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Machine learning for predicting colon cancer recurrence

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dc.creator KAYIKÇIOĞLU, Erkan
dc.creator Onder, Arif Hakan
dc.creator BACAK, Burcu
dc.creator SEREL, Tekin Ahmet
dc.date 2024-06-01T00:00:00Z
dc.date.accessioned 2025-02-25T10:42:07Z
dc.date.available 2025-02-25T10:42:07Z
dc.identifier fa99c7ab-3269-45f7-a47d-299dae729897
dc.identifier 10.1016/j.suronc.2024.102079
dc.identifier https://avesis.sdu.edu.tr/publication/details/fa99c7ab-3269-45f7-a47d-299dae729897/oai
dc.identifier.uri http://acikerisim.sdu.edu.tr/xmlui/handle/123456789/102005
dc.description Introduction: Colorectal cancer (CRC) is a global public health concern, ranking among the most commonly diagnosed malignancies worldwide. Despite advancements in treatment modalities, the specter of CRC recurrence remains a significant challenge, demanding innovative solutions for early detection and intervention. The integration of machine learning into oncology offers a promising avenue to address this issue, providing data-driven insights and personalized care. Methods: This retrospective study analyzed data from 396 patients who underwent surgical procedures for colon cancer (CC) between 2010 and 2021. Machine learning algorithms were employed to predict CC recurrence, with a focus on demographic, clinicopathological, and laboratory characteristics. A range of evaluation metrics, including AUC (Area Under the Receiver Operating Characteristic), accuracy, recall, precision, and F1 scores, assessed the performance of machine learning algorithms. Results: Significant risk factors for CC recurrence were identified, including sex, carcinoembryonic antigen (CEA) levels, tumor location, depth, lymphatic and venous invasion, and lymph node involvement. The CatBoost Classifier demonstrated exceptional performance, achieving an AUC of 0.92 and an accuracy of 88 % on the test dataset. Feature importance analysis highlighted the significance of CEA levels, albumin levels, N stage, weight, platelet count, height, neutrophil count, lymphocyte count, and gender in determining recurrence risk. Discussion: The integration of machine learning into healthcare, exemplified by this study's findings, offers a pathway to personalized patient risk stratification and enhanced clinical decision-making. Early identification of individuals at risk of CC recurrence holds the potential for more effective therapeutic interventions and improved patient outcomes. Conclusion: Machine learning has the potential to revolutionize our approach to CC recurrence prediction, emphasizing the synergy between medical expertise and cutting-edge technology in the fight against cancer. This study represents a vital step toward precision medicine in CC management, showcasing the transformative power of data-driven insights in oncology.
dc.language eng
dc.rights info:eu-repo/semantics/closedAccess
dc.title Machine learning for predicting colon cancer recurrence
dc.type info:eu-repo/semantics/article


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