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Facilitating CPAP Adherence with Personalized Recommendations Using Artificial Neural Networks

机译:促进使用人工神经网络与个性化建议的CPAP遵守

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Sleep apnea is a common sleep disorder that, if left untreated, can have critical complications to the individual. The most common and effective treatment for sleep apnea is the Continuous Positive Airway Pressure (CPAP) therapy. But it has a long-term adherence rate as low as 60% due to discomfort and other factors. Although previous research has attempted to increase CPAP usage, there has been little to no change in its average adherence for the past two decades. This paper attempts to change this scenario using a large longitudinal dataset combined with a Recurrent Neural Network model to generate therapy use recommendations after one month of therapy. We performed a retrospective cohort analysis on 3380 patients during their first six months of therapy and compared our personalized recommendation system with the current generic recommendations made by sleep physicians. We show that recommendations generated by our artificial neural network model are easier to achieve since they are significantly closer to patients' therapy progress while being equally successful in maintaining therapy adherence.
机译:睡眠呼吸暂停是一种常见的睡眠障碍,如果没有治疗,可以对个人具有关键并发症。睡眠呼吸暂停的最常见有效的治疗是连续的正气道压力(CPAP)治疗。但由于不适和其他因素,它具有低至60%的长期粘附率。虽然以前的研究已经试图增加CPAP使用量,但过去二十年来,它的平均遵守情况几乎没有变化。本文试图使用大型纵向数据集改变这种情况,与经常性神经网络模型结合,以在一个月的治疗后产生治疗使用建议。在六个月的治疗期间,我们对3380名患者进行了回顾性队列分析,并将我们的个性化推荐系统与当前睡眠医生提出的通用建议进行了比较。我们表明,我们的人工神经网络模型产生的建议更容易实现,因为它们显着接近患者的治疗进展,同时同样成功地保持治疗依从性。

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