Random forest analysis identifies change in serum creatinine and listing status as the most predictive variables of an outcome for young children on liver transplant waitlist

Sakil Kulkarni, Lisa Chi, Charles Goss, Qinghua Lian, Michelle Nadler, Janis Stoll, Maria Doyle, Yumirle Turmelle, Adeel Khan

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Medicine & Life Sciences