A factor analysis approach for clustering patient reported outcomes Journal Article


Authors: Oh, J. H.; Thor, M.; Olsson, C.; Skokic, V.; Jörnsten, R.; Alsadius, D.; Pettersson, N.; Steineck, G.; Deasy, J. O.
Article Title: A factor analysis approach for clustering patient reported outcomes
Abstract: Background: In the field of radiation oncology, the use of extensive patient reported outcomes is increasingly common to measure adverse side effects after radiotherapy in cancer patients. Factor analysis has the potential to identify an optimal number of latent factors (i.e., symptom groups). However, the ultimate goal of treatment response modeling is to understand the relationship between treatment variables such as radiation dose and symptom groups resulting from FA. Hence, it is crucial to identify clinically more relevant symptom groups and improved response variables from those symptom groups for a quantitative analysis. Objectives: The goal of this study is to design a computational method for finding clinically relevant symptom groups from PROs and to test associations between symptom groups and radiation dose. Methods: We propose a novel approach where exploratory factor analysis is followed by confirmatory factor analysis to determine the relevant number of symptom groups. We also propose to use a combination of symptoms in a symptom group identified as a new response variable in linear regression analysis to investigate the relationship between the symptom group and dose-volume variables. Results: We analyzed patient-reported gastrointestinal symptom profiles from 3 datasets in prostate cancer patients treated with radiotherapy. The final structural model of each dataset was validated using the other two datasets and compared to four other existing FA methods. Our systematic EFA-CFA approach provided clinically more relevant solutions than other methods, resulting in new clinically relevant outcome variables that enabled a quantitative analysis. As a result, statistically significant correlations were found between some dosevolume variables to relevant anatomic structures and symptom groups identified by FA. Conclusions: Our proposed method can aid in the process of understanding PROs and provide a basis for improving our understanding of radiation-induced side effects. © Schattauer 2016.
Keywords: radiotherapy; toxicity; factor analysis; confirmatory factor analysis; patient reported outcomes; exploratory factor analysis
Journal Title: Methods of Information in Medicine
Volume: 55
Issue: 5
ISSN: 0026-1270
Publisher: Schattauer Gmbh Verlag Medizin Naturwissenschaften  
Date Published: 2016-01-01
Start Page: 431
End Page: 439
Language: English
DOI: 10.3414/me16-01-0035
PROVIDER: scopus
PUBMED: 27588322
PMCID: PMC5518610
DOI/URL:
Notes: Article -- Export Date: 2 November 2016 -- Source: Scopus
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  1. Jung Hun Oh
    187 Oh
  2. Joseph Owen Deasy
    524 Deasy
  3. Maria Elisabeth Thor
    148 Thor