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首页> 外文期刊>Forensic science international >Fusion of laboratory and textual data for investigative bioforensics
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Fusion of laboratory and textual data for investigative bioforensics

机译:融合实验室数据和文本数据以进行生物调查

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摘要

Chemical and biological forensic programs focus on the identification of a threat and acquisition of laboratory measurements to determine how a threat agent may have been produced. However, to generate investigative leads, it might also be useful to identify institutions where the same agent has been produced by the same or a very similar process, since the producer of the agent may have learned methods at a university or similar institution. We have developed a Bayesian network framework that fuses hard and soft data sources to assign probability to production practices. It combines the results of laboratory measurements with an automatic text reader to scan scientific literature and rank institutions that had published papers on the agent of interest in order of the probability that the institution has the capability to generate the sample of interest based on laboratory data. We demonstrate the Bayesian network on an example case from microbial forensics, predicting the methods used to produce Bacillus anthracis spores based on mass spectrometric measurements and identifying institutions that have a history of growing Bacillus spores using the same or highly similar methods. We illustrate that the network model can assign a higher posterior probability than expected by random chance to appropriate institutions when trained using only a small set of manually analyzed documents. This is the first example of an automated methodology to integrate experimental and textual data for the purpose of investigative forensics.
机译:化学和生物法证计划的重点是确定威胁并获取实验室测量值,以确定可能如何产生威胁剂。但是,要生成调查线索,可能还需要识别通过相同或非常相似的过程生产了相同代理的机构,因为代理的生产者可能已经在大学或类似机构学习了方法。我们已经开发了贝叶斯网络框架,该框架融合了硬数据源和软数据源,以将概率分配给生产实践。它将实验室测量的结果与自动文本阅读器结合使用,以扫描科学文献并对已发表有关目标代理商论文的机构进行排名,以使该机构具有根据实验室数据生成目标样本的能力的可能性。我们以微生物取证为例,展示了贝叶斯网络,基于质谱测量预测了生产炭疽芽孢杆菌孢子的方法,并使用相同或高度相似的方法鉴定了具有生长芽孢杆菌孢子历史的机构。我们说明,当仅使用一小组手动分析的文档进行训练时,网络模型可以将比随机机会期望的更高的后验概率分配给适当的机构。这是将调查和文本数据集成在一起以进行调查取证的自动化方法的第一个示例。

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