使用皮肤健康记录的基于自动深度学习的疾病预测:问题、挑战和未来方向

Sourav Singh, Sachin Sharma, S. Bhadula
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引用次数: 11

摘要

由于最近人工智能(AI)和自动化在医疗保健行业的突破,人们已经能够看到将深度学习与医疗保健相结合的可能性越来越大。自动化深度学习和医疗保健集成被认为是提高疾病预测准确性的可行技术,有助于疾病的预防和控制。人工智能支持的皮肤健康数据可以作为一种独特的技术,通过将症状和受影响的皮肤照片与当前疾病数据库进行匹配,来初步预测身体健康。这项研究的目标是提供一个基于皮肤特征变化预测疾病结果的自动深度学习框架。本文还对各种问题和挑战进行了调查,目的是预测深度学习在未来医学研究中与医疗保健的整合。
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Automated Deep Learning based Disease Prediction Using Skin Health Records: Issues, Challenges and Future Directions
Due to recent breakthroughs in Artificial Intelligence (AI) and automation in the healthcare industry, people have been able to see an increased possibility for merging deep learning with healthcare. Automated deep learning and healthcare integration have been found as a feasible technique for enhancing disease prediction accuracy, which will aid in disease prevention and control. AI-enabled skin health data could be used as a unique technique for preliminary body health prediction by matching symptoms and influenced skin photos to a pool of current disease databases. The goal of this research is to offer an automated deep learning framework for predicting illness outcomes based on changes in skin characteristics. Various issues and challenges are also investigated, with the purpose of anticipating the integration of deep learning into healthcare in future medical research.
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