数据科学与医疗技术相结合的临床诊断转移模型回顾研究

S. Sikdar, S. Guha, K. Ganguly, S. Bag, Sriya Sona Lenka, H. Barman
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引用次数: 0

摘要

从最早的时候起,疾病及其治疗的概念就与多方面的健康数据的解释有关。需要收集大量关于患者过去的医疗记录、症状、诊断和对处方治疗和疗法的反应的信息,因为这些信息对临床诊断过程至关重要,这就是为什么电子健康数据是所有医疗保健和研究的核心,以便进行大量汇总收集和分析。除了对这些异构数据集进行即时临床或诊断评估外,利用软件工具对这些数据集进行分析还可以产生有价值的信息,从而导致新的生物医学发现、改进的诊断过程、流行病学和生物医学研究的进步。教育。生物医学数据科学确定了以最有效的方式理解和控制特定健康异常的额外信息和战略制定的需求。事实上,生物医学数据科学模型是一个简单的反映,它揭示了所有医疗活动都涉及电子健康记录的收集、分析和存储这一事实。本文是一项回顾性研究,提供了整个方法,生物医学数据科学的应用和进展的系统回顾,这是一个非常有前途和进步的部分先进的医疗技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Retrospective Study on the Shifting Model in Clinical Diagnostics Integrating Data Science With Medical Technology
From the earliest times, the concept of ill health with its treatment is associated with the interpretation of multi-faceted health data. Large amount of information about a patient’s past medical records, symptomatology, diagnoses and responses to prescribe treatments and therapies needs to be collected as these informations are crucial to the clinical diagnostic process and that is why electronic health data are central to all medical care and research for large aggregate collection and analysis. Apart from the immediate clinical or diagnostic evaluation of these heterogeneous datasets, analysis of the same by utilizing software tools produces valuable information that leads to novel biomedical discoveries, improved diagnostics processes, advancements in epidemiology and biomedical research & education. Biomedical data science identifies the requirement of additional information and strategy formulation in understanding and controlling of specific health anomalies in a most effective manner. In fact, the model of biomedical data science is a simple reflection that reveals the fact that all medical care activities involve gathering, analyzing and storage of electronic health records. The paper is a retrospective study that provides a systematic review of the entire methodology, application and advances in Biomedical Data science which is a very promising and progressing section for advanced medical technology.
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