应用于 AIS 支架治疗的规定性分析:试点示范。

Scoliosis Pub Date : 2015-02-11 eCollection Date: 2015-01-01 DOI:10.1186/1748-7161-10-S2-S13
Eric Chalmers, Doug Hill, Vicky Zhao, Edmond Lou
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摘要

背景介绍处方分析是一个结合了统计和计算机科学的概念,它可以根据对未来可能发生的事件的预测,提出最佳的行动方案。在这项模拟研究中,我们探讨了如何利用处方分析法为青少年特发性脊柱侧弯症(AIS)患者推荐最佳的矫正方案。我们的目标是评估这些建议的有效性,最终改进支具设计方案:方法:我们获得了在本中心完成支具治疗的 90 名 AIS 患者(60 名全日支具患者和 30 名夜间支具患者)的数据。日间矫治器和夜间矫治器的≥6度进展率分别为53%和30%。我们小组之前开发了一种建模技术,用于预测这些患者在一系列矫治器内矫正情况下可能出现的治疗结果--在此过程中,模型对真实结果是保密的。每名患者的 "推荐 "矫正被确定为可获得理想预测结果的最轻微矫正。这些建议的疗效是通过一种名为 "临床试验模拟"(CTS)的技术估算出来的。该技术使用统计模型来预测模型推荐治疗的进展率,并将其与实际治疗中回顾观察到的真实进展率进行比较。显著性通过置换检验来计算:模型推荐的日间矫正率为 20%-58%,夜间矫正率为 65%-130%,与之前的文献大致相同。有趣的是,在 37% 的病例中,建议的矫正率低于实际应用的矫正率,这表明在不影响治疗效果的情况下,可以采用一些不那么激进(更舒适)的矫治器。CTS估计,使用模型建议的矫治器内矫治的进展病例比病历中回顾观察到的实际矫治减少了26%(P=0.05)。在模型建议下矫正减少的患者,其病情进展率并没有增加:结论:最佳矫正可能小于可达到的最大矫正。初步结果表明,在支具装配过程中考虑模型生成的建议可以改善治疗效果。未来的工作将扩展该系统,以推荐佩戴时间和矫正,从而提高其临床相关性。我们希望通过这次试验性演示,促进脊柱侧弯治疗中基于模型的决策支持的发展,并推动对其未来作用的讨论。
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Prescriptive analytics applied to brace treatment for AIS: a pilot demonstration.

Background: Prescriptive analytics is a concept combining statistical and computer sciences to prescribe an optimal course of action, based on predictions of possible future events. In this simulation study we investigate using prescriptive analytics to recommend optimal in-brace corrections for braced Adolescent Idiopathic Scoliosis (AIS) patients. The objectives were to estimate the efficacy of these recommendations, ultimately working toward improved brace design protocols.

Methods: Data was obtained for 90 AIS patients who had finished brace treatment at our center (60 full-time and 30 nighttime braces). Rates of ≥6 degree progression were 53% for daytime and 30% for nighttime braces. A modeling technique previously developed by our group was used to predict these patients' likely treatment outcomes given a range of in-brace corrections - the model was blinded to the true outcomes during this process. Each patient's 'recommended' correction was identified as the least aggressive correction resulting in a desirable predicted outcome. The efficacy of these recommendations was estimated using a technique called "clinical trial simulation" (CTS). This technique used a statistical model to predict progression rate under the model-recommended treatment, and compared it to the true progression rate, observed retrospectively, under the actual treatment. Significance was calculated using a permutation test.

Results: Model-recommended corrections ranged from 20%-58% for daytime and 65%-130% for nighttime braces, roughly corresponding with previous literature. Interestingly, in 37% of cases the recommended correction was less than that which had actually been applied, suggesting some opportunity for less aggressive (more comfortable) braces without compromising treatment outcome. The CTS estimated 26% fewer progressive cases using the model-recommended in-brace correction, over the actual correction observed retrospectively in the charts (p=0.05). The patients whose correction decreased under the model's recommendation did not show an increased progression rate.

Conclusions: Optimal correction may be less than the maximum achievable correction. The preliminary results suggest that considering model-generated recommendations during brace fitting could improve outcomes. Future work will expand the system to recommend wear-times as well as corrections, improving its clinical relevance. We envision this pilot demonstration to promote development of model-based decision support in scoliosis treatment, and prompt discussion on its future role.

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