Regression on imperfect class labels derived by unsupervised clustering.

Journal: Briefings in bioinformatics
Published Date:

Abstract

Outcome regressed on class labels identified by unsupervised clustering is custom in many applications. However, it is common to ignore the misclassification of class labels caused by the learning algorithm, which potentially leads to serious bias of the estimated effect parameters. Due to their generality we suggest to address the problem by use of regression calibration or the misclassification simulation and extrapolation method. Performance is illustrated by simulated data from Gaussian mixture models, documenting a reduced bias and improved coverage of confidence intervals when adjusting for misclassification with either method. Finally, we apply our method to data from a previous study, which regressed overall survival on class labels derived from unsupervised clustering of gene expression data from bone marrow samples of multiple myeloma patients.

Authors

  • Rasmus Froberg Brøndum
  • Thomas Yssing Michaelsen
  • Martin Bøgsted
    Jorne L. Biccler, Lasse Hjort Jakobsen, Martin Bøgsted, and Tarec C. El-Galaly, Aalborg University Hospital and Aalborg University, Aalborg; Peter de Nully Brown, Copenhagen University Hospital, Copenhagen; Henrik Frederiksen, Odense University Hospital, Odense; Judit Jørgensen, Aarhus University Hospital, Aarhus; Denmark; Sandra Eloranta and Karin E. Smedby, Karolinska Institutet, Stockholm; Mats Jerkeman, Lund University, Lund; and Karin E. Smedby, Karolinska University Hospital, Solna, Sweden.