We are witnessing a widespread adoption of artificial intelligence in healthcare. However, most of the advancements in deep learning in this area consider only unimodal data, neglecting other modalities. Their multimodal interpretation necessary for supporting diagnosis, prognosis and treatment decisions. In this work we present a deep architecture, which jointly learns modality reconstructions and sample classifications using tabular and imaging data. The explanation of the decision taken is computed by applying a latent shift that, simulates a counterfactual prediction revealing the features of each modality that contribute the most to the decision and a quantitative score indicating the modality importance. We validate our approach in the context of COVID-19 pandemic using the AIforCOVID dataset, which contains multimodal data for the early identification of patients at risk of severe outcome. The results show that the proposed method provides meaningful explanations without degrading the classification performance.

Identifying clusters of curatively-treated esophageal cancer patients using patient-reported outcome measures at three months from discharge: a secondary analysis from a longitudinal single center study / R. Caruso, A. Magon, G. Conte, L. Bonavina. - In: ANNALI ITALIANI DI CHIRURGIA. - ISSN 0003-469X. - 95:5(2024 Oct), pp. 867-878. [10.62713/aic.3524]

Identifying clusters of curatively-treated esophageal cancer patients using patient-reported outcome measures at three months from discharge: a secondary analysis from a longitudinal single center study

R. Caruso
Primo
Conceptualization
;
L. Bonavina
Ultimo
Supervision
2024

Abstract

We are witnessing a widespread adoption of artificial intelligence in healthcare. However, most of the advancements in deep learning in this area consider only unimodal data, neglecting other modalities. Their multimodal interpretation necessary for supporting diagnosis, prognosis and treatment decisions. In this work we present a deep architecture, which jointly learns modality reconstructions and sample classifications using tabular and imaging data. The explanation of the decision taken is computed by applying a latent shift that, simulates a counterfactual prediction revealing the features of each modality that contribute the most to the decision and a quantitative score indicating the modality importance. We validate our approach in the context of COVID-19 pandemic using the AIforCOVID dataset, which contains multimodal data for the early identification of patients at risk of severe outcome. The results show that the proposed method provides meaningful explanations without degrading the classification performance.
esophageal cancer; Patient-Reported Outcome Measures; t-SNE; hierarchical clustering; post-operative recovery; health literacy; quality of life
Settore MEDS-24/C - Scienze infermieristiche generali, cliniche, pediatriche e ostetrico-ginecologiche e neonatali
Settore MEDS-06/A - Chirurgia generale
ott-2024
Article (author)
File in questo prodotto:
File Dimensione Formato  
AIC-95-5-867-878.pdf

accesso aperto

Tipologia: Publisher's version/PDF
Dimensione 3.52 MB
Formato Adobe PDF
3.52 MB Adobe PDF Visualizza/Apri
Pubblicazioni consigliate

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1115080
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus 0
  • ???jsp.display-item.citation.isi??? 0
social impact