使用神经网络预测男性和女性急性冠脉综合征患者的不良后果

C. McCullough, Andy Novobilski, F. Fesmire
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引用次数: 10

摘要

神经网络已被用于检查一组13个客观特征和一个单一的主观医生的评估,急诊室病人的症状可能表明急性冠脉综合征(ACS)。客观数据是在分诊过程中例行收集的信息。神经网络被用来融合不同类型的信息,以预测30天的不良患者结果。使用描述蚊帐效果的受者工作特征曲线对结果进行评估,既使用客观特征,也包括医生的主观评估。这些基于所有患者数据的结果,将与分别使用来自男性和女性患者的信息训练的神经网络获得的结果进行比较。虽然是初步的,但从生物医学信息学智能融合的潜在应用角度来看,这项持续研究的结果具有重要意义,可以帮助医生制定必要的治疗方案,以防止ACS的严重不良后果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of Neural Networks to Predict Adverse Outcomes from Acute Coronary Syndrome for Male and Female Patients
Neural networks have been used to examine a set of thirteen objective features and a single subjective physician's assessment for emergency room patients with symptoms possibly indicative of acute coronary syndrome (ACS). The objective data is information routinely collected during triage. The neural networks were used to fuse the disparate types of information with the goal of forecasting thirty-day adverse patient outcome. Results were evaluated using receiver operating characteristic curves describing the outcomes of the nets, both using only objective features and including the subjective physician's assessment. These results, based on all patient data, are compared to those obtained using neural networks trained on information from male and female patients separately. While preliminary, the results of this continuing study are significant from the perspective of potential use of the intelligent fusion of biomedical informatics to aid the physician in prescribing treatment necessary to prevent serious adverse outcome from ACS.
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