超要約: 難しい癌の診断を、AIがデータ少なめで高精度に!画期的!✨
● 大量データ不要!自己学習(じこがくしゅう)で賢くなるAI! ● 細か~い組織画像(そしきがぞう)を、色んな角度から分析!🔍 ● 診断の精度(せいど)UPで、患者さんもお医者さんもハッピー!😊
背景 腎臓(じんぞう)の癌(がん)の種類を正確に知るのって、むずかしいんだよね💦 診断には専門家(せんもんか)の目と、大量のデータが必要だったの!
方法 AIくんに、自分で勉強してもらう「自己学習」って方法を使ったよ!✨ 組織の画像を見て、色んな角度から特徴(とくちょう)を掴(つか)むんだ! 専門家が大量のデータを準備しなくてもOKになった!
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Renal Cell Carcinoma is typically asymptomatic at the early stages for many patients. This leads to a late diagnosis of the tumor, where the curability likelihood is lower, and makes the mortality rate of Renal Cell Carcinoma high, with respect to its incidence rate. To increase the survival chance, a fast and correct categorization of the tumor subtype is paramount. Nowadays, computerized methods, based on artificial intelligence, represent an interesting opportunity to improve the productivity and the objectivity of the microscopy-based Renal Cell Carcinoma diagnosis. Nonetheless, much of their exploitation is hampered by the paucity of annotated dataset, essential for a proficient training of supervised machine learning technologies. This study sets out to investigate a novel self supervised training strategy for machine learning diagnostic tools, based on the multi-resolution nature of the histological samples. We aim at reducing the need of annotated dataset, without significantly reducing the accuracy of the tool. We demonstrate the classification capability of our tool on a whole slide imaging dataset for Renal Cancer subtyping, and we compare our solution with several state-of-the-art classification counterparts.