首页> 外文期刊>JMIR Medical Informatics >Incorporation of Personal Single Nucleotide Polymorphism (SNP) Data into a National Level Electronic Health Record for Disease Risk Assessment, Part 3: An Evaluation of SNP Incorporated National Health Information System of Turkey for Prostate Cancer
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Incorporation of Personal Single Nucleotide Polymorphism (SNP) Data into a National Level Electronic Health Record for Disease Risk Assessment, Part 3: An Evaluation of SNP Incorporated National Health Information System of Turkey for Prostate Cancer

机译:将个人单核苷酸多态性(SNP)数据纳入国家级电子健康记录以进行疾病风险评估,第3部分:对SNP并入土耳其国家健康信息系统的前列腺癌评估

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Background A personalized medicine approach provides opportunities for predictive and preventive medicine. Using genomic, clinical, environmental, and behavioral data, the tracking and management of individual wellness is possible. A prolific way to carry this personalized approach into routine practices can be accomplished by integrating clinical interpretations of genomic variations into electronic medical records (EMRs)/electronic health records (EHRs). Today, various central EHR infrastructures have been constituted in many countries of the world, including Turkey. Objective As an initial attempt to develop a sophisticated infrastructure, we have concentrated on incorporating the personal single nucleotide polymorphism (SNP) data into the National Health Information System of Turkey (NHIS-T) for disease risk assessment, and evaluated the performance of various predictive models for prostate cancer cases. We present our work as a three part miniseries: (1) an overview of requirements, (2) the incorporation of SNP data into the NHIS-T, and (3) an evaluation of SNP data incorporated into the NHIS-T for prostate cancer. Methods In the third article of this miniseries, we have evaluated the proposed complementary capabilities (ie, knowledge base and end-user application) with real data. Before the evaluation phase, clinicogenomic associations about increased prostate cancer risk were extracted from knowledge sources, and published predictive genomic models assessing individual prostate cancer risk were collected. To evaluate complementary capabilities, we also gathered personal SNP data of four prostate cancer cases and fifteen controls. Using these data files, we compared various independent and model-based, prostate cancer risk assessment approaches. Results Through the extraction and selection processes of SNP-prostate cancer risk associations, we collected 209 independent associations for increased risk of prostate cancer from the studied knowledge sources. Also, we gathered six cumulative models and two probabilistic models. Cumulative models and assessment of independent associations did not have impressive results. There was one of the probabilistic, model-based interpretation that was successful compared to the others. In envirobehavioral and clinical evaluations, we found that some of the comorbidities, especially, would be useful to evaluate disease risk. Even though we had a very limited dataset, a comparison of performances of different disease models and their implementation with real data as use case scenarios helped us to gain deeper insight into the proposed architecture. Conclusions In order to benefit from genomic variation data, existing EHR/EMR systems must be constructed with the capability of tracking and monitoring all aspects of personal health status (genomic, clinical, environmental, etc) in 24/7 situations, and also with the capability of suggesting evidence-based recommendations. A national-level, accredited knowledge base is a top requirement for improved end-user systems interpreting these parameters. Finally, categorization using similar, individual characteristics (SNP patterns, exposure history, etc) may be an effective way to predict disease risks, but this approach needs to be concretized and supported with new studies.
机译:背景技术个性化医学方法为预测医学和预防医学提供了机会。使用基因组,临床,环境和行为数据,可以对个人健康进行跟踪和管理。通过将基因组变异的临床解释整合到电子病历(EMR)/电子病历(EHR)中,可以实现将这种个性化方法应用于常规实践的有效方法。如今,包括土耳其在内的世界许多国家已经建立了各种中央电子病历基础设施。目的作为开发复杂基础设施的最初尝试,我们致力于将个人单核苷酸多态性(SNP)数据整合到土耳其国家健康信息系统(NHIS-T)中,以进行疾病风险评估,并评估了各种预测性指标的性能前列腺癌病例的模型。我们将我们的工作分为三部分进行介绍:(1)要求概述,(2)将SNP数据合并到NHIS-T中,以及(3)对SNP数据合并到NHIS-T中以评估前列腺癌。方法在本微型系列的第三篇文章中,我们使用真实数据评估了建议的补充功能(即知识库和最终用户应用程序)。在评估阶段之前,从知识来源中提取了与增加的前列腺癌风险有关的临床基因组学关联,并收集了评估各个前列腺癌风险的已发布预测性基因组模型。为了评估互补能力,我们还收集了4例前列腺癌病例和15例对照的个人SNP数据。使用这些数据文件,我们比较了各种独立的和基于模型的前列腺癌风险评估方法。结果通过SNP-前列腺癌风险关联的提取和选择过程,我们从研究的知识源中收集了209个独立的关联,以增加前列腺癌的风险。此外,我们收集了六个累积模型和两个概率模型。独立协会的累积模型和评估没有令人印象深刻的结果。与其他模型相比,其中一种基于概率模型的解释是成功的。在环境行为和临床评估中,我们发现某些合并症,尤其是对评估疾病风险有用。尽管我们的数据集非常有限,但是将不同疾病模型的性能及其实现与实际数据(作为用例场景)进行比较,有助于我们对提议的体系结构有更深入的了解。结论为了从基因组变异数据中受益,必须构建现有的EHR / EMR系统,该系统必须能够在24/7情况下跟踪和监视个人健康状况的各个方面(基因组,临床,环境等),并具有提出基于证据的建议的能力。对于解释这些参数的改进的最终用户系统,最重要的条件是获得国家级认可的知识库。最后,使用相似的个体特征(SNP模式,接触史等)进行分类可能是预测疾病风险的有效方法,但是这种方法需要具体化并得到新研究的支持。

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