Artificial neural networks (ANNs) for differential diagnosis of interstitial lung disease : results of a simulation test with actual clinical cases1
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Kunio Doi | Hiroyuki Abe | Junji Shiraishi | Heber MacMahon | Feng Li | K. Doi | K. Ashizawa | H. MacMahon | Feng Li | J. Shiraishi | H. Abe | Kazuto Ashizawa | Naohiro Matsuyama | Aya Fukushima | A. Fukushima | N. Matsuyama
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