Scott Joseph, Grant-Jacob James A, Praeger Matthew, Coltart George, Sutton Jonathan, Zervas Michalis N, Niranjan Mahesan, Eason Robert W, Healy Eugene, Mills Ben
Dermatology, University Hospital Southampton NHS Foundation Trust, Southampton, SO16 6YD, UK.
Dermatopharmacology, Faculty of Medicine, University of Southampton, Southampton, SO16 6YD, UK.
Sci Rep. 2025 Mar 3;15(1):7412. doi: 10.1038/s41598-025-91238-y.
A neural network was trained to generate synthetic images of severe and moderate psoriatic plaques, after being trained on 375 photographs of patients with psoriasis taken in a clinical setting. A latent w-space vector was identified that allowed the degree of severity of the psoriasis in the generated images to be modified. A second latent w-space vector was identified that allowed the size of the psoriasis plaque to be modified and this was used to show the potential to alleviate bias in the training data. With appropriate training data, such an approach could see a future application in a clinical setting where a patient is able to observe a prediction for the appearance of their skin and associated skin condition under a range of treatments and after different time periods, hence allowing an informed and data-driven decision on optimal treatment to be determined.
在对临床环境中拍摄的375张银屑病患者照片进行训练后,训练了一个神经网络来生成重度和中度银屑病斑块的合成图像。确定了一个潜在的w空间向量,该向量可用于修改生成图像中银屑病的严重程度。还确定了第二个潜在的w空间向量,该向量可用于修改银屑病斑块的大小,这被用来展示减轻训练数据偏差的潜力。有了合适的训练数据,这种方法有望在临床环境中得到应用,患者能够观察到在一系列治疗下以及不同时间段后其皮肤外观和相关皮肤状况的预测结果,从而能够基于数据做出明智的决策,确定最佳治疗方案。