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Deep Q-learning for Predicting Asthma Attack with Considering Personalized Environmental Triggers’ Risk Scores

机译:结合个性化环境触发因素的风险评分,预测哮喘发作的深度Q学习

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The purpose of our present study was to develop a forecasting method that would help asthmatic individuals to take evasive action when the probability of an attack was at THEIR PERSONAL THRESHOLD levels. The results are encouraging. Risk factor analysis helps improve the agent’s performance (by allowing it to consider personalized risk score of asthma attack triggers while making a decision and being able to ignore the non-triggers), increasing transparency of deep reinforcement learning in medicine applications (by using the results of analyzing risk factors and its association to take actions), and increase accuracy over time since the association risk factor indicators are also changing over time with more accuracy rate. It also brings the possibility of including population-based health in personalized health, which could support a more efficient self-management of chronic diseases.
机译:我们本研究的目的是开发一种预测方法,该方法可帮助哮喘患者在发作的可能性处于其个人阈值水平时采取回避行动。结果令人鼓舞。风险因素分析有助于提高代理的绩效(通过使其在考虑决策时能够考虑哮喘发作触发因素的个性化风险评分,并能够忽略非触发因素),提高药物应用中深度强化学习的透明度(通过使用结果)分析风险因素及其关联以采取行动),并随着时间的推移提高准确性,因为关联风险因素指标也随着时间的推移以更高的准确率发生变化。它还带来了将基于人群的健康纳入个性化健康的可能性,这可以支持对慢性病进行更有效的自我管理。

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