HautAI OÜ, Tallinn, Estonia.
James L. Winkle College of Pharmacy, University of Cincinnati, Cincinnati, Ohio, USA.
Exp Dermatol. 2024 Mar;33(3):e15045. doi: 10.1111/exd.15045.
Predicting a person's chronological age (CA) from visible skin features using artificial intelligence (AI) is now commonplace. Often, convolutional neural network (CNN) models are built using images of the face as biometric data. However, hands hold telltale signs of a person's age. To determine the utility of using only hand images in predicting CA, we developed two deep CNNs based on 1) dorsal hand images (H) and 2) frontal face images (F). Subjects (n = 1454) were Indian women, 20-80 years, across three geographic cohorts (Mumbai, New Delhi and Bangalore) and having a broad variation in skin tones. Images were randomised: 70% of F and 70% of H were used to train CNNs. The remaining 30% of F and H were retained for validation. CNN validation showed mean absolute error for predicting CA using F and H of 4.1 and 4.7 years, respectively. In both cases correlations of predicted and actual age were statistically significant (r(F) = 0.93, r(H) = 0.90). The CNNs for F and H were validated for dark and light skin tones. Finally, by blurring or accentuating visible features on specific regions of the hand and face, we identified those features that contributed to the CNN models. For the face, areas of the inner eye corner and around the mouth were most important for age prediction. For the hands, knuckle texture was a key driver for age prediction. Collectively, for AI estimates of CA, CNNs based solely on hand images are a viable alternative and comparable to CNNs based on facial images.
使用人工智能 (AI) 从可见皮肤特征预测人的实际年龄 (CA) 现在已很常见。通常,卷积神经网络 (CNN) 模型是使用面部图像作为生物识别数据构建的。然而,手可以揭示一个人的年龄迹象。为了确定仅使用手部图像预测 CA 的效用,我们开发了两种基于 1) 手背图像 (H) 和 2) 正面面部图像 (F) 的深度 CNN。研究对象(n=1454)为印度女性,年龄在 20-80 岁之间,来自三个地理队列(孟买、新德里和班加罗尔),肤色差异很大。图像是随机的:70%的 F 和 70%的 H 用于训练 CNN。其余 30%的 F 和 H 用于验证。CNN 验证表明,使用 F 和 H 预测 CA 的平均绝对误差分别为 4.1 岁和 4.7 岁。在这两种情况下,预测年龄和实际年龄的相关性均具有统计学意义 (r(F)=0.93,r(H)=0.90)。对 F 和 H 的 CNN 进行了深色和浅色肤色的验证。最后,通过模糊或突出手部和面部特定区域的可见特征,我们确定了对 CNN 模型有贡献的特征。对于面部,内眼角和嘴周围的区域对年龄预测最重要。对于手部,指节纹理是年龄预测的关键驱动因素。总的来说,对于 CA 的 AI 估计,仅基于手部图像的 CNN 是一种可行的替代方案,与基于面部图像的 CNN 相当。