Artificial intelligence and statistical methods for stratification and prediction of progression in amyotrophic lateral sclerosis: A systematic review

Amyotrophic Lateral Sclerosis (ALS) is a fatal neurodegenerative disorder characterised by the progressive loss of motor neurons in the brain and spinal cord. The fact that ALS’s disease course is highly heterogeneous, and its determinants not fully known, combined with ALS’s relatively low prevalen...

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Veröffentlicht in:Artificial intelligence in medicine 2023-08, Vol.142, p.102588-102588, Article 102588
Hauptverfasser: Tavazzi, Erica, Longato, Enrico, Vettoretti, Martina, Aidos, Helena, Trescato, Isotta, Roversi, Chiara, Martins, Andreia S., Castanho, Eduardo N., Branco, Ruben, Soares, Diogo F., Guazzo, Alessandro, Birolo, Giovanni, Pala, Daniele, Bosoni, Pietro, Chiò, Adriano, Manera, Umberto, de Carvalho, Mamede, Miranda, Bruno, Gromicho, Marta, Alves, Inês, Bellazzi, Riccardo, Dagliati, Arianna, Fariselli, Piero, Madeira, Sara C., Di Camillo, Barbara
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container_title Artificial intelligence in medicine
container_volume 142
creator Tavazzi, Erica
Longato, Enrico
Vettoretti, Martina
Aidos, Helena
Trescato, Isotta
Roversi, Chiara
Martins, Andreia S.
Castanho, Eduardo N.
Branco, Ruben
Soares, Diogo F.
Guazzo, Alessandro
Birolo, Giovanni
Pala, Daniele
Bosoni, Pietro
Chiò, Adriano
Manera, Umberto
de Carvalho, Mamede
Miranda, Bruno
Gromicho, Marta
Alves, Inês
Bellazzi, Riccardo
Dagliati, Arianna
Fariselli, Piero
Madeira, Sara C.
Di Camillo, Barbara
description Amyotrophic Lateral Sclerosis (ALS) is a fatal neurodegenerative disorder characterised by the progressive loss of motor neurons in the brain and spinal cord. The fact that ALS’s disease course is highly heterogeneous, and its determinants not fully known, combined with ALS’s relatively low prevalence, renders the successful application of artificial intelligence (AI) techniques particularly arduous. This systematic review aims at identifying areas of agreement and unanswered questions regarding two notable applications of AI in ALS, namely the automatic, data-driven stratification of patients according to their phenotype, and the prediction of ALS progression. Differently from previous works, this review is focused on the methodological landscape of AI in ALS. We conducted a systematic search of the Scopus and PubMed databases, looking for studies on data-driven stratification methods based on unsupervised techniques resulting in (A) automatic group discovery or (B) a transformation of the feature space allowing patient subgroups to be identified; and for studies on internally or externally validated methods for the prediction of ALS progression. We described the selected studies according to the following characteristics, when applicable: variables used, methodology, splitting criteria and number of groups, prediction outcomes, validation schemes, and metrics. Of the starting 1604 unique reports (2837 combined hits between Scopus and PubMed), 239 were selected for thorough screening, leading to the inclusion of 15 studies on patient stratification, 28 on prediction of ALS progression, and 6 on both stratification and prediction. In terms of variables used, most stratification and prediction studies included demographics and features derived from the ALSFRS or ALSFRS-R scores, which were also the main prediction targets. The most represented stratification methods were K-means, and hierarchical and expectation-maximisation clustering; while random forests, logistic regression, the Cox proportional hazard model, and various flavours of deep learning were the most widely used prediction methods. Predictive model validation was, albeit unexpectedly, quite rarely performed in absolute terms (leading to the exclusion of 78 eligible studies), with the overwhelming majority of included studies resorting to internal validation only. This systematic review highlighted a general agreement in terms of input variable selection for both stratification and prediction o
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The fact that ALS’s disease course is highly heterogeneous, and its determinants not fully known, combined with ALS’s relatively low prevalence, renders the successful application of artificial intelligence (AI) techniques particularly arduous. This systematic review aims at identifying areas of agreement and unanswered questions regarding two notable applications of AI in ALS, namely the automatic, data-driven stratification of patients according to their phenotype, and the prediction of ALS progression. Differently from previous works, this review is focused on the methodological landscape of AI in ALS. We conducted a systematic search of the Scopus and PubMed databases, looking for studies on data-driven stratification methods based on unsupervised techniques resulting in (A) automatic group discovery or (B) a transformation of the feature space allowing patient subgroups to be identified; and for studies on internally or externally validated methods for the prediction of ALS progression. We described the selected studies according to the following characteristics, when applicable: variables used, methodology, splitting criteria and number of groups, prediction outcomes, validation schemes, and metrics. Of the starting 1604 unique reports (2837 combined hits between Scopus and PubMed), 239 were