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Improving predictive accuracy of a survey measure of risk for narcolepsy

机译:提高发作性睡病风险调查指标的预测准确性

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Narcolepsy is a brain disorder that may go unrecognized and untreated for many years. The ability to use easily obtained survey information about symptoms of narcolepsy would facilitate identification of individuals potentially at risk for narcolepsy who could be referred for further testing. The purpose of the present study was to explore whether a survey instrument could successfully distinguish narcolepsy from other sleep disorders using data that could easily be obtained from a community or general patient sample. The hypothesized model added the Epworth Sleepiness Scale to a narcolepsy symptoms checklist to explore whether it improved accuracy of classification. Data related to symptoms were extracted from medical records of patients with a known diagnosis of narcolepsy, obstructive sleep apnea, or insomnia. The sample was then randomly split in half, allowing exploratory and confirmatory binary logistic regression. Adding the Epworth Sleepiness Scale score to the original list of symptoms more accurately classified those with or without narcolepsy. Although these findings require additional testing before they can be confirmed and generalized, they suggest that a self-report screening instrument for narcolepsy with acceptable accuracy is possible.
机译:发作性睡病是一种大脑疾病,可能很多年以来一直未被发现和治疗。使用容易获得的有关发作性睡病症状的调查信息的能力将有助于识别可能有发作性睡病风险的个人,这些人可以转诊接受进一步检查。本研究的目的是探索一种调查工具是否可以使用可以从社区或普通患者样本中轻松获得的数据成功地将发作性睡病与其他睡眠障碍区分开。假设的模型将Epworth嗜睡量表添加到发作性睡病症状清单中,以探讨其是否提高了分类的准确性。与症状相关的数据是从患有发作性睡病,阻塞性睡眠呼吸暂停或失眠的已知诊断的患者的病历中提取的。然后将样品随机分为两半,进行探索性和验证性二元逻辑回归。将Epworth嗜睡量表评分添加到症状的原始列表中,可以更准确地对有或没有发作性睡病的症状进行分类。尽管这些发现需要进一步的测试才能得到确认和概括,但它们表明,可以以可接受的准确度自我诊断发作性睡病的筛查工具是可行的。

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