2024
DOI: 10.3748/wjg.v30.i5.450
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Development and validation of a prediction model for early screening of people at high risk for colorectal cancer

Ling-Li Xu,
Yi Lin,
Li-Yuan Han
et al.

Abstract: BACKGROUND Colorectal cancer (CRC) is a serious threat worldwide. Although early screening is suggested to be the most effective method to prevent and control CRC, the current situation of early screening for CRC is still not optimistic. In China, the incidence of CRC in the Yangtze River Delta region is increasing dramatically, but few studies have been conducted. Therefore, it is necessary to develop a simple and efficient early screening model for CRC. AIM To develop and valida… Show more

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“…Notably, the utilization of machine learning in GN risk assessment models has emerged as a prominent research direction. Various risk assessment models, such as the Gail model, Tyrer-Cuzick model, colorectal cancer risk assessment tool model, BOADICEA model, and mismatch repair probability model, have been developed[ 40 , 41 ]. Leveraging expansive epidemiological databases and clinical datasets combined with machine learning algorithms enables the derivation of more nuanced and precise risk prediction models.…”
Section: Discussionmentioning
confidence: 99%
“…Notably, the utilization of machine learning in GN risk assessment models has emerged as a prominent research direction. Various risk assessment models, such as the Gail model, Tyrer-Cuzick model, colorectal cancer risk assessment tool model, BOADICEA model, and mismatch repair probability model, have been developed[ 40 , 41 ]. Leveraging expansive epidemiological databases and clinical datasets combined with machine learning algorithms enables the derivation of more nuanced and precise risk prediction models.…”
Section: Discussionmentioning
confidence: 99%