Publication: Artificial intelligence-based prognostic model for urologic cancers: A seer-based study
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Simple Summary We describe a risk profile reconstruction model for cancer-specific survival estimation for continuous time points after urologic cancer diagnosis. We used artificial intelligence (AI)-based algorithms, a national cancer registry data, and accessible clinical parameters for the risk-profile reconstruction. We derived a risk stratification model and estimated the minimum follow-up duration and the likelihood for risk stability in prostate, kidney, and testicular cancers. The estimated follow-up duration was in alignment with recognized clinical guidelines for these cancers. Moreover, the estimated follow-up duration was differed by the cancer origin and the disease dissemination status. Overall, the reconstruction of the population\"s risk profile for the cancer-specific prognostic score estimation is feasible using AI and has potential application in clinical settings to improve risk stratification and surveillance management. Background: Prognostication is essential to determine the risk profile of patients with urologic cancers. Methods: We utilized the SEER national cancer registry database with approximately 2 million patients diagnosed with urologic cancers (penile, testicular, prostate, bladder, ureter, and kidney). The cohort was randomly divided into the development set (90%) and the out-held test set (10%). Modeling algorithms and clinically relevant parameters were utilized for cancer-specific mortality prognosis. The model fitness for the survival estimation was assessed using the differences between the predicted and observed Kaplan-Meier estimates on the out-held test set. The overall concordance index (c-index) score estimated the discriminative accuracy of the survival model on the test set. A simulation study assessed the estimated minimum follow-up duration and time points with the risk stability. Results: We achieved a well-calibrated prognostic model with an overall c-index score of 0.800 (95% CI: 0.795-0.805) on the representative out-held test set. The simulation study revealed that the suggestions for the follow-up duration covered the minimum duration and differed by the tumor dissemination stages and affected organs. Time points with a high likelihood for risk stability were identifiable. Conclusions: A personalized temporal survival estimation is feasible using artificial intelligence and has potential application in clinical settings, including surveillance management.
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Tıp, Sağlık Bilimleri, Dahili Tıp Bilimleri, İç Hastalıkları, Onkoloji, Medicine, Health Sciences, Internal Medicine Sciences, Internal Diseases, Oncology, ONKOLOJİ, Klinik Tıp, Klinik Tıp (MED), ONCOLOGY, CLINICAL MEDICINE, Clinical Medicine (MED), surveillance management, machine learning, artificial intelligence, urologic cancers, data-driven solution, survival modeling, PROSTATE-CANCER, EAU GUIDELINES, FOLLOW-UP, RISK STRATIFICATION, SURVIVAL, EPIDEMIOLOGY, CARCINOMA, ISSUES, TUMORS, CARE
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Eminaga O., Shkolyar E., Breil B., Semjonow A., Boegemann M., Xing L., TİNAY İ., Liao J. C., "Artificial Intelligence-Based Prognostic Model for Urologic Cancers: A SEER-Based Study", CANCERS, cilt.14, sa.13, 2022
