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一种使用全血细胞计数辅助分诊原发性头痛与继发性头痛患者的机器学习方法。

A machine learning approach to support triaging of primary versus secondary headache patients using complete blood count.

机构信息

Roche Information Solutions, F. Hoffmann-La Roche AG, Basel, Switzerland.

Roche Molecular Systems, Santa Clara, California, United States of America.

出版信息

PLoS One. 2023 Mar 6;18(3):e0282237. doi: 10.1371/journal.pone.0282237. eCollection 2023.

Abstract

Headaches account for up to 4.5% of emergency department visits, where they present a significant diagnostic challenge. While primary headaches are benign, secondary headaches can be life-threatening. It is essential to rapidly differentiate between primary and secondary headaches as the latter require immediate diagnostic work-up. Current assessment relies on subjective measures; time constraints can result in overuse of diagnostic neuroimaging, prolonging diagnosis, and adding to economic burden. There is therefore an unmet need for a time- and cost-efficient, quantitative triaging tool to guide further diagnostic testing. Routine blood tests may provide important diagnostic and prognostic biomarkers indicating underlying headache causes. In this retrospective study (approved by the UK Medicines and Healthcare products Regulatory Agency Independent Scientific Advisory Committee for Clinical Practice Research Datalink (CPRD) research [20_000173]), UK CPRD real-world data from patients (n = 121,241) presenting with headache from 1993-2021 were used to generate a predictive model based on a machine learning (ML) approach for primary versus secondary headaches. A ML-based predictive model was constructed using two different methods (logistic regression and random forest) and the following predictors were evaluated: ten standard measurements of complete blood count (CBC) test, 19 ratios of the ten CBC test parameters, and patient demographic and clinical characteristics. The model's predictive performance was assessed using a set of cross-validated model performance metrics. The final predictive model showed modest predictive accuracy using the random forest method (balanced accuracy: 0.7405). The sensitivity, specificity, false negative rate (incorrect prediction of secondary headache as primary headache), and false positive rate (incorrect prediction of primary headache as secondary headache) were 58%, 90%, 10%, and 42%, respectively. The ML-based prediction model developed could provide a useful time- and cost-effective quantitative clinical tool to facilitate the triaging of patients presenting to the clinic with headache.

摘要

头痛占急诊科就诊的 4.5%,这给诊断带来了巨大的挑战。原发性头痛是良性的,而继发性头痛则可能危及生命。快速区分原发性头痛和继发性头痛至关重要,因为后者需要立即进行诊断性检查。目前的评估依赖于主观指标;时间限制可能导致过度使用诊断性神经影像学检查,从而延长诊断时间并增加经济负担。因此,需要一种省时、经济高效的定量分诊工具来指导进一步的诊断性检查。常规血液检查可能提供重要的诊断和预后生物标志物,表明潜在的头痛原因。在这项回顾性研究中(英国药品和保健产品监管局独立科学咨询委员会临床实践研究数据链 (CPRD) 研究[20_000173]批准),使用来自英国 CPRD 的真实世界数据(患者 n=121,241),这些患者在 1993-2021 年期间因头痛就诊,使用机器学习 (ML) 方法生成基于原发性与继发性头痛的预测模型。使用两种不同的方法(逻辑回归和随机森林)构建基于 ML 的预测模型,并评估了以下预测因子:十种全血细胞计数 (CBC) 测试的标准测量值、十种 CBC 测试参数的 19 个比值,以及患者的人口统计学和临床特征。使用一组交叉验证的模型性能指标评估模型的预测性能。最终的预测模型使用随机森林方法显示出中等的预测准确性(平衡准确性:0.7405)。该模型的敏感性、特异性、假阴性率(将继发性头痛错误预测为原发性头痛)和假阳性率(将原发性头痛错误预测为继发性头痛)分别为 58%、90%、10%和 42%。开发的基于 ML 的预测模型可以提供一种有用的省时、经济高效的定量临床工具,以方便对因头痛就诊的患者进行分诊。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/14c5/9987784/0e248b39d3fe/pone.0282237.g001.jpg

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