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一般的名称 | X線画像診断装置ワークステーション用プログラム |
販売名 | COVID-19肺炎解析ソフトウェア SCO-PA01 |
承認番号 | 30400BZX00123000 |
一般的名称 | 汎用画像診断装置ワークステーション用プログラム |
販売名 | 汎用画像診断ワークステーション用プログラム RapideyeCore SVAS-01 |
認証番号 | 229ABBZX00002000 |
* AI技術は設計段階で用いており、自己学習機能を有しません。
* 本製品は、汎用IT 機器にインストールされた汎用画像診断ワークステーション用プログラムRapideyeCore SVAS-01と組み合わせて使用します。