Feldmann U, König J
Institute of Medical Biometry, Epidemiology and Medical Informatics, Saarland University, Homburg/Saar, Germany.
Methods Inf Med. 2002;41(2):154-9.
Medical prognosis is commonly expressed in terms of ordered outcome categories. This paper provides simple statistical procedures to judge whether the predictor variables reflect this natural ordering.
The concept of stochastic ordering in logistic regression and discrimination models is applied to naturally ordered outcome scales in medical prognosis.
The ordering stage is assessed by a data-generated choice between ordered, partially ordered, and unordered models. The ordinal structure of the outcome is particularly taken into consideration in the construction of allocation rules and in the assessment of their performance. The specialized models are compared to the unordered model with respect to the classification efficiency in a clinical prognostic study.
It is concluded that our approach offers more flexibility than the widely used cumulative-odds model and more stability than the multinomial logistic model. The procedure described in this paper is strongly recommended for practical applications to support medical decision-making.
医学预后通常以有序的结果类别来表示。本文提供了简单的统计程序,以判断预测变量是否反映了这种自然顺序。
将逻辑回归和判别模型中的随机排序概念应用于医学预后的自然有序结果量表。
通过在有序、部分有序和无序模型之间进行数据生成的选择来评估排序阶段。在分配规则的构建及其性能评估中,特别考虑了结果的序数结构。在临床预后研究中,将专门模型与无序模型在分类效率方面进行了比较。
得出的结论是,我们的方法比广泛使用的累积优势模型提供了更大的灵活性,比多项逻辑模型提供了更高的稳定性。强烈建议将本文所述程序实际应用于支持医学决策。