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首页> 外文期刊>Expert review of medical devices >Artificial Intelligence (AI) for the early detection of breast cancer: a scoping review to assess AI's potential in breast screening practice
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Artificial Intelligence (AI) for the early detection of breast cancer: a scoping review to assess AI's potential in breast screening practice

机译:用于早期检测乳腺癌的人工智能(AI):评估AI在乳房筛选实践中的潜力的范围

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Introduction: Various factors are driving interest in the application of artificial intelligence (AI) for breast cancer (BC) detection, but it is unclear whether the evidence warrants large-scale use in population-based screening. Areas covered: We performed a scoping review, a structured evidence synthesis describing a broad research field, to summarize knowledge on AI evaluated for BC detection and to assess AI's readiness for adoption in BC screening. Studies were predominantly small retrospective studies based on highly selected image datasets that contained a high proportion of cancers (median BC proportion in datasets 26.5%), and used heterogeneous techniques to develop AI models; the range of estimated AUC (area under ROC curve) for AI models was 69.2-97.8% (median AUC 88.2%). We identified various methodologic limitations including use of non-representative imaging data for model training, limited validation in external datasets, potential bias in training data, and few comparative data for AI versus radiologists' interpretation of mammography screening. Expert opinion: Although contemporary AI models have reported generally good accuracy for BC detection, methodological concerns, and evidence gaps exist that limit translation into clinical BC screening settings. These should be addressed in parallel to advancing AI techniques to render AI transferable to large-scale population-based screening.
机译:介绍:各种因素正在推动人工智能(AI)对乳腺癌(BC)检测的兴趣,但目前尚不清楚证据证明是否对基于人口的筛查进行大规模使用。所涵盖的区域:我们进行了一个范围审查,这是一个描述广泛研究领域的结构化证据合成,总结了对BC检测评估的AI知识,并评估了AI在BC筛选中采用的准备情况。基于含有高比例的癌症(数据集26.5%中的中位BC比例)的高度所选择的图像数据集,研究主要是小的回顾性研究,并使用异质技术来开发AI模型; AI模型的估计AUC(ROC曲线下的面积)的范围为69.2-97.8%(中位数AUC 88.2%)。我们确定了各种方法限制,包括使用非代表性成像数据进行模型培训,在外部数据集中的有限验证,培训数据中的潜在偏见,以及AI与放射科学家对乳房摄影筛查的解释很少的比较数据。专家意见:虽然当代AI模型据报道,BC检测,方法问题和证据差距存在良好的准确性,但存在将转换为临床BC筛选设置的证据。这些应该与推进AI技术并行解决,以使AI可转移到基于大规模的群体的筛选。

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