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Drug Discovery using Generative Adversarial Network with Reinforcement Learning

机译:用强化学习使用生成对抗性网络的药物发现

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A large amount of medical data is available to many of us and along with well-established deep learning algorithms, so the design of automated drug development pipelines has increased. The pipeline speeds up the drug discovery process and helps us better understand the disease. They help in planning pre-clinical lab experiments. This reduces the low productivity rate that the pharmaceutical companies are facing currently. Accurate predictions and insights are obtained by using deep learning techniques. So, this increases the need for deep learning approaches that have the potential to speed up the process, decision making, and reduce failure rates in drug discovery and development. With the fast development of computing power and enormous medical data, the project involving drug discovery have been benefited from artificial intelligence. The deep learning model knows as Generative Adversarial Network (GAN) with reinforcement learning is used to solve the problem.
机译:我们中许多人提供了大量的医疗数据,以及建立的深度学习算法,因此自动化药物开发管道的设计增加了。 管道加速药物发现过程,有助于我们更好地了解疾病。 他们有助于规划临床前实验室实验。 这降低了目前制药公司面临的低生产率率。 通过使用深度学习技术获得准确的预测和见解。 因此,这增加了对深度学习方法的需求,这些方法有可能加速过程,决策,减少药物发现和发展中的失败率。 随着计算能力和巨大的医疗数据的快速发展,涉及药物发现的项目从人工智能中受益。 深入学习模式作为生成的对抗性网络(GAN)用加强学习用于解决问题。

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