通过早期预测治疗结果提高遗尿症警报治疗的疗效:一种机器学习方法

Karl-Axel Jönsson, Edvin Andersson, Tryggve Nevéus, Torbjörn Gärdenfors, Christian Balkenius
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引用次数: 0

摘要

尿床又称遗尿症,是儿童中第二大最常见的慢性健康问题,对他们的日常生活造成了负面影响。遗尿症报警器是一种一线治疗方法。这种方法是让孩子在夜间排尿时被探测器和警报器唤醒,从而改变他们的唤醒机制,经过 6-8 周的持续治疗后可能会治愈。据报道,遗尿报警器治疗的成功率超过 50%,但需要相关家庭付出大量努力。除报警器外,该公司还提供一款移动应用程序,用户可在整个治疗过程中提供有关患者的数据和每晚的信息。除了尿床事件的实际发生时间外,还记录了干夜和湿夜的情况。我们使用了机器学习模型随机森林,以 611 名患者的数据为基础,研究能否在治疗的早期阶段预测治疗结果并缩短评估时间。我们使用并分析了使用过 Pjama 应用程序的患者的数据。患者被分成训练组和测试组,以评估算法每天能在多大程度上预测患者的治疗是否成功、部分成功或不成功。结果表明,在治疗的早期阶段,已经可以准确预测大量患者的治疗结果。准确的预测可以让我们在治疗的早期阶段采取正确的措施,包括增加治疗动力、增加药物治疗或终止治疗。这有可能缩短总体治疗时间,并及早发现对治疗无效的患者,从而改善遗尿症患儿的生活。研究结果表明,在提高遗尿症治疗效率方面,这项研究具有巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the efficacy of enuresis alarm treatment through early prediction of treatment outcome: a machine learning approach
Bedwetting, also known as enuresis, is the second most common chronic health problem among children and it affects their everyday life negatively. A first-line treatment option is the enuresis alarm. This method entails the child being awoken by a detector and alarm unit upon urination at night, thereby changing their arousal mechanisms and potentially curing them after 6–8 weeks of consistent therapy. The enuresis alarm treatment has a reported success rate above 50% but requires significant effort from the families involved. Additionally, there is a challenge in identifying early indicators of successful treatment.The alarm treatment has been further developed by the company Pjama AB, which, in addition to the alarm, offers a mobile application where users provides data about the patient and information regarding each night throughout the treatment. The wet and dry nights are recorded, in addition to the actual timing of the bedwetting incidents. We used the machine learning model random forest to see if predictions of treatment outcome could be made in early stages of treatment and shorten the evaluation time based on data from 611 patients. This was carried out by using and analyzing data from patients who had used the Pjama application. The patients were split into training and testing groups to evaluate to what extent the algorithm could make predictions every day about whether a patient’s treatment would be successful, partially successful, or unsuccessful.The results show that a large number of patient outcomes can already be predicted accurately in the early stages of treatment.Accurate predictions enable the correct measures to be taken earlier in the treatment, including increasing motivation, adding pharmacotherapy, or terminating treatment. This has the potential to shorten the treatment in general, and to detect patients who will not respond to the treatment early on, which in turn can improve the lives of children suffering from enuresis. The results show great potential in making the treatment of enuresis more efficient.
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