Machine learning in medicine - cookbook three /
Ton J. Cleophas, Aeilko H. Zwinderman.
- xiii, 131 páginas : 37 ilustraciones
- SpringerBriefs in Statistics, 2191-544X .
Springer eBooks
Preface -- I. Cluster Models -- Hierarchical Clustering and K-means Clustering to Identify Subgroups in Surveys.- Density-based Clustering to Identify Outlier Groups in Otherwise Homogeneous Data.- Two Step Clustering to Identify Subgroups and Predict Subgroup Memberships -- II. Linear Models.- Linear, Logistic, and Cox Regression for Outcome Prediction with Unpaired Data.-Generalized Linear Models for Outcome Prediction with Paired Data.- Generalized Linear Models for Predicting Event-Rates.-Factor Analysis and Partial Least Squares (PLS) for Complex-Data Reduction -- Optimal Scaling of High-sensitivity Analysis of Health Predictors.- Discriminant Analysis for Making a Diagnosis from Multiple Outcomes.- Weighted Least Squares for Adjusting Efficacy Data with Inconsistent Spread.- Partial Correlations for Removing Interaction Effects from Efficacy Data.- Canonical Regression for Overall Statistics of Multivariate Data -- III. Rules Models -- Neural Networks for Assessing Relationships that are Typically Nonlinear.-Complex Samples Methodologies for Unbiased Sampling.-Correspondence Analysis for Identifying the Best of Multiple Treatments in Multiple Groups.- Decision Trees for Decision Analysis.- Multidimensional Scaling for Visualizing Experienced Drug Efficacies.- Stochastic Processes for Long Term Predictions from Short Term Observations.- Optimal Binning for Finding High Risk Cut-offs.- Conjoint Analysis for Determining the Most Appreciated Properties of Medicines to be Developed -- Index.