离群值
威尔科克森符号秩检验
参数化复杂度
秩(图论)
统计
拟合优度
非线性最小二乘法
最小二乘函数近似
数学
估计理论
逻辑回归
稳健统计
计算机科学
算法
组合数学
估计员
曼惠特尼U检验
作者
Kimberly Crimin,Joseph W. McKean,Thomas J. Vidmar
摘要
During drug development, the calculation of inhibitory concentration that results in a response of 50% ( IC 50 ) is performed thousands of times every day. The nonlinear model most often used to perform this calculation is a four‐parameter logistic, suitably parameterized to estimate the IC 50 directly. When performing these calculations in a high‐throughput mode, each and every curve cannot be studied in detail, and outliers in the responses are a common problem. A robust estimation procedure to perform this calculation is desirable. In this paper, a rank‐based estimate of the four‐parameter logistic model that is analogous to least squares is proposed. The rank‐based estimate is based on the Wilcoxon norm. The robust procedure is illustrated with several examples from the pharmaceutical industry. When no outliers are present in the data, the robust estimate of IC 50 is comparable with the least squares estimate, and when outliers are present in the data, the robust estimate is more accurate. A robust goodness‐of‐fit test is also proposed. To investigate the impact of outliers on the traditional and robust estimates, a small simulation study was conducted. Copyright © 2012 John Wiley & Sons, Ltd.
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