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Can we predict pathology without surgery? Weighing the added value of multiparametric MRI and whole prostate radiomics in integrative machine learning models.

Authors :
Marvaso, Giulia
Isaksson, Lars Johannes
Zaffaroni, Mattia
Vincini, Maria Giulia
Summers, Paul Eugene
Pepa, Matteo
Corrao, Giulia
Mazzola, Giovanni Carlo
Rotondi, Marco
Mastroleo, Federico
Raimondi, Sara
Alessi, Sarah
Pricolo, Paola
Luzzago, Stefano
Mistretta, Francesco Alessandro
Ferro, Matteo
Cattani, Federica
Ceci, Francesco
Musi, Gennaro
De Cobelli, Ottavio
Source :
European Radiology. Oct2024, Vol. 34 Issue 10, p6241-6253. 13p.
Publication Year :
2024

Abstract

Objective: To test the ability of high-performance machine learning (ML) models employing clinical, radiological, and radiomic variables to improve non-invasive prediction of the pathological status of prostate cancer (PCa) in a large, single-institution cohort. Methods: Patients who underwent multiparametric MRI and prostatectomy in our institution in 2015–2018 were considered; a total of 949 patients were included. Gradient-boosted decision tree models were separately trained using clinical features alone and in combination with radiological reporting and/or prostate radiomic features to predict pathological T, pathological N, ISUP score, and their change from preclinical assessment. Model behavior was analyzed in terms of performance, feature importance, Shapley additive explanation (SHAP) values, and mean absolute error (MAE). The best model was compared against a naïve model mimicking clinical workflow. Results: The model including all variables was the best performing (AUC values ranging from 0.73 to 0.96 for the six endpoints). Radiomic features brought a small yet measurable boost in performance, with the SHAP values indicating that their contribution can be critical to successful prediction of endpoints for individual patients. MAEs were lower for low-risk patients, suggesting that the models find them easier to classify. The best model outperformed (p ≤ 0.0001) clinical baseline, resulting in significantly fewer false negative predictions and overall was less prone to under-staging. Conclusions: Our results highlight the potential benefit of integrative ML models for pathological status prediction in PCa. Additional studies regarding clinical integration of such models can provide valuable information for personalizing therapy offering a tool to improve non-invasive prediction of pathological status. Clinical relevance statement: The best machine learning model was less prone to under-staging of the disease. The improved accuracy of our pathological prediction models could constitute an asset to the clinical workflow by providing clinicians with accurate pathological predictions prior to treatment. Key Points: • Currently, the most common strategies for pre-surgical stratification of prostate cancer (PCa) patients have shown to have suboptimal performances. • The addition of radiological features to the clinical features gave a considerable boost in model performance. Our best model outperforms the naïve model, avoiding under-staging and resulting in a critical advantage in the clinic. •Machine learning models incorporating clinical, radiological, and radiomics features significantly improved accuracy of pathological prediction in prostate cancer, possibly constituting an asset to the clinical workflow. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09387994
Volume :
34
Issue :
10
Database :
Academic Search Index
Journal :
European Radiology
Publication Type :
Academic Journal
Accession number :
179636527
Full Text :
https://doi.org/10.1007/s00330-024-10699-3