Marti-Bonmati Luis, Koh Dow-Mu, Riklund Katrine, Bobowicz Maciej, Roussakis Yiannis, Vilanova Joan C, Fütterer Jurgen J, Rimola Jordi, Mallol Pedro, Ribas Gloria, Miguel Ana, Tsiknakis Manolis, Lekadir Karim, Tsakou Gianna
Radiology Department and Biomedical Imaging Research Group (GIBI230), La Fe Polytechnics and University Hospital and Health Research Institute, Valencia, Spain.
Department of Radiology, Royal Marsden Hospital and Division of Radiotherapy and Imaging, Institute of Cancer Research, London, UK.
Insights Imaging. 2022 May 10;13(1):89. doi: 10.1186/s13244-022-01220-9.
To achieve clinical impact in daily oncological practice, emerging AI-based cancer imaging research needs to have clearly defined medical focus, AI methods, and outcomes to be estimated. AI-supported cancer imaging should predict major relevant clinical endpoints, aiming to extract associations and draw inferences in a fair, robust, and trustworthy way. AI-assisted solutions as medical devices, developed using multicenter heterogeneous datasets, should be targeted to have an impact on the clinical care pathway. When designing an AI-based research study in oncologic imaging, ensuring clinical impact in AI solutions requires careful consideration of key aspects, including target population selection, sample size definition, standards, and common data elements utilization, balanced dataset splitting, appropriate validation methodology, adequate ground truth, and careful selection of clinical endpoints. Endpoints may be pathology hallmarks, disease behavior, treatment response, or patient prognosis. Ensuring ethical, safety, and privacy considerations are also mandatory before clinical validation is performed. The Artificial Intelligence for Health Imaging (AI4HI) Clinical Working Group has discussed and present in this paper some indicative Machine Learning (ML) enabled decision-support solutions currently under research in the AI4HI projects, as well as the main considerations and requirements that AI solutions should have from a clinical perspective, which can be adopted into clinical practice. If effectively designed, implemented, and validated, cancer imaging AI-supported tools will have the potential to revolutionize the field of precision medicine in oncology.
为了在日常肿瘤学实践中实现临床影响,新兴的基于人工智能的癌症成像研究需要有明确界定的医学重点、人工智能方法以及待评估的结果。人工智能支持的癌症成像应预测主要相关临床终点,旨在以公平、稳健和可信的方式提取关联并得出推论。作为医疗设备的人工智能辅助解决方案,使用多中心异构数据集开发,应旨在对临床护理路径产生影响。在设计肿瘤成像中基于人工智能的研究时,要确保人工智能解决方案产生临床影响,需要仔细考虑关键方面,包括目标人群选择、样本量定义、标准和通用数据元素的使用、平衡的数据集划分、适当的验证方法、足够的金标准以及临床终点的精心选择。终点可能是病理特征、疾病行为、治疗反应或患者预后。在进行临床验证之前,确保符合伦理、安全和隐私方面的考虑也是必不可少的。健康成像人工智能(AI4HI)临床工作组在本文中讨论并介绍了一些目前在AI4HI项目中正在研究的基于机器学习(ML)的决策支持解决方案示例,以及从临床角度来看人工智能解决方案应具备的主要考虑因素和要求,这些可应用于临床实践。如果设计、实施和验证得当,癌症成像人工智能支持的工具将有可能彻底改变肿瘤学精准医学领域。