Description
Title: MODELS FOR PREDICTING PATIENT SURVIVAL AFTER LIVER TRANSPLANTATION USING MACHINE LEARNING
Abstract: In our research, we developed models that can foretell whether a patient will experience organ loss following a liver transplant within a given time frame. We developed predictors by using observations of bilirubin and creatinine throughout the first year following the transplantation, capturing both their static value and their variability. Our models do in fact have the predictive ability to demonstrate the benefit of accounting for measurement variability in biochemical processes, and this is the first contribution of our paper. In our second contribution, we found that despite having the best predictive power, which is crucial in medicine, full-complexity models like random forests and gradient boosting lack adequate interpretability. In our research, we discovered that generalized additive models (GAM) offer the desired interpretability and that their predictive power is superior to that of simple linear models.
Keywords: machine learning, models interpretability, survival prediction, generalized additive models, liver transplant
Paper Quality: SCOPUS / Web of Science Level Research Paper
Paper type: Analysis Based Research Paper
Subject: Computer Science
Writer Experience: 20+ Years
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