M. S. Knorr, M. Neyazi, J. P. Bremer, J. Brederecke, F. M. Ojeda, F. Ohm, M. Augustin, S. Blankenberg, N. Kirsten, R. B. Schnabel
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The first data release provides facial and full body photographs in dermatologic standard poses of 6500 participants (median age 62.0 years, 49.6% men) and corresponding cardiovascular risk factors. Here, we focus on the most prevalent ones: smoking status (prevalence: 19.0%), hypertension (35.3%) and diabetes (8.2%). Here we employ a 2D-Convolutional Resnet-18 Neural Network for predicting the risk factors. It receives the full body image, the facial image and age and sex as input. We compare this to a logistic regression model only including sex and age. Logistic Regression and Neural Network are employed in a 5-fold validation scheme and t-tested for significance. Results Our model provided a good detection of arterial hypertension (AUC 0.711, CI 0.684–0.739), while a logistic regression on age and sex yielded a significantly worse prediction (AUC 0.681, CI 0.679– 0.683, p<0.05). Additionally, it made a good detection of a positive smoking status (AUC 0.733, CI 0.711–0.754), being significantly better than a respective logistic regression on age and sex (AUC 0.598, CI 0.597–0.6, p<0.001). Lastly, it classified diabetes well (AUC 0.744, CI 0.724–0.764, p<0.001) in comparison to the logistic regression (AUC 0.681, CI 0.679–0.683, p<0.001). Conclusion The presence of cardiovascular risk factors can be detected from a total body photograph. As total body photographs can be easily obtained with a majority of digital cameras, including smart phones, this model represents a potentially widely applicable diagnostic tool to easily screen large parts of the population for relevant cardiovascular risk factors, making an early medical intervention possible. Funding Acknowledgement Type of funding sources: None. Figure 1","PeriodicalId":72965,"journal":{"name":"European heart journal. 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Purpose Utilizing data from a population-based study, we examined the possibility to detect cardiovascular risk factors from total body photographs using deep learning. Methods A population-based cohort study was utilized. The first data release provides facial and full body photographs in dermatologic standard poses of 6500 participants (median age 62.0 years, 49.6% men) and corresponding cardiovascular risk factors. Here, we focus on the most prevalent ones: smoking status (prevalence: 19.0%), hypertension (35.3%) and diabetes (8.2%). Here we employ a 2D-Convolutional Resnet-18 Neural Network for predicting the risk factors. It receives the full body image, the facial image and age and sex as input. We compare this to a logistic regression model only including sex and age. Logistic Regression and Neural Network are employed in a 5-fold validation scheme and t-tested for significance. Results Our model provided a good detection of arterial hypertension (AUC 0.711, CI 0.684–0.739), while a logistic regression on age and sex yielded a significantly worse prediction (AUC 0.681, CI 0.679– 0.683, p<0.05). Additionally, it made a good detection of a positive smoking status (AUC 0.733, CI 0.711–0.754), being significantly better than a respective logistic regression on age and sex (AUC 0.598, CI 0.597–0.6, p<0.001). Lastly, it classified diabetes well (AUC 0.744, CI 0.724–0.764, p<0.001) in comparison to the logistic regression (AUC 0.681, CI 0.679–0.683, p<0.001). Conclusion The presence of cardiovascular risk factors can be detected from a total body photograph. As total body photographs can be easily obtained with a majority of digital cameras, including smart phones, this model represents a potentially widely applicable diagnostic tool to easily screen large parts of the population for relevant cardiovascular risk factors, making an early medical intervention possible. Funding Acknowledgement Type of funding sources: None. Figure 1\",\"PeriodicalId\":72965,\"journal\":{\"name\":\"European heart journal. Digital health\",\"volume\":null,\"pages\":null},\"PeriodicalIF\":3.9000,\"publicationDate\":\"2022-10-01\",\"publicationTypes\":\"Journal Article\",\"fieldsOfStudy\":null,\"isOpenAccess\":false,\"openAccessPdf\":\"\",\"citationCount\":\"0\",\"resultStr\":null,\"platform\":\"Semanticscholar\",\"paperid\":null,\"PeriodicalName\":\"European heart journal. 