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人工智能在乳腺癌治疗效果预测中的应用:系统综述设计、报告标准和偏倚。

Artificial intelligence for prediction of treatment outcomes in breast cancer: Systematic review of design, reporting standards, and bias.

机构信息

Division of New Drugs and Early Drug Development for Innovative Therapies, European Institute of Oncology, IRCCS, Milan, Italy; Department of Oncology and Haematology (DIPO), University of Milan, Milan, Italy.

Department of Electronics Informatics and Bioengineering, Polytechnic University of Milan, Milan, Italy.

出版信息

Cancer Treat Rev. 2022 Jul;108:102410. doi: 10.1016/j.ctrv.2022.102410. Epub 2022 May 19.

Abstract

BACKGROUND

Artificial intelligence (AI) has the potential to personalize treatment strategies for patients with cancer. However, current methodological weaknesses could limit clinical impact. We identified common limitations and suggested potential solutions to facilitate translation of AI to breast cancer management.

METHODS

A systematic review was conducted in MEDLINE, Embase, SCOPUS, Google Scholar and PubMed Central in July 2021. Studies investigating the performance of AI to predict outcomes among patients undergoing treatment for breast cancer were included. Algorithm design and adherence to reporting standards were assessed following the Transparent Reporting of a multivariable prediction model for Individual Prognosis Or Diagnosis (TRIPOD) statement. Risk of bias was assessed by using the Prediction model Risk Of Bias Assessment Tool (PROBAST), and correspondence with authors to assess data and code availability.

RESULTS

Our search identified 1,124 studies, of which 64 were included: 58 had a retrospective study design, with 6 studies with a prospective design. Access to datasets and code was severely limited (unavailable in 77% and 88% of studies, respectively). On request, data and code were made available in 28% and 18% of cases, respectively. Ethnicity was often under-reported (not reported in 52 of 64, 81%), as was model calibration (63/64, 99%). The risk of bias was high in 72% (46/64) of the studies, especially because of analysis bias.

CONCLUSION

Development of AI algorithms should involve external and prospective validation, with improved code and data availability to enhance reliability and translation of this promising approach. Protocol registration number: PROSPERO - CRD42022292495.

摘要

背景

人工智能(AI)有可能为癌症患者制定个性化的治疗策略。然而,当前方法学上的弱点可能会限制其临床应用。我们确定了常见的局限性,并提出了一些潜在的解决方案,以促进人工智能在乳腺癌管理中的应用。

方法

我们于 2021 年 7 月在 MEDLINE、Embase、SCOPUS、Google Scholar 和 PubMed Central 进行了系统综述。纳入了研究人工智能预测接受乳腺癌治疗的患者结局的性能的研究。根据个体化预后或诊断的多变量预测模型透明报告(TRIPOD)声明,评估算法设计和报告标准的遵守情况。使用预测模型风险偏倚评估工具(PROBAST)评估偏倚风险,并与作者联系以评估数据和代码的可用性。

结果

我们的搜索共确定了 1124 项研究,其中 64 项被纳入:58 项为回顾性研究设计,6 项为前瞻性设计。数据集和代码的获取受到严重限制(分别有 77%和 88%的研究无法获取)。根据要求,分别有 28%和 18%的研究提供了数据和代码。研究中经常未报告种族(64 项中有 52 项,81%),也经常未报告模型校准情况(64 项中有 63 项,99%)。72%(46/64)的研究存在较高的偏倚风险,主要是由于分析偏倚。

结论

人工智能算法的开发应包括外部和前瞻性验证,并提高代码和数据的可用性,以增强这种有前途的方法的可靠性和可转化性。注册编号:PROSPERO-CRD42022292495。

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