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Predicting clinical events characterizing the progression of amyotrophic lateral sclerosis via machine learning approaches using routine visits data: a feasibility study

Articolo
Data di Pubblicazione:
2024
Abstract:
Background: Amyotrophic lateral sclerosis (ALS) is a progressive neurodegenerative disease that results in death within a short time span (3-5 years). One of the major challenges in treating ALS is its highly heterogeneous disease progression and the lack of effective prognostic tools to forecast it. The main aim of this study was, then, to test the feasibility of predicting relevant clinical outcomes that characterize the progression of ALS with a two-year prediction horizon via artificial intelligence techniques using routine visits data. Methods: Three classification problems were considered: predicting death (binary problem), predicting death or percutaneous endoscopic gastrostomy (PEG) (multiclass problem), and predicting death or non-invasive ventilation (NIV) (multiclass problem). Two supervised learning models, a logistic regression (LR) and a deep learning multilayer perceptron (MLP), were trained ensuring technical robustness and reproducibility. Moreover, to provide insights into model explainability and result interpretability, model coefficients for LR and Shapley values for both LR and MLP were considered to characterize the relationship between each variable and the outcome. Results: On the one hand, predicting death was successful as both models yielded F1 scores and accuracy well above 0.7. The model explainability analysis performed for this outcome allowed for the understanding of how different methodological approaches consider the input variables when performing the prediction. On the other hand, predicting death alongside PEG or NIV proved to be much more challenging (F1 scores and accuracy in the 0.4-0.6 interval). Conclusions: In conclusion, predicting death due to ALS proved to be feasible. However, predicting PEG or NIV in a multiclass fashion proved to be unfeasible with these data, regardless of the complexity of the methodological approach. The observed results suggest a potential ceiling on the amount of information extractable from the database, e.g., due to the intrinsic difficulty of the prediction tasks at hand, or to the absence of crucial predictors that are, however, not currently collected during routine practice.
Tipologia CRIS:
03A-Articolo su Rivista
Keywords:
Amyotrophic lateral sclerosis; Explainability; Logistic regression; Multi-layer perceptron
Elenco autori:
Guazzo, Alessandro; Atzeni, Michele; Idi, Elena; Trescato, Isotta; Tavazzi, Erica; Longato, Enrico; Manera, Umberto; Chio, Adriano; Gromicho, Marta; Alves, Inês; de Carvalho, Mamede; Vettoretti, Martina; Di Camillo, Barbara
Autori di Ateneo:
CHIO' Adriano
MANERA Umberto
Link alla scheda completa:
https://iris.unito.it/handle/2318/2069478
Link al Full Text:
https://iris.unito.it/retrieve/handle/2318/2069478/1841476/BMC%20Med%20Inform%20Dec%20Making%202024%20-%20Guazzo%20-%20Predicting%20clinical%20events%20characterizing%20the%20progression%20of%20amyotrophic%20lateral%20sclerosis%20via%20machine%20learning%20approaches%20using%20routine%20visits%20data%20a%20feasibility%20study.pdf
Pubblicato in:
BMC MEDICAL INFORMATICS AND DECISION MAKING
Journal
Progetto:
BRinging Artificial INTelligencE home for a better cAre of amyotrophic lateral sclerosis and multiple SclERosis
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Settori (13)


LS5_11 - Neurological and neurodegenerative disorders - (2024)

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MEDICINA, SALUTE e BENESSERE - Disturbi neuropsichiatrici

MEDICINA, SALUTE e BENESSERE - Epidemiologia

MEDICINA, SALUTE e BENESSERE - Fisiologia comportamentale

MEDICINA, SALUTE e BENESSERE - Malattie neurologiche e neurodegenerative

MEDICINA, SALUTE e BENESSERE - Oncologia e Tumori

MEDICINA, SALUTE e BENESSERE - Psicologia clinica

MEDICINA, SALUTE e BENESSERE - Ricerca Traslazionale e Clinica

SCIENZE DELLA VITA e FARMACOLOGIA - Interazioni tra molecole, cellule, organismi e ambiente

SCIENZE DELLA VITA e FARMACOLOGIA - Sviluppo del sistema nervoso e plasticità
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