Automated Interstitial Lung Abnormality Probability Prediction at CT: A Stepwise Machine Learning Approach in the Boston Lung Cancer Study
Akinori Hata(Osaka University), Hiroto Hatabu(Harvard University), Gary M. Hunninghake(Hubei University of Science and Technology), Minoru Nakatsugawa(Canon (Japan)), Vladimir I. Valtchinov(Brigham and Women's Hospital), Noriyuki Tomiyama(The University of Osaka), Jiyeon Song(University of Michigan), Mizuki Nishino(Brigham and Women's Hospital), Takuya Hino(Harvard University), Noriaki Wada(Brigham and Women's Hospital), Akihiro Koga(Canon (Japan)), David C. Christiani(Harvard University), Yi Li(University of Michigan–Ann Arbor), Kota Aoyagi(Canon (Japan)), Masahiro Ozaki(Canon (Japan)), Yohei Muraguchi(Canon (Japan)), Xinan Wang(Harvard University), Masami Kawagishi(Canon (Japan)), N Sugihara(Brigham and Women's Hospital)
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