Jeffrey R Petrella, Andrew J Liu, Laura A Wang, P Murali Doraiswamy
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引用次数: 0
Abstract
The advent of anti-amyloid therapies (AATs) for Alzheimer's disease (AD) has elevated the importance of MRI surveillance for amyloidrelated imaging abnormalities (ARIA) such as microhemorrhages and siderosis (ARIA-H) and edema (ARIA-E). We report a literature review and early quality assurance experience with an FDA-cleared assistive AI tool intended for detection of ARIA in MRI clinical workflows. The AI system improved sensitivity for detection of subtle ARIA-E and ARIA-H lesions but at the cost of a reduction in specificity. We propose a tiered workflow combining protocol harmonization and expert interpretation with AI overlay review. AI-assisted ARIA detection is a paradigm shift that offers great promise to enhance patient safety as disease-modifying therapies for AD gain broader clinical use; however, some pitfalls need to be considered.ABBREVIATIONS: AAT= anti-amyloid therapy; ARIA= amyloid-related imaging abnormalities, ARIA-H = amyloid-related imaging abnormality-hemorrhage, ARIA-E = amyloid-related imaging abnormality-edema.
针对阿尔茨海默病(AD)的抗淀粉样蛋白疗法(AATs)的出现,提高了MRI监测淀粉样蛋白相关成像异常(ARIA)的重要性,如微出血和铁质沉着(ARIA- h)和水肿(ARIA- e)。我们报告了一篇文献综述和fda批准的用于MRI临床工作流程中ARIA检测的辅助AI工具的早期质量保证经验。人工智能系统提高了检测细微ARIA-E和ARIA-H病变的灵敏度,但代价是特异性降低。我们提出了一种将协议协调和专家解释与AI覆盖审查相结合的分层工作流程。人工智能辅助ARIA检测是一种范式转变,随着AD的疾病修饰疗法获得更广泛的临床应用,它为提高患者安全性提供了巨大的希望;然而,需要考虑一些陷阱。缩写:AAT=抗淀粉样蛋白疗法;ARIA=淀粉样蛋白相关影像学异常,ARIA- h =淀粉样蛋白相关影像学异常-出血,ARIA- e =淀粉样蛋白相关影像学异常-水肿。