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引用次数: 0
摘要
早期和容易发现的病理心血管表型可以导致早期的医疗干预,从而减缓或限制心血管疾病的发展。由于全身照片很容易获得,而不需要医学专门知识,因此这种方式有可能用于筛查人群。目的:利用基于人群的研究数据,我们检验了使用深度学习从全身照片中检测心血管危险因素的可能性。方法采用基于人群的队列研究。第一次数据发布提供了6500名参与者(中位年龄62.0岁,男性49.6%)的皮肤标准姿势面部和全身照片以及相应的心血管危险因素。在这里,我们关注的是最普遍的因素:吸烟(患病率:19.0%)、高血压(患病率:35.3%)和糖尿病(患病率:8.2%)。在这里,我们使用2d -卷积Resnet-18神经网络来预测风险因素。它接收全身图像、面部图像以及年龄和性别作为输入。我们将其与仅包括性别和年龄的逻辑回归模型进行比较。逻辑回归和神经网络采用五重验证方案和t检验显著性。结果该模型对动脉高血压的预测较好(AUC 0.711, CI 0.684-0.739),而对年龄和性别进行logistic回归的预测较差(AUC 0.681, CI 0.679 - 0.683, p<0.05)。此外,它还能很好地检测出吸烟的阳性状态(AUC 0.733, CI 0.711-0.754),显著优于年龄和性别的logistic回归(AUC 0.598, CI 0.597-0.6, p<0.001)。最后,与logistic回归(AUC 0.681, CI 0.679-0.683, p<0.001)相比,该方法对糖尿病的分类较好(AUC 0.744, CI 0.724-0.764, p<0.001)。结论全身摄影可检测心血管危险因素的存在。由于包括智能手机在内的大多数数码相机都可以轻松获得全身照片,因此该模型代表了一种潜在的广泛适用的诊断工具,可以轻松筛查大部分人群的相关心血管危险因素,从而使早期医疗干预成为可能。资金来源类型:无。图1
Predicting cardiovascular risk factors from facial & full body photography using deep learning
Abstract Introduction The early and easy detection of pathological cardiovascular phenotypes can lead to an early medical intervention and thus slow or limit the development of cardiovascular diseases. As full body photographs are easily obtainable without the need of medical expertise, this modality holds the potential to be viable for screening of populations. Purpose Utilizing data from a population-based study, we examined the possibility to detect cardiovascular risk factors from total body photographs using deep learning. Methods A population-based cohort study was utilized. The first data release provides facial and full body photographs in dermatologic standard poses of 6500 participants (median age 62.0 years, 49.6% men) and corresponding cardiovascular risk factors. Here, we focus on the most prevalent ones: smoking status (prevalence: 19.0%), hypertension (35.3%) and diabetes (8.2%). Here we employ a 2D-Convolutional Resnet-18 Neural Network for predicting the risk factors. It receives the full body image, the facial image and age and sex as input. We compare this to a logistic regression model only including sex and age. Logistic Regression and Neural Network are employed in a 5-fold validation scheme and t-tested for significance. Results Our model provided a good detection of arterial hypertension (AUC 0.711, CI 0.684–0.739), while a logistic regression on age and sex yielded a significantly worse prediction (AUC 0.681, CI 0.679– 0.683, p<0.05). Additionally, it made a good detection of a positive smoking status (AUC 0.733, CI 0.711–0.754), being significantly better than a respective logistic regression on age and sex (AUC 0.598, CI 0.597–0.6, p<0.001). Lastly, it classified diabetes well (AUC 0.744, CI 0.724–0.764, p<0.001) in comparison to the logistic regression (AUC 0.681, CI 0.679–0.683, p<0.001). Conclusion The presence of cardiovascular risk factors can be detected from a total body photograph. As total body photographs can be easily obtained with a majority of digital cameras, including smart phones, this model represents a potentially widely applicable diagnostic tool to easily screen large parts of the population for relevant cardiovascular risk factors, making an early medical intervention possible. Funding Acknowledgement Type of funding sources: None. Figure 1