports may also be accepted, provided that they are short and scientifically relevant to the reports mentioned, in order to provide a continuing forum for discussion. Review articles represent a state-of-the-art overview and are invited by the editors.
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