用于癌症筛查和监测的人工智能

F. Gentile , N. Malara
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引用次数: 0

摘要

对癌症预防进行投资是具有成本效益的。然而,这需要在医疗保健系统内外进行重大变革。预防战略的核心是确定个人罹患癌症的风险水平。人工智能(AI)作为一种减少数据收集和分析中的错误和混乱的工具,帮助加快了最近在识别循环标记以生成预测方法方面取得的进展。随着预测模型应用于创伤性和可重复性越来越小的分析测试中,风险不再是指定的,而是随着时间的推移直接对个人进行剖析。在此基础上,癌症早期诊断的概率得以提高,与此同时,主动预防医学也从提供生活方式建议过渡到指导特定治疗以降低风险。尽管有这些承诺,但基于人工智能的预测模型在临床实施中也面临挑战。应对这些挑战对于最大限度地减轻未来与抗癌相关的负担至关重要。
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Artificial intelligence for cancer screening and surveillance

Investing in cancer prevention can be cost-effective. However, this requires significant changes both inside and outside the health care system. The core of the preventive strategy is the assignment of an individual risk level of developing cancer. Artificial intelligence (AI), which has emerged as a tool to reduce errors and confusion in data collection and analysis, has helped accelerate recent advances in identifying circulating markers to generate predictive methods. With predictive models applied to increasingly less invasive and repeatable analytic tests, the risk is no longer assigned but profiled directly on the individual over time. On this basis, the probability of early cancer diagnosis is increased and at the same time, proactive preventive medicine transits from offering lifestyle recommendations to guiding specific treatments to reduce the risk. Despite these promises, AI-based predictive models also present challenges in clinical implementation. Addressing these challenges is crucial to minimizing the future burdens associated with fighting cancer.

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