用于提高诊断准确性和实现精准医疗的临床决策支持系统。

Journal of clinical bioinformatics Pub Date : 2015-03-26 eCollection Date: 2015-01-01 DOI:10.1186/s13336-015-0019-3
Christian Castaneda, Kip Nalley, Ciaran Mannion, Pritish Bhattacharyya, Patrick Blake, Andrew Pecora, Andre Goy, K Stephen Suh
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引用次数: 258

摘要

随着研究实验室和诊所合作实现精准医疗,两个社区都需要了解强制性的电子健康/医疗记录(EHR/EMR)倡议,该倡议将于2015年在美国所有诊所全面实施。利益相关者将需要评估当前的记录保存实践,并优化和标准化方法,以获取几乎所有的数字格式信息。学术和工业部门的合作努力对于实现患者护理的更高功效,同时最大限度地降低成本至关重要。目前现有的数字化数据和信息以多种格式存在,并且大部分是非结构化的。在缺乏普遍接受的管理制度的情况下,各部门和机构继续产生信息孤岛。因此,宝贵的和新发现的知识很难获得。为了加速生物医学研究并降低医疗成本,临床和生物信息学系统必须采用通用数据元素来创建结构化注释表单,从而使实验室和诊所能够实时捕获可共享的数据。将这些数据集转换为可知信息应该是一个常规的制度化过程。新的科学知识和临床发现可以通过集成的知识环境共享,这些环境由灵活的数据模型和广泛使用的标准、本体、词汇表和辞典定义。在临床环境中,汇总的知识必须以用户友好的格式显示,以便医生、非技术实验室人员、护士、数据/研究协调员和最终用户可以输入数据、访问信息并理解输出。连接天文数字数据点的努力,包括基于“组学”的分子数据、个体基因组序列、实验数据、患者临床表型和随访数据,是一项艰巨的任务。实现这一集成和互操作性愿景的障碍包括道德、法律和后勤方面的问题。确保数据安全和保护患者权利,同时促进标准化,对于保持公众支持至关重要。超级计算的能力需要战略性地加以应用。标准化的方法学实施必须应用于开发的人工智能系统,该系统具有将数据和信息整合到临床相关知识中的能力。最终,将生物信息学和临床数据集成到临床决策支持系统中,可以实现精准医疗、成本效益和个性化患者护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Clinical decision support systems for improving diagnostic accuracy and achieving precision medicine.

As research laboratories and clinics collaborate to achieve precision medicine, both communities are required to understand mandated electronic health/medical record (EHR/EMR) initiatives that will be fully implemented in all clinics in the United States by 2015. Stakeholders will need to evaluate current record keeping practices and optimize and standardize methodologies to capture nearly all information in digital format. Collaborative efforts from academic and industry sectors are crucial to achieving higher efficacy in patient care while minimizing costs. Currently existing digitized data and information are present in multiple formats and are largely unstructured. In the absence of a universally accepted management system, departments and institutions continue to generate silos of information. As a result, invaluable and newly discovered knowledge is difficult to access. To accelerate biomedical research and reduce healthcare costs, clinical and bioinformatics systems must employ common data elements to create structured annotation forms enabling laboratories and clinics to capture sharable data in real time. Conversion of these datasets to knowable information should be a routine institutionalized process. New scientific knowledge and clinical discoveries can be shared via integrated knowledge environments defined by flexible data models and extensive use of standards, ontologies, vocabularies, and thesauri. In the clinical setting, aggregated knowledge must be displayed in user-friendly formats so that physicians, non-technical laboratory personnel, nurses, data/research coordinators, and end-users can enter data, access information, and understand the output. The effort to connect astronomical numbers of data points, including '-omics'-based molecular data, individual genome sequences, experimental data, patient clinical phenotypes, and follow-up data is a monumental task. Roadblocks to this vision of integration and interoperability include ethical, legal, and logistical concerns. Ensuring data security and protection of patient rights while simultaneously facilitating standardization is paramount to maintaining public support. The capabilities of supercomputing need to be applied strategically. A standardized, methodological implementation must be applied to developed artificial intelligence systems with the ability to integrate data and information into clinically relevant knowledge. Ultimately, the integration of bioinformatics and clinical data in a clinical decision support system promises precision medicine and cost effective and personalized patient care.

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