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Tumor burden in metastatic colorectal cancer quantified using deep learning models:Prognostic value and maintenance treatment benefit in the CAIRO3 trial

Title: Tumor burden in metastatic colorectal cancer quantified using deep learning models:Prognostic value and maintenance treatment benefit in the CAIRO3 trial
Authors: Al-Toma, Dania; Kemna,Ruby; Ali,Mahsoem; Zwart, Koen; Zeeuw,Michiel J.; Stehouwer, Bertine L.; de Jong, Pim A.; Kurk, Sophie; Braat, Manon N.G.J.A.; Lagendijk, Jan J.W.; May, Anne M.; Koopman, Miriam; Verpalen, Inez M.; Swijnenburg,Rutger Jan; Punt,Cornelis J.A.; Kazemier,Geert; Bol, Guus M.; Researchgr. Nucleaire Geneeskunde; Cancer; Medisch Oncologische Disciplines; Externen Med. Onco; MS Radiologie; Researchgr. Systems Radiology; Circulatory Health; Infection & Immunity; Regenerative Medicine and Stem Cells; Arts-assistenten Radiotherapie; Onderzoek Beeld; Hart- en Vaatziekten Team A; Epi Kanker; JC onderzoeksprogramma Cancer; MS Medische Oncologie; Programmabureau Zorg van Morgen; Researchgr. Beeldg. Moleculaire Interv.
Publication Year: 2026
Subject Terms: artificial intelligence; biomarkers; maintenance therapy; Metastatic colorectal cancer; prognosis; tumor burden; tumor volume; Oncology; Cancer Research
Description: Introduction Tumor number (TTN) and total tumor volume (TTV) reflect tumor burden and have been linked to outcomes in metastatic colorectal cancer (mCRC). We hypothesize that these measures can identify patients who benefit most from maintenance therapy. This exploratory analysis assessed the prognostic and predictive value of TTN and TTV in mCRC. Methods Patients with liver and/or lung metastases from the CAIRO3 trial, which randomized between maintenance therapy and observation, were included. All lesions were counted, and their volumes were quantified using automated deep-learning segmentation models. Cox regression models were used to assess the prognostic value of TTN and TTV for progression-free (PFS) and overall survival (OS), as well as potential interactions with treatment arm (maintenance vs observation). Results A total of 3989 metastatic lesions were segmented in 104 patients (median age, 64 years; 65% male). At randomization, median TTN was 10 and median TTV was 37 mL. Higher TTN and TTV were associated with shorter median PFS (TTN p = 0.006; TTV p = 0.2) and median OS (TTN p = 0.005; TTV p = 0.001). In multivariable analyses, both TTN and TTV were independently prognostic for PFS and OS. The 1-year PFS benefit of maintenance therapy was more pronounced in patients with lower TTV (Pinteraction=0.0002). Discussion This exploratory analysis showed that a higher tumor burden, quantified by number or volume, was independently associated with poor outcomes. Patients with lower tumor burden, especially lower TTV, appeared to derive the greatest benefit from maintenance therapy, supporting their potential as predictive biomarkers.
Document Type: article in journal/newspaper
File Description: text/plain
Language: English
ISSN: 0959-8049
Relation: https://dspace.library.uu.nl/handle/1874/469597
Availability: https://dspace.library.uu.nl/handle/1874/469597
Rights: info:eu-repo/semantics/OpenAccess
Accession Number: edsbas.826C3A49
Database: BASE