宏观与微观皮肤成像:为农村/偏远地区的皮肤病治疗找到经济实惠的方法。

Adela-Vasilica Gudiu, Lăcrămioara Stoicu-Tivadar
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引用次数: 0

摘要

本研究探索了在没有皮肤镜等专业仪器的情况下拍摄皮肤病变的替代方法,旨在提高远程诊断能力,尤其是考虑到黑色素瘤病例的发病率每年都在增加。在没有皮肤科医生合作的情况下,我们使用卷积神经网络(CNN)捕捉了一个人的痣形成的研究图像,并随后将其标记为黑色素瘤或非黑色素瘤。CNN 在显微图像上的表现更好,75% 的数据集被正确标注,而在宏观图像上,只有 63% 的数据集被正确标注。这些研究结果凸显了基于智能手机的成像技术在提高远程医疗环境中黑色素瘤和其他皮肤病诊断准确性方面的潜力。
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Macro vs Micro Skin Imaging: Finding an Affordable Approach for Dermatological Care Access in Rural/Remote Areas.

The present study explored alternative methods for photographing skin lesions in the absence of specialized instruments like dermatoscopes, aiming to enhance remote diagnostic capabilities, particularly in light of the increasing incidence of melanoma cases annually. Using two lenses attached to a smartphone camera, one macroscopic and the other microscopic, study images of nevus formations from one individual were captured, and, in the absence of a collaboration with a dermatologist, subsequently labeled as melanoma or non-melanoma using a Convolutional Neural Network (CNN) which was trained, with dermoscopic images of melanoma and non-melanoma formations, to see on which image set better performances would be attained. The CNN demonstrated better performance on microscopic images, with 75% of the dataset being labeled correctly, compared to the macroscopic one, with 63% of the dataset being labeled correctly. These findings highlight the potential of smartphone-based imaging with specialized micro lenses to improve diagnostic accuracy for melanoma and other dermatological conditions in remote healthcare settings.

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