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外科数据科学:新的知识领域。

Surgical data science: The new knowledge domain.

作者信息

Vedula S Swaroop, Hager Gregory D

机构信息

The Malone Center for Engineering in Healthcare, The Johns Hopkins University, Baltimore, USA.

出版信息

Innov Surg Sci. 2017 Apr;2(3):109-121. doi: 10.1515/iss-2017-0004. Epub 2017 Apr 20.

Abstract

Healthcare in general, and surgery/interventional care in particular, is evolving through rapid advances in technology and increasing complexity of care with the goal of maximizing quality and value of care. While innovations in diagnostic and therapeutic technologies have driven past improvements in quality of surgical care, future transformation in care will be enabled by data. Conventional methodologies, such as registry studies, are limited in their scope for discovery and research, extent and complexity of data, breadth of analytic techniques, and translation or integration of research findings into patient care. We foresee the emergence of Surgical/Interventional Data Science (SDS) as a key element to addressing these limitations and creating a sustainable path toward evidence-based improvement of interventional healthcare pathways. SDS will create tools to measure, model and quantify the pathways or processes within the context of patient health states or outcomes, and use information gained to inform healthcare decisions, guidelines, best practices, policy, and training, thereby improving the safety and quality of healthcare and its value. Data is pervasive throughout the surgical care pathway; thus, SDS can impact various aspects of care including prevention, diagnosis, intervention, or post-operative recovery. Existing literature already provides preliminary results suggesting how a data science approach to surgical decision-making could more accurately predict severe complications using complex data from pre-, intra-, and post-operative contexts, how it could support intra-operative decision-making using both existing knowledge and continuous data streams throughout the surgical care pathway, and how it could enable effective collaboration between human care providers and intelligent technologies. In addition, SDS is poised to play a central role in surgical education, for example, through objective assessments, automated virtual coaching, and robot-assisted active learning of surgical skill. However, the potential for transforming surgical care and training through SDS may only be realized through a cultural shift that not only institutionalizes technology to seamlessly capture data but also assimilates individuals with expertise in data science into clinical research teams. Furthermore, collaboration with industry partners from the inception of the discovery process promotes optimal design of data products as well as their efficient translation and commercialization. As surgery continues to evolve through advances in technology that enhance delivery of care, SDS represents a new knowledge domain to engineer surgical care of the future.

摘要

总体而言,医疗保健,尤其是外科手术/介入治疗,正随着技术的快速进步和护理复杂性的增加而不断发展,其目标是使护理质量和价值最大化。虽然诊断和治疗技术的创新推动了过去外科护理质量的提高,但未来护理的变革将由数据驱动。传统方法,如登记研究,在发现和研究范围、数据的广度和复杂性、分析技术的广度以及研究结果转化或整合到患者护理方面都存在局限性。我们预见,外科/介入数据科学(SDS)的出现将成为解决这些局限性并为基于证据的介入医疗途径改善创造可持续道路的关键要素。SDS将创建工具,在患者健康状况或结果的背景下测量、建模和量化途径或过程,并利用所获得的信息为医疗决策、指南、最佳实践、政策和培训提供参考,从而提高医疗保健的安全性、质量及其价值。数据在整个外科护理途径中无处不在;因此,SDS可以影响护理的各个方面,包括预防、诊断、干预或术后恢复。现有文献已经提供了初步结果,表明数据科学方法用于外科决策如何利用术前、术中和术后的复杂数据更准确地预测严重并发症,如何利用整个外科护理途径中的现有知识和连续数据流支持术中决策,以及如何实现人类护理提供者与智能技术之间的有效协作。此外,SDS有望在外科教育中发挥核心作用,例如通过客观评估、自动虚拟指导和机器人辅助的手术技能主动学习。然而,只有通过文化转变,不仅将技术制度化以无缝捕获数据,还将数据科学专业人员融入临床研究团队,才能实现通过SDS转变外科护理和培训的潜力。此外,从发现过程一开始就与行业合作伙伴合作,有助于促进数据产品的优化设计及其高效转化和商业化。随着外科手术通过提高护理水平的技术进步不断发展,SDS代表了一个用于设计未来外科护理的新知识领域。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/297a/6754017/fe592734eff1/iss-2-20170004-g001.jpg

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