数据分析的未来就是现在:在神经成像方法开发中整合生成式人工智能

Elizabeth DuPre, R. Poldrack
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摘要

摘要 在本视角中,我们将重点介绍新兴的人工智能工具可能会如何影响研究人员进行计算型 fMRI 分析的经验。虽然要求统计程序自动化的呼声至少可以追溯到 "数据科学 "作为一个领域诞生之初,但生成式人工智能为推动该领域的实践提供了新的机遇。我们强调了这些工具将如何在图像质量控制等领域影响新神经成像方法的开发,以及在生成分析代码时如何影响日常实践。我们认为,将生成式人工智能视为计算神经科学的催化剂--而非其本身的独特工具--可以大大改善其在研究生态系统中的定位。我们尤其认为,生成式人工智能将加强现有开放科学计划的重要性,而不是取而代之。总之,我们呼吁制定更清晰的衡量标准,以便对神经成像成果进行有意义的比较--无论是由单个研究团队还是由生成式人工智能技术产生的成果。
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The future of data analysis is now: Integrating generative AI in neuroimaging methods development
Abstract In this perspective, we highlight how emerging artificial intelligence tools are likely to impact the experiences of researchers conducting computational fMRI analyses. While calls for the automatization of statistical procedures date back at least to the inception of “data science” as a field, generative artificial intelligence offers new opportunities to advance field practice. We highlight how these tools are poised to impact both new neuroimaging methods development in areas such as image quality control and in day-to-day practice when generating analysis code. We argue that considering generative artificial intelligence as a catalyst for computational neuroscience—rather than as unique tools in their own right—can substantially improve its positioning in the research ecosystem. In particular, we argue that generative artificial intelligence will reinforce the importance of existing open science initiatives, rather than supplanting them. Overall, we call for clearer metrics by which neuroimaging results—whether generated by individual research teams or by generative artificial intelligence technologies—can be meaningfully compared.
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