Machine learning to construct sphingolipid metabolism genes signature to characterize the immune landscape and prognosis of patients with uveal melanoma
Hao Chi(Southwest Medical University), Gang Tian(Affiliated Hospital of Southwest Medical University), Dorothee Franziska Strohmer(Ludwig-Maximilians-Universität München), Songyun Zhao(Wenzhou Medical University), Guobin Song(Southwest Medical University), Jinyan Yang(Southwest Medical University), Xixi Xie(Southwest Medical University), Rui Wang(Anhui University of Traditional Chinese Medicine), Fang Yang(Jiangsu University), Gaoge Peng(Shanghai Medical College of Fudan University), Jinhao Zhang(Southwest Medical University), Guichuan Lai(Chongqing Public Health Medical Center)
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