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Identifying Correlations among Biomedical Data through Information Retrieval Techniques

机译:通过信息检索技术识别生物医学数据之间的相关性

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In recent years, the integration of researches in Computer Science and medical fields has made available to the scientific community an enormous amount of data, stored in databases. In this paper, we analyze the data available in the Parkinson’s Progression Markers Initiative (PPMI), a comprehensive observational, multi-center study designed to identify progression biomarkers important for better treatments for Parkinson’s disease. The data of PPMI participants are collected through a comprehensive battery of tests and assessments including Magnetic Resonance Imaging and DATscan imaging, collection of blood, cerebral spinal fluid, and urine samples, as well as cognitive and motor evaluations. To this aim, we propose a technique to identify a correlation between the biomedical data in the PPMI dataset for verifying the consistency of medical reports formulated during the visits and allow to correctly categorize the various patients. To correlate the information of each patient’s medical report, Information Retrieval techniques have been adopted, including the Latent Semantic Analysis technique suitable for constructing a concept space on patient information. Then, patients are grouped and classified into affected or not by using clustering algorithms according to the similarity of medical reports projected in the concept space. Results revealed that the proposed technique reached 95% of effectiveness in the classification of patients.
机译:近年来,计算机科学和医学领域研究的整合为科学界提供了存储在数据库中的大量数据。在本文中,我们分析了帕金森氏症进展指标计划(PPMI)中的可用数据,该方案是一项全面的观察性多中心研究,旨在确定对更好治疗帕金森氏病至关重要的进展性生物指标。 PPMI参与者的数据是通过一系列全面的测试和评估收集的,包括磁共振成像和DATscan成像,血液,脑脊髓液和尿液样本的收集,以及认知和运动评估。为此,我们提出了一种技术,用于识别PPMI数据集中的生物医学数据之间的相关性,以验证访问期间制定的医学报告的一致性,并允许对各种患者进行正确分类。为了关联每个患者的医疗报告的信息,已采用了信息检索技术,包括适用于在患者信息上构建概念空间的潜在语义分析技术。然后,根据概念空间中投影的医学报告的相似性,使用聚类算法将患者分组并分为患病与否。结果表明,所提出的技术在患者分类中达到了95%的有效性。

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