利用人工智能检测结直肠息肉

Y. Mori, S. Kudo, M. Misawa
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引用次数: 1

摘要

结直肠癌(CRC)是大多数国家癌症相关死亡的主要原因。结肠镜检查期间,所有肿瘤和癌前息肉(如腺瘤)被根除,被认为有利于降低crc的发病率及其相关死亡率(1,2)。这一概念得到了几项大规模前瞻性研究的支持(3)。然而,结肠镜检查过程的质量因内窥镜医师的专业知识而异。
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Detecting colorectal polyps with use of artificial intelligence
Colorectal cancer (CRC) is a major cause of cancer-related mortality in most countries. Colonoscopy during which all neoplastic and pre-malignant polyps (e.g., adenomas) are eradicated is considered beneficial in decreasing the incidence of CRCs and their associated mortality (1,2). This concept has been supported by several large-scale prospective studies (3). The quality of the colonoscopy procedure, however, varies according to the expertise of the endoscopist.
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