Gantenbein Lorena, Cerminara Sara Elisa, Maul Julia-Tatjana, Navarini Alexander A, Maul Lara Valeska
Department of Dermatology, University Hospital of Basel, Basel, Switzerland,
Department of Dermatology, University Hospital of Basel, Basel, Switzerland.
Dermatology. 2025;241(1):59-71. doi: 10.1159/000541943. Epub 2024 Oct 14.
Skin cancer, a prevalent cancer type among fair-skinned patients globally, poses a relevant public health concern due to rising incidence rates. Ultraviolet (UV) radiation poses a major risk factor for skin cancer. However, intentional tanning associated with sunburns remains a common practice, notably among female adults. Appropriate prevention campaigns targeting children and adolescents are needed to improve sun protection behavior particularly in these age groups. The aim of our study was to investigate if an AI-based simulation of facial skin aging can enhance sun protection behavior in female adults.
In this single-center, prospective, observational pilot study at Department of Dermatology at the University Hospital of Basel, we took photographs of healthy young females' faces with a VISIA-CR camera (Version 8.2; Canfield Scientific Inc., Parsippany, NJ, USA) between February and March 2021. Digital images were performed in three angles (straight, left 45°, and right 45°). All participants received an AI-based simulation of their facial skin with continuous aging to 80 years. A newly created anonymous questionnaire capturing participants' sociodemographic data and also tanning and sun protection behavior was completed in pre- and post-aging simulation. To observe long-term effects, a 2-year follow-up was conducted between March and April 2023.
The 60 participants (mean age 23.6 ± 2.5 years) evaluated the importance of sun protection significantly higher after skin aging simulation with VISIA-CR camera (p < 0.0001; 95% CI: 8.2-8.8). Post-intervention, 91.7% (55/60) of the females were motivated to reduce UV exposure and to intensify UV protection in the future since the individual UV-dependent risk was perceived significantly higher (p < 0.001; 95% CI: 5.9-6.7). At 2-year follow-up, 96% (24/25) indicated persistent effort reducing UV exposure. The preference for SPF 50+ sunscreen increased to 46.7% (28/65) directly after the skin aging simulation and continued to rise up to 60.0% (15/25) after 2 years.
Our data emphasize the potential of AI-assisted photoaging interventions to enhance motivation for UV protection in the short and the long term. We encourage that different age and gender groups are addressed in a personalized, generation-specific manner with the appropriate media and by considering the Hawthorne effect. Campaigns with visual AI support can improve the intent of cancer-preventative behavior.
Skin cancer, a prevalent cancer type among fair-skinned patients globally, poses a relevant public health concern due to rising incidence rates. Ultraviolet (UV) radiation poses a major risk factor for skin cancer. However, intentional tanning associated with sunburns remains a common practice, notably among female adults. Appropriate prevention campaigns targeting children and adolescents are needed to improve sun protection behavior particularly in these age groups. The aim of our study was to investigate if an AI-based simulation of facial skin aging can enhance sun protection behavior in female adults.
In this single-center, prospective, observational pilot study at Department of Dermatology at the University Hospital of Basel, we took photographs of healthy young females' faces with a VISIA-CR camera (Version 8.2; Canfield Scientific Inc., Parsippany, NJ, USA) between February and March 2021. Digital images were performed in three angles (straight, left 45°, and right 45°). All participants received an AI-based simulation of their facial skin with continuous aging to 80 years. A newly created anonymous questionnaire capturing participants' sociodemographic data and also tanning and sun protection behavior was completed in pre- and post-aging simulation. To observe long-term effects, a 2-year follow-up was conducted between March and April 2023.
The 60 participants (mean age 23.6 ± 2.5 years) evaluated the importance of sun protection significantly higher after skin aging simulation with VISIA-CR camera (p < 0.0001; 95% CI: 8.2-8.8). Post-intervention, 91.7% (55/60) of the females were motivated to reduce UV exposure and to intensify UV protection in the future since the individual UV-dependent risk was perceived significantly higher (p < 0.001; 95% CI: 5.9-6.7). At 2-year follow-up, 96% (24/25) indicated persistent effort reducing UV exposure. The preference for SPF 50+ sunscreen increased to 46.7% (28/65) directly after the skin aging simulation and continued to rise up to 60.0% (15/25) after 2 years.
Our data emphasize the potential of AI-assisted photoaging interventions to enhance motivation for UV protection in the short and the long term. We encourage that different age and gender groups are addressed in a personalized, generation-specific manner with the appropriate media and by considering the Hawthorne effect. Campaigns with visual AI support can improve the intent of cancer-preventative behavior.
皮肤癌是全球浅肤色人群中一种常见的癌症类型,由于发病率不断上升,已成为一个重要的公共卫生问题。紫外线(UV)辐射是皮肤癌的主要危险因素。然而,与晒伤相关的故意晒黑仍是一种常见行为,在成年女性中尤为明显。需要针对儿童和青少年开展适当的预防活动,以改善防晒行为,特别是在这些年龄组中。我们研究的目的是调查基于人工智能的面部皮肤老化模拟是否能增强成年女性的防晒行为。
在巴塞尔大学医院皮肤科进行的这项单中心、前瞻性、观察性试点研究中,我们于2021年2月至3月期间使用VISIA-CR相机(8.2版本;美国新泽西州帕西帕尼的Canfield Scientific Inc.)拍摄了健康年轻女性面部的照片。数字图像从三个角度(正面、左侧45°和右侧45°)拍摄。所有参与者都接受了基于人工智能的面部皮肤持续老化至80岁的模拟。在老化模拟前后,完成了一份新创建的匿名问卷,收集参与者的社会人口统计学数据以及晒黑和防晒行为。为了观察长期效果,于2023年3月至4月进行了为期2年的随访。
60名参与者(平均年龄23.6±2.5岁)在使用VISIA-CR相机进行皮肤老化模拟后,对防晒重要性的评价显著提高(p<0.0001;95%CI:8.2-8.8)。干预后,91.7%(55/60)的女性因意识到个人紫外线相关风险显著更高(p<0.001;95%CI:5.9-6.7),而有动力在未来减少紫外线暴露并加强紫外线防护。在2年随访时,96%(24/25)的人表示持续努力减少紫外线暴露。对SPF 50+防晒霜的偏好率在皮肤老化模拟后立即升至46.7%(28/65),并在2年后继续升至60.0%(15/25)。
我们的数据强调了人工智能辅助光老化干预在短期和长期增强紫外线防护动机方面的潜力。我们鼓励以个性化、针对特定世代的方式,通过适当的媒体并考虑霍桑效应,针对不同年龄和性别群体开展活动。有视觉人工智能支持的活动可以提高癌症预防行为的意愿。
皮肤癌是全球浅肤色人群中一种常见的癌症类型,由于发病率不断上升,已成为一个重要的公共卫生问题。紫外线(UV)辐射是皮肤癌的主要危险因素。然而,与晒伤相关的故意晒黑仍是一种常见行为,在成年女性中尤为明显。需要针对儿童和青少年开展适当的预防活动,以改善防晒行为,特别是在这些年龄组中。我们研究的目的是调查基于人工智能的面部皮肤老化模拟是否能增强成年女性的防晒行为。
在巴塞尔大学医院皮肤科进行的这项单中心、前瞻性、观察性试点研究中,我们于2021年2月至3月期间使用VISIA-CR相机(8.2版本;美国新泽西州帕西帕尼的Canfield Scientific Inc.)拍摄了健康年轻女性面部的照片。数字图像从三个角度(正面、左侧45°和右侧45°)拍摄。所有参与者都接受了基于人工智能的面部皮肤持续老化至80岁的模拟。在老化模拟前后,完成了一份新创建的匿名问卷,收集参与者的社会人口统计学数据以及晒黑和防晒行为。为了观察长期效果,于2023年3月至4月进行了为期2年的随访。
60名参与者(平均年龄23.6±2.5岁)在使用VISIA-CR相机进行皮肤老化模拟后,对防晒重要性的评价显著提高(p<0.0001;95%CI:8.2-8.8)。干预后,91.7%(55/60)的女性因意识到个人紫外线相关风险显著更高(p<0.001;95%CI:5.9-6.7),而有动力在未来减少紫外线暴露并加强紫外线防护。在2年随访时,96%(24/25)的人表示持续努力减少紫外线暴露。对SPF 50+防晒霜的偏好率在皮肤老化模拟后立即升至46.7%(28/65),并在2年后继续升至60.0%(15/25)。
我们的数据强调了人工智能辅助光老化干预在短期和长期增强紫外线防护动机方面的潜力。我们鼓励以个性化、针对特定世代的方式,通过适当的媒体并考虑霍桑效应,针对不同年龄和性别群体开展活动。有视觉人工智能支持的活动可以提高癌症预防行为的意愿。