Simple Summary Oesogastric cancers are often diagnosed at a locally advanced stage, especially in western countries. Thus, their prognosis is highly influenced by correct staging and response rate to preoperative therapy. Radiomics may offer a promising tool for improving the quality of current diagnostics of these tumors. Radiomic predictive models seem to work best when integrated with clinical characteristics. As a future perspective, the incorporation of molecular subgroup analysis to clinical and radiomic characteristics could even increase the effectiveness of these predictive and prognostic models.Abstract Background: Oesophageal, gastroesophageal, and gastric malignancies are often diagnosed at locally advanced stage and multimodal therapy is recommended to increase the chances of survival. However, given the significant variation in treatment response, there is a clear imperative to refine patient stratification. The aim of this narrative review was to explore the existing evidence and the potential of radiomics to improve staging and prediction of treatment response of oesogastric cancers. Methods: The references for this review article were identified via MEDLINE (PubMed) and Scopus searches with the terms "radiomics", "texture analysis", "oesophageal cancer", "gastroesophageal junction cancer", "oesophagogastric junction cancer", "gastric cancer", "stomach cancer", "staging", and "treatment response" until May 2024. Results: Radiomics proved to be effective in improving disease staging and prediction of treatment response for both oesophageal and gastric cancer with all imaging modalities (TC, MRI, and 18F-FDG PET/CT). The literature data on the application of radiomics to gastroesophageal junction cancer are very scarce. Radiomics models perform better when integrating different imaging modalities compared to a single radiology method and when combining clinical to radiomics features compared to only a radiomics signature. Conclusions: Radiomics shows potential in noninvasive staging and predicting response to preoperative therapy among patients with locally advanced oesogastric cancer. As a future perspective, the incorporation of molecular subgroup analysis to clinical and radiomic features may even increase the effectiveness of these predictive and prognostic models.

Radiomics in oesogastric cancer: staging and prediction of preoperative treatment response: a narrative review and the results of personal experience / Garbarino, Giovanni Maria; Polici, Michela; Caruso, Damiano; Laghi, Andrea; Mercantini, Paolo; Pilozzi, Emanuela; van Berge Henegouwen, Mark I; Gisbertz, Suzanne S; van Grieken, Nicole C T; Berardi, Eva; Costa, Gianluca. - In: CANCERS. - ISSN 2072-6694. - 16:15(2024). [10.3390/cancers16152664]

Radiomics in oesogastric cancer: staging and prediction of preoperative treatment response: a narrative review and the results of personal experience

Garbarino, Giovanni Maria
;
Polici, Michela;Caruso, Damiano;Laghi, Andrea;Mercantini, Paolo;Pilozzi, Emanuela;Berardi, Eva;
2024

Abstract

Simple Summary Oesogastric cancers are often diagnosed at a locally advanced stage, especially in western countries. Thus, their prognosis is highly influenced by correct staging and response rate to preoperative therapy. Radiomics may offer a promising tool for improving the quality of current diagnostics of these tumors. Radiomic predictive models seem to work best when integrated with clinical characteristics. As a future perspective, the incorporation of molecular subgroup analysis to clinical and radiomic characteristics could even increase the effectiveness of these predictive and prognostic models.Abstract Background: Oesophageal, gastroesophageal, and gastric malignancies are often diagnosed at locally advanced stage and multimodal therapy is recommended to increase the chances of survival. However, given the significant variation in treatment response, there is a clear imperative to refine patient stratification. The aim of this narrative review was to explore the existing evidence and the potential of radiomics to improve staging and prediction of treatment response of oesogastric cancers. Methods: The references for this review article were identified via MEDLINE (PubMed) and Scopus searches with the terms "radiomics", "texture analysis", "oesophageal cancer", "gastroesophageal junction cancer", "oesophagogastric junction cancer", "gastric cancer", "stomach cancer", "staging", and "treatment response" until May 2024. Results: Radiomics proved to be effective in improving disease staging and prediction of treatment response for both oesophageal and gastric cancer with all imaging modalities (TC, MRI, and 18F-FDG PET/CT). The literature data on the application of radiomics to gastroesophageal junction cancer are very scarce. Radiomics models perform better when integrating different imaging modalities compared to a single radiology method and when combining clinical to radiomics features compared to only a radiomics signature. Conclusions: Radiomics shows potential in noninvasive staging and predicting response to preoperative therapy among patients with locally advanced oesogastric cancer. As a future perspective, the incorporation of molecular subgroup analysis to clinical and radiomic features may even increase the effectiveness of these predictive and prognostic models.
2024
gastric cancer; oesophageal cancer; oesophagogastric junction cancer; radiomics; texture analysis
01 Pubblicazione su rivista::01g Articolo di rassegna (Review)
Radiomics in oesogastric cancer: staging and prediction of preoperative treatment response: a narrative review and the results of personal experience / Garbarino, Giovanni Maria; Polici, Michela; Caruso, Damiano; Laghi, Andrea; Mercantini, Paolo; Pilozzi, Emanuela; van Berge Henegouwen, Mark I; Gisbertz, Suzanne S; van Grieken, Nicole C T; Berardi, Eva; Costa, Gianluca. - In: CANCERS. - ISSN 2072-6694. - 16:15(2024). [10.3390/cancers16152664]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1726277
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