Lorin Werthen-Brabants, Tom Dhaene, Dirk Deschrijver
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引用次数: 0
Abstract
This paper investigates the importance of Trustworthy Machine Learning (ML) in the context of Multiple Sclerosis (MS) research and care. Due to the complex and individual nature of MS, the need for reliable and trustworthy ML models is essential. In this paper, key aspects of trustworthy ML, such as out-of-distribution generalization, explainability, uncertainty quantification and calibration are explored, highlighting their significance for healthcare applications. Challenges in integrating these ML tools into clinical workflows are addressed, discussing the difficulties in interpreting AI outputs, data diversity, and the need for comprehensive, quality data. It calls for collaborative efforts among researchers, clinicians, and policymakers to develop ML solutions that are technically sound, clinically relevant, and patient-centric.
本文探讨了可信机器学习(ML)在多发性硬化症(MS)研究和护理中的重要性。由于多发性硬化症具有复杂性和个体性,因此需要可靠和值得信赖的 ML 模型。本文探讨了可信 ML 的关键方面,如分布外泛化、可解释性、不确定性量化和校准,强调了它们对医疗保健应用的重要意义。此外,还探讨了将这些 ML 工具集成到临床工作流程中所面临的挑战,讨论了解释人工智能输出结果的困难、数据多样性以及对全面优质数据的需求。报告呼吁研究人员、临床医生和政策制定者通力合作,开发出技术可靠、临床相关、以患者为中心的人工智能解决方案。