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首页> 外文期刊>Annals of epidemiology >Using a neural network to screen a population for asthma.
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Using a neural network to screen a population for asthma.

机译:使用神经网络筛查哮喘人群。

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PURPOSE: To use a neural network to rank a population according to individual likelihood of asthma based on their responses to a respiratory questionnaire. METHODS: A final diagnosis of asthma can be made only after full clinical assessment but limited resources make it impossible to offer this to complete populations as part of a screening programme. Prioritisation is required so that review can be offered most promptly to those most in need. A stratified random sample of 180 from 6825 respondents to a community survey underwent clinical review. They were categorised according to likelihood of asthma by three independent experts whose opinions were combined into a single probability label for each patient. A neural network was trained to relate questionnaire responses to probability labels. The trained network was applied to the whole community to produce a ranking order based on likelihood of asthma. A screening threshold could then be set to correspond to available resources, and patients above this level with no recorded evidence of asthma diagnosis could be assessed clinically. Using the known probability labels from the training set, it was possible to derive the expected proportion of true asthmatics in any set of patients. RESULTS: If the screening threshold had been set to capture the top 10% of the ranked population (n = 683), then 239 patients above this threshold had no evidence of diagnosis and would need assessment. Of these, it would be expected that 74% would have the diagnosis confirmed. CONCLUSIONS: This approach allows prioritisation of a population where resources for diagnostic examination are limited.
机译:目的:使用神经网络根据哮喘患者对呼吸调查问卷的反应,根据个人哮喘的可能性对人群进行排名。方法:只有经过全面的临床评估,才能对哮喘进行最终诊断,但是由于资源有限,无法将其作为全面筛查计划的一部分提供给完整的人群。需要确定优先级,以便可以最迅速地向最需要的人提供审核。从6825名社区调查者中抽取180份分层随机样本进行临床检查。由三位独立专家根据哮喘的可能性对他们进行了分类,他们的意见被合并为每位患者的单一概率标签。训练了神经网络,以将问卷调查的响应与概率标签相关联。训练有素的网络被应用于整个社区,以根据哮喘的可能性得出排名顺序。然后可以将筛查阈值设置为与可用资源相对应,超过此水平且没有记录的哮喘诊断证据的患者可以进行临床评估。使用训练集中的已知概率标签,可以得出任何一组患者中真实哮喘患者的预期比例。结果:如果将筛查阈值设置为捕获排名的前10%的人群(n = 683),则超过此阈值的239名患者没有诊断证据,需要评估。其中,预计将有74%的诊断得到确认。结论:这种方法允许对诊断检查资源有限的人群进行优先排序。

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