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Removing the Mask of Average Treatment Effects in Chronic Lyme Disease Research Using Big Data and Subgroup Analysis

机译:使用大数据和亚组分析去除慢性莱姆病研究中平均治疗效果的掩盖

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摘要

Lyme disease is caused by the bacteria borrelia burgdorferi and is spread primarily through the bite of a tick. There is considerable uncertainty in the medical community regarding the best approach to treating patients with Lyme disease who do not respond fully to short-term antibiotic therapy. These patients have persistent Lyme disease symptoms resulting from lack of treatment, under-treatment, or lack of response to their antibiotic treatment protocol. In the past, treatment trials have used small restrictive samples and relied on average treatment effects as their measure of success and produced conflicting results. To provide individualized care, clinicians need information that reflects their patient population. Today, we have the ability to analyze large data bases, including patient registries, that reflect the broader range of patients more typically seen in clinical practice. This allows us to examine treatment variation within the sample and identify groups of patients that are most responsive to treatment. Using patient-reported outcome data from the MyLymeData online patient registry, we show that sub-group analysis techniques can unmask valuable information that is hidden if averages alone are used. In our analysis, this approach revealed treatment effectiveness for up to a third of patients with Lyme disease. This study is important because it can help open the door to more individualized patient care using patient-centered outcomes and real-world evidence.
机译:莱姆病是由伯氏疏螺旋体细菌引起的,主要通过dorf虫叮咬传播。对于不能对短期抗生素治疗产生完全反应的莱姆病患者的最佳治疗方法,医学界存在很大的不确定性。这些患者由于缺乏治疗,治疗不足或对抗生素治疗方案缺乏反应而导致持续的莱姆病症状。过去,治疗试验只使用少量限制性样本,并依靠平均治疗效果作为衡量成功与否的结果。为了提供个性化的护理,临床医生需要反映其患者人数的信息。今天,我们有能力分析大型数据库,包括患者注册表,这些数据库反映了临床实践中更常见的患者范围。这使我们能够检查样本中的治疗差异,并确定对治疗反应最迅速的患者组。使用MyLymeData在线患者注册表中的患者报告结果数据,我们显示,如果仅使用平均值,则亚组分析技术可以掩盖隐藏的有价值的信息。在我们的分析中,这种方法显示了对多达三分之一的莱姆病患者的治疗效果。这项研究非常重要,因为它可以使用以患者为中心的结果和现实证据,为更个性化的患者护理打开大门。

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