selected for thorough screening, leading to the inclusion of 15 studies on patient stratification, 28 on prediction of ALS progression, and 6 on both stratification and prediction. In terms of variables used, most stratification and prediction studies included demographics and features derived from the ALSFRS or ALSFRS-R scores, which were also the main prediction targets. The most represented stratification methods were K-means, and hierarchical and expectation-maximisation clustering; while random forests, logistic regression, the Cox proportional hazard model, and various flavours of deep learning were the most widely used prediction methods. Predictive model validation was, albeit unexpectedly, quite rarely performed in absolute terms (leading to the exclusion of 78 eligible studies), with the overwhelming majority of included studies resorting to internal validation only. This systematic review highlighted a general agreement in terms of input variable selection for both stratification and prediction of ALS progression, and in terms of prediction targets. A striking lack of validated models emerged, as well as a general difficulty in reproducing many published studies, mainly due to the absence of the corresponding parameter lists. While deep learning seems promising for prediction applications, its superiority with respect to traditional methods has not been established; there is, instead, ample room for its application in the subfield of patient stratification. Finally, an open question remains on the role of new environmental and behavioural variables collected via novel, real-time sensors. •Systematic review of the methodological state of the art of AI in ALS.•Includes both patient stratification and prediction of progression.•Revealed broad consensus about the choice of input variables for ALS models.•External validation of the models identified as a common unmet requirement.•Room for application of deep learning in both prediction and stratification.</description><identifier>ISSN: 0933-3657</identifier><identifier>EISSN: 1873-2860</identifier><identifier>DOI: 10.1016/j.artmed.2023.102588</identifier><identifier>PMID: 37316101</identifier><language>eng</language><publisher>Netherlands: Elsevier B.V</publisher><subject>Amyotrophic lateral sclerosis ; Amyotrophic Lateral Sclerosis - diagnosis ; Artificial Intelligence ; Brain ; Cluster Analysis ; Databases, Factual ; Disease progression ; Humans ; Prediction ; Stratification ; Systematic review</subject><ispartof>Artificial intelligence in medicine, 2023-08, Vol.142, p.102588-102588, Article 102588</ispartof><rights>2023 The Authors</rights><rights>Copyright © 2023 The Authors. 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In terms of variables used, most stratification and prediction studies included demographics and features derived from the ALSFRS or ALSFRS-R scores, which were also the main prediction targets. The most represented stratification methods were K-means, and hierarchical and expectation-maximisation clustering; while random forests, logistic regression, the Cox proportional hazard model, and various flavours of deep learning were the most widely used prediction methods. Predictive model validation was, albeit unexpectedly, quite rarely performed in absolute terms (leading to the exclusion of 78 eligible studies), with the overwhelming majority of included studies resorting to internal validation only. This systematic review highlighted a general agreement in terms of input variable selection for both stratification and prediction of ALS progression, and in terms of prediction targets. A striking lack of validated models emerged, as well as a general difficulty in reproducing many published studies, mainly due to the absence of the corresponding parameter lists. While deep learning seems promising for prediction applications, its superiority with respect to traditional methods has not been established; there is, instead, ample room for its application in the subfield of patient stratification. 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We conducted a systematic search of the Scopus and PubMed databases, looking for studies on data-driven stratification methods based on unsupervised techniques resulting in (A) automatic group discovery or (B) a transformation of the feature space allowing patient subgroups to be identified; and for studies on internally or externally validated methods for the prediction of ALS progression. We described the selected studies according to the following characteristics, when applicable: variables used, methodology, splitting criteria and number of groups, prediction outcomes, validation schemes, and metrics. Of the starting 1604 unique reports (2837 combined hits between Scopus and PubMed), 239 were selected for thorough screening, leading to the inclusion of 15 studies on patient stratification, 28 on prediction of ALS progression, and 6 on both stratification and prediction. 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source MEDLINE; Elsevier ScienceDirect Journals
subjects Amyotrophic lateral sclerosis
Amyotrophic Lateral Sclerosis - diagnosis
Artificial Intelligence
Brain
Cluster Analysis
Databases, Factual
Disease progression
Humans
Prediction
Stratification
Systematic review
title Artificial intelligence and statistical methods for stratification and prediction of progression in amyotrophic lateral sclerosis: A systematic review
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