Lowell W E, Davis G E
Information Services, Augusta Mental Health Institute, ME 04330.
J Am Med Inform Assoc. 1994 Nov-Dec;1(6):459-66. doi: 10.1136/jamia.1994.95153435.
To test the effect of diagnosis on training an artificial neural network (ANN) to predict length of stay (LOS) for psychiatric patients involuntarily admitted to a state hospital.
A series of ANNs were trained representing schizophrenia, affective disorders, and diagnosis-related group (DRG) 430. In addition to diagnosis, variables used in training included demographics, severity of illness, and others identified to be significant in predicting LOS.
Depending on diagnosis, ANN-predictions compared with actual LOS indicated accuracy rates ranging from 35% to 70%. The validity of ANN predictions was determined by comparing LOS estimates with the treatment team's predictions at 72 hours following admission, with the ANN predicting as well as or better than did the treatment team in all cases.
One problem in traditional approaches to predicting LOS is the inability of a derived predictive model to maintain accuracy in other independently derived samples. The ANN reported here was capable of maintaining the same predictive efficiency in an independently derived cross-validation sample. The results of ANNs in a cross-validation sample are discussed and the application of this tool in augmenting clinical decision is presented.
测试诊断对训练人工神经网络(ANN)以预测非自愿入住州立医院的精神科患者住院时间(LOS)的影响。
训练了一系列代表精神分裂症、情感障碍和诊断相关组(DRG)430的人工神经网络。除诊断外,训练中使用的变量包括人口统计学、疾病严重程度以及其他被确定在预测住院时间方面具有重要意义的因素。
根据诊断情况,将人工神经网络预测结果与实际住院时间进行比较,准确率在35%至70%之间。通过将住院时间估计值与入院72小时后治疗团队的预测结果进行比较,确定了人工神经网络预测的有效性,在所有情况下,人工神经网络的预测效果与治疗团队相当或更好。
传统预测住院时间方法中的一个问题是,派生的预测模型无法在其他独立派生的样本中保持准确性。此处报告的人工神经网络能够在独立派生的交叉验证样本中保持相同的预测效率。讨论了交叉验证样本中人工神经网络的结果,并介绍了该工具在增强临床决策方面的应用。