前列腺癌
医学
乳腺癌
医学诊断
活检
工作量
转移
深度学习
病理
癌症
放射科
人工智能
计算机科学
内科学
操作系统
作者
Geert Litjens,Clara I. Sánchez,N. K. Timofeeva,Meyke Hermsen,Irıs D. Nagtegaal,Iringo Kovacs,Christina Hulsbergen - van de Kaa,Peter Bult,Bram van Ginneken,Jeroen van der Laak
摘要
Abstract Pathologists face a substantial increase in workload and complexity of histopathologic cancer diagnosis due to the advent of personalized medicine. Therefore, diagnostic protocols have to focus equally on efficiency and accuracy. In this paper we introduce ‘deep learning’ as a technique to improve the objectivity and efficiency of histopathologic slide analysis. Through two examples, prostate cancer identification in biopsy specimens and breast cancer metastasis detection in sentinel lymph nodes, we show the potential of this new methodology to reduce the workload for pathologists, while at the same time increasing objectivity of diagnoses. We found that all slides containing prostate cancer and micro- and macro-metastases of breast cancer could be identified automatically while 30–40% of the slides containing benign and normal tissue could be excluded without the use of any additional immunohistochemical markers or human intervention. We conclude that ‘deep learning’ holds great promise to improve the efficacy of prostate cancer diagnosis and breast cancer staging.
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