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Managing the Risks and Potential of High-tech Innovations-in-use: Predictive Analytic Modeling with Big Data and a Longitudinal Field Study.

机译:管理使用中的高科技创新的风险和潜力:大数据预测分析模型和纵向现场研究。

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摘要

Healthcare, like many other industry sectors, is increasingly becoming high tech innovation enabled. Success and growth of many firms in high tech industry segments such as medical device, automotive, electronics, telecommunication, and aerospace are dependent on rapid pace of technology innovation. High tech innovation provides functionalities and benefits that are not feasible otherwise. As an illustration, in the healthcare delivery segment, rapid innovation in three dimensional imaging has made the disease detection process much more accurate, fast and consistent as compared to the past. However, notwithstanding the potential benefits of high tech innovations, high tech innovations entail risks of failure while in use in the market. Failures of high tech innovations-in-use can cause severe harm to the users. As an illustration, a recent incident of failure of a cardio-vascular defibrillator caused severe injuries including several fatalities to many patients. Hence, firms and regulators need to manage the downside risks of failures of high tech innovations-in-use in a timely manner. Realizing the potential benefits of high tech innovation in many usage areas depend on how well firms and regulators can manage the potential downside risks of high tech innovations-in-use. Also, realizing the potential benefits of a high tech innovation-in-use depend on how well users can learn to use the high tech innovations.;In my dissertation, I investigate how firms can best manage the downside risks of high tech innovations-in-use as well as how users can realize the potential benefits of high tech innovations. The dissertation consists of three inter-related studies. The first two studies are aimed towards managing the downside risks of high tech innovations. The last study looks at a specific high tech innovation in healthcare delivery, namely, surgical robots and detail out a field study to understand the factors that lead to the realization of the benefits of high tech innovations in health care.;The first step in managing risks of failures of high tech innovations-in-use is to be able to detect signals of failure from the market. In the first study, we show that it is possible to use user feedback of adverse events related to medical devices to detect signals of device failures originating from either design failures, or supply chain failures or manufacturing process failures. Using text mining and machine learning based predictive analysis methods on a 'big' unstructured data-set of adverse events reported by users of medical devices, we show that firms can detect failures of medical devices with precision and consistency. We also identify that firms exhibit substantial judgment bias in interpreting and reacting to market signals of failures. Either they under-react or they over-react to market signals of failure under certain conditions. We use the theoretical lenses of signal detection and system neglect to setup the study and identify sources of judgment bias.;In the second study we extend the first study by identifying product related, firm related and industry related conditions under which firms are more likely to systematically under-react or over-react to market signals of failures of high tech innovations-in-use. An acknowledgement of these sources would help firms and regulators to bring in greater consistency in their detection and decision process. We integrate the theoretical perspectives of signal detection, system neglect and attention based view of firms to propose a framework of judgment bias in the context of detection of failures of high tech innovations-in-use from user reports of adverse events.;In the third study, we undertake a field research in a large multi-specialty hospital in the United States to investigate factors that lead to development of technology capability in healthcare delivery in the context of usage of a surgical robot, namely, da Vinci robot. We identify conditions related to surgeon and team learning that lead to improved usage of the robot. More importantly, we show that with surgeon and team learning, technology mediation can help reduce surgical outcome variation in spite of input heterogeneity in the form of surgeons' experience and skill heterogeneity, patient heterogeneity and team heterogeneity.
机译:像许多其他行业一样,医疗保健正日益成为高科技创新的推动力。高科技行业领域(例如医疗设备,汽车,电子,电信和航空航天)中许多公司的成功与成长取决于技术创新的快速发展。高科技创新提供的功能和优势是其他方式无法实现的。例如,在医疗保健服务领域,三维成像的快速创新使疾病检测过程比过去更加准确,快速和一致。但是,尽管高科技创新有潜在的好处,但高科技创新在市场上使用时仍存在失败的风险。高科技使用中的失败会给用户带来严重伤害。作为说明,最近发生的心血管除颤器故障事件导致重伤,包括许多患者死亡。因此,公司和监管机构需要及时管理因使用中的高科技创新失败而带来的下行风险。在许多使用领域中实现高科技创新的潜在收益取决于公司和监管机构如何有效地管理使用中的高科技创新的潜在下行风险。此外,实现使用中的高科技创新的潜在收益还取决于用户如何学会使用高科技创新。;在本文中,我研究了企业如何最好地管理高科技创新的下行风险。 -使用以及用户如何实现高科技创新的潜在利益。论文包括三个相互关联的研究。前两项研究旨在管理高科技创新的下行风险。最后一项研究着眼于医疗保健领域的一项特定的高科技创新,即外科手术机器人,并详细研究了一项实地研究,以了解导致实现高科技创新在医疗保健中的收益的因素。使用中的高科技创新失败的风险是为了能够检测到市场失败的信号。在第一个研究中,我们表明有可能使用与医疗设备相关的不良事件的用户反馈来检测源自设计故障,供应链故障或制造过程故障的设备故障信号。使用文本挖掘和基于机器学习的预测分析方法,对医疗设备用户报告的不良事件的“大”非结构化数据集,我们表明企业可以准确,一致地检测医疗设备的故障。我们还确定,企业在解释和应对失败的市场信号时表现出重大的判断偏差。在某些情况下,它们要么反应不足,要么反应过度,以应对市场的失败信号。我们使用信号检测和系统忽略的理论视角来进行研究,并确定判断偏差的来源。在第二项研究中,我们通过确定与产品相关,与公司相关和与行业相关的条件来扩展第一项研究,在这些条件下,公司更有可能系统地对使用中的高科技创新失败的市场信号反应不足或反应过度。对这些来源的认可将有助于公司和监管机构在其检测和决策过程中实现更大的一致性。我们结合了信号检测,系统忽略和基于企业关注的观点的理论观点,在从不良事件的用户报告中检测使用中的高科技创新失败的情况下,提出了一个判断偏差的框架。在这项研究中,我们在美国一家大型专科医院进行了现场研究,以调查在使用外科手术机器人(即达芬奇机器人)的背景下导致医疗保健技术能力发展的因素。我们确定与外科医生和团队学习有关的条件,从而改善机器人的使用。更重要的是,我们表明,通过外科医生和团队的学习,技术调解可以帮助减少外科手术结局的变化,尽管存在外科医生经验,技能异质性,患者异质性和团队异质性的输入异质性。

著录项

  • 作者

    Mukherjee, Ujjal Kumar.;

  • 作者单位

    University of Minnesota.;

  • 授予单位 University of Minnesota.;
  • 学科 Business administration.;Operations research.;Statistics.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 165 p.
  • 总页数 165
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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