<p>Post-Acute Infectious Syndromes (PAIS) refer to the symptoms persisting months after initial infection. Clinical research studies on this topic often collect rich, multi-modal datasets. Yet, the complexity of the datasets and the lack of a precise clinical case definition pose difficulties in creating comprehensive analyses. Here, we present a generalisable framework for analysing data from longitudinal studies of PAIS using Latent Transition Analysis (LTA). It enables the identification of disease phenotypes and the patient-level analysis of transitions between them, without relying on predefined clinical categorisations. Furthermore, we introduce a method for incorporating covariate information, which enables exploration of how patient characteristics influence disease trajectories. We apply this methodology to the ORCHESTRA dataset, composed of individuals affected by SARS-CoV-2 infection from multiple European centres, for investigation into Post-COVID-19 condition (PCC). 5094 patient assessments were collected at SARS-CoV-2 infection, and at 6, 12, 18, and 24 months of follow-up. Our model identifies distinct PCC phenotypes with patient trajectories impacted by age and sex. Our results highlight how LTA can enhance the interpretability of complex, time-resolved clinical data, support personalized patient monitoring and management, and accelerate therapeutic development for other PAISs, too.</p>

错误:搜索内容不能为空,请输入英文关键词
错误:关键词超出字数限制,请精简
高级检索

Latent transition analysis for longitudinal studies of post-acute infection syndromes

  • Roy Gusinow,
  • Anna Górska,
  • Lorenzo Maria Canziani,
  • Iris Lopes-Rafegas,
  • Carolina Alvarez Garavito,
  • Adriana Tami,
  • Elisa Gentilotti,
  • Elisa Sicuri,
  • Cédric Laouénan,
  • Jade Ghosn,
  • Aline-Marie Florence,
  • Nadhem Lahfej,
  • Fulvia Mazzaferri,
  • Lidia Del Piccolo,
  • Maddalena Giannella,
  • Alice Toschi,
  • Michela Di Chiara,
  • Maria Giulia Caponcello,
  • Zaira R. Palacios-Baena,
  • Karin I. Wold,
  • Elisa Rossi,
  • Evelina Tacconelli,
  • Jan Hasenauer,
  • Elena Addis,
  • Maddalena Armellini,
  • Anna Maria Azzini,
  • Benedetta Barana,
  • Lucia Bonato,
  • Elena Carrara,
  • Alessandro Castelli,
  • Filippo Cioli Puviani,
  • Michela Conti,
  • Raffaella Cordioli,
  • Carmine Cutone,
  • Ruth Joanna Davis,
  • Pasquale De Nardo,
  • Miriam Emiliani,
  • Alessio Esposito,
  • Daniele Fasan,
  • Giada Fasani,
  • Giorgia Franchina,
  • Jacopo Garlasco,
  • Enrico Gibbin,
  • Salvatore Hermes Dall’O’,
  • Chiara Konishi De Toffoli,
  • Lorenza Lambertenghi,
  • Federico Lattanzi,
  • Andrea Leonardi,
  • Francesco Luca,
  • Gaia Maccarrone,
  • Massimo Mirandola,
  • Matteo Morra,
  • Alessandra Nazeri,
  • Matilde Rocchi,
  • Giulia Rosini,
  • Chiara Perlini,
  • Maria Diletta Pezzani,
  • Laura Rovigo,
  • Anna Giulia Salvadori,
  • Andrea Sartori,
  • Alessia Savoldi,
  • Rebecca Scardellato,
  • Marcella Sibani,
  • Erica Sodano,
  • Simona Sorbello,
  • Lorenzo Tavernaro,
  • Giorgia Tomassini,
  • Alessandro Visentin,
  • Stefania Vitali,
  • Andrea Volpe,
  • Chiara Zanchi,
  • Gloria Mazzali,
  • Giovanni Stabile,
  • Gianluca Vantini,
  • Riccardo Cecchetto,
  • Davide Gibellini,
  • Nicolò Cardobi,
  • Debora Calì,
  • Maria Paola Cecchini,
  • Maddalena Marcanti,
  • Anna Mason,
  • Salvatore Monaco,
  • Marco Pattaro Zonta,
  • Cinzia Perlini,
  • Gianluigi Zanusso,
  • Elda Righi,
  • Mariana Nunes Pinho Guedes,
  • Maria Mongardi,
  • Concetta Sciammarella,
  • Claudio Micheletto,
  • Paolo Gisondi,
  • Natascia Caroccia,
  • Cecilia Bonazzetti,
  • Beatrice Tazza,
  • Zeno Igor Adrien Pasquini,
  • Domenico Marzolla,
  • Giacomo Fornaro,
  • Fabio Trapani,
  • Lorenzo Marconi,
  • Luciano Attard,
  • Sara Tedeschi,
  • Silvia Vituliano,
  • Liliana Gabrielli,
  • Tiziana Lazzarotto,
  • Jesús Rodrguez-Baño,
  • Mara Isabel Garcia Sánchez,
  • Ana Belén Hidalgo Céspedes,
  • Aurora Aleman Rodriguez,
  • Lola Cubero Aranda,
  • Paula Olivares Navarro,
  • Sandra De la Rosa Riestra,
  • José M. Bravo-Ferrero,
  • Gerolf de Boer,
  • Bernardina T. F. van der Gun,
  • Mara F. Vincenti-González,
  • Alida C. M. Veloo,
  • Daniele Pantano,
  • Margriet van der Meer,
  • Lilli Gard,
  • Erley F. Lizarazo,
  • Marjolein Knoester,
  • Alex W. Friedrich,
  • Hubert G. M. Niesters,
  • Salvatore Cataudella,
  • Chiara Dellacasa,
  • Manuel Huth,
  • Clemens Peiter

摘要

Post-Acute Infectious Syndromes (PAIS) refer to the symptoms persisting months after initial infection. Clinical research studies on this topic often collect rich, multi-modal datasets. Yet, the complexity of the datasets and the lack of a precise clinical case definition pose difficulties in creating comprehensive analyses. Here, we present a generalisable framework for analysing data from longitudinal studies of PAIS using Latent Transition Analysis (LTA). It enables the identification of disease phenotypes and the patient-level analysis of transitions between them, without relying on predefined clinical categorisations. Furthermore, we introduce a method for incorporating covariate information, which enables exploration of how patient characteristics influence disease trajectories. We apply this methodology to the ORCHESTRA dataset, composed of individuals affected by SARS-CoV-2 infection from multiple European centres, for investigation into Post-COVID-19 condition (PCC). 5094 patient assessments were collected at SARS-CoV-2 infection, and at 6, 12, 18, and 24 months of follow-up. Our model identifies distinct PCC phenotypes with patient trajectories impacted by age and sex. Our results highlight how LTA can enhance the interpretability of complex, time-resolved clinical data, support personalized patient monitoring and management, and accelerate therapeutic development for other PAISs, too.