Describing complex disease progression using joint latent class models for multivariate longitudinal markers and clinical endpoints

Author:

Proust‐Lima Cécile12ORCID,Saulnier Tiphaine1,Philipps Viviane1,Traon Anne Pavy‐Le3,Péran Patrice4,Rascol Olivier3,Meissner Wassilios G.56,Foubert‐Samier Alexandra125

Affiliation:

1. Univ. Bordeaux Inserm, Bordeaux Population Health Research Center, U1219 Bordeaux France

2. Inserm CIC1401‐EC Bordeaux France

3. MSA Reference Center and CIC‐1436, Department of Clinical Pharmacology and Neurosciences NeuroToul COEN Center, University of Toulouse 3, CHU of Toulouse, INSERM Toulouse France

4. ToNIC, Toulouse NeuroImaging Center Univ Toulouse, Inserm, UPS Toulouse France

5. Univ. Bordeaux CNRS, IMN, UMR5293 Bordeaux France

6. Dept. Medicine University of Otago, Christchurch, and New Zealand Brain Research Institute Christchurch New Zealand

Abstract

SummaryNeurodegenerative diseases are characterized by numerous markers of progression and clinical endpoints. For instance, multiple system atrophy (MSA), a rare neurodegenerative synucleinopathy, is characterized by various combinations of progressive autonomic failure and motor dysfunction, and a very poor prognosis. Describing the progression of such complex and multi‐dimensional diseases is particularly difficult. One has to simultaneously account for the assessment of multivariate markers over time, the occurrence of clinical endpoints, and a highly suspected heterogeneity between patients. Yet, such description is crucial for understanding the natural history of the disease, staging patients diagnosed with the disease, unravelling subphenotypes, and predicting the prognosis. Through the example of MSA progression, we show how a latent class approach modeling multiple repeated markers and clinical endpoints can help describe complex disease progression and identify subphenotypes for exploring new pathological hypotheses. The proposed joint latent class model includes class‐specific multivariate mixed models to handle multivariate repeated biomarkers possibly summarized into latent dimensions and class‐and‐cause‐specific proportional hazard models to handle time‐to‐event data. Maximum likelihood estimation procedure, validated through simulations is available in the lcmm R package. In the French MSA cohort comprising data of 598 patients during up to 13 years, five subphenotypes of MSA were identified that differ by the sequence and shape of biomarkers degradation, and the associated risk of death. In posterior analyses, the five subphenotypes were used to explore the association between clinical progression and external imaging and fluid biomarkers, while properly accounting for the uncertainty in the subphenotypes membership.

Funder

Agence Nationale de la Recherche

Publisher

Wiley

Subject

Statistics and Probability,Epidemiology

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