TY - JOUR
T1 - Deep hierarchical subtyping of multi-organ systemic sclerosis trajectories - a EUSTAR study
AU - EUSTAR Collaborators
AU - Trottet, Cécile
AU - Schürch, Manuel
AU - Allam, Ahmed
AU - Petelytska, Liubov
AU - Castellví, Ivan
AU - Bečvář, Radim
AU - de Vries-Bouwstra, Jeska
AU - Iannone, Florenzo
AU - Carreira, Patricia
AU - Truchetet, Marie Elise
AU - Cuomo, Giovanna
AU - Rezus, Elena
AU - Cantatore, Francesco Paolo
AU - Simeón-Aznar, Carmen Pilar
AU - Parvu, Magda
AU - Dzhus, Marta
AU - Distler, Oliver
AU - Hoffmann-Vold, Anna Maria
AU - Krauthammer, Michael
AU - Alibaz-Oner, Fatma
AU - El-Bakry, Samah A.
AU - Chimenti, Maria Sole
AU - Mora-Trujillo, Claudia
AU - Guzmán, Janeth Villegas
AU - Colak, Seda
AU - Duruöz, Tuncay
AU - Yan, Qingran
AU - Lewandowska-Polak, Anna
AU - Sole, Ivette Casafont
AU - Batko, Bogdan
AU - Zhang, Lijun
AU - Derk, Chris
AU - de Paulis, Amato
AU - Daniel, Alexandra
AU - Mu, Rong
AU - Miedany, Yasser El
AU - Brigante, Alejandro
AU - Carrión-Barberà, Irene
AU - De Angelis, Rossella
AU - Lopez Nunez, Lilian Maria
AU - Györfi, Andrea Hermina
AU - Rabaneda, Esther Vicente
AU - Santos Carneiro, Helena
AU - Benvenuti, Francesco
AU - Giacomelli, Roberto
AU - Hinchcliff, Monique
AU - Iwata, Futoshi
AU - Retuerto, Miriam
AU - Levy, Yair
AU - Litinsky, Ira
N1 - Publisher Copyright:
© The Author(s) 2025.
PY - 2025/12
Y1 - 2025/12
N2 - Systemic sclerosis (SSc) is a chronic autoimmune disease with multi-organ involvement. Historically, SSc classification has focused on the type of skin involvement (limited versus diffuse); however, a growing evidence of organ-specific variability suggests the presence of more than two distinct subtypes. We propose a semi-supervised generative deep learning framework leveraging expert-driven definitions of organ-specific involvement and severity. We model SSc disease trajectories in the European Scleroderma Trials and Research (EUSTAR) database, containing 14,000 patients across 67,000 medical visits, and identify clinically meaningful subtypes to enhance patient stratification and prognosis. We systematically evaluate the model’s predictive accuracy, robustness to missing data, and clinical interpretability. We identified five patient clusters, separating patients based on the degree of organ involvement. Notably, a subset with limited skin involvement still showed high risks of lung and heart complications, underscoring the importance of data-driven methods and multi-organ models to complement established insights from clinical practice.
AB - Systemic sclerosis (SSc) is a chronic autoimmune disease with multi-organ involvement. Historically, SSc classification has focused on the type of skin involvement (limited versus diffuse); however, a growing evidence of organ-specific variability suggests the presence of more than two distinct subtypes. We propose a semi-supervised generative deep learning framework leveraging expert-driven definitions of organ-specific involvement and severity. We model SSc disease trajectories in the European Scleroderma Trials and Research (EUSTAR) database, containing 14,000 patients across 67,000 medical visits, and identify clinically meaningful subtypes to enhance patient stratification and prognosis. We systematically evaluate the model’s predictive accuracy, robustness to missing data, and clinical interpretability. We identified five patient clusters, separating patients based on the degree of organ involvement. Notably, a subset with limited skin involvement still showed high risks of lung and heart complications, underscoring the importance of data-driven methods and multi-organ models to complement established insights from clinical practice.
UR - https://www.scopus.com/pages/publications/105016567420
U2 - 10.1038/s41746-025-01962-y
DO - 10.1038/s41746-025-01962-y
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C2 - 40890392
AN - SCOPUS:105016567420
SN - 2398-6352
VL - 8
JO - npj Digital Medicine
JF - npj Digital Medicine
IS - 1
M1 - 563
ER -