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SG Healthcare AI Datathon 2021 - acute kidney injury (AKI) patients requiring replacement renal therapy

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doscsy12/AKI_rrt

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Title: Prediction of patients receiving delayed dialysis treatment

This project was done during the SG Healthcare AI Datathon 2021.

Problem Statement

Predict which AKI patients in ICU will receive delayed dialysis (>8h).

Background

In life-threatening cases, early dialysis can be life-saving. However, some patients can regain kidney function without dialysis, in the absence of life-threatening complications. The questions of when to start dialysis, and in which patients, are the subject of intense debate. The ELAIN trial found that early dialysis reduced mortality at 90 days, while the STARRT-AKI trial found that early dialysis was not associated with a lower risk of death. These high-profile randomised controlled trials only lead to more confusion in the field.

Data and Model

Adult patients with AKI who were in ICU for the first time were extracted from MIMIC-IV database.

The metric of interest is the roc_auc score. This provides us a measure of how the model can distinguish between patients receiving early or delayed dialysis.

Logistic regression model was built to classify patients receiving renal replacement therapy. SMOTE was used to address the class imbalance within the dataset. And ridge regularisation was added to reduce the likelihood of overfitting. Accuracy was 0.73.

Primary findings

Feature Coefficients
Min blood urea nitrogen 1.74
Max white blood cell count 1.07
Min bicarbonate 0.62
Mean temperature 0.56
Min hematocrit 0.55

The above table shows minimum blood urea nitrogen is 3x more likely to predict delayed dialysis than minimum hematocrit. These features are clinically relevant. Patients with higher white blood cell counts and higher mean temperature may be septic, and may be better treated with antibiotics first. Dialysis may only be started after 8 hours, if their condition fails to improve.

Conclusion and recommendations

We successfully explored a logistic regression model to classify AKI patients, who received delay renal therapy.

It would be interesting to compare the outcomes of patients who underwent early and delayed dialysis. We could also include polynomial features since a preliminary analysis showed that an interaction of variables such as interaction between maximum anion gap and mean blood pressure, may have a higher predictive model during classification. Lastly, we want to explore boosting models as they may provide better accuracy.

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