人工智能的基础工作:在个性化癌症免疫疗法中实施新抗原预测基准。

IF 2.9 2区 社会学 Q1 HISTORY & PHILOSOPHY OF SCIENCE
Social Studies of Science Pub Date : 2023-10-01 Epub Date: 2023-08-31 DOI:10.1177/03063127231192857
Florian Jaton
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引用次数: 1

摘要

这篇文章扩展了最近对机器学习或人工智能算法的研究,这些算法主要依赖于基准数据集,通常被称为“基本事实”这些地面实况数据集收集输入数据和输出目标,从而确定可以通过计算检索和统计评估的内容。我探讨了肿瘤免疫治疗联盟(TESLA)的案例,这是一个基于联盟的癌症个性化免疫治疗基础研究项目,在该项目中,潜在的人工智能算法检索到的靶点免疫原性新抗原的“真相”取决于一个广泛的技术科学网络,该网络的建立意味着重要的组织和物质基础设施。这项研究表明,TESLA的努力并没有建立一个无可争辩的“真相”,而是建立了一个有争议的参考,新抗原的生物学以及如何测量其免疫原性,这与这一为期四年的项目一起略有发展。然而,即使这场争议淡化了TESLA基本事实的范围,也没有抹黑整个事业。TESLA项目启动的技术科学努力的规模及其最终成功满足科学界和工业界的需求抵消了其计量不确定性,有效地在个性化癌症免疫疗法领域(至少暂时)建立了“真正”新抗原的可争代表性。更普遍地说,这项案例研究表明,执行基本事实及其遗漏的内容,是在个性化医疗中实现人工智能技术的必要条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Groundwork for AI: Enforcing a benchmark for neoantigen prediction in personalized cancer immunotherapy.

Groundwork for AI: Enforcing a benchmark for neoantigen prediction in personalized cancer immunotherapy.

Groundwork for AI: Enforcing a benchmark for neoantigen prediction in personalized cancer immunotherapy.

Groundwork for AI: Enforcing a benchmark for neoantigen prediction in personalized cancer immunotherapy.

This article expands on recent studies of machine learning or artificial intelligence (AI) algorithms that crucially depend on benchmark datasets, often called 'ground truths.' These ground-truth datasets gather input-data and output-targets, thereby establishing what can be retrieved computationally and evaluated statistically. I explore the case of the Tumor nEoantigen SeLection Alliance (TESLA), a consortium-based ground-truthing project in personalized cancer immunotherapy, where the 'truth' of the targets-immunogenic neoantigens-to be retrieved by the would-be AI algorithms depended on a broad technoscientific network whose setting up implied important organizational and material infrastructures. The study shows that instead of grounding an undisputable 'truth', the TESLA endeavor ended up establishing a contestable reference, the biology of neoantigens and how to measure their immunogenicity having slightly evolved alongside this four-year project. However, even if this controversy played down the scope of the TESLA ground truth, it did not discredit the whole undertaking. The magnitude of the technoscientific efforts that the TESLA project set into motion and the needs it ultimately succeeded in filling for the scientific and industrial community counterbalanced its metrological uncertainties, effectively instituting its contestable representation of 'true' neoantigens within the field of personalized cancer immunotherapy (at least temporarily). More generally, this case study indicates that the enforcement of ground truths, and what it leaves out, is a necessary condition to enable AI technologies in personalized medicine.

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来源期刊
Social Studies of Science
Social Studies of Science 管理科学-科学史与科学哲学
CiteScore
5.70
自引率
6.70%
发文量
45
审稿时长
>12 weeks
期刊介绍: Social Studies of Science is an international peer reviewed journal that encourages submissions of original research on science, technology and medicine. The journal is multidisciplinary, publishing work from a range of fields including: political science, sociology, economics, history, philosophy, psychology social anthropology, legal and educational disciplines. This journal is a member of the Committee on Publication Ethics (COPE)
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