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Acute pulmonary embolism: cost-effectiveness analysis of the effect of artificial neural networks on patient care.

机译:急性肺栓塞:人工神经网络对患者护理效果的成本效益分析。

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摘要

PURPOSE: To evaluate the cost-effectiveness of artificial neural networks for diagnosis in patients suspected of having acute pulmonary embolism who are typically referred for pulmonary angiography. MATERIALS AND METHODS: Four diagnostic strategies were explored to help define the diagnostic role of neural networks in patients suspected of having pulmonary embolism in whom nondiagnostic ventilation-perfusion lung scans were obtained. First, a network was used to determine which patients could be directly referred for treatment without angiography. Second, the network was applied to determine in which patients treatment could be withheld. Third, the network was used to distinguish patients in whom the network gave indeterminate responses and who should proceed to angiography. Each strategy was compared with use of angiography in terms of morbidity, mortality, and cost per life saved. RESULTS: The use of the neural network reduced the average cost per patient by more than one-half relative to the cost of angiography. Morbidity and mortality rates were also comparable to or lower than those associated with angiography. The results were consistent regardless of the prevalence of disease. CONCLUSION: The use of neural networks in the diagnosis of pulmonary embolism is a promising way to improve cost-effectiveness in the care of patients with nondiagnostic lung scans.
机译:目的:评估人工神经网络在怀疑患有急性肺栓塞的患者中诊断的成本效益,这些患者通常需要进行肺血管造影。材料与方法:探讨了四种诊断策略,以帮助确定神经网络在怀疑患有肺栓塞的患者中获得非诊断性通气-灌注肺扫描的诊断作用。首先,使用网络确定无需血管造影即可直接转诊的患者。其次,该网络用于确定哪些患者可以中止治疗。第三,该网络用于区分网络反应不确定且应进行血管造影的患者。在发病率,死亡率和挽救每位生命的成本方面,将每种策略与使用血管造影术进行了比较。结果:神经网络的使用使每位患者的平均费用比血管造影术的费用减少了一半以上。发病率和死亡率也与血管造影相关或相近。无论疾病的流行程度如何,结果都是一致的。结论:使用神经网络诊断肺栓塞是提高非诊断性肺部扫描患者护理成本效益的一种有前途的方法。

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