Submission ID 118252
| Issue/Objective | Cervical cancer morbidity and mortality remain a significant global health challenge worldwide with age-standardized incidence rate (ASR) of 7.3/100,000 in 2022. Low and Middle-Income Countries (LMICs) especially sub-Saharan Africa have the highest incidence and mortality of cervical cancer with 70% to 90% of cervical cancer cases and deaths, respectively. Despite Rwanda's considerable efforts, cervical cancer remained the second most prevalent cancer among Rwandan women in 2023. Although numerous studies have explored the relationship between early detection and better outcomes, there is a lack of comprehensive research assessing the overall impact of early detection on patient survival. This study sought to explore impact of early detection on survival outcomes, explore the use of machine learning (ML) techniques for survival prediction in cervical cancer patients, to provide a through understanding of the impact of cervical cancer early detection on patient survival. |
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| Methodology/Approach | Methods: This retrospective cohort study analysed data from the Rwanda National Cancer Registry (2016-2023). Kaplan-Meier survival analysis, Log-rank Test, and Cox proportional hazards models were employed to evaluate survival rates and risk factors. Gradient Boosting, Logistic Regression, and Survival Support Vector Machines (SSVM) models were developed and tested for survival prediction. Data cleaning retained 2,476 records with complete clinical information. |
| Results | Early detection reduced the hazard of death by 39% compared to late detection. Gradient Boosting ML Model demonstrated superior performance with an accuracy of 88.2%, sensitivity of 99.7%, and the lowest Brier score of 0.1408. Key predictors of poor survival included older age at diagnosis and HIV positivity. |
| Discussion/Conclusion | Early detection significantly improves survival outcomes for cervical cancer patients. HIV positive and age at diagnosis returned as key influencers for the survival outcome. ML models offer robust predictive capabilities, enabling resource optimization and personalized care in LMICs. Findings emphasize the importance of scaling early detection initiatives and leveraging ML for informed decision-making in cervical cancer management. |
| Presenters and affiliations | Absolomon GASHAIJA Centre for Impact, Innovation and Capacity building for Health Information Systems and Nutrition (CIIC-HIN), Kigali, Rwanda uwase Nkusi Diana society for Family Health (SFH), Kigali, Rwanda |