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A machine learning approach to identify clinical trials involving nanodrugs and nanodevices from ClinicalTrials.gov

机译:一种机器学习方法,用于识别来自ClinicalTrials.gov的涉及纳米药物和纳米装置的临床试验

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摘要

BACKGROUND: Clinical Trials (CTs) are essential for bridging the gap between experimental research on new drugs and their clinical application. Just like CTs for traditional drugs and biologics have helped accelerate the translation of biomedical findings into medical practice, CTs for nanodrugs and nanodevices could advance novel nanomaterials as agents for diagnosis and therapy. Although there is publicly available information about nanomedicine-related CTs, the online archiving of this information is carried out without adhering to criteria that discriminate between studies involving nanomaterials or nanotechnology-based processes (nano), and CTs that do not involve nanotechnology (non-nano). Finding out whether nanodrugs and nanodevices were involved in a study from CT summaries alone is a challenging task. At the time of writing, CTs archived in the well-known online registry ClinicalTrials.gov are not easily told apart as to whether they are nano or non-nano CTs-even when performed by domain experts, due to the lack of both a common definition for nanotechnology and of standards for reporting nanomedical experiments and results. METHODS: We propose a supervised learning approach for classifying CT summaries from ClinicalTrials.gov according to whether they fall into the nano or the non-nano categories. Our method involves several stages: i) extraction and manual annotation of CTs as nano vs. non-nano, ii) pre-processing and automatic classification, and iii) performance evaluation using several state-of-the-art classifiers under different transformations of the original dataset. RESULTS AND CONCLUSIONS: The performance of the best automated classifier closely matches that of experts (AUC over 0.95), suggesting that it is feasible to automatically detect the presence of nanotechnology products in CT summaries with a high degree of accuracy. This can significantly speed up the process of finding whether reports on ClinicalTrials.gov might be relevant to a particular nanoparticle or nanodevice, which is essential to discover any precedents for nanotoxicity events or advantages for targeted drug therapy.
机译:背景:临床试验(CT)对于弥合新药实验研究与临床应用之间的差距至关重要。就像传统药物和生物制剂的CTs有助于加速将生物医学发现转化为医学实践一样,纳米药物和纳米设备的CTs可以推动新型纳米材料作为诊断和治疗剂。尽管公开提供了有关纳米药物相关CT的信息,但是在线存档此信息时并未遵循区分涉及纳米材料或基于纳米技术的过程(纳米)的研究与不涉及纳米技术(非纳米技术)的CT的标准。纳米)。仅从CT摘要中找出纳米药物和纳米设备是否参与了一项研究是一项艰巨的任务。在撰写本文时,不容易区分保存在著名的在线注册表ClinicalTrials.gov中的CT,即使是由领域专家执行,也很难区分它们是纳米CT还是非纳米CT,因为它们缺乏共同点纳米技术的定义以及报告纳米医学实验和结果的标准。方法:我们提出了一种监督学习方法,用于根据Clinical Trials.gov的CT摘要分为纳米还是非纳米类别进行分类。我们的方法涉及多个阶段:i)将CT提取和手动标注为纳米与非纳米,ii)预处理和自动分类,iii)使用几种最先进的分类器在不同转化率下进行性能评估原始数据集。结果与结论:最佳自动化分类器的性能与专家(AUC超过0.95)非常接近,这表明在CT摘要中自动检测纳米技术产品的存在是可行的。这可以显着加快查找ClinicalTrials.gov上的报告是否与特定纳米颗粒或纳米装置相关的过程,这对于发现任何纳米毒性事件的先例或靶向药物治疗的优势至关重要。

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