A universal AutoScore framework to develop interpretable scoring systems for predicting common types of clinical outcomes
Feng Xie(Duke-NUS Medical School), Nan Liu(Sichuan University), Bibhas Chakraborty(National University of Singapore), Yilin Ning(Duke-NUS Medical School), Victor Volovici(Erasmus MC), Benjamin A. Goldstein(Duke University), Seyed Ehsan Saffari(Duke-NUS Medical School), Marcus Eng Hock Ong(Marcus (United States)), Siqi Li(Duke-NUS Medical School), Han Yuan(Chengdu University of Information Technology), Mingxuan Liu(Duke-NUS Medical School), R. S. Vaughan(Duke-NUS Medical School), Daniel Shu Wei Ting(National University of Singapore)
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