The use of predictive models in dynamic treatment planning

Saemundur O. Haraldsson, Ragnheidur D. Brynjolfsdottir, J. Woodward, K. Siggeirsdottir, V. Gudnason
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引用次数: 9

Abstract

With the expanding load on healthcare and consequent strain on budget, the demand for tools to increase efficiency in treatments is rising. The use of prediction models throughout the treatment to identify risk factors might be a solution. In this paper we present a novel implementation of a prediction tool and the first use of a dynamic predictor in vocational rehabilitation practice. The tool is periodically updated and improved with Genetic Improvement of software. The predictor has been in use for 10 months and is evaluated on predictions made during that time by comparing them with actual treatment outcome. The results show that the predictions have been consistently accurate throughout the patients' treatment. After approximately 3 week learning phase, the predictor classified patients with 100% accuracy and precision on previously unseen data. The predictor is currently being successfully used in a complex live system where specialists have used it to make informed decisions.
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预测模型在动态治疗计划中的应用
随着医疗保健负担的不断扩大和随之而来的预算压力,对提高治疗效率的工具的需求正在上升。在整个治疗过程中使用预测模型来识别风险因素可能是一种解决方案。在本文中,我们提出了一个新的实现预测工具和第一次使用的动态预测在职业康复实践。该工具通过软件的遗传改进定期更新和改进。该预测器已经使用了10个月,并通过将其与实际治疗结果进行比较,对这段时间内的预测进行评估。结果表明,在患者的整个治疗过程中,预测一直是准确的。经过大约3周的学习阶段,预测器对患者进行了100%的准确和精确的分类。该预测器目前已成功应用于一个复杂的现场系统,专家们已经使用它来做出明智的决策。
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