The natural history of ALS: Baseline characteristics from a multicenter clinical cohort

Alex Berger, Matteo Locatelli, Ximena Arcila-Londono, Ghazala Hayat, Nicholas Olney, James Wymer, Kelly Gwathmey, Christian Lunetta, Terry Heiman-Patterson, Senda Ajroud-Driss, Eric A. Macklin, Marie Abèle Bind, Kimberly Goslin, Tamela Stuchiner, Lauren Brown, Tracy Bazan, Tyler Regan, Ashley Adamo, Valerie Ferment, Carly SchroederMegan Somers, Georgios Manousakis, Kenneth Faulconer, Ervin Sinani, Julia Mirochnick, Hong Yu, Alexander V. Sherman, David Walk

Research output: Contribution to journalArticlepeer-review

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Abstract

Background: Amyotrophic lateral sclerosis (ALS) is a rare disease with urgent need for improved treatment. Despite the acceleration of research in recent years, there is a need to understand the full natural history of the disease. As only 40% of people living with ALS are eligible for typical clinical trials, clinical trial datasets may not generalize to the full ALS population. While biomarker and cohort studies have more generous inclusion criteria, these too may not represent the full range of phenotypes, particularly if the burden for participation is high. To permit a complete understanding of the heterogeneity of ALS, comprehensive data on the full range of people with ALS is needed. Methods: The ALS Natural History Consortium (ALS NHC) consists of nine ALS clinics and was created to build a comprehensive dataset reflective of the ALS population. At each clinic, most patients are asked to participate and about 95% do. After obtaining consent, a minimum dataset is abstracted from each participant’s electronic health record. Participant burden is therefore minimal. Results: Data on 1925 ALS patients were submitted as of 9 December 2022. ALS NHC participants were more heterogeneous relative to anonymized clinical trial data from the Pooled Resource Open-Access ALS Clinical Trials (PRO-ACT) database. The ALS NHC includes ALS patients of older age of onset and a broader distribution of El Escorial categories, than the PRO-ACT database. Conclusions: ALS NHC participants had a higher diversity of diagnostic and demographic data compared to ALS clinical trial participants.Key MessagesWhat is already known on this topic: Current knowledge of the natural history of ALS derives largely from regional and national registries that have broad representation of the population of people living with ALS but do not always collect covariates and clinical outcomes. Clinical studies with rich datasets of participant characteristics and validated clinical outcomes have stricter inclusion and exclusion criteria that may not be generalizable to the full ALS population. What this study adds: To bridge this gap, we collected baseline characteristics for a sample of the population of people living with ALS seen at a consortium of ALS clinics that collect extensive, pre-specified participant-level data, including validated outcome measures. How this study might affect research, practice, or policy: A clinic-based longitudinal dataset can improve our understanding of the natural history of ALS and can be used to inform the design and analysis of clinical trials and health economics studies, to help the prediction of clinical course, to find matched controls for open label extension trials and expanded access protocols, and to document real-world evidence of the impact of novel treatments and changes in care practice.

Original languageEnglish (US)
Pages (from-to)625-633
Number of pages9
JournalAmyotrophic Lateral Sclerosis and Frontotemporal Degeneration
Volume24
Issue number7-8
DOIs
StatePublished - 2023

Bibliographical note

Publisher Copyright:
© 2023 World Federation of Neurology on behalf of the Research Group on Motor Neuron Diseases.

Keywords

  • Natural history
  • epidemiology
  • models
  • prognostic

PubMed: MeSH publication types

  • Journal Article

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