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A robust clustering strategy for stratification unveils unique patient subgroups in acutely decompensated cirrhosis

Authors :
Sara Palomino-Echeverria
Estefania Huergo
Asier Ortega-Legarreta
Eva M. Uson Raposo
Ferran Aguilar
Carlos de la Peña-Ramirez
Cristina López-Vicario
Carlo Alessandria
Wim Laleman
Alberto Queiroz Farias
Richard Moreau
Javier Fernandez
Vicente Arroyo
Paolo Caraceni
Vincenzo Lagani
Cristina Sánchez-Garrido
Joan Clària
Jesper Tegner
Jonel Trebicka
Narsis A. Kiani
Nuria Planell
Pierre-Emmanuel Rautou
David Gomez-Cabrero
Source :
Journal of Translational Medicine, Vol 22, Iss 1, Pp 1-19 (2024)
Publication Year :
2024
Publisher :
BMC, 2024.

Abstract

Abstract Background Patient heterogeneity poses significant challenges for managing individuals and designing clinical trials, especially in complex diseases. Existing classifications rely on outcome-predicting scores, potentially overlooking crucial elements contributing to heterogeneity without necessarily impacting prognosis. Methods To address patient heterogeneity, we developed ClustALL, a computational pipeline that simultaneously faces diverse clinical data challenges like mixed types, missing values, and collinearity. ClustALL enables the unsupervised identification of patient stratifications while filtering for stratifications that are robust against minor variations in the population (population-based) and against limited adjustments in the algorithm’s parameters (parameter-based). Results Applied to a European cohort of patients with acutely decompensated cirrhosis (n = 766), ClustALL identified five robust stratifications, using only data at hospital admission. All stratifications included markers of impaired liver function and number of organ dysfunction or failure, and most included precipitating events. When focusing on one of these stratifications, patients were categorized into three clusters characterized by typical clinical features; notably, the 3-cluster stratification showed a prognostic value. Re-assessment of patient stratification during follow-up delineated patients’ outcomes, with further improvement of the prognostic value of the stratification. We validated these findings in an independent prospective multicentre cohort of patients from Latin America (n = 580). Conclusions By applying ClustALL to patients with acutely decompensated cirrhosis, we identified three patient clusters. Following these clusters over time offers insights that could guide future clinical trial design. ClustALL is a novel and robust stratification method capable of addressing the multiple challenges of patient stratification in most complex diseases.

Details

Language :
English
ISSN :
14795876
Volume :
22
Issue :
1
Database :
Directory of Open Access Journals
Journal :
Journal of Translational Medicine
Publication Type :
Academic Journal
Accession number :
edsdoj.fc33b047ee34914a86a10e0483c2fdb
Document Type :
article
Full Text :
https://doi.org/10.1186/s12967-024-05386-2