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Sci Rep. 2024 Oct 15;14(1):24113. doi: 10.1038/s41598-024-74370-z.
Recent advancements in high-resolution imaging have significantly improved our understanding of microstructural changes in the skin and their relationship to the aging process. Line Field Confocal Optical Coherence Tomography (LC-OCT) provides detailed 3D insights into various skin layers, including the papillary dermis and its fibrous network. In this study, a deep learning model utilizing a 3D ResNet-18 network was trained to predict chronological age from LC-OCT images of 100 healthy Caucasian female volunteers, aged 20 to 70 years. The AI-based protocol focused on regions of interest delineated between the segmented dermal-epidermal junction and the superficial dermis, exploiting complex patterns within the collagen network for age prediction. The model achieved a mean absolute error of 4.2 years and exhibited a Pearson correlation coefficient of 0.937 with actual ages. Furthermore, there was a notable correlation (r = 0.87) between quantified clinical scoring, encompassing parameters such as firmness, elasticity, density, and wrinkle appearance, and the ages predicted by deep learning model. This strong correlation underscores how integrating emerging imaging technologies with deep learning can accelerate aging research and deepen our understanding of how alterations in skin microstructure are related to visible signs of aging.
近年来,高分辨率成像技术的进步极大地提高了我们对皮肤微观结构变化及其与衰老过程关系的理解。线场共焦光学相干断层扫描(LC-OCT)为包括乳头真皮及其纤维网络在内的各种皮肤层提供了详细的 3D 见解。在这项研究中,使用 3D ResNet-18 网络的深度学习模型接受了来自 100 名 20 至 70 岁健康白种女性志愿者的 LC-OCT 图像的训练,以预测其年龄。该 AI 方案专注于在分割的表皮-真皮交界处和浅层真皮之间定义的感兴趣区域,利用胶原网络内的复杂模式进行年龄预测。该模型的平均绝对误差为 4.2 岁,与实际年龄的 Pearson 相关系数为 0.937。此外,定量临床评分(包括硬度、弹性、密度和皱纹外观等参数)与深度学习模型预测的年龄之间存在显著相关性(r=0.87)。这种强相关性表明,将新兴成像技术与深度学习相结合如何加速衰老研究并加深我们对皮肤微观结构变化如何与衰老的可见迹象相关的理解。