Introduction for the Artificial Intelligence and Gastrointestinal Cancer Column

Brandon J. Ten, M. Byrne
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引用次数: 1

Abstract

Gastrointestinal (GI) cancer is a leading cause worldwide of morbidity and mortality. In 2018, GI cancer accounted for 27% of all new cancer diagnoses. The incidence rate of colorectal cancer is rising in many countries, with a recent dramatic increase for people under the age of 50 years.
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人工智能与胃肠道癌症专栏简介
胃肠道(GI)癌症是世界范围内发病率和死亡率的主要原因。2018年,胃肠道癌症占所有新癌症诊断的27%。在许多国家,结直肠癌的发病率正在上升,最近50岁以下人群的发病率急剧上升。
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2.30
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