你想要多精确?定义医疗人工智能所需的最低精度

Federico Sternini, Alice Ravizza, F. Cabitza
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引用次数: 3

摘要

人工智能(AI)正在成为生物医学工程解决方案中越来越常见的组成部分,这些系统在诊断和预后准确性方面取得了令人鼓舞的成果。医学人工智能(MAI)正在达到成熟水平,可以在临床实践中适当使用,但为此,需要首先证明其有效性。目前,这种功效在算法的准确性方面得到了证明,特别是在诊断任务方面。但在这种情况下,“足够”精确到什么程度?要解决这个问题,就意味着要定义系统有效所需的最小精度,即适合其预期用途。为此,我们提出了一种基于风险的方法来定义足够的准确性,根据基于风险的监管分类。我们通过对四个应用领域的文献进行综述,调查了目前的技术状况是否已经符合这种基于标准的方法,我们确定了四个风险类别:牛皮癣的诊断、膝关节骨关节炎的诊断、乳腺癌筛查的筛查和流感爆发的检测。文献综述的评估强调,这种方法仍然没有被广泛采用,但有一个隐含的,传统的方案,部分存在,类似于我们的建议,特别是在高影响力的文献。我们还提供了一些指导方针来评估最低要求的准确性,但也阐明了进一步的官方指导方针的必要性,以确保MAI学术界更广泛地应用基于监管风险的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HOW ACCURATE DO YOU WANT IT? DEFINING MINIMUM REQUIRED ACCURACY FOR MEDICAL ARTIFICIAL INTELLIGENCE
Artificial intelligence (AI) is becoming a more and more common component of biomedical engineering solutions, and these latter systems are getting promising results in terms of diagnostic and prognostic accuracy. Medical AI (MAI) is then reaching the maturity level for its appropriate use in clinical practice, but to this end, its efficacy needs to be demonstrated first. Currently, this efficacy is proven in terms of the reported accuracy of the algorithm, especially for diagnostic tasks. But also in this case, how much accurate is “enough” accurate? To address this question means to define the minimum required accuracy for a system to be valid, that is fit to its intended use. To this aim, we propose a risk-based approach to the definition of adequate accuracy, in accordance with a risk-based regulatory classification. We investigated whether the current state of the art is already compliant with this standard-based approach, by performing a literature review in four application domains, one for each of the four risk classes we identified: the diagnosis of psoriasis, of knee osteoarthritis, the screening of breast cancer screening, and the detection of influenza outbreaks. The evaluation of the literature review highlighted that this approach is still not widely adopted, but that there is a partial presence of an implicit, conventional scheme that is similar to our proposal, especially in the high-impact literature. We also provide some guideline to assess the minimum required accuracy but also sheds light on the need for further official guidelines that ensure the wider application of the regulatory risk-based approach by the scholarly community of MAI.
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