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Construction and Evaluation of a Deep Learning Model for Assessing Acne Vulgaris Using Clinical Images

机译:使用临床图像评估痤疮祛痘的深层学习模型的构建与评价

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IntroductionAccurate assessment is the basis for the effective treatment of acne vulgaris. The goal of this study was to achieve standardised diagnosis and treatment based on a deep learning model that was developed according to the current Chinese Guidelines for the Management of Acne Vulgaris.MethodsThe first step was to divide each image of acne vulgaris into four regions. Each of these four regions of the same patient was then combined to form a complete facial region. The second step was to classify the images based lesion type, in accordance with the current Chinese guidelines, and by treatment strategy adopted by experienced dermatologists. The final step was to evaluate the performance of the deep learning model in patients with acne vulgaris.ResultsThe results showed that the average F1 value of the assessment model is 0.8 (optimum value = 1). The weighted kappa coefficient between the evaluation according to the artificial intelligence model and the evaluation by the attending dermatologists was 0.791 (95% confidence interval 0.671–0.910, P ?0.001), indicating a high degree of consistency.ConclusionsThe assessment model based on deep learning and according to the Chinese guidelines had a slightly higher overall performance is comparable to that of the attending dermatologist.
机译:引入简介评估是寻常痤疮的有效治疗的基础。本研究的目的是基于根据当前中国痤疮常规管理制定的深层学习模式来实现标准化的诊断和治疗。一步是将痤疮紫色的每个图像分成四个地区。然后将这四个区域中的每一个组合形成完整的面部区域。第二步是根据当前的中国指南和经验丰富的皮肤科医生采用的治疗策略来分类基于图像的病变类型。最后的步骤是评估痤疮患者的深度学习模型的性能。结果表明,评估模型的平均F1值为0.8(最佳值= 1)。根据人工智能模型的评估与参加皮肤科医生的评估之间的加权Kappa系数为0.791(95%置信区间0.671-0.910,P& 0.001),表明基于的高度一致性。基于深入学习和根据中国指南的整体绩效略高于出席皮肤科医生。

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