Machine learning for dynamically predicting the onset of renal
replacement therapy in chronic kidney disease patients using claims data
- URL: http://arxiv.org/abs/2209.01469v1
- Date: Sat, 3 Sep 2022 17:50:27 GMT
- Title: Machine learning for dynamically predicting the onset of renal
replacement therapy in chronic kidney disease patients using claims data
- Authors: Daniel Lopez-Martinez and Christina Chen and Ming-Jun Chen
- Abstract summary: Chronic kidney disease (CKD) represents a slowly progressive disorder that can eventually require renal replacement therapy (RRT)
Early identification of patients who will require RRT improves patient outcomes.
There is currently no commonly used predictive tool for RRT initiation.
- Score: 0.89379057739817
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Chronic kidney disease (CKD) represents a slowly progressive disorder that
can eventually require renal replacement therapy (RRT) including dialysis or
renal transplantation. Early identification of patients who will require RRT
(as much as 1 year in advance) improves patient outcomes, for example by
allowing higher-quality vascular access for dialysis. Therefore, early
recognition of the need for RRT by care teams is key to successfully managing
the disease. Unfortunately, there is currently no commonly used predictive tool
for RRT initiation. In this work, we present a machine learning model that
dynamically identifies CKD patients at risk of requiring RRT up to one year in
advance using only claims data. To evaluate the model, we studied approximately
3 million Medicare beneficiaries for which we made over 8 million predictions.
We showed that the model can identify at risk patients with over 90%
sensitivity and specificity. Although additional work is required before this
approach is ready for clinical use, this study provides a basis for a screening
tool to identify patients at risk within a time window that enables early
proactive interventions intended to improve RRT outcomes.
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