Systemic lupus erythematosus phenotypes formed from machine learning with a specific focus on cognitive impairment

Author:

Barraclough Michelle123ORCID,Erdman Lauren4,Diaz-Martinez Juan Pablo15,Knight Andrea6,Bingham Kathleen7,Su Jiandong15,Kakvan Mahta15,Grajales Carolina Muñoz15,Tartaglia Maria Carmela8,Ruttan Lesley9,Wither Joan1,Choi May Y10ORCID,Bonilla Dennisse15,Appenzeller Simone11,Parker Ben23,Goldenberg Anna4,Katz Patricia12ORCID,Beaton Dorcas13,Green Robin9,Bruce Ian N23ORCID,Touma Zahi15ORCID

Affiliation:

1. Schroeder Arthritis Institute, Krembil Research Institute, University Health Network , Toronto, ON, Canada

2. Centre for Epidemiology Versus Arthritis, Division of Musculoskeletal and Dermatological Sciences, School of Biological Sciences, Faculty of Biology, Medicine and Health, University of Manchester , Manchester, UK

3. NIHR Manchester Biomedical Research Centre, Manchester University NHS Foundation Trust, Manchester Academic Health Science Centre , Manchester, UK

4. Genetics and Genome Biology, Department of Computer Science, Hospital for Sick Children, Peter Gilgan Centre for Research and Learning, University of Toronto , Toronto, ON, Canada

5. University of Toronto Lupus Clinic, Centre for Prognosis Studies in Rheumatic Diseases, Toronto Western Hospital , Toronto, ON, Canada

6. Division of Rheumatology, Hospital for Sick Children , Toronto, ON, Canada

7. Centre for Mental Health, University Health Network, Department of Psychiatry, University of Toronto , Toronto, ON, Canada

8. University of Toronto Krembil Neurosciences Centre , Toronto, ON, Canada

9. University Health Network-Toronto Rehabilitation Institute , Toronto, ON, Canada

10. Cumming School of Medicine, University of Calgary , Calgary, AB, Canada

11. University of Campinas , São Paulo, Brazil

12. University of California, San Francisco , Novato, CA, USA

13. Institute for Work and Health, University of Toronto , Toronto, ON, Canada

Abstract

Abstract Objective To phenotype SLE based on symptom burden (disease damage, system involvement and patient reported outcomes), with a specific focus on objective and subjective cognitive function. Methods SLE patients ages 18–65 years underwent objective cognitive assessment using the ACR Neuropsychological Battery (ACR-NB) and data were collected on demographic and clinical variables, disease burden/activity, health-related quality of life (HRQoL), depression, anxiety, fatigue and perceived cognitive deficits. Similarity network fusion (SNF) was used to identify patient subtypes. Differences between the subtypes were evaluated using Kruskal–Wallis and χ2 tests. Results Of the 238 patients, 90% were female, with a mean age of 41 years (s.d. 12) and a disease duration of 14 years (s.d. 10) at the study visit. The SNF analysis defined two subtypes (A and B) with distinct patterns in objective and subjective cognitive function, disease burden/damage, HRQoL, anxiety and depression. Subtype A performed worst on all significantly different tests of objective cognitive function (P < 0.03) compared with subtype B. Subtype A also had greater levels of subjective cognitive function (P < 0.001), disease burden/damage (P < 0.04), HRQoL (P < 0.001) and psychiatric measures (P < 0.001) compared with subtype B. Conclusion This study demonstrates the complexity of cognitive impairment (CI) in SLE and that individual, multifactorial phenotypes exist. Those with greater disease burden, from SLE-specific factors or other factors associated with chronic conditions, report poorer cognitive functioning and perform worse on objective cognitive measures. By exploring different ways of phenotyping SLE we may better define CI in SLE. Ultimately this will aid our understanding of personalized CI trajectories and identification of appropriate treatments.

Funder

Arthritis Society of Canada, Canadian Institutes of Health Research

Province of Ontario Early Research

Lupus Research Alliance

Publisher

Oxford University Press (OUP)

Subject

Pharmacology (medical),Rheumatology

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