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症状对潜在疾病的诊断准确性:一项模拟研究。

Diagnostic accuracy of symptoms for an underlying disease: a simulation study.

机构信息

, Montreal, Canada.

Université du Québec à Montréal, Montreal, Canada.

出版信息

Sci Rep. 2022 Aug 15;12(1):13810. doi: 10.1038/s41598-022-14826-2.

Abstract

Symptoms have been used to diagnose conditions such as frailty and mental illnesses. However, the diagnostic accuracy of the numbers of symptoms has not been well studied. This study aims to use equations and simulations to demonstrate how the factors that determine symptom incidence influence symptoms' diagnostic accuracy for disease diagnosis. Assuming a disease causing symptoms and correlated with the other disease in 10,000 simulated subjects, 40 symptoms occurred based on 3 epidemiological measures: proportions diseased, baseline symptom incidence (among those not diseased), and risk ratios. Symptoms occurred with similar correlation coefficients. The sensitivities and specificities of single symptoms for disease diagnosis were exhibited as equations using the three epidemiological measures and approximated using linear regression in simulated populations. The areas under curves (AUCs) of the receiver operating characteristic (ROC) curves was the measure to determine the diagnostic accuracy of multiple symptoms, derived by using 2 to 40 symptoms for disease diagnosis. With respect to each AUC, the best set of sensitivity and specificity, whose difference with 1 in the absolute value was maximal, was chosen. The results showed sensitivities and specificities of single symptoms for disease diagnosis were fully explained with the three epidemiological measures in simulated subjects. The AUCs increased or decreased with more symptoms used for disease diagnosis, when the risk ratios were greater or less than 1, respectively. Based on the AUCs, with risk ratios were similar to 1, symptoms did not provide diagnostic values. When risk ratios were greater or less than 1, maximal or minimal AUCs usually could be reached with less than 30 symptoms. The maximal AUCs and their best sets of sensitivities and specificities could be well approximated with the three epidemiological and interaction terms, adjusted R-squared ≥ 0.69. However, the observed overall symptom correlations, overall symptom incidence, and numbers of symptoms explained a small fraction of the AUC variances, adjusted R-squared ≤ 0.03. In conclusion, the sensitivities and specificities of single symptoms for disease diagnosis can be explained fully by the at-risk incidence and the 1 minus baseline incidence, respectively. The epidemiological measures and baseline symptom correlations can explain large fractions of the variances of the maximal AUCs and the best sets of sensitivities and specificities. These findings are important for researchers who want to assess the diagnostic accuracy of composite diagnostic criteria.

摘要

症状已被用于诊断虚弱和精神疾病等疾病。然而,症状数量的诊断准确性尚未得到很好的研究。本研究旨在使用方程和模拟来演示决定症状发生率的因素如何影响疾病诊断中症状的诊断准确性。在 10000 个模拟受试者中,假设一种疾病导致症状并与另一种疾病相关,根据 3 种流行病学指标:患病比例、基线症状发生率(在未患病者中)和风险比,出现了 40 种症状。症状发生的相关系数相似。使用三种流行病学指标和线性回归在模拟人群中,以方程形式展示了单个症状对疾病诊断的敏感性和特异性,并使用曲线下面积(AUC)来确定多个症状的诊断准确性。对于每个 AUC,选择最佳的敏感性和特异性组合,绝对值与 1 的差异最大。结果表明,在模拟人群中,单个症状对疾病诊断的敏感性和特异性可以完全用三种流行病学指标来解释。当风险比大于或小于 1 时,用于疾病诊断的症状越多,AUC 增加或减少。基于 AUC,当风险比接近 1 时,症状没有诊断价值。当风险比大于或小于 1 时,通常可以用少于 30 个症状达到最大或最小 AUC。最大 AUC 及其最佳敏感性和特异性组合可以用三种流行病学指标和交互项很好地近似,调整后的 R 方≥0.69。然而,观察到的总体症状相关性、总体症状发生率和症状数量仅能解释 AUC 方差的一小部分,调整后的 R 方≤0.03。总之,单个症状对疾病诊断的敏感性和特异性可以分别用处于危险中的发病率和 1 减去基线发病率来充分解释。流行病学指标和基线症状相关性可以解释最大 AUC 和最佳敏感性和特异性组合的方差的大部分。这些发现对于想要评估综合诊断标准的诊断准确性的研究人员非常重要。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2aa2/9378763/16a3d077a075/41598_2022_14826_Fig1_HTML.jpg

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