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概率破棒模型:一种应用于 eGFR 的不规则采样数据的回归算法。

Probabilistic broken-stick model: A regression algorithm for irregularly sampled data with application to eGFR.

机构信息

Department of Computer Science, University of Surrey, UK; QuintilesIMS, London, UK.

Department of Computer Science, University of Surrey, UK; Surrey Clinical Research Center, Guildford, Surrey, UK.

出版信息

J Biomed Inform. 2017 Dec;76:69-77. doi: 10.1016/j.jbi.2017.10.006. Epub 2017 Oct 16.

Abstract

In order for clinicians to manage disease progression and make effective decisions about drug dosage, treatment regimens or scheduling follow up appointments, it is necessary to be able to identify both short and long-term trends in repeated biomedical measurements. However, this is complicated by the fact that these measurements are irregularly sampled and influenced by both genuine physiological changes and external factors. In their current forms, existing regression algorithms often do not fulfil all of a clinician's requirements for identifying short-term (acute) events while still being able to identify long-term, chronic, trends in disease progression. Therefore, in order to balance both short term interpretability and long term flexibility, an extension to broken-stick regression models is proposed in order to make them more suitable for modelling clinical time series. The proposed probabilistic broken-stick model can robustly estimate both short-term and long-term trends simultaneously, while also accommodating the unequal length and irregularly sampled nature of clinical time series. Moreover, since the model is parametric and completely generative, its first derivative provides a long-term non-linear estimate of the annual rate of change in the measurements more reliably than linear regression. The benefits of the proposed model are illustrated using estimated glomerular filtration rate as a case study used to manage patients with chronic kidney disease.

摘要

为了让临床医生能够管理疾病进展,并就药物剂量、治疗方案或安排随访做出有效决策,有必要能够识别重复生物医学测量中的短期和长期趋势。然而,这一点很复杂,因为这些测量是不规则采样的,并且受到真实生理变化和外部因素的影响。在目前的形式下,现有的回归算法通常不能满足临床医生识别短期(急性)事件的所有要求,同时仍然能够识别疾病进展的长期、慢性趋势。因此,为了在短期可解释性和长期灵活性之间取得平衡,提出了对断裂棒回归模型的扩展,以便使其更适合对临床时间序列进行建模。所提出的概率断裂棒模型可以稳健地同时估计短期和长期趋势,同时还适应了临床时间序列的不等长度和不规则采样性质。此外,由于该模型是参数化的和完全生成的,因此其导数提供了比线性回归更可靠的测量值年变化率的长期非线性估计。所提出的模型的优点通过使用估算的肾小球滤过率作为案例研究来说明,该研究用于管理慢性肾病患者。

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