Quantitative texture analysis using machine learning for predicting interpretable pulmonary perfusion from non-contrast computed tomography in pulmonary embolism patients
Zihan Li(Hong Kong Polytechnic University), Ge Ren(Hong Kong Polytechnic University), Ruijie Yang(Peking University), Martin Ho Yin Yeung(Hong Kong Polytechnic University), Meng Wang(Air Force Medical University), Zhi Chen(Hong Kong Polytechnic University), Kun Wang(Guangdong General Hospital), Yuhua Huang(Nanjing Agricultural University), Pu Yao(Hong Kong Polytechnic University), X. Liu(Peking University), Meixin Zhao(Hong Kong Polytechnic University), Mayang Zhao(Hong Kong Polytechnic University), Lisheng Geng(Beihang University), Zhichun Li(Hong Kong Polytechnic University), Weifang Zhang(Nantong University), Jing Cai
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