4.7 Article

Learning Prognostic Models Using Disease Progression Patterns: Predicting the Need for Non-Invasive Ventilation in Amyotrophic Lateral Sclerosis

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TCBB.2021.3078362

Keywords

Diseases; Itemsets; Predictive models; Feature extraction; Data mining; Ventilation; Data models; Amyotrophic lateral sclerosis; pattern mining; disease progression patterns; non-invasive ventilation; prognostic models

Funding

  1. Fundao para a Cilncia e a Tecnologia, FCT
  2. Portuguese Public Agency for Science, Technology and Innovation [PTDC/EEI-SII/1937/2014, PTDC/CCI-CIF/29877/2017, PTDC/CCI-CIF/4613/2020]
  3. LASIGE Research Unit [UIDB/00408/2020, UIDP/00408/2020]

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This study proposes using itemset mining and sequential pattern mining to predict the need for non-invasive ventilation treatment in patients with amyotrophic lateral sclerosis. By analyzing static and longitudinal data, disease progression patterns and predictive model features are identified, providing insights for disease management and treatment.
Amyotrophic Lateral Sclerosis is a devastating neurodegenerative disease causing rapid degeneration of motor neurons and usually leading to death by respiratory failure. Since there is no cure, treatment's goal is to improve symptoms and prolong survival. Non-invasive Ventilation (NIV) is an effective treatment, leading to extended life expectancy and improved quality of life. In this scenario, it is paramount to predict its need in order to allow preventive or timely administration. In this work, we propose to use itemset mining together with sequential pattern mining to unravel disease presentation patterns together with disease progression patterns by analysing, respectively, static data collected at diagnosis and longitudinal data from patient follow-up. The goal is to use these static and temporal patterns as features in prognostic models, enabling to take disease progression into account in predictions and promoting model interpretability. As case study, we predict the need for NIV within 90, 180 and 365 days (short, mid and long-term predictions). The learnt prognostic models are promising. Pattern evaluation through growth rate suggests bulbar function and phrenic nerve response amplitude, additionally to respiratory function, are significant features towards determining patient evolution. This confirms clinical knowledge regarding relevant biomarkers of disease progression towards respiratory insufficiency.